
Advances in Data Science
symbolic, complex, and network data
$420.80
- Hardcover
258 pages
- Release Date
21 February 2020
Summary
Data science unifies statistics, data analysis and machine learning to achieve a better understanding of the masses of data which are produced today, and to improve prediction. Special kinds of data (symbolic, network, complex, compositional) are increasingly frequent in data science. These data require specific methodologies, but there is a lack of reference work in this field.
Advances in Data Science fills this gap. It presents a collection of up-to-date contributions by …
Book Details
| ISBN-13: | 9781786305763 |
|---|---|
| ISBN-10: | 1786305763 |
| Author: | Edwin Diday, Rong Guan, Gilbert Saporta, Huiwen Wang |
| Publisher: | ISTE Ltd and John Wiley & Sons Inc |
| Imprint: | ISTE Ltd and John Wiley & Sons Inc |
| Format: | Hardcover |
| Number of Pages: | 258 |
| Release Date: | 21 February 2020 |
| Weight: | 499g |
| Dimensions: | 239mm x 163mm x 20mm |
About The Author
Edwin Diday
Edwin Diday is Emeritus Professor at Paris-Dauphine University-PSL. He helped to introduce the symbolic data analysis paradigm and the dynamic clustering method (opening the path to local models), as well as pyramidal clustering for spatial representation of overlapping clusters.
Rong Guan is Associate Professor at the School of Statistics and Mathematics, Central University of Finance and Economics, Beijing. Her research covers complex and symbolic data analysis and financial distress diagnosis.
Gilbert Saporta is Emeritus Professor at Conservatoire National des Arts et Métiers, France. His current research focuses on functional data analysis and clusterwise and sparse methods. He is Honorary President of the French Statistical Society.
Huiwen Wang is Professor at the School of Economics and Management, Beihang University, Beijing. Her research covers dimension reduction, PLS regression, symbolic data analysis, compositional data analysis, functional data analysis and statistical modeling methods for mixed data.
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