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Optimization in Artificial Intelligence and Data Sciences

ODS, First Hybrid Conference, Rome, Italy, September 14-17, 2021

  • Conference proceedings
  • © 2022

Access provided by Autonomous University of Puebla

Overview

  • Contributes to ameliorating methodological methods for both linear, combinatorial and nonlinear optimization problems
  • Provides new optimization solutions on a number of healthcare problems related to the pandemic situation
  • Gives an edge on optimization of real delivery problems in logistic systems also with the use of drones

Part of the book series: AIRO Springer Series (AIROSS, volume 8)

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About this book

This book is addressed to researchers in operations research, data science and artificial intelligence. It collects selected contributions from the first hybrid “Optimization and Decision Science - ODS2021” international conference on the theme Optimization and Artificial Intelligence and Data Sciences, which was held in Rome 14-17 September 2021 and organized by AIRO, the Italian Operations Research Society and the Department of Statistical Sciences of Sapienza University of Rome.

The book offers new and original contributions on different methodological optimization topics, from Support Vector Machines to Game Theory Network Models, from Mathematical Programming to Heuristic Algorithms, and Optimization Methods for a number of emerging problems from Truck and Drone delivery to Risk Assessment, from Power Networks Design to Portfolio Optimization. The articles in the book can give a significant edge to the general themes of sustainability and pollution reduction, distributive logistics, healthcare management in pandemic scenarios and clinical trials, distributed computing, scheduling, and many others.

For these reasons, the book is aimed not only at researchers in the Operations Research community but also for practitioners facing decision-making problems in these areas and to students and researchers from other disciplines, including Artificial Intelligence, Computer Sciences, Finance, Mathematics, and Engineering.

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Keywords

Table of contents (23 papers)

Editors and Affiliations

  • Department of Statistical Sciences, Sapienza University of Rome, Rome, Italy

    Lavinia Amorosi, Paolo Dell’Olmo, Isabella Lari

About the editors

Lavinia Amorosi is Assistant Professor in Operations Research at the Department of Statistical Sciences of Sapienza, University of Rome. She received the Ph. in Operations Research from Sapienza University of Rome in 2018. She has been visiting Ph. at Lancaster University Management School, Lancaster UK, in 2016 and at the Institute of Mathematics of the University of Seville, Spain, in 2017. Her research area is mainly combinatorial optimization, with particular interest in network optimization and multiobjective programming and data science, with applications to real network problems in telecommunication and transportation areas where she published articles in international journals. She is a founder of the young chapter of the Italian Operations Research Society (AIROYoung), of which she is an outgoing coordinator. She is one of the awarded researchers of the YoungWomen4OR EURO program in 2020.

Paolo Dell’Olmo is a Full Professor in Operations Research at the Department of Statistical Sciences of Sapienza University of Rome. Formerly Department Head, Coordinator of the PhD program in Operations Research, Director of the Master Program in Statistics for the Management of Information Systems; Coordinator of Italian Inter-University Center for Operations Research; Member of the Scientific Committee of Fondazione Roma Sapienza); Member of Board of Directors of Fondazione Sapienza. He is currently Director of the Master Program in Data Intelligence and Strategic Decisions. His research interests are mainly in combinatorial optimization, which is also applied to real-life problems. He has been a scientific coordinator of a number of national research projects, and he’s author of several books and approximately 80 papers published in international journals.

Isabella Lari obtained a PhD degree in Operations Research from the University of Rome La Sapienza in 1994. She is a researcher at the Department of Statistics of the University of Rome La Sapienza. Dr. Lari is teaching Optimization Mathematical Methods and, in the past, has held courses of Elements of Computer Science, Data Structure and Algorithms, Simulation Techniques. Her research activity is mainly focused on combinatorial optimization with particular attention to location and partitioning problems on graphs. She has published in several major journals in the field.

Bibliographic Information

  • Book Title: Optimization in Artificial Intelligence and Data Sciences

  • Book Subtitle: ODS, First Hybrid Conference, Rome, Italy, September 14-17, 2021

  • Editors: Lavinia Amorosi, Paolo Dell’Olmo, Isabella Lari

  • Series Title: AIRO Springer Series

  • DOI: https://doi.org/10.1007/978-3-030-95380-5

  • Publisher: Springer Cham

  • eBook Packages: Mathematics and Statistics, Mathematics and Statistics (R0)

  • Copyright Information: The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerland AG 2022

  • Hardcover ISBN: 978-3-030-95379-9Published: 21 May 2022

  • Softcover ISBN: 978-3-030-95382-9Published: 21 May 2023

  • eBook ISBN: 978-3-030-95380-5Published: 20 May 2022

  • Series ISSN: 2523-7047

  • Series E-ISSN: 2523-7055

  • Edition Number: 1

  • Number of Pages: XIII, 267

  • Number of Illustrations: 17 b/w illustrations, 24 illustrations in colour

  • Topics: Optimization, Operations Research, Management Science

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