1st Edition

Analysis of Distributional Data

Edited By Paula Brito, Sonia Dias Copyright 2022
    404 Pages 30 Color & 80 B/W Illustrations
    by Chapman & Hall

    404 Pages 30 Color & 80 B/W Illustrations
    by Chapman & Hall

    404 Pages 30 Color & 80 B/W Illustrations
    by Chapman & Hall

    In a time when increasingly larger and complex data collections are being produced, it is clear that new and adaptive forms of data representation and analysis have to be conceived and implemented. Distributional data, i.e., data where a distribution rather than a single value is recorded for each descriptor, on each unit, come into this framework. Distributional data may result from the aggregation of large amounts of open/collected/generated data, or it may be directly available in a structured or unstructured form, describing the variability of some features. This book provides models and methods for the representation, analysis, interpretation, and organization of distributional data, taking into account its specific nature, and not relying on a reduction to single values, to be conform to classical paradigms.

    Conceived as an edited book, gathering contributions from multiple authors, the book presents alternative representations and analysis’ methods for distributional data of different types, and in particular,
    -Uni- and bi-variate descriptive statistics for distributional data
    -Clustering and classification methodologies
    -Methods for the representation in low-dimensional spaces
    -Regression models and forecasting approaches for distribution-valued variables

    Furthermore, the different chapters
    -Feature applications to show how the proposed methods work in practice, and how results are to be interpreted,
    -Often provide information about available software.

    The methodologies presented in this book constitute cutting-edge developments for stakeholders from all domains who produce and analyse large amounts of complex data, to be analysed in the form of distributions. The book is hence of interest for companies operating not only in the area of data analytics, but also on logistics, energy and finance. It also concerns national statistical institutes and other institutions at European and international level, where microdata is aggregated to preserve confidentiality and allow for analysis at the appropriate regional level. Academics will find in the analysis of distributional data a challenging up-to-date field of research.

    I Data Representation and Exploratory Analysis
    1. Fundamental Concepts about Distributional Data
    Sónia Dias and Paula Brito
    2. Descriptive Statistics based on Frequency Distributions
    Sónia Dias and Paula Brito
    3. Descriptive Statistics for Numeric Distributional Data
    Antonio Irpino and Rosanna Verde
    4. The Quantile Methods to Analyze Distributional Data
    Manabu Ichino and Paula Brito

    II Clustering and Classification
    5. Partitive and Hierarchical Clustering of Distributional Data using the Wasserstein Distance
    Rosanna Verde and Antonio Irpino
    6. Divisive Clustering of Histogram Data
    Marie Chavent and Paula Brito
    7. Clustering of Modal Valued Data
    Vladimir Batagelj, Simona Korenjak-Černe, and Nataša Kejžar
    8. Mixture Models for Distributional Data
    Richard Emilion
    9. Classification of Continuous Distributional Data Using the Logratio Approach
    Ivana Pavlu, Peter Filzmoser, Alessandra Menafoglio, and Karel Hron

    III Dimension Reduction
    10. Principal Component Analysis of Distributional Data
    Sun Makosso-Kallyth and Edwin Diday
    11. Principal Component Analysis of Numeric Distributional Data
    Meiling Chen and Huiwen Wang
    12. Multidimensional Scaling of Distributional Data
    Yoshikazu Terada and Patrick J.F. Groenen
    IV Regression and Forecasting
    13. Regression Analysis with the Distribution and Symmetric Distribution Model
    Sónia Dias and Paula Brito
    14. Regression Analysis of Distributional Data Based on a Two-Component Model
    Antonio Irpino and Rosanna Verde
    15. Forecasting Distributional Time Series
    Javier Arroyo

    Biography

    Paula Brito is a Professor at the Faculty of Economics of the University of Porto, and a member of the Artificial Intelligence and Decision Support Research Group (LIAAD) of INESC TEC, Portugal. She holds a doctorate degree in Applied Mathematics from the University Paris Dauphine, and an Habilitation in Applied Mathematics from the University of Porto. Her current research focuses on the analysis of multidimensional complex data, known as symbolic data, for which she develops statistical approaches and multivariate analysis methodologies. In this context, she has been involved in two European research projects. Paula Brito has been president of the International Association for Statistical Computing (IASC-ISI) in 2013–2015, and of the Portuguese Association for Classification and Data Analysis for the term 2021-2023. She has been invited speaker at several international conferences, and is a regularly member of international program committees. Paula Brito has been chair of COMPSTAT 2008 and will co-chair the IFCS 2022 conference.

    Sónia Dias is a Professor in the area of Mathematics at the School of Technology and Management of the Polytechnic Institute of Viana do Castelo, and a member of the Laboratory in Artificial Intelligence and Decision Support (LIAAD) of INESC TEC, Portugal. She holds a PhD in Applied Mathematics from the University of Porto (2014). Her main scientific areas of research are Data Analysis, Symbolic Data Analysis (analysis of multidimensional complex data) and Statistical/Mathematical Applications. Under this context, she has participated in several conferences and published articles in international journals and proceedings. She was a member of the organizing committee of the international Symbolic Data Analysis Workshop - SDA2018 and is a member of the organizing committee of the IFCS 2022 conference.

    " . . . this book will interest those who would like to expand their understanding regarding distributional data and its application in data science and to have a solid mathematical background on the different concepts under symbolic data analysis. This book also provides illustrative examples based on R package and open data which can contribute to the understanding on how to apply these methods to distributional data. This book can also benefit academic researchers who would like apply these types of approaches in their fields."
    ~Sébastien Bailly, ISCB Book Reviews