- ホーム
- > 洋書
- > 英文書
- > Computer / Databases
Full Description
Theoretic Foundation of Predictive Data Analytics presents the latest in data science, an area that is penetrating into virtually every discipline of science, engineering, and medicine, and is a fast evolving field. Practitioners, researchers, and graduate students often have difficulty in understanding the foundation of data science.In order to have a deep understanding of data science, a strong understanding of statistical analysis and machine learning is a must. This book introduces the commonly used statistical principles behind many machine learning and data mining algorithms, the connections of those principles, and the connections of those principles to commonly utilized data analytic algorithms.
Contents
1. Probability Theory and LLN 2. Maximum Likelihood Estimation 3. Linear Regression 4. Ridge Regression 5. Linear Classification 6. Akaike Information Criterion (AIC) 7. Support Vector Machines 8. Statistical Learning Theory 9. Statistical Decision Theory 10. Exchangeability 11. Bayesian Linear Regression 12. Gaussian Process 13. Ensemble learning 14. OptimizationA Real Number and Vector Space B Vector Space C Advanced Probability and SLLN