This title covers a variety of predictive model combination methods, for both categorical and numeric target variables (bagging, boosting, etc.). It uses specific cases to illustrate particular points and makes reference to current literature (many references are from the early 2000s). Some MATLAB
Combining Pattern Classifiers: Methods and Algorithms
✍ Scribed by Ludmila I. Kuncheva
- Publisher
- Wiley
- Year
- 2014
- Tongue
- English
- Leaves
- 382
- Edition
- 2
- Category
- Library
No coin nor oath required. For personal study only.
✦ Synopsis
A unified, coherent treatment of current classifier ensemble methods, from fundamentals of pattern recognition to ensemble feature selection, now in its second edition
The art and science of combining pattern classifiers has flourished into a prolific discipline since the first edition of Combining Pattern Classifiers was published in 2004. Dr. Kuncheva has plucked from the rich landscape of recent classifier ensemble literature the topics, methods, and algorithms that will guide the reader toward a deeper understanding of the fundamentals, design, and applications of classifier ensemble methods.
Thoroughly updated, with MATLAB® code and practice data sets throughout, Combining Pattern Classifiers includes:
• Coverage of Bayes decision theory and experimental comparison of classifiers
• Essential ensemble methods such as Bagging, Random forest, AdaBoost, Random subspace, Rotation forest, Random oracle, and Error Correcting Output Code, among others
• Chapters on classifier selection, diversity, and ensemble feature selection
With firm grounding in the fundamentals of pattern recognition, and featuring more than 140 illustrations, Combining Pattern Classifiers, Second Edition is a valuable reference for postgraduate students, researchers, and practitioners in computing and engineering.
✦ Subjects
Информатика и вычислительная техника;Искусственный интеллект;Распознавание образов;
📜 SIMILAR VOLUMES
Covering pattern classification methods, Combining Classifiers: Ideas and Methods focuses on the important and widely studied issue of how to combine several classifiers together in order to achieve improved recognition performance. It is one of the first books to provide unified, coherent, and expa
A unified, coherent treatment of current classifier ensemble methods, from fundamentals of pattern recognition to ensemble feature selection, now in its second edition The art and science of combining pattern classifiers has flourished into a prolific discipline since the first edition of Combining