Data Science, Classification, and Artificial Intelligence for Modeling Decision Making

ยท ยท ยท
ยท Springer Nature
เบ›เบถเป‰เบกเบญเบตเบšเบธเบ
190
เปœเป‰เบฒ
เบšเปเปˆเป„เบ”เป‰เบขเบฑเป‰เบ‡เบขเบทเบ™เบเบฒเบ™เบˆเบฑเบ”เบญเบฑเบ™เบ”เบฑเบš เปเบฅเบฐ เบ„เบณเบ•เบดเบŠเบปเบก เบชเบถเบเบชเบฒเป€เบžเบตเปˆเบกเป€เบ•เบตเบก

เบเปˆเบฝเบงเบเบฑเบšเบ›เบถเป‰เบก e-book เบ™เบตเป‰

This book gathers selected and peer-reviewed contributions presented at the 18th Conference of the International Federation of Classification Societies (IFCS 2024), held in San Josรฉ, Costa Rica, July 15โ€“19, 2024. Covering a wide range of topics, it describes modern methods and real-world applications in data science, classification, and artificial intelligence related to modeling decision making.

Numerous novel techniques and innovative applications are investigated, such as anomaly detection in public procurement processes, multivariate functional data clustering, air pollution prediction, benchmark generation for probabilistic planning, recommendation systems based on symbolic data analysis, and methods for clustering mixed-type data. Advanced statistical concepts are explored, including Vapnik-Chervonenkis dimensionality, Riemannian statistics, hypothesis testing for interval-valued data, and mixed models. Furthermore, machine learning techniques are applied to predict soil bacterial and fungal communities, classify electoral behavior and political competition, and assess corrosion degradation in mining pipelines.

The diversity of topics discussed in this collection reflects the ongoing advancement and interdisciplinary nature of statistical and data science research, as well as its application across various fields and sectors. These studies contribute to the development of robust methodologies and efficient computational tools to address complex challenges in the era of big data.

The book is intended for researchers and practitioners seeking the latest developments and applications in the field of data science and classification.

เบเปˆเบฝเบงเบเบฑเบšเบœเบนเป‰เบ‚เบฝเบ™

Javier Trejos is a Full Professor and Researcher at the School of Mathematics and the Center for Research in Pure and Applied Mathematics (CIMPA), University of Costa Rica. His research focuses on the relations between data analysis and combinatorial optimization. He was the chief editor of the Journal of Mathematics: Theory and Applications and is the former president of the Central American and Caribbean Society for Classification and Data Analysis (SoCCCAD). In 1996 he was awarded the Simon Rรฉgnier Prize of the Francophone Classification Society.

Theodore Chadjipandelis is Professor of Applied Statistics and the Director of the Laboratory of Applied Political Research, Aristotle University, Thessaloniki, Greece. His research interests are in the field of applied statistics and mainly focus on issues of experiment design, statistical research training, public opinion, political and electoral behavior, electoral geography, election systems as well as urban and regional programming and development. He coordinated the Greek section of the program C.C.S. (Comparative Candidates Survey) โ€“ a co-operation between 30 research teams โ€“ and of C.S.E.S. (Comparative Study of Electoral Systems). Currently he coordinates the Greek section of the program MeDem (Measuring Electoral Democracy) - a co-operation between 30 research teams - and of the Horizon project AI4GOV (Artificial Intelligence for Governance).

Aurea Granรฉ is Full Professor of Statistics and Operations Research at Universidad Carlos III de Madrid, Spain. Her work involves several lines of research whose common link is the development of non-parametric techniques based on distances with application to data of a certain complexity. She has important contributions in the development of goodness-of-fit statistics for uniformity, exponentiality and normality tests, in statistical methods based on distances for data visualization, in predictive methods for functional data and in the development of tools for outlier detection in long financial series and mixed data sets.

Mario Villalobos is a Professor and Researcher at the University of Costa Rica, School of Mathematics, and the Center for Research in Pure and Applied Mathematics (CIMPA), of which he was its director until 2020, and a lecturer at the Costa Rica Institute of Technology. His research deals mainly with multi-objective optimization and its relationships with statistical and data analysis methods, the study of functions, teaching innovations in mathematics, and currently curve-fitting to see trends in epidemics. He was the recipient of the Chikio Hayashi Award from the International Federation of Classification Societies in 2006.

เปƒเบซเป‰เบ„เบฐเปเบ™เบ™ e-book เบ™เบตเป‰

เบšเบญเบเบžเบงเบเป€เบฎเบปเบฒเบงเปˆเบฒเบ—เปˆเบฒเบ™เบ„เบดเบ”เปเบ™เบงเปƒเบ”.

เบญเปˆเบฒเบ™โ€‹เบ‚เปเป‰โ€‹เบกเบนเบ™โ€‹เบ‚เปˆเบฒเบงโ€‹เบชเบฒเบ™

เบชเบฐเบกเบฒเบ”เป‚เบŸเบ™ เปเบฅเบฐ เปเบ—เบฑเบšเป€เบฅเบฑเบ”
เบ•เบดเบ”เบ•เบฑเป‰เบ‡ เปเบญเบฑเบš Google Play Books เบชเบณเบฅเบฑเบš Android เปเบฅเบฐ iPad/iPhone. เบกเบฑเบ™เบŠเบดเป‰เบ‡เบ‚เปเป‰เบกเบนเบ™เป‚เบ”เบเบญเบฑเบ”เบ•เบฐเป‚เบ™เบกเบฑเบ”เบเบฑเบšเบšเบฑเบ™เบŠเบตเบ‚เบญเบ‡เบ—เปˆเบฒเบ™ เปเบฅเบฐ เบญเบฐเบ™เบธเบเบฒเบ”เปƒเบซเป‰เบ—เปˆเบฒเบ™เบญเปˆเบฒเบ™เบ—เบฒเบ‡เบญเบญเบ™เบฅเบฒเบ เบซเบผเบท เปเบšเบšเบญเบญเบšเบฅเบฒเบเป„เบ”เป‰ เบšเปเปˆเบงเปˆเบฒเบ—เปˆเบฒเบ™เบˆเบฐเบขเบนเปˆเปƒเบช.
เปเบฅเบฑเบšเบ—เบฑเบญเบš เปเบฅเบฐ เบ„เบญเบกเบžเบดเบงเป€เบ•เบต
เบ—เปˆเบฒเบ™เบชเบฒเบกเบฒเบ”เบŸเบฑเบ‡เบ›เบถเป‰เบกเบชเบฝเบ‡เบ—เบตเปˆเบŠเบทเป‰เปƒเบ™ Google Play เป‚เบ”เบเปƒเบŠเป‰เป‚เบ›เบฃเปเบเบฃเบกเบ—เปˆเบญเบ‡เป€เบงเบฑเบšเบ‚เบญเบ‡เบ„เบญเบกเบžเบดเบงเป€เบ•เบตเบ‚เบญเบ‡เบ—เปˆเบฒเบ™เป„เบ”เป‰.
eReaders เปเบฅเบฐเบญเบธเบ›เบฐเบเบญเบ™เบญเบทเปˆเบ™เป†
เป€เบžเบทเปˆเบญเบญเปˆเบฒเบ™เปƒเบ™เบญเบธเบ›เบฐเบเบญเบ™ e-ink เป€เบŠเบฑเปˆเบ™: Kobo eReader, เบ—เปˆเบฒเบ™เบˆเบณเป€เบ›เบฑเบ™เบ•เป‰เบญเบ‡เบ”เบฒเบงเป‚เบซเบผเบ”เป„เบŸเบฅเปŒ เปเบฅเบฐ เป‚เบญเบ™เบเป‰เบฒเบเบกเบฑเบ™เป„เบ›เปƒเบชเปˆเบญเบธเบ›เบฐเบเบญเบ™เบ‚เบญเบ‡เบ—เปˆเบฒเบ™เบเปˆเบญเบ™. เบ›เบฐเบ•เบดเบšเบฑเบ”เบ•เบฒเบกเบ„เบณเปเบ™เบฐเบ™เบณเบฅเบฐเบญเบฝเบ”เบ‚เบญเบ‡ เบชเบนเบ™เบŠเปˆเบงเบเป€เบซเบผเบทเบญ เป€เบžเบทเปˆเบญเป‚เบญเบ™เบเป‰เบฒเบเป„เบŸเบฅเปŒเป„เปƒเบชเปˆ eReader เบ—เบตเปˆเบฎเบญเบ‡เบฎเบฑเบš.