1st Edition
Textual and Contextual Data Analysis A Multivariate Statistical Approach using R
Preface 1. Consideration of Additional Information Called Contextual Data 2. SVD-Based Methods in Textual Analysis: An Overview 3. Clustering Methods 4. Constrained Clustering Defined by the Contextual Data into the Analysis 5. Textual Data Visualization 6. Textual Data and Contextual Data Playing a Symmetric Role 7. Correspondence Analysis on a Generalized Aggregate Lexical Table 8. Structure and Organization of a Text 9. Extension of Multivariate Statistical Methods to Multilingual Corpus Bibliography Index List of Figures List of Tables
Biography
Dr. Mónica Bécue-Bertaut taught statistics and data science at the Universitat Politènica de Catalunya and offered numerous guest lectures on textual data science in different countries. She has published several books and chapters on this topic, and she has helped design software related to textual data science, including SPAD.T and the R package Xplortext. She is an elected fellow of the International Statistical Institute and a Chevalier des Palmes Académiques, a distinction bestowed by the French government.
Dr. Ramón Alvarez-Esteban is an associate professor at the University of León (Spain), where he teaches multivariate data analysis and R. His research interests include textual data analysis, climate change models, and integrated statistical and geospatial techniques. He is an author and the maintainer of the Xplortext R package (Statistical Analysis of Textual Data), which has been available on the CRAN website since 2017.






