Machine Learning: An Algorithmic Perspective, Second... - Marsland, Stephen

Machine Learning: An Algorithmic Perspective, Second... - Marsland, Stephen

Taylor & Francis Inc

Master the algorithms of machine learning with this comprehensive guide, perfect for students without a strong statistical foundation. This second edition offers a proven, hands-on approach, guiding you through the necessary mathematics, statistics, programming, and experimentation. Featuring new chapters on deep belief networks and Gaussian processes, revised support vector machine material with a simple implementation, and updated discussions on random forests, perceptron convergence theorem, accuracy methods, and conjugate gradient optimization. The book includes detailed examples, further reading suggestions, and practice problems, with all code available online. Key Features: - Two new chapters: Deep Belief Networks and Gaussian Processes - Reorganized content for a more natural flow - Updated Support Vector Machine material - New sections on random forests, perceptron convergence theorem, and more - Improved Python code for examples This book is ideal for both introductory and advanced courses in machine learning.

Compare prices (4 shops)

shop Price Action
16,89 GBP Go to shop
79,70 GBP Go to shop
82,75 GBP Go to shop
82,75 GBP Go to shop