Abstract
We present a model for the coevolution of seed size and germination time within a season when both affect the ability of the seedlings to compete for space. We show that even in the absence of a morphological or physiological constraint between the two traits, a correlation between seed size and germination time is nevertheless likely to evolve. This raises the more general question to what extent a correlation between any two traits should be considered as an a priori constraint or as an evolved means (or “instrument”) to actually implement a beneficial combination of traits. We derive sufficient conditions for the existence of a positive or a negative correlation. We develop a toy model for seed and seedling survival and seedling growth and use this to illustrate in practice how to determine correlations between seed size and germination time.
Similar content being viewed by others
Avoid common mistakes on your manuscript.
1 Introduction
Seed size and germination time are two potentially important determinants of plant establishment. Large seeds tend to produce larger and more vigorous seedlings than small seeds. Likewise, early emergence gives a seedling a competitive advantage by giving it a head start relative to seedlings that emerge later. These advantages, however, are offset by a lower per capita seed number for plants producing large seeds as well as a possibly higher per capita mortality among large seeds due to seed predators. Likewise, early germination exposes the seedling to a possibly higher risk of dying due to night frost early in the season for fast germinating seeds (see, e.g., Grubb 1977; Rees 1996; Coomes and Grubb 2003; Verdu and Traveset 2005).
Previous models have shown that the trade-off between seed size and seed number can promote the evolution of seed size variation both within and between individual plants using the same germination sites if the competitive advantage of bigger seeds is sufficiently large (Geritz 1995; Rees and Westoby 1997; Geritz et al. 1999). Differences in germination time can have similar results. In this paper we formulate a model to study the selective interaction between seed size and germination time.
If both seed size and germination time affect seedling competitive ability, it is not a priori clear how their combined effect determines the evolution of either or both. We show that even if seed size and germination time can be varied independently (i.e., if there are no physiological constraints between the two), a correlation between the two traits is nevertheless likely to evolve. This result raises the more general question whether or when a correlation between any two traits should be interpreted as a constraining factor limiting the evolution of the traits involved, or as a higher-level attribute that was selected for and evolved in order to enable an individual to actually implement an evolutionarily advantageous combination of traits. Our results not only show that the latter is possible, but we also provide a generalizable method for how such can be demonstrated in a model.
Empirical studies show that seed size and germination time within a season can be negatively correlated (Simons and Johnston 2000; Gomez 2004; Tíscar and Lucas 2010; Hojjat 2011), positively correlated (Souza and Fagundes 2014), uncorrelated (Larson 1963; Bretanolle et al. 1995; Vaughton and Ramsey 1998), or correlated in a non-monotonic way (Chacon et al. 1998). Our general model is capable of producing any type of correlation as an evolutionary outcome.
This paper is about a general idea of evolved correlations as opposed to evolution under constraints, the possible mechanisms involved (e.g., the existence of competitive ranks, see Sect. 2) and a practical method to actually calculate evolved correlations [see Sect. 3 and particularly expression (3.13)]. We also present concrete examples to illustrate the general framework, but the purpose of these models is merely to illustrate the general idea and method and emphatically not to explain specific correlations found in nature. Although the examples do allow us to relate the sign of correlations to the specific model assumptions, the models are not built with any particular species in mind.
The structure of the paper is as follows: Sect. 2 defines the concepts of seed type, strategy, fitness and competitive rank as used in this paper. Section 3 gives a general characterization of an uninvadable strategy as a probability distribution over different seed types with special emphasis on the support of the distribution and frequency-independent effects of seed type on plant fitness. Section 4 illustrates how the results of Sect. 3 can be applied to a concrete model. Section 5 gives a further general characterization of an uninvadable strategy but now with an emphasis on the actual probability mass distribution and frequency-dependent effects of seed type. Section 6 revisits the example of Sect. 4 and shows how the general results of Sect. 5 can be applied in a concrete model. In Sect. 7 we discuss our results in a wider context.
2 Strategy, fitness and competitive rank
A seed is characterized by its type \(\omega :=(m,t)\) where m is seed size and t germination time. Seed size m takes values in [0, M], and germination time t takes values in [0, T]. The set of all possible seed types is thus the rectangle \(\varOmega :=[0,M]\times [0,T]\), which we view as a subset of \(\mathbf {R}^2\) equipped with the Euclidian topology. While \(\varOmega \) is fixed and given, there are no a priori restrictions on seed type in the interior of \(\varOmega \). The seed setting strategy of a plant is a Borel probability measure \(\pi \) on \(\varOmega \) such that for every Borel set \(E\subset \varOmega \), \(\pi (E)\) is the expected proportion of resources allocated to the production of seeds of types \(\omega \in E\). We emphasize that \(\pi (E)\) is generally not the same as the fraction of seeds of types \(\omega \in E\), because different seed types may have different production costs and therefore can be produced in different numbers even if the amount of allocated resources is the same. In particular, the Dirac measure \(\delta _\omega \) is a strategy where the plant produces seeds of one type \(\omega \) only (i.e., all resources are spent producing one seed type). Such a strategy is called a pure strategy. A strategy corresponding to the production of multiple seed types is called a mixed strategy.
Given a population model, a strategy is called viable if it permits a stable positive equilibrium. We refer to the population at the equilibrium as the resident population. The fitness of a strategy is the expected lifetime number of offspring produced by a single plant with that strategy. The number of offspring is calculated over one full lifecycle from the adult plant via seed production, seed dispersal and seed and seedling survival to the next generation of adult plants. The fitness of a resident strategy is necessarily equal to one.
Let \(R_{\pi }(\omega )\) be the expected lifetime number of offspring of a plant with pure strategy \(\delta _\omega \) in a resident population of strategy \(\pi \). The fitness of a plant with strategy \(\tilde{\pi }\) (pure or mixed) in a resident population of strategy \(\pi \) then is
In particular,
for every viable strategy \(\pi \). Next, let
where \(R_0(\omega ) > 0\) is the expected lifetime number offspring of a plant with strategy \(\delta _\omega \) in a competition-free environment (i.e., without a resident population) also called the basic reproduction number (Diekmann et al. 1998, 2003). Equation (2.1) can be rewritten as
The introduction of the function \(U_\pi (\omega )\) enables us to formally separate density-dependent effects of seed type on survival and fecundity from density-independent effects: all density-dependent effects are contained in \(U_\pi (\omega )\), while \(R_0(\omega )\) involves only density-independent effects. Formally this approach is fully general, but it may not always be clear how to explicitly express the separation in terms of specific concrete ecological processes.
Density-dependence may reduce fitness (“negative density-dependence”, e.g., due to seed predation, seedling competition, herbivory and fungal infection), but it may also increase fitness (“positive density-dependence”, e.g., due to beneficial effects of crowding on the micro-environment including the soil and the air quality). In this paper we only consider negative density-dependence, i.e., we assume that \(R_\pi (\omega ) \le R_0(\omega )\) so that
for every \(\pi \) and every \(\omega \).
As a concrete example, in Sects. 4 and 6 we consider an annual plant species without overlapping generations and divide the season into three consecutive phases: a pre-competitive phase of seed and seedling survival and seedling growth, a competitive phase during which seedlings compete for space (i.e., sites), and a post-competitive reproductive phase. In the example, \(U_\pi (\omega )\) can be interpreted as the probability that a seedling of type \(\omega \) survives the competitive phase given that it survives the pre-competitive phase. However, this interpretation as a survival probability need not apply generally, i.e., outside of the example.
The dynamics of an initially rare mutant strategy \(\tilde{\pi }\) in a resident population of plants with strategy \(\pi \) is modelled as a linear stochastic branching process (see, e.g., Haccou et al. 2005). In the supercritical case \(W_\pi (\tilde{\pi })>1\) the mutant has a positive probability of invasion (i.e., non-extinction), while in the critical and subcritical case \(W_\pi (\tilde{\pi })\le 1\) the mutant goes extinct with probability one. Our aim is to find an uninvadable strategy, i.e., a resident strategy that cannot be invaded by any initially rare mutant strategy.
Definition 2.1
A viable strategy \(\pi ^*\) is uninvadable if \(W_{\pi ^*}(\pi )\le 1\) for every strategy \(\pi \).
Technically, this notion of an uninvadable strategy is identical to the symmetric Nash equilibrium (see, e.g., Fudenberg and Tirole 1991, p. 11; Osborne 2004, p. 52). Conceptually, however, it is more related to the evolutionarily stable strategy (ESS) of Maynard Smith and Price (1973), but there is a difference: we do not require the “second ESS condition” (Maynard Smith 1982, p. 14), which deals with the critical case \(W_{\pi ^*}(\tilde{\pi })=1\). This is a consequence of different models for the invasion dynamics of the mutant: either as a stochastic branching process assuming a finite initial number of mutant individuals (as we do here), or as a deterministic process assuming infinitely many mutants at a positive but arbitrarily small initial population density. In the former approach (which we use here) the critical case \(W_{\pi ^*}(\tilde{\pi })=1\) is non-invading, whereas the latter approach requires an additional condition (the “second ESS condition”) to resolve the critical case.
After germination, seedlings may have different competitive abilities depending on their relative size, which in turn depends on seed type. We assume that each seed type can be assigned a competitive rank.
Definition 2.2
A competitive rank function is a function \(r:\varOmega \rightarrow \mathbf {R}\) such that \(r(\omega _1) \le r(\omega _2) \Longleftrightarrow U_\pi (\omega _1) \le U_\pi (\omega _2)\) for every resident strategy \(\pi \). The number \(r(\omega )\) is called the competitive rank of \(\omega \).
Note that a competitive rank function r induces a linear preordering \(\preceq \) on \(\varOmega \) through the definition \(\omega _1\preceq \omega _2\) if \(r(\omega _1)\le r(\omega _2)\). Recall that \(\preceq \) is a linear preordering if for every \(\omega _1,\omega _2,\omega _3\in \varOmega \) either \(\omega _1\preceq \omega _2\) or \(\omega _2\preceq \omega _1\), and \(\omega _1\preceq \omega _2,\,\omega _2\preceq \omega _3 \Longrightarrow \omega _1\preceq \omega _3\). If we identify two seed types \(\omega _1\) and \(\omega _2\) if and only if \(r(\omega _1) = r(\omega _2)\), then the preordering becomes a linear ordering on the set of equivalence classes.
A seed type with a given competitive rank produces seedlings with a higher probability of surviving competition than all other seed types with a lower competitive rank, independently of the resident’s strategy. If seedlings from larger seeds as well as seedlings that emerge earlier than others have a competitive advantage as suggested in the introduction, then we must assume that \(r(\omega )\) with \(\omega =(m,t)\) increases with m and decreases with t. The concrete example worked out in Sects. 4 and 6 satisfies this assumption. The general theory developed in Sects. 3 and 5, however, does not need it and does not use it.
3 Properties of an uninvadable strategy
If \(\pi ^*\) is uninvadable in the sense of Definition 2.1, then \(\pi ^*\) is a Nash equilibrium. We can therefore use definitions and results from game theory. In particular, \(\pi ^*\) is uninvadable if and only if \(W_{\pi ^*}(\delta _\omega )\le W_{\pi ^*}(\pi ^*)\) for every \(\omega \in \varOmega \) (see, e.g., Osborne 2004, pp. 142–143). Moreover, if \(\pi ^*\) is uninvadable, then \(W_{\pi ^*}(\delta _\omega )=W_{\pi ^*}(\pi ^*)\) \(\pi ^*\)-almost everywhere on \(\varOmega \). The latter statement is also known as the Bishop-Cannings theorem (Bishop and Cannings 1978). In the following proposition we formulate this in terms of \(U_{\pi }\) and \(R_0\).
Proposition 3.1
A strategy \(\pi ^*\) is uninvadable if and only if
Moreover, if \(\pi ^*\) is uninvadable, then
Proof
If (3.1) is true, then from (2.4) follows immediately that \(W_{\pi ^*}(\pi )\le 1\) for all \(\pi \), and so \(\pi ^*\) is uninvadable. Conversely, if there exists an \(\omega _0\in \varOmega \) such that (3.1) does not hold for \(\omega =\omega _0\), then \(W_{\pi ^*}(\pi )>1\) for \(\pi =\delta _{\omega _0}\), and so \(\pi ^*\) is not uninvadable.
Next, suppose that \(\pi ^*\) is uninvadable and, to reach a contradiction, suppose that there exists a set \(E\subset \varOmega \) with \(\pi ^*(E)>0\) and \(U_{\pi ^*}(\omega )R_0(\omega )<1\) for \(\omega \in E\) and \(U_{\pi ^*}(\omega )R_0(\omega )=1\) for \(\omega \in \varOmega {\setminus } E\). Then, by (2.4) and (2.2),
which is a contradiction. \(\square \)
Note that an uninvadable strategy \(\pi ^*\) precludes the existence of an \(\omega \in \varOmega \) such that \(U_{\pi ^*}(\omega ) R_0(\omega ) > 1\). Moreover, \(\pi ^*\) produces only seed types \(\omega \) for which \(U_{\pi ^*}(\omega ) R_0(\omega ) = 1\). The support of \(\pi ^*\) (i.e., the set of all \(\omega \in \varOmega \) for which \(\pi ^*(V)>0\) for every neighborhood V of \(\omega \)) may contain seed types for which \(U_{\pi ^*}(\omega ) R_0(\omega ) < 1\), but the set of all such seed types together has a \(\pi ^*\)-measure equal to zero. This means that no resources at all are allocated to the production of such seed types.
The focus of the present section is on the support of an uninvadable strategy in terms of the functions r and \(R_0\), both of which represent frequency-independent effects of seed type on plant fitness. The probability mass distribution over the support is dealt with in Sect. 5 and involves also the function \(U_\pi \), which represents the frequency-dependent effects of seed size.
While Proposition 3.1 gives a full characterization of an uninvadable strategy \(\pi ^*\) in terms of \(R_0\) and \(U_{\pi ^*}\), the next proposition gives a characterization in terms of \(R_0\) and the competitive rank r.
Proposition 3.2
If \(\pi ^*\) is uninvadable, then for \(\pi ^*\)-almost every \(\omega \in \varOmega \)
Proof
Suppose that \(\pi ^*\) is uninvadable. Because of (3.2) in Proposition 3.1, it is sufficient to show that (3.4)–(3.6) hold for every \(\omega \in \varOmega \) with \(U_{\pi ^*}(\omega ) R_0(\omega ) = 1\).
Suppose \(U_{\pi ^*}(\omega ) R_0(\omega ) = 1\). Then (3.4) follows from (2.5).
Suppose that there exists an \(\omega \in \varOmega \) with \(U_{\pi ^*}(\omega ) R_0(\omega ) = 1\) for which (3.5) does not hold, i.e., for which there exists an \(\upsilon \in \varOmega \) such that \(r(\upsilon ) \ge r(\omega )\) and yet \(R_0(\upsilon ) > R_0(\omega )\). From the definition of the competitive rank it then follows that \(U_{\pi ^*}(\upsilon ) \ge U_{\pi ^*}(\omega )\). Hence, \(U_{\pi ^*}(\upsilon )R_0(\upsilon ) > U_{\pi ^*}(\omega ) R_0(\omega ) = 1\), which contradicts (3.1) in Proposition 3.1 and thus proves that \(R_0(\omega )\) is an upper bound of \(\{R_0(\upsilon ):\,\upsilon \in \varOmega ,\,r(\upsilon )\ge r(\omega )\}\), and it is obviously the least upper bound.
The proof of (3.6) is similar but with the roles of \(R_0\) and r reversed. \(\square \)
Condition (3.4) is necessary for \(\pi ^*\) to be a viable strategy. The expressions (3.5) and (3.6) mean that an uninvadable strategy \(\pi ^*\) produces only seeds of types that simultaneously maximize \(R_0\) over the set of types with a greater r as well as maximize r over the set of types with a greater \(R_0\).
Corollary 3.3
If \(\pi ^*\) is uninvadable, then for \(\pi ^*\)-almost every \(\omega _1,\omega _2\in \varOmega \)
Proof
By (3.5) in Proposition 3.2 we have \(r(\upsilon ) \ge r(\omega _2) \Longrightarrow R_0(\omega _2) \ge R_0(\upsilon )\) for \(\pi ^*\)-almost every \(\omega _2\in \varOmega \) and arbitrary \(\upsilon \in \varOmega \). With \(\upsilon =\omega _1\), we recover the “\(\Longrightarrow \)” of (3.7).
Likewise, by (3.6) in Proposition 3.2 we have \(R_0(\upsilon ) \ge R_0(\omega _1) \Longrightarrow r(\omega _1) \ge r(\upsilon )\) for \(\pi ^*\)-almost every \(\omega _1\in \varOmega \) and arbitrary \(\upsilon \in \varOmega \). Taking \(\upsilon =\omega _2\), we recover the “\(\Longleftarrow \)” of (3.7). \(\square \)
Corollary 3.3 means that among the seed types actually being produced by an uninvadable strategy \(\pi ^*\), the offspring number (\(R_0\)) and the offspring competitive rank (r) are traded-off against one another, i.e., one seed type cannot be superior to another in terms of both offspring number and competitive rank at the same time. This is intuitively appealing, because reallocation of resources from one seed type to another that is superior in both aspects obviously would increase plant fitness and hence enable invasion, and \(\pi ^*\) would not be uninvadable, which is a contradiction.
As \(R_0\) and r are functions of seed type only, the characterizations of \(\pi ^*\) in Proposition 3.2 and Corollary 3.3 are necessarily incomplete: they only involve frequency-independent (i.e., \(\pi ^*\)-independent) consequences of seed type, and no information about the actual mass-distribution of \(\pi ^*\) is inferred. The characterization in purely frequency-independent terms is an insight in itself, but there is a further advantage as well because no specific assumptions about \(U_{\pi ^*}\) are being used other than that \(U_{\pi ^*}\) takes values between zero and one. To show how such incomplete characterization can be useful, we define the set
With this definition it is obvious that the equivalence (3.7) holds for all \(\omega _1,\omega _2\in \varOmega _0\).
Proposition 3.2 implies that if \(\pi ^*\) is uninvadable, then \(\pi ^*\)-almost every \(\omega \in \varOmega \) is an element of \(\varOmega _0\). The following proposition goes one step further and states that every \(\omega \) in the support of \(\pi ^*\) is an element of the closure of \(\varOmega _0\).
Proposition 3.4
The support of an uninvadable strategy \(\pi ^*\) is a subset of the closure of \(\varOmega _0\).
Proof
Let \(\omega \) be an element of the support of \(\pi ^*\). By the definition of the support, every neighborhood of \(\omega \) has a positive \(\pi ^*\)-measure. Hence, by Proposition 3.2, every neighborhood of \(\omega \) has at least one point in \(\varOmega _0\), and so \(\omega \in \overline{\varOmega }_0\). \(\square \)
The existence and the sign of any correlation between seed size and germination time is in the first place a property of the support of \(\pi ^*\) rather than the exact distribution of probability mass over the support. Although \(\varOmega _0\) is not the support of \(\pi ^*\), its closure contains the support, and so we can learn about what kind of correlations between seed size and germination time are possible and which are not, by studying the geometry of \(\varOmega _0\).
Therefore, from now on our focus shifts from the study of \(\pi ^*\) to the study of \(\varOmega _0\). To ensure that \(\varOmega _0\) is not empty, and so to avoid trivialities, we always assume that there exists at least one \(\omega \in \varOmega \) for which \(R_0(\omega )\ge 1\). If r and \(R_0\) are known, then \(\varOmega _0\) can be constructed graphically using its definition. This is illustrated in Fig. 1 for hypothetical but continuous r and \(R_0\) using the level contours of both functions. In the special case where r has a plateau, i.e., there exists an open set \(D\subset \varOmega \) on which r is constant (not illustrated in the figure), then \(\omega \in \overline{D}\cap \varOmega _0\) maximizes \(R_0\) on the closure \(\overline{D}\) of the plateau. On the other hand, if \(R_0\) has a plateau, then r is maximized. If r and \(R_0\) have overlapping plateaus, then all seed types in D are selectively neutral to one another.
If r and \(R_0\) are smooth functions, then \(\varOmega _0\) can be characterized in terms of the derivatives of \(R_0\) and r, which gives a tool to study seed size and germination time using ordinary calculus. Here and in the sequel, \(\nabla \) denotes the gradient of a real-valued function of two variables. In particular, \(\det (\nabla r, \nabla R_0) = \frac{\partial r}{\partial m} \frac{\partial R_0}{\partial t} - \frac{\partial R_0}{\partial m} \frac{\partial r}{\partial t}\).
Proposition 3.5
Let \(R_0\) and r be twice continuously differentiable in the interior of \(\varOmega \). Then, for every \(\omega _0\in \varOmega _0\cap \mathrm {int}\,\varOmega \)
The proof of Proposition 3.5 is given in the Appendix; here we only give an interpretation. First note that the set \(\varOmega \) of all possible seed types is by its definition compact, and since r and \(R_0\) are now assumed to be continuous functions, the supremum in (3.5) and (3.6) in the definition of \(\varOmega _0\) can be replaced by a maximum. Thus, \(\omega _0\in \varOmega _0\cap \mathrm {int}\,\varOmega \) maximizes \(R_0\) over the set \(\{\upsilon \in \varOmega :r(\upsilon ) \ge r(\omega _0)\}\) and at the same time maximizes r over the set \(\{\upsilon \in \varOmega :R_0(\upsilon ) \ge R_0(\omega _0)\}\). In both cases the maximum lies on the boundary of these sets, and (3.9) and (3.10) in Proposition 3.5 are necessary conditions for a local extremum located on the boundary, and (3.11) is a necessary condition for the extremum to be a local maximum.
In geometric terms (3.9) means that, for every \(\omega _0\in \varOmega _0\cap \mathrm {int}\,\varOmega \), the angle between the gradient vectors \(\nabla r(\omega _0)\) and \(\nabla \! R_0(\omega _0)\) is greater than 90\(^{\circ }\), and condition (3.10) means that the gradient vectors are linear dependent, so that the angle is either zero or 180\(^{\circ }\). The two conditions together thus imply that \(\nabla r(\omega _0)\) and \(\nabla \! R_0(\omega _0)\) point in exactly opposite directions. The tangent vectors of the level contours of the functions r and \(R_0\) at \(\omega _0\) are orthogonal to \(\nabla r(\omega _0)\) and \(\nabla \! R_0(\omega _0)\) and hence parallel to each other (Fig.1d).
Condition (3.11) compares the curvatures of the level contours of the functions r and \(R_0\) at \(\omega _0\). This may be not immediately obvious, but it is shown in the Appendix after the proof of Proposition 3.5. If the orientation of the level contours (i.e., the direction of moving along a contour) is defined by the vector obtained by the counter-clockwise rotation of \(\nabla r(\omega _0)\) over 90\(^{\circ }\) and, moreover, if the curvature of a level contour is defined to be positive if the (now oriented) contour turns counter-clockwise and negative if it turns the other way, then (3.11) means that at \(\omega _0\) the curvature of the level contour of r is smaller than the curvature of the level contour of \(R_0\) (Fig. 2a). If the curvatures were ordered in the opposite way, then \(\omega _0\) would correspond to a local minimum (rather than maximum) of the functions r and \(R_0\) over the sets \(\{\upsilon \in \varOmega :R_0(\upsilon ) \ge R_0(\omega _0)\}\) and \(\{\upsilon \in \varOmega :r(\upsilon ) \ge r(\omega _0)\}\), respectively (Fig. 2b).
Condition (3.10) is the most important of the three conditions in Proposition 3.5, because it implicitly defines \(\varOmega _0\) in the interior of \(\varOmega \) as a curve and gives a potential relation between seed size m and germination time t. In particular, if the tangent to \(\varOmega _0\) (if such a tangent exists) has a positive slope dt / dm, then a potential local correlation will be positive, but if the tangent has a negative slope, then a potential local correlation will be negative. The following corollary gives a condition for the existence of the tangent as well as an explicit expression of the tangent vector.
Corollary 3.6
Let \(R_0\) and r be twice continuously differentiable in the interior of \(\varOmega \). Then, for every \(\omega _0\in \varOmega _0\cap \mathrm {int}\,\varOmega \) with
\(\varOmega _0\) is locally the image of a continuously differential curve with tangent vector
Proof
Condition (3.10) in Proposition 3.5 means that \(\varOmega _0\) coincides with the zero-level contour line of the function \(\det (\nabla r,\nabla \! R_0)\). This contour has a well defined tangent that is orthogonal to \(\nabla \!\det (\nabla r,\nabla \! R_0)\), provided the latter is not zero. \(\square \)
Therefore, the sign of a potential local correlation between seed size and germination time is positive if the scalar components \(u_1\) and \(u_2\) of u in (3.13) have the same sign and negative if \(u_1\) and \(u_2\) have opposite signs. Furthermore, if \(u_1\) and \(u_2\) do not change sign, then the sign of a potential correlation is the same everywhere in the interior of \(\varOmega \). However, if \(|u_1-u_2|\) is large, then the tangent will be almost horizontal or vertical, and so either m or t is almost constant.
4 Example
In this section we present a concrete model as an example to show how the general results of the previous section can be applied in practice to a particular case. We emphasize that, for the purpose of illustration, the model is intentionally kept simple, and the analysis is not meant to be comprehensive.
To get results that can be related to seed and seedling survival and seedling growth as functions of seed size and germination time, we need a more specific model. To that end we consider an annual plant species without overlapping generations and divide the season into three consecutive phases: a pre-competitive phase of seed and seedling survival and seedling growth, a short but intense competitive phase during which seedlings compete for space while seedling growth is negligible, and a post-competitive reproductive phase.
The pre-competitive phase coincides with the time interval [0, T]. We assume that the probability that a seed of type \(\omega =(m,t)\) and the ensuing seedling survive till time T is
Here \(\mu (m)\) and \(\nu (\tau )\) denote the seed and seedling mortality rates, respectively, at time \(\tau \in [0,T]\). We further assume that a seedling that survives till the end of the pre-competitive phase has the size
where \(\lambda (\tau )\) is the seedling’s growth rate (per mass) at time \(\tau \in [0,T]\), and where the initial seedling size is proportional to seed size with constant of proportionality \(\alpha >0\). We also assume that larger seedlings are competitively superior to smaller ones, so that we can equate the competitive rank with seedling size at time T, i.e.,
This model of seedling growth and competitive rank incorporates the notion of large seed size and early germination being advantageous when it comes to seedling competition.
We assume that \(\lambda ,\nu :(0,T)\rightarrow \mathbf {R}_+\) and \(\mu :(0,M)\rightarrow \mathbf {R}_+\) are twice continuously differentiable functions. For \(R_0\) we consider two different models. In the first model the per capita amount of resources available for seed production is proportional the size of the seedling at the end of the pre-competitive phase, the idea being that after competition all plants continue to grow at the same exponential rate:
Here \(\beta >0\) is the constant of proportionality relating resources available for seed production to seedling size at the end of the pre-competitive phase, and \(\gamma >0\) is the production cost per seed. We refer to this model as the “proportional resources”.
In the second model the per capita amount of resources is fixed, the idea being that plant growth and the final size are limited by the locally available resources:
Now \(\beta \) is the fixed amount of resources available for seed production, independently of seedling size. We refer to this model as the “fixed resources”.
Both models have implemented a trade-off between seed size and seed number, and both models account for seed type affecting survival and establishment of seeds and seedlings. In the first model, however, seed type affects also the fecundity of established plants by affecting the amount of available resources, while in the second model seed type has no effects beyond the competitive phase.
The following two propositions give necessary conditions for (m, t) to be a point of \(\varOmega _0\) in the interior of \(\varOmega \):
Proposition 4.1
(Proportional resources) Let \(R_0\) be defined by (4.4). Then, for every \((m,t)\in \varOmega _0\cap \mathrm {int}\,\varOmega \),
Proposition 4.2
(Fixed resources) Let \(R_0\) be defined by (4.5). Then, for every \((m,t)\in \varOmega _0\cap \mathrm {int}\,\varOmega \),
The proofs are given in the Appendix. Here we only comment on the meaning and the consequences of the propositions. Note that at every point of \(\varOmega _0\) in the interior of \(\varOmega \) and hence, by Proposition 3.4, at every point of the support of an uninvadable strategy \(\pi ^*\) in the interior of \(\varOmega \), the following is required: Firstly, the seed has a lower mortality rate than the seedling. This is true for both models of \(R_0\). However, in the case of proportional resources, the required difference in mortality rates increases with the seedling growth rate. Secondly, with proportional resources seed mortality is locally a strictly increasing function of seed size, and more strongly so if seed size is small or germination time is short (Fig. 3a). With fixed resources, however, seed mortality may be increasing or decreasing (Fig. 3b, c).
If the conditions are not satisfied at a given point in the interior of \(\varOmega \), then that point is not in \(\varOmega _0\) and hence also not in the support of \(\pi ^*\). Thus, if seed mortality is greater than seedling mortality for all seed types, which violates both (4.6) and (4.8), then the entire set \(\varOmega _0\) necessarily lies on the boundary of \(\varOmega \), independently of which model for \(R_0\) we use. Likewise, if seed mortality is a decreasing function of seed size everywhere, which is a violation of (4.7), then \(\varOmega _0\) lies on the boundary of \(\varOmega \) in the case of proportional resources (Fig. 3b), but not necessarily so for fixed resources (Fig. 3d).
The following proposition gives sufficient conditions that guarantee that the tangent to \(\varOmega _0\) at a given point has a negative slope so that a possible correlation between seed size and germination time is locally negative:
Proposition 4.3
(Proportional resources and fixed resources) Let \(R_0\) be given by (4.4) or (4.5), and let \((m,t)\in \varOmega _0\cap \mathrm {int}\,\varOmega \) be such that \(\lambda ^\prime (t)>0\), \(\mu ^\prime (t)>0\), \(\nu ^\prime <0\), \(\mu ^{\prime \prime }(m)\ge 0\) and \(\nu -\mu >\lambda \). Then, the components of the tangent vector (3.13) have opposite signs, and hence the tangent to \(\varOmega _0\) has a negative slope.
The proof is given in the Appendix. Note that the conditions \(\mu ^\prime (t)>0\) and \(\nu -\mu >\lambda \) are readily satisfied for the case of proportional resources because of Proposition 4.1, but not necessarily so for the case of fixed resources. Violation of \(\mu ^\prime (t)>0\) in the case of fixed resources can lead to a positive slope of the tangent to \(\varOmega _0\) (Fig. 3d).
5 Properties of an uninvadable strategy with support in \(\varOmega _0\)
With Proposition 3.4 the problem of finding an uninvadable strategy \(\pi ^*\) with support in the rectangle \(\varOmega \) has been reduced to the simpler problem of finding an uninvadable strategy with support in the smaller set \(\overline{\varOmega }_0\). Does this mean that a strategy uninvadable on \(\varOmega _0\) is also uninvadable on the whole of \(\varOmega \)? The following proposition says that this is indeed the case.
Proposition 5.1
For given \(\pi \), suppose that \(U_{\pi }(\omega )R_0(\omega )\le 1\) for every \(\omega \in \varOmega _0\). Then \(U_{\pi }(\omega )R_0(\omega )\le 1\) for every \(\omega \in \varOmega \) and hence \(\pi \) is uninvadable.
Proof
To reach a contradiction, suppose that there exists an \(\omega _1\in \varOmega \) such that \(U_\pi (\omega _1)R_0(\omega _1)>1\). Since \(U_\pi (\omega _1)\le 1\), necessarily \(R_0(\omega _1)>1\).
Let \(\omega _2\in \varOmega \) be such that \(R_0(\omega _2)=\sup \{R_0(\upsilon ):\upsilon \in \varOmega ,r(\upsilon )\ge r(\omega _1)\}\). Then, \(R_0(\omega _2) \ge R_0(\omega _1) > 1\) and \(r(\omega _2) \ge r(\omega _1)\) and furthermore
Now, let \(\omega _3 \in \varOmega \) be such that \(r(\omega _3) = \sup \{ r(\upsilon ) :\upsilon \in \varOmega , R_0(\upsilon ) \ge R_0(\omega _2) \}\). Then, \(r(\omega _3) \ge r(\omega _2)\) and \(R_0(\omega _3) \ge R_0(\omega _2)\). On the other hand,
and so the \(\ge \) signs in (5.2) can be replaced by \(=\) signs. Therefore,
which by definition means that \(\omega _3 \in \varOmega _0\). Hence,
which is a contradiction. \(\square \)
The restriction to the smaller set \(\varOmega _0\) is an application of the so-called “method of elimination of dominated strategies” (see, e.g., Fudenberg and Tirole 1991, pp. 9–11; Osborne 2004, pp. 385–387).
The main idea of this section is that instead of searching directly for an uninvadable strategy on \(\varOmega _0\), we first look for an uninvadable strategy over the corresponding range of competitive ranks and then translate the result back in terms of seed types. To see how this works, first note that from the definition of \(\varOmega _0\) in (3.8) it is clear that the equivalence (3.7) holds for all \(\omega _1,\omega _2\in \varOmega _0\), and so
Secondly, from Definition 2.2 we have
which in combination with (5.7) gives
for every resident strategy \(\pi \). In other words, every \(\omega _1,\omega _2\in \varOmega _0\) with equal competitive ranks contribute to fitness in exactly the same way, i.e., they are selectively neutral to one another irrespectively of the resident’s strategy. If we identify seed types in with the same competitive rank, then the competitive rank function r induces a linear ordering on \(\varOmega _0\) (see remark under Definition 2.2). In particular, there is a one-to-one relation between equivalence classes of seed types in \(\varOmega _0\) and the corresponding competitive rank. This justifies the “change of variables” from seed type (or rather, equivalence classes of seed types) to competitive rank in order to solve first the problem of finding an uninvadable strategy over the set of competitive ranks and then translate the result back in terms of seed types.
To this end define the probability measure \(\vartheta _\pi \) on the set \(r(\overline{\varOmega }_0)\) by
for all Borel sets \(J\subset r(\overline{\varOmega }_0)\). Moreover, define \(\widetilde{R}_0:r(\overline{\varOmega }_0)\rightarrow \mathbb {R}\) and \(\widetilde{U}_\pi :r(\overline{\varOmega }_0)\rightarrow \mathbb {R}\) by
for all \(\omega \in \overline{\varOmega }_0\).
Proposition 5.2
The Borel probability measure \(\pi \) on \(\varOmega \) with \(\mathrm {supp}(\pi )\subset \overline{\varOmega }_0\) is uninvadable if and only if \(\widetilde{U}_{\pi }(\rho )\widetilde{R}_0(\rho )\le 1\) for all \(\rho \in r(\overline{\varOmega }_0)\).
Proof
From (5.11) we have that \(\widetilde{U}_\pi (r(\omega ))\widetilde{R}_0(r(\omega ))=U_\pi (\omega )R_0(\omega )\). From Propositions 3.1 and 5.1 then follows that \(\pi \) is uninvadable if and only if \(\widetilde{U}_{\pi }(\rho )\widetilde{R}_0(\rho )\le 1\) for all \(\rho \in r(\overline{\varOmega }_0)\). \(\square \)
6 Example (continued)
In the example of Sect. 4 the focus was on the construction of \(\varOmega _0\). The set \(\overline{\varOmega }_0\) contains the support of an uninvadable strategy \(\pi ^*\), but it is not the support itself. The actual support will depend not only on r and \(R_0\) but also on the competition function \(U_\pi \), which we have not considered yet. To specify \(U_\pi \) one has to make assumptions about the underlying biology and especially about the mechanism of competition. Following Geritz (1995) we make the following assumptions: seedlings compete for discrete sites. The number of seeds that land in any particular site is stochastic and follows a Poisson distribution. Each site is just large enough for the establishment of a single individual plant only. If two or more seeds end up in the same site, then seedlings will compete such that only one will become established. Competition is extremely asymmetric, i.e., the winner in a given site is always one with the highest competitive rank among all seedlings present.
Consider a resident with a seed setting strategy \(\pi \) with support in \(\overline{\varOmega }_0\), and let \(\vartheta _\pi \), \(\widetilde{R}_0\) and \(\widetilde{U}_\pi \) be defined as in (5.10)–(5.11). The plant density N, measured as the fraction of occupied sites, is equal to the fraction of sites that receive at least one seed produced in the previous year, i.e.,
For \(\int _{r(\overline{\varOmega }_0)}\widetilde{R}_0(\theta ) \mathrm {d}\vartheta _\pi (\theta )>1\) there exists a unique positive and stable equilibrium N that satisfies the equation
Let \(J(\rho )\) be the subset of \(r(\overline{\varOmega }_0)\) containing precisely those competitive ranks that are strictly greater than \(\rho \). The probability that a given seedling with competitive rank \(\rho \in r(\overline{\varOmega }_0)\) wins the competition in a random site then is
which is the probability that a site does not contain any seedlings with a rank strictly greater than \(\rho \) times the probability of winning in a site with \(k\ge 0\) competitors with exactly the same competitive rank.
Proposition 6.1
Suppose \(\widetilde{R}_0\) is differentiable, r continuous, and \(r(\overline{\varOmega }_0)=[\rho _\mathrm {min},\rho _\mathrm {max}]\) with \(\widetilde{R}_0(\rho _\mathrm {max})=1\). If \(\vartheta _\pi \) is the probability measure on \(r(\overline{\varOmega }_0)\) induced by the Borel probability measure \(\pi \) on \(\varOmega \) with \(\mathrm {supp}(\pi )\subset \overline{\varOmega }_0\), and \(\vartheta _\pi \) has the probability density
for all \(\rho \in [\rho _\mathrm {min},\rho _\mathrm {max}]\), where
is a normalization constant, then \(\pi \) is uninvadable.
Proof
If \(\vartheta _\pi \) has the probability density \(\phi \), then the equilibrium equation (6.2) becomes
which is solved by
and the competition function in (6.3) simplifies to
so that
for all \(\rho \in [\rho _\mathrm {min},\rho _\mathrm {max}]\). It follows from Proposition 5.2 that \(\pi \) is uninvadable. \(\square \)
We now apply Proposition 6.1 to the examples in Sect. 4. To present the results in terms of seed types rather than competitive rank we proceed as follows. For \(\omega =(m,t)\in \overline{\varOmega }_0\) we have
and so the derivative of \(\widetilde{R}_0\) at \(r(\omega )\) is given by
where u is the vector given in (3.13).
For \(\phi \) we have
with
where \(R_0^\mathrm {max}\) is the maximum of \(R_0\) over \(\overline{\varOmega }_0\) and it is attained where the competitive rank is at its minimum. Figure 4a, c, d show the graphs of \(\phi (r(\omega ))\) for the examples in Sect. 4 corresponding to Fig. 3a, c, d where \(\varOmega _0\) lies almost entirely in the interior of \(\varOmega \).
If \(\varOmega _0\) is a subset of the boundary of \(\varOmega \), then u is just a unit vector along the boundary. For example, in the case shown in Fig. 3b, \(u=(0,-1)\) and we get
Hence for \(\phi \) we get
where c is as in (6.13). Figure 4b shows the graph of \(\phi (r(\omega ))\) for the example in Sect. 4 corresponding to Fig. 3b.
7 Discussion
In this paper we formulated a model for the coevolution of seed size and (within-season) germination time when both traits affect the ability of the seedlings to compete for space. We showed that if seedlings can be assigned a competitive rank depending on seed type (i.e., seed size and germination time) such that a seedling with a higher competitive rank has a higher probability of surviving competition independently of the resident’s strategy, then the support of an uninvadable strategy as a distribution over seed types is confined within a one-dimensional subset of the larger two-dimensional set of all seed types. The reason for this is that among seedlings of equal competitive rank, only the type that produces the most new seeds is evolutionarily favoured. This is an application of the “method of elimination of dominated strategies” (see, e.g., Fudenberg and Tirole 1991, pp. 9–11; Osborne 2004, pp. 385–387). As a consequence, a correlation between seed size and germination time is likely to evolve whenever there is any variation in seed types at all (Fig. 1).
The existence of a competitive rank is an assumption. If there exists a competitive rank, however, then the problem of finding an uninvadable strategy as a distribution over the two-dimensional space of all seed types is reduced to a one-dimensional subset of that space. In principle, this reduction seems possible even with higher-dimensional problems. With the reduction, the present problem becomes mathematically similar to the one considered by Geritz (1995) and Geritz et al. (1999) where the competitive rank was determined by seed size only, and where it was shown that mixed (i.e., polymorphic) strategies evolve if the competition between seedlings with different competitive ranks is sufficiently asymmetric in favour of those of a higher competitive rank.
Our model covers both between-plant and within-plant variation of seed types (or any mixture of the two) as long as the probability of encountering competitors of a given seed type depends only on the population-level distribution of seed types: in this case, it does not matter whether the mixed ESS represents a coalition of individuals all using the same mixed strategy or a coalition of individuals each of whom uses a pure strategy with their relative frequencies corresponding to the mixed strategy ESS (see Discussion in Geritz 1995).
To relate the results to seed and seedling survival and seedling growth as functions of seed size and germination time, we formulated a more specific model that is capable of producing different kinds of correlations as an evolutionary outcome (Fig.2). In particular, we found that if, during the pre-competitive phase, seed mortality rapidly increases with seed size (e.g., because of seed predators preferring larger seeds) and seedling mortality decreases with seed size (e.g., due to seedlings from larger seeds being more robust) and seedling growth rate increases with time (e.g., because of increasing temperatures and generally improving whether conditions), then evolution favours early germination of large seeds and later germination of small seeds (see Proposition 4.3). As these conditions occur quite naturally (see, e.g., Grubb 1977; Coomes and Grubb 2003), a negative correlation between seed size and germination time seems to be the more likely outcome of the model under realistic assumptions.
To calculate the actual shape of an uninvadable seed type distribution (as opposed to merely its support) we considered a further specification of the model including site competition with only one surviving seedling per site, random seed dispersal with Poisson-distributed numbers of seed landings per site, and extremely asymmetric competition such that the winner in a given site is always one with the highest competitive rank among all seedlings present. The resulting evolutionary outcome is a seed type distribution with a continuous support (Fig. 3). Similar results for the evolution of seed size only were found by Geritz (1995), but results from Geritz et al. (1999) suggest that with less extreme competitive asymmetry (such that also seedlings with a lower competitive rank have a chance of winning local competition) the support crumbles into finitely many isolated points. This also follows from a more general result by Gyllenberg and Meszena (2005) on the generic impossibility of coexistence of infinitely many types. However, Haccou and Iwasa (1998) have shown that the continuous distribution in the extremely asymmetric limit can be expected to be a good approximation to the discrete distribution with strong asymmetric competition.
We used the notion of the Nash equilibrium rather than the evolutionarily stable strategy (ESS) of Maynard Smith (1982). This reflects a choice of model for the dynamics of an initially rare mutant strategy: either as a stochastic branching process assuming a finite initial number of mutant individuals (as we did here in this paper), or as a deterministic process assuming infinitely many mutants at a positive but arbitrarily small initial population density. This was not an arbitrary choice: the ESS conditions (in particular the so-called “second ESS condition” in Maynard Smith 1982, p. 14) would be difficult to verify and also difficult to interpret, because of the non-linear dependence of the invader’s fitness on the resident’s strategy.
Models for the coevolution of different seed characteristics (such as seed size and within season germination time as in the present model, but also possibly involving local adaptation, dormancy and dispersal; see, e.g., Brown and Venable 1986) are important for our understanding of adaptive correlations. A particularly interesting question is as to what extent an empirically observed correlation between two traits should be interpreted as a constraining factor or as a property that evolved in order to enable an individual to actually implement an evolutionarily advantageous strategy. In this paper we have shown how competition within a population may drive evolution to produce correlations between different traits. Other possible evolutionary mechanisms producing correlations could be, for example, independent adaptation of different traits to local environments in a heterogeneous landscape.
We made two assumptions that restrict the generality of our results, i.e., we assumed negative density-dependence and we assumed that there exists a competitive rank order. However, in spite of these restrictions, our method of analysis is generalizable to a wider context than the evolution of seed traits. The essential issue of our approach is the restriction of frequency-dependence to a submanifold of a higher dimensional strategy space. This directly links back to the more general question raised in the Introduction whether or when a correlation between any two traits should be interpreted as a morphological tradeoff constraining the evolution of the traits involved, or as an evolutionary outcome. Our results show that the latter is possible indeed and moreover provides a method of studying this phenomenon.
References
Bishop DT, Cannings C (1978) A generalised war of attrition. J Theor Biol 70:85–124
Bretanolle F, Thompson JD, Lumaret R (1995) The influence of seed size variation on seed germination and seedling vigour in diploid and tetraploid Dactylis glomerata L. Ann Bot 76:607–615
Brown JS, Venable DS (1986) Evolutionary ecology of seed-bank annuals in temporally varying environments. Am Nat 127:31–47
Chacon P, Bustamante R, Henriquez C (1998) The effect of seed size on germination and seedling growth of Cryptocarya alba (Lauraceae) in Chile. Revista Chilena de Historia Naturel 71:189–197
Coomes DA, Grubb PJ (2003) Colonization, tolerance, competition and seed size variation within functional groups. Trends Ecol Evol 18:283–291
Diekmann O, Gyllenberg M, Metz JAJ, Thieme HR (1998) On the formulation and analysis of general deterministic structured population models I. Linear theory. J Math Biol 36:349–388
Diekmann O, Gyllenberg M, Metz JAJ (2003) Steady state analysis of structured population models. Theor Pop Biol 63:309–338
Fudenberg D, Tirole J (1991) Game theory. The MIT Press, Cambridge
Geritz SAH (1995) Evolutionarily stable seed polymorphism and small-scale spatial variation in seedling density. Am Nat 146:685–707
Geritz SAH, van der Meijden E, Metz JAJ (1999) Evolutionary dynamics of seed size and seedling competitive ability. Theor Pop Biol 55:324–343
Gomez JM (2004) Bigger is not always better: conflicting selective pressures on seed size in Quercus ilex. Evolution 58:71–80
Grubb PJ (1977) The maintenance of species richness in plant communities: the importance of the regeneration niche. Biol Rev 52:107–145
Guggenheimer HW (1977) Differential geometry. Dover Publications Inc., New York, p 15
Gyllenberg M, Meszena G (2005) On the impossibility of coexistence of infinitely many strategies. J Math Biol 50:133–160
Haccou P, Iwasa Y (1998) Robustness of optimal mixed strategies. J Math Biol 36:485–496
Haccou P, Jagers P, Vatutin VA (2005) Branching processes: variation, growth and extinction of populations. Cambridge University Press, Cambridge
Hojjat SS (2011) Effect of seed size on germination and seedling growth of some Lentil genotypes (Lens culinaris Medik.). Int J Agric Crop Sci 3:1–5
Larson MM (1963) Initial root development of Ponderosa pine seedlings as related to germination date and size of seed. For Sci 9:456–460
Maynard Smith J (1982) Evolution and the theory of games. Cambridge University Press, Cambridge
Maynard Smith J, Price GR (1973) The logic of animal conflict. Nature 246:15–18
Osborne MJ (2004) An introduction to game theory. Oxford University Press, New York
Rees M (1996) Evolutionary ecology of seed dormancy and seed size. Philos Trans R Soc B 351:1299–1308
Rees M, Westoby M (1997) Game-theoretical evolution of seed mass in multi-species ecological models. Oikos 78:116–126
Simons AM, Johnston MO (2000) Variation in seed traits of Lobelia inflata (Campanulaceae): sources and fitness consequences. Am J Bot 87:124–132
Souza ML, Fagundes M (2014) Seed size as key factor in germination and seedling development of Copaifera langsdorffii (Fabaceae). Am J Plant Sci 5:2566–2573
Tíscar P, Lucas M (2010) Seed mass variation, germination time and seedling performance in a population of Pinus nigra subsp. salzamannii. For Syst 19:344–353
Vaughton G, Ramsey M (1998) Sources and consequences of seed mass variation in Banksia marginata (Proteaceae). J Ecol 86:563–573
Verdu M, Traveset A (2005) Early emergence enhances plant fitness: a physiologically controlled meta-analysis. Ecology 86:1385–1394
Acknowledgements
We would like to thank Troy Day, Tuomas Hytönen and three anonymous reviewers for helpful comments on an earlier draft of this article. This research was funded by the Academy of Finland.
Author information
Authors and Affiliations
Corresponding author
Appendix
Appendix
1.1 Proof of Proposition 3.5
Let \(R_0\) and r be twice continuously differentiable in the interior of \(\varOmega \), and let \(\omega _0\in \varOmega _0\cap \mathrm {int}\,\varOmega \) be such that \(\nabla r(\omega _0)\) and \(\nabla R_0(\omega _0)\) are both non-zero (if \(\nabla {r}(\omega _0)=0\) or \(\nabla {R_0}(\omega _0)=0\), then (3.9)–(3.11) are trivially true).
To prove (3.9), let \(\varepsilon >0\) be such that \(\omega _0+\varepsilon \,\nabla r(\omega _0)\in \varOmega \) and
Then, by the definition (3.8) of \(\varOmega _0\), in particular condition (3.5), it follows that
and hence \(\nabla r(\omega _0) \cdot \nabla \! R_0(\omega _0) \le 0\), which proves (3.9).
The proof of (3.10) and (3.11) involves the definition of a regular and twice continuously differential curve \(\omega _r:(0,1)\rightarrow \mathrm {int}\,\varOmega \) with a unit tangent vector \(\omega ^\prime _r(s):=d\omega _r(s)/ds\), \(||\omega ^\prime _r(s)||=1\), such that
Note that the image of the curve \(\omega _r\) lies on top of the level contour of r passing through \(\omega _0\). The existence of such curve is guaranteed by the twice continuously differentiability of r and the assumption that \(\nabla r(\omega _0)\) is not zero.
Differentiation of (8.4) with respect to s and evaluated at \(s_0\) gives
where \(\mathcal {H}:=d^2/d\omega ^2\) is the Hessian operator.
From the definition (3.8) of \(\varOmega _0\), in particular condition (3.5), it follows that \(\omega _0\) maximizes \(R_0\) on the boundary of the set \(\{\upsilon \in \varOmega :r(\upsilon ) \ge r(\omega _0)\}\). The boundary is the \(r(\omega _0)\)-level contour of the function r and, by construction, coincides with the image of the curve \(\omega _r\), at least in a neighborhood of \(\omega _0\). Thus, \(s_0\) locally maximizes \(R_0(\omega _r(s))\) on the interval (0, 1), and so
From (8.5) and (8.7) it can be seen that both \(\nabla r(\omega _0)\) and \(\nabla \!R_0(\omega _0)\) are orthogonal to \(\omega ^\prime _r(s_0)\). Since all three are vectors in the plane, it follows that \(\nabla r(\omega _0)\) and \(\nabla \!R_0(\omega _0)\) are parallel to one another, i.e., they are linear dependent. Hence, \(\mathrm {det}(\nabla r(\omega _0),\nabla \!R_0(\omega _0))=0\), which proves (3.10).
To prove (3.11), note from (3.9) and (3.10) that \(\nabla r(\omega _0)\) and \(\nabla \!R_0(\omega _0)\) are not just parallel to one another but also point in exactly opposite directions, and so
This can be used to eliminate \(\nabla \!R_0(\omega _0)\) from (8.8), which gives
Using (8.6) to subsequently eliminate \(\nabla r(\omega _0)\cdot \omega ^{\prime \prime }_r(s_0)\) from (8.10), we get
Without loss of generality we can orient the curve \(\omega _r\) such that
which by (8.9) is equivalent to
Using (8.12) to substitute the first three occurrences of \(\omega ^\prime _r(s_0)\) in (8.11), and using (8.13) to substitute the last \(\omega ^\prime _r(s_0)\), we get
By just writing out in terms of vector and matrix components, one finds that
Hence (8.14) is equivalent to (3.11).
1.2 On the geometric interpretation of Proposition 3.5
Here we show that condition (3.11) compares the curvatures of the level contours of the functions r and \(R_0\) at \(\omega _0\). To this end, recall that for any regular and twice continuously differentiable curve \(x:(0,1) \rightarrow \mathbb {R}^2\) with a unit tangent vector \(x^\prime (s):=dx(s)/ds\), \(||x^\prime (s)||=1\), the curvature is defined as \(k(s):=\det (x^\prime (s),x^{\prime \prime }(s))\) (e.g., Guggenheimer 1977). The curvature of \(\omega _r\) as defined in the proof of Proposition 3.5 is thus \(k_r(s):=\det (\omega ^\prime _r(s),\omega ^{\prime \prime }_r(s))\), which given the orientation in (8.12), is
Using (8.6) to eliminate \(\nabla r(\omega _0) \cdot \omega ^{\prime \prime }_r(s_0)\) from this expression, we get
Next we define the regular and twice continuously differential curve \(\omega _{R_0}:(0,1)\rightarrow \mathrm {int}\,\varOmega \) with a unit tangent vector \(\omega ^\prime _{R_0}(s):=d\omega _{R_0}(s)/ds\), \(||\omega ^\prime _{R_0}(s)||=1\), and such that
The image of \(\omega _{R_0}\) coincides with the level contour of \(R_0\) passing through \(\omega _0\), at least locally. The existence of the curve is again guaranteed by the twice continuously differentiability of \(R_0\) and the assumption that \(\nabla \!R_0(\omega _0)\) is not zero. Differentiation of (8.19) twice with respect to s and evaluated at \(s_0\) gives
We orient \(\omega _{R_0}\) in the same way as \(\omega _r\), so that in particular \(\omega ^\prime _{R_0}(s_0)=\omega ^\prime _r(s_0)\). By (8.13), the curvature \(k_{R_0}(s):=\det (\omega ^{\prime }_{R_0}(s),\omega ^{\prime \prime }_{R_0}(s))\) evaluated at \(s_0\) thus becomes
Using (8.20) to eliminate \(\nabla \!R_0(\omega _0) \cdot \omega ^{\prime \prime }_{R_0}(s_0)\) from this expression, we get
Using (8.17) and (8.22) to rewrite condition (8.11) in the proof of Proposition 3.5 in terms of curvatures, we get
In the proof of Proposition 3.5, expression (8.11)–(8.15), it can be seen that (3.11) is equivalent to (8.11), which now we have shown to be equivalent to (8.23), which that at \(s_0\) the curvature of \(\omega _r\) is less than the curvature of \(\omega _{R_0}\). Since the images of \(\omega _r\) and \(\omega _{R_0}\) locally coincide with the level contours of, respectively, r and \(R_0\), we can rephrase this in terms of the curvatures of the level contours as was done in Sect. 3.
1.3 Proof of Proposition 4.1
In terms of \(\lambda \), \(\mu \) and \(\nu \), the conditions (3.9) and (3.10) can be written as
from which we find (4.6) and (4.7).
1.4 Proof of Proposition 4.2
In terms of \(\lambda \), \(\mu \) and \(\nu \), the conditions (3.9) and (3.10) can be written as
from which we find (4.8) and (4.9).
1.5 Proof of Proposition 4.3
First, let \(R_0\) be given by (4.4). Then, the tangent vector (3.13) written out in terms of \(\lambda \) and \(\mu \) and \(\nu \) becomes
with
Given \(\lambda ^\prime (t)>0\), \(\mu ^\prime (t)>0\), \(\nu ^\prime <0\), \(\mu ^{\prime \prime }(m)\ge 0\) and \(\nu -\mu >\lambda \), we get the following estimates for A and B:
Next, let \(R_0\) be given by (4.5). Then, the tangent vector (3.13) written out in terms of \(\lambda \) and \(\mu \) and \(\nu \) becomes
with
Given \(\lambda ^\prime (t)>0\), \(\mu ^\prime (t)>0\), \(\nu ^\prime <0\), \(\mu ^{\prime \prime }(m)\ge 0\) and \(\nu -\mu >\lambda \), we get the following estimates for A and B:
Thus, for \(R_0\) be given by (4.4) or (4.5), A and B are both strictly positive and so the vector components in (8.28) have opposite signs, and hence the tangent to \(\varOmega _0\) has a negative slope.
Rights and permissions
About this article
Cite this article
Geritz, S., Gyllenberg, M. & Toivonen, J. Adaptive correlations between seed size and germination time. J. Math. Biol. 77, 1943–1968 (2018). https://doi.org/10.1007/s00285-018-1232-z
Received:
Revised:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00285-018-1232-z