Directional and Multivariate Statistics: A Volume in Honour of Ashis SenGupta

· · ·
· Springer Nature
Ebook
474
Pages
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About this ebook

This book contains select chapters on a range of topics in directional statistics, multivariate statistical inference, financial statistics, statistical machine learning and reliability inference. At the 43rd Annual Convention of the Indian Society for Probability and Statistics (ISPS) held in Prayagraj (formerly Allahabad), Uttar Pradesh, India, from 6–8 February 2024, attribute was paid to Prof. Ashis SenGupta on the occasion of his 70th birthday. He has pioneered research on directional statistics in the modern era in India and enhanced it worldwide and contributed significantly to the advancement of the following topics:
  • Highly flexible distributions on manifolds
  • Statistical machine learning in data science
  • Big data on manifolds
  • Optimal multiparameter, multivariate statistical inference
  • Reliability inference and stress-dependent-strength models
  • Directional statistics for highly volatile financial models
  • Cylindrical, spherical and toroidal regression analysis
  • Innovative applications of emerging real-life directional data

About the author

Somesh Kumar is Professor in the Department of Mathematics, Indian Institute of Technology (IIT) Kharagpur, India. He did his M.Sc. in statistics followed by Ph.D. at the IIT Kanpur, respectively, in 1984 and 1990. Before joining the IIT Kharagpur in 1994, he taught at the University of Jammu, India, for five-and-a-half years. He has published more than 130 research papers in refereed international journals and book chapters and supervised 15 Ph.D. scholars. His major research interests are in statistical decision theory and inference, in particular on estimation after selection, quantile estimation, estimation of parameters under constraints, two-stage and sequential estimation, problem of classification, inference on directional distributions, limit theorems for dependent models, estimating measures of reliability and entropy, stochastic ordering and bootstrap tests. His research has found applications in diverse fields like agriculture, medical, mechanical, electronic, environmental and ecological studies.

Barry C. Arnold is distinguished Professor Emeritus in the Department of Statistics, University of California, Riverside, USA. He received his Ph.D. in statistics from Stanford University, USA, in 1965. Author of 14 books and more than 275 research papers in reputed peer-reviewed journals and contributed volumes, he has guided 17 Ph.D. scholars and has been on the editorial boards of several journals. His research interests include estimation theory, probability, stochastic processes, mathematical learning models, biological models, characterizations, income distributions, order statistics, inequality measurement, record values, conditionally specified distributions and Bayesian inference.

Kunio Shimizu is Project Professor in the Center for Training Professors in Statistics at The Institute of Statistical Mathematics, Tokyo, Japan. He is also Professor Emeritus in the Faculty of Science and Technology at Keio University, Yokohama, Japan. He has worked extensively in the field of directional distributions, modeling of distributions, classification problems and multivariate methods. In 2001, he was awarded the Jacob Wolfowitz prize by the American Journal of Mathematical and Management Sciences, and in 2017, JSS prize of the Japan Statistical Society.

Arnab Kumar Laha is Professor of Production and Quantitative Methods at the Indian Institute of Management Ahmedabad, Gujarat. He takes a keen interest in understanding how analytics, machine learning and artificial intelligence can be leveraged to solve complex problems in business and society. He has published his research in national and international journals of repute, authored a popular book on analytics, and an edited book volume published by Springer. He was named one of the “20 Most Prominent Analytics and Data Science Academicians in India” by the Analytics India Magazine, in 2018.

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