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Total Size:
17.5 MB
Info Hash:
8878945D31C49C89E04A469461B9C45523260C4E
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Added:
June 2, 2025, 12:38 p.m.
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(Last updated: June 5, 2025, 3:05 p.m.)
| File | Size |
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| ['Toh K. Analytic Learning Methods for Pattern Recognition 2025.pdf'] | 0 bytes |
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17.5 MB
[10
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25]
2025-06-02
| Uploaded by andryold1 | Size 17.5 MB | Health [ 10 /25 ] | Added 2025-06-02 |
NOTE
SOURCE: Toh K. Analytic Learning Methods for Pattern Recognition 2025
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COVER

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MEDIAINFO
Textbook in PDF format Outlines the provision of a unified treatment for data with overwhelming samples or parameters for stable predictions. Provides advanced solutions to regression and classification problems that are crucial for complex systems. Includes examples coded in Python and MatLAB which provide students and instructors with mathematical insights. This textbook is a consolidation of learning methods which comes in an analytic form. The covered learning methods include classical and advanced solutions to problems of regression, minimum classification error, maximum receiver operating characteristics, bridge regression, ensemble learning and network learning. Both the primal and dual solution forms are discussed for over-and under-determined systems. Such coverage provides an important perspective for handling systems with overwhelming samples or systems with overwhelming parameters. For goal driven classification, the solutions to minimum classification-error, maximum receiver operating characteristics, bridge regression, and ensemble learning represent recent advancements in the literature. In this book, the exercises offer instructors and students practical experience with real-world applications
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