وبلاگ بلیان

Machine learning refined : foundations, algorithms, and applications

معرفی کتاب «Machine learning refined : foundations, algorithms, and applications» نوشتهٔ Borhani, Reza; Katsaggelos, Aggelos Konstantinos; Watt, Jeremy، منتشرشده توسط نشر Cambridge University Press (Virtual Publishing) در سال 2016. این کتاب در 6 صفحه، فرمت pdf، زبان انگلیسی ارائه شده است. «Machine learning refined : foundations, algorithms, and applications» در دستهٔ بدون دسته‌بندی قرار دارد.

Providing a unique approach to machine learning, this text contains fresh and intuitive, yet rigorous, descriptions of all fundamental concepts necessary to conduct research, build products, tinker, and play. By prioritizing geometric intuition, algorithmic thinking, and practical real world applications in disciplines including computer vision, natural language processing, economics, neuroscience, recommender systems, physics, and biology, this text provides readers with both a lucid understanding of foundational material as well as the practical tools needed to solve real-world problems. With in-depth Python and MATLAB/OCTAVE-based computational exercises and a complete treatment of cutting edge numerical optimization techniques, this is an essential resource for students and an ideal reference for researchers and practitioners working in machine learning, computer science, electrical engineering, signal processing, and numerical optimization. Additional resources including supplemental discussion topics, code demonstrations, and exercises can be found on the official textbook website at mlrefined.com "Providing a unique approach to machine learning, this text contains fresh and intuitive, yet rigorous, descriptions of all fundamental concepts necessary to conduct research, build products, tinker, and play. By prioritizing geometric intuition, algorithmic thinking, and practical real world applications in disciplines including computer vision, natural language processing, economics, neuroscience, recommender systems, physics, and biology, this text provides readers with both a lucid understanding of foundational material as well as the practical tools needed to solve real-world problems. With in-depth Python and MATLAB/OCTAVE-based computational exercises and a complete treatment of cutting edge numerical optimization techniques, this is an essential resource for students and an ideal reference for researchers and practitioners working in machine learning, computer science, electrical engineering, signal processing, and numerical optimization"-- Provided by publisher 1. Introduction Part I. The Basics: 2. Fundamentals of numerical optimization 3. Knowledge-driven regression 4. Knowledge-driven classification Part II. Automatic Feature Design: 5. Automatic feature design for regression 6. Automatic feature design for classification 7. Kernels, backpropagation, and regularized cross-validation Part III. Tools for Large Scale Data: 8. Advanced gradient schemes 9. Dimension reduction techniques Part IV. Appendices.
دانلود کتاب Machine learning refined : foundations, algorithms, and applications