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Computational Complexity of Machine Learning

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Computational Complexity of Machine Learning
Computational Complexity of Machine Learning
Author(s)
:   -
ISBN
:   9780262111527
Category
:   Computer Science
Publisher
:   MIT PRESS
List Price
:   Rs. 1890.79
Discount
:   Rs. 283.61  (15 %)
Our Price
:   Rs. 1607.17
Description

The Computational Complexity of Machine Learning is a mathematical study of the possibilities for efficient learning by computers. It works within recently introduced models for machine inference that are based on the theory of computational complexity and that place an explicit emphasis on efficient and general algorithms for learning. Theorems are presented that help elucidate the boundary of what is efficiently learnable from examples. These results take the form of both algorithms with proofs of their performance, and hardness results demonstrating the intractability of learning in certain natural settings. In addition the book contains lower bounds on the resources required for learning, an extensive study of learning in the presence of errors in the sample data, and several theorems demonstrating reducibilities between learning problems. Michael J. Kearns is Postdoctoral Associate in the Laboratory for Computer Science at MIT