Abstract
The basic premise of dual scaling/correspondence analysis lies in the simultaneous or symmetric analysis of rows and columns of the data matrix, a task that resembles the analysis of principal component analysis of both the person-to-person correlation matrix and the item-by-item correlation matrix together. Our main quest: whether or not we can represent both analyses in the same Euclidean space. The traditional graphical methods are very problematic: symmetric display or French plot suffers from the discrepancy between the row space and the column space; non-symmetric display involves the projection of data onto standardized space, which does not contain coordinate information in the data; a variety of biplots, of which criticisms we rarely see, involve operations that do not typically maintain row and column measurements on the equal metrics, or if they do they are not the coordinates of the data. Thus, none of these provides a precise description of complex information in data, hence failing in the basic objective of symmetric data analysis. This paper will identify logical problems of the current practice and offers a justifiable alternative to joint graphical display. “Graphing is believing” may in reality remain to be a wishful thinking.
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1 Introduction
This paper deals with graphical display of quantification theory, where the main interest lies in the joint analysis of rows and columns of the data matrix. This aspect is reflected by the word ‘dual’ of Canadian dual scaling (Nishisato 1980) used to treat rows and columns of a data matrix on the equal footing, that is, symmetric analysis of the data matrix. The technique is referred to by many other names such as British simultaneous linear regressions (Hirschfeld 1935), the American method of reciprocal averages (Horst 1935), Hayashi’s Japanese theory of quantification (1950), American principal component analysis of categorical data (Torgerson 1958), American optimal scaling (Bock 1960), French ‘analyse des correspondances’ (Escofier-Cordier 1969), and Dutch homogeneity analysis (De Leeuw 1973). See many other names in Nishisato (2007).
In the traditional multivariate analysis, we often use the least-squares procedure, which means projection of, for example, data onto the model space, meaning a one-directional analysis as opposed to the two-way symmetric analysis of equal norms. Graphical display of quantification results must be such that the norm of the row variables should be equal to the norm of the column variables. This is a difficult task for joint graphical display of quantification theory, and in the past a number of methods have been proposed, none of which, however, is satisfactory. The current paper starts with some basic premises of quantification, and then discusses how the perennial problem of joint graphical display should be dealt with. We start with some relevant basic points.
2 Fundamental One: Orthogonal Coordinates fornVariables
When we wish to show a graph of two sets of scores (e.g., Mathematics test and language test), it is a widely used practice to introduce the horizontal axis for the mathematics test and the vertical axis for the language test as if the two variates were orthogonal to each other. This is definitely wrong, but this practice has been used widely for many years. When we have a number of variables, say n, where n > 1, the first task for graphical display is to introduce an orthogonal coordinate system to accommodate these variables. There are an infinite number of such systems, and the most widely used choice, out of them, is to adopt principal coordinates, through principal component analysis: Given the subject-by-test data matrix, F, we calculate the test-by-test correlation matrix R, which is then subjected to the eigenvalue decomposition, that is, R = X΄ΔX, where X is the subject-by-test matrix of coordinates and Δ is the diagonal matrix of eigenvalues. The number of non-zero elements of Δ is the required dimensionality of the space for multidimensional coordinates of n variables.
3 Fundamental Two: Coordinates of Framework and Variables
In this principal axis decomposition of data matrix F, X is referred to as the matrix of standard coordinates and Δ 1/2 X is called the matrix of principal coordinates. It is crucial for graphical display to distinguish between these two coordinates. Nishisato (1996) explained the important difference between them using a simple example as follows: Consider principal component analysis of standardized variables, and suppose that the data are two-dimensional, then plotting principal coordinates of variables results in a perfect circle with the diameter 1, where all data points lie; suppose that the data are perfectly three-dimensional, then plotting the principal coordinates of the data reveals that all data points lie at a distance of 1 from the origin on the three-dimensional sphere, or on the perfect ball. If we plot standard coordinates, instead of principal coordinates, however, the two-dimensional data will show, not a perfect circle, but typically an elongated circle. If the first eigenvalue is comparatively larger than the second one, the graph will be elongated toward the second dimension. In other words, standard coordinates do not describe the structure of the data, but a function of the distribution of data under the condition that the sum of squares on each dimension is constant, thus the name standard (i.e.,the fewer the responses the larger the standard coordinates). The conclusion here is that the coordinates of variables in multidimensional space are given by principal coordinates.
4 Fundamental Three: Dual Relations
Quantification theory can be depicted as singular value decomposition of data matrix F, that is, YΛX′, where Y and X are standard coordinates of rows and columns, respectively, and Λ is the diagonal matrix of singular values. Because of the symmetry of this analysis, Nishisato (1980) called it dual scaling, based on the dual relations:
where ρ k is the k-th singular value, f ij is the element of the i-th row and the j-th column, f i. and f .j are respectively the sums of the i-th row and that of the j-th column of data matrix F. In other words, for each component k, the mean of rows i of F, weighted by column weights x j is equal to the weight for row i times the singular value, and the mean of column j, weighted by row weights y i is equal to the weight for column j times the singular value. This mutual reciprocal averaging relation holds for each component. Although ρ k is the singular value of data matrix F, it is also (1) Hirschfeld’s simultaneous regression coefficient (1935), (2) Guttman’s maximal row-column correlation (1941) and (3) Nishisato’s (1980) projection operator from row space to column space or vice versa.
5 Fundamental Four: Discrepancy Between Row Space and Column Space
For a particular component, the dual relation shows that the mean of the row i, weighted by column weights x j , is equal to the weight for row i times the singular value. In other words, the singular value is the projection operator of the row space onto the column space, or vice versa. Thus, it is possible to calculate the angle of discrepancy, θ k , between the row space and the column space for component k by the following formula (Nishisato & Clavel 2008):
From this we know that only when the singular value is one the variables associated with rows and columns of the data matrix span the same space. In this regards, we should remember the famous warning by Lebart, Morineau and Tabard (1977) that one cannot calculate the exact distance between a row variable and a column variable from the symmetric scaling.
6 Lessons From Analysis of Contingency Table and Response-Pattern Table
Using an example from Nishisato (1980), some important aspects of joint graphical display can be illustrated to clarify the current controversies of joint graphical display.
Consider the following \( 2\times 3 \) contingency table, C, obtained by asking two multiple-choice questions:
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Q1: Do you smoke? (yes, no)
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Q2: Do you prefer coffee to tea? (yes, not always, no)
Suppose we obtained the following data indicated by C, which is the ‘options of Q.1-by options of Q.2,’ that is, a \( 2\times 3 \) table of joint frequencies. Nishisato (1980) has shown that the same data can be represented also as the traditional response-pattern table F a , which is the ‘subjects-by-options of two items,’ that is, \( 14\times 5 \) incidence table. He has also shown that this large table can be transformed into a condensed response-pattern table F b by creating a table of distinct patterns with frequencies. In our example, the data in the three data formats are as follows:
As Nishisato (1980) has shown, the two response-pattern formats yield identical quantification results. Therefore, for brevity we will use F.
Suppose that two items have n and m options, respectively, and there are N respondents. Then, assuming that N is much larger than the sum of the response categories, the total number of components from the n × m contingency table, K(C), is equal to the smaller of n and m minus 1, that is,
In the current example, min(2,3)−1 = 2−1 = 1. Assuming that N is much larger than n + m, the total number of components from the response-pattern table, K(F), is equal to the total number of categories of two items minus 2, that is,
In the current example, K(F) = 2 + 3−2 = 3.
According to the Young-Householder theorem (Young & Householder 1938), the variates within columns (or, rows) of the data matrix can be mapped in the same Euclidean space. Thus, the coordinates of those five columns of F can be mapped in the same Euclidean space. In contrast, we have already shown that the two rows and the three columns of C do not belong to the same space. From this comparison, we can draw the conclusion that the five options of the two items require three-dimensional space to be plotted together. Our numerical example (Table 1) yields the following coordinates on respective dimensions. Notice that the standard coordinates associated with C are exactly the same as the standard coordinates of the corresponding first component of F:
Several years after Nishisato’s book was published, Carroll, Green and Schaffer (1986) wrote a paper on the method called the CGS scaling, in which they maintained that the space discrepancy between row and column space of the contingency table could be solved by representing the rows and the columns of the contingency table into the same columns of the response-pattern table—this is exactly what was shown above. However, the CGS scaling was severely criticized by Greenacre (1989) as false, and his criticism resulted in the downfall of the CGS scaling. What these investigators completely missed was the point that the weights for the rows and those for the columns of the contingency table require more dimensions if they are represented in the same rows of the response-pattern table. In the above example, one needs three dimensions. In the above example, the singular value of the component associated with the contingency table is 0.4590, thus the discrepancy angle between the row axis and the column axis is 62.68°, leading to the conclusion that we need more than one dimension for the data. The idea of the CGS scaling should have been presented under the condition that the space dimensionality must be at least doubled from that of the contingency table.
7 Dimensionality of Total Space
In the above comparison of the contingency format and the response-pattern format, we concluded that those response options of the two items can be mapped in the same space, provided that the dimensionality of the space is expanded. There are two distinct views on how many dimension are needed. The first one is Nishisato’s view of doubled multidimensional space (2012). His idea of ‘doubling’ comes from the consideration that for each component we must introduce two axes with the angle of \( { \cos}^{-1}{\rho}_k \). His view looks reasonable, but we need another view on this: Based on the comparison between quantification of the contingency table and that of the corresponding response-pattern table, we need to double the dimensionality or more than double the dimensionality. This view stems from the following fact:
\( K\left(\mathbf{F}\right)=2\times K\left(\mathbf{C}\right) \), when n = m and
\( K\left(\mathbf{F}\right)>2K\left(\mathbf{C}\right) \), when n ≠ m
In other words, only when the number of options of Item 1 is equal to that of Item2, we need to double the dimensionality. Otherwise, as was the case of the above numerical example, we need more than double the dimensionality of the joint space.
8 From Joint Graphical Display to Cluster Analysis ofTotalSpace
Nishisato (1997) wrote a paper on “Graphing is believing” in support of graphical display. With the current revelation, however, it seems generally impossible to summarize data in multidimensional space, for we are limited to grasp or understand only two- or three-dimensional graphs and the total space for the joint graphical display with principal coordinates is almost always greater than two or three. At this juncture, Nishisato and Clavel (2010) proposed total information analysis or comprehensive dual scaling: Extract all components from the data, calculate the within-row distance matrix, the between row-column distance matrix and the within-column distance matrix; subject this super-distance matrix to cluster analysis, to identify clusters in the total space as defined here. In this way, we do not have to concentrate only on major configurations, but can also look at other rare combinations of variables. (see Nishisato (2014) for a numerical example.) Total information analysis has not widely been applied to data analysis yet, but is definitely a logical and reasonable alternative to the traditional analysis via multidimensional joint graphical display.
9 Concluding Remarks
Historically, French correspondence analysis placed a major emphasis on joint graphical display. The current paper has identified a number of logical problems associated with joint graphical display, be it symmetric French plot, or non-symmetric plot, or biplot. A number of those logical problems prompted Nishisato and Clavel (2010) to propose total information analysis (TIA), which as explained in the current paper is free from any logical problems. It is hoped that through many applications of TIA to data we will learn further how practical and useful TIA is as an alternative to the traditional multidimensional joint graphical approach to data analysis.
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Nishisato, S. (2016). Multidimensional Joint Graphical Display of Symmetric Analysis: Back to the Fundamentals. In: van der Ark, L., Bolt, D., Wang, WC., Douglas, J., Wiberg, M. (eds) Quantitative Psychology Research. Springer Proceedings in Mathematics & Statistics, vol 167. Springer, Cham. https://doi.org/10.1007/978-3-319-38759-8_22
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