A theory of learning and generalization : with applications to neural networks and control systems
著者
書誌事項
A theory of learning and generalization : with applications to neural networks and control systems
(Communications and control engineering)
Springer, c1997
大学図書館所蔵 件 / 全38件
-
該当する所蔵館はありません
- すべての絞り込み条件を解除する
注記
Bibliography: p. [373]-379
Includes index
内容説明・目次
内容説明
Provides a formal mathematical theory for addressing intuitive questions of the type: How does a machine learn a new concept on the basis of examples? How can a neural network, after sufficient training, correctly predict the output of a previously unseen input? How much training is required to achieve a specified level of accuracy in the prediction? How can one "identify" the dynamical behaviour of a nonlinear control system by observing its input-output behaviour over a finite interval of time? This text treats the problem of machine learning in conjunction with the theory of empirical processes, the latter being a well-established branch of probability theory. The treatment of both topics side by side leads to new insights, as well as new results in both topics.
目次
Contents: Preface.- Introduction.- Preliminaries.- Problem Formulations.- Vapnik-Chervonenkis and Pollard (Pseudo-) Dimensions.- Uniform Convergence of Empirical Means.- Learning Under a Fixed Probability Measure.- Distribution-ree Learning.- Learning Under an Intermediate Family of Probabilities.- Alternate Models of Learning.- Applications to Neural Networks.- Applications to Control Systems.- Some Open Problems.
「Nielsen BookData」 より