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E-raamat: Data Analysis and Rationality in a Complex World

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This volume presents the latest advances in statistics and data science, including theoretical, methodological and computational developments and practical applications related to classification and clustering, data gathering, exploratory and multivariate data analysis, statistical modeling, and knowledge discovery and seeking. It includes contributions on analyzing and interpreting large, complex and aggregated datasets, and highlights numerous applications in economics, finance, computer science, political science and education. It gathers a selection of peer-reviewed contributions presented at the 16th Conference of the International Federation of Classification Societies (IFCS 2019), which was organized by the Greek Society of Data Analysis and held in Thessaloniki, Greece, on August 26-29, 2019.

PerioClust: A Simple Hierarchical Agglomerative Clustering Approach Including Constraints
1(8)
Lise Bellanger
Arthur Coulon
Philippe Husi
What Was Really the Case? Party Competition in Europe at the Occasion of the 2019 European Parliament Elections
9(8)
Theodore Chadjipadelis
Eftichia Teperoglou
A Fast Electric Vehicle Planner Using Clustering
17(10)
Jael Champagne Gareau
Eric Beaudry
Vladimir Makarenkov
A Generalized Coefficient of Determination for Mixtures of Regressions
27(10)
Roberto Di Mari
Salvatore Ingrassia
Antonio Punzo
Distance Measurement When Fuzzy Numbers Are Used. Survey of Selected Problems and Procedures
37(10)
Jozef Dziechciarz
Marta Dziechciarz-Duda
Performance Measures in Discrete Supervised Classification
47(10)
Ana Sousa Ferreira
Anabela Marques
Using EVT to Assess Risk on Energy Market
57(8)
Alicja Ganczarek-Gamrot
Dominik Krezolek
Grazyna Trzpiot
Measuring and Testing Mutual Dependence for Functional Dat
65(10)
Tomasz Gorecki
Miroslaw Krzysko
Waldemar Wolynski
Single Imputation Via Chunk-Wise PC
75(8)
Alfonso Iodice D'Enza
Francesco Palumbo
Angelos Markos
Clustering Mixed-Type Data: A Benchmark Study on KAMILA and K-Prototypes
83(10)
Jarrett Jimeno
Madhumita Roy
Cristina Tortora
Exploring Social Attitudes Toward the Green Infrastructure Plan of the Drama City in Greece
93(10)
Vassiliki Kazana
Angelos Kazakhs
Dimitrios Raptis
Efthimia Chrisanthidou
Stella Kazakh
Nefeli Zagourgini
Spatial Perception for Structured and Unstructured Data In topological Data Analysis
103(10)
Yoshitake Kitanishi
Fumio Ishioka
Masaya Iizuka
Koji Kurihara
Text, Content and Data Analysis of Journal Articles: The Field of International Relations
113(8)
Nikos Koutsoupias
Kyriakos Mikelis
Qua utile Measures of Extreme Risk on Metals Market
121(10)
Dominik Krezolek
Grazyna Trzpiot
Evaluation of Text Clustering Methods and Their Dataspace Embeddings: An Exploration
131(10)
Alain Lelu
Martine Cadot
Specification of Basis Spacing for Process Convolution Gaussian Process Models
141(8)
Waley W. J. Liang
Herbert K. H. Lee
Estimation of Classification Rules From Partially Classified Dat
149(10)
Geoffrey McLachlan
Daniel Ahfock
Correspondence Analysis and Kriging: Projection of Quantitative Information on the Factorial Maps
159(8)
George Menexes
Thomas Koutsos
Intertemporal Exploratory Analysis of E-Commerce From Greek Households from Official Statistics Dat
167(8)
Stratos Moschidis
Athanasios Thanopoulos
Benchmarking in Cluster Analysis: A Study on Spectral Clustering, DBSCAN, and K-Means
175(12)
Nivedha Murugesan
Irene Cho
Cristina Tortora
Detection of Topics and Time Series Variation in Consumer Web Communication Dat
187(10)
Atsuho Nakayama
Classification Through Graphical Models: Evidences From the EU-SILC Dat
197(8)
Federica Nicolussi
Agnese Maria Di Brisco
Manuela Cazzaro
A Simulation Study for the Identification of Missing Data Mechanisms Using Visualisation
205(10)
Johane Nienkemper-Swanepoel
Niel Le Roux
Sugnet Gardner-Lubbe
Triplet Clustering of One-Mode Two-Way Proximities
215(10)
Akinori Okada
Satoru Yokoyama
First-Time Voters in Greece: Views and Attitudes of Youth on Europe and Democracy
225(8)
Georgia Panagiotidou
Theodore Chadjipadelis
Comparison of Hierarchical Clustering Methods for Binary Data From SSR and ISSR Molecular Markers
233(10)
Emmanouil D. Pratsinakis
Lefkothea Karapetsi
Symela Ntoanidou
Angelos Markos
Panagiotis Madesis
Ilias Eleftherohorinos
George Menexes
One-Way Repeated Measures ANOVA for Functional Dat
243(10)
Lukasz Smaga
Flexible Clustering
253(8)
Andrzej Sokolowski
Malgorzata Markowska
Classification of Entrepreneurial Regimes: A Symbolic Polygonal Clustering Approach
261(12)
Andrej Srakar
Marilena Vecco
Multidimensional Factor and Cluster Analysis Versus Embedding-Based Learning for Personalized Supermarket Offer Recommendations
273(10)
George Stalidis
Theodosios Siomos
Pantelis I. Kaplanoglou
Alkiviadis Katsalis
Iphigenia Karaveli
Marina Delianidi
Konstantinos Diamantaras
Motivation for Participating in the Sharing Economy: The Case of Hungary
283(8)
Roland Szilagyi
Levente Lengyel
Benchmarking Minimax Linkage in Hierarchical Clustering
291(10)
Xiao Hui Tai
Kayla Frisoli
Clustering Binary Data by Application of Combinatorial Optimization Heuristics
301(10)
Javier Trejos-Zelaya
Luis Eduardo Amaya-Briceno
Alejandra Jimenez-Romero
Alex Murillo-Fernandez
Eduardo Piza-Volio
Mario Villalobos-Arias
Classifying Users Through Keystroke Dynamics
311(10)
Ioannis Tsimperidis
Georgios Peikos
Avi Arampatzis
Technological Innovation and the Critical Raw Material Stock
321(10)
Beatrix Varga
Kitti Fodor
Redundancy Analysis for Binary Data Based on Logistic Responses
331(10)
Jose L. Vicente-Villardon
Laura Vicente-Gonzalez
Predictive Power of School Motivation Clusters in Secondary Education
341
Matthijs J. Warrens
W. Miro Ebert
Theodore Chadjipadelis is a Full Professor of Applied Statistics at the School of Political Sciences at the Aristotle University of Thessaloniki, Greece and former Head of the Department from 2006 to 2009 and from 2013 to 2016. His main research interests are in the field of applied statistics, statistics education, electoral and political behaviour, urban and regional planning, and e-governance. He coordinates the Greek section of the C.C.S. (Comparative Candidates Survey) and the C.S.E.S. (Comparative Study of Electoral Systems) programmes. He has published more than 100 papers in international journals, encyclopedias, conference proceedings and edited books.

Berthold Lausen is a Full Professor of Data Science and Head of the Department of Mathematical Sciences at the University of Essex, Colchester, UK, former president of the International Federation of Classification Societies (IFCS) from 2018 to 2019, former president of the Data Science Society (GfKl) from2013 to 2019 and founding vice president of the European Association for Data Science (EuADS) from 2015 to 2018. Since 2014 he has lead on the introduction and development of data science education at the University of Essex. His research interests are in the field of artificial intelligence, biostatistics, classification, clinical research, data science and machine learning. He has published more than 100 papers in international journals, conference proceedings and edited books.



Angelos Markos is an Associate Professor of Data Analysis in the Social Sciences at the School of Education at the Democritus University of Thrace, Greece. He is a Board Member of the Greek Society of Data Analysis since 2009. His research interests are in the field of multivariate data analysis, dimension reduction and clustering, particularly correspondence analysis and related methods. He has published more than 50 papers in international journals, encyclopedias, conference proceedings andedited books.

Tae Rim Lee is an Honorary Professor of the Department of Data Science & Statistics, and former Dean of the College of Natural Science at the KNOU in Seoul. She is a biostatistician and her main research interests include tree-based classification model with CART, FACT, NN, kernel discrimination, deep learning for HCC patients, survival tree for OSCC. She was the president of KOSHIS (2009-2011) and KCS (2008-2016), council member of IFCS (2008-now), treasurer (2002-2004), former vice president of KSS (2014-2015), the vice president of IASE under ISI (2011-2013). She was elected as an Executive Board Director of IBS (2015-2021) and Organizing Committee Member of International Prize in Statistical Foundation (2018-now). 



Angela Montanari is a Full Professor of Statistics and Head of the Department of Statistical Sciences at the University of Bologna, Italy, the president of the International Federation of Classification Societies (IFCS) from 2020 to 2021, former president of the Classification Group of the Italian Statistical Society (CLADAG) from 2007 to 2009. Her research interests are in the field of supervised and unsupervised classification, dimension reduction, data science and machine learning. She has published more than 100 papers in international journals, conference proceedings and edited books.



Rebecca Nugent is the Stephen E. and Joyce Fienberg Professor of Statistics & Data Science, the Associate Department Head and Co-Director of Undergraduate Studies for the Statistics & Data Science Department at the Carnegie Mellon University in Pittsburgh. She is the President-Elect of the International Federation of Classification Societies (2020-2021) and the former President of the Classification Society (of North America) from 2012-2014.  She has won several national and university teaching awards including the American Statistical Association Waller Award for Innovation in Statistics Education and serves as one of the co-editors of the Springer Texts in Statistics.  She recently served on the National Academy of Sciences study on Envisioning the Data Science Discipline:  The Undergraduate Perspective and is the co-chair of the 2020 NAS study Improving Defense Acquisition Workforce Capability in Data Use.  She has worked extensively in clustering and classification methodology with an emphasis on high-dimensional, big data problems and record linkage applications.  Her current research focus is the development and deployment of low-barrier data analysis platforms that allow for adaptive instruction and the study of data science as a science.