边距(机器学习)
维数(图论)
人工神经网络
计算机科学
VC维
建设性的
钥匙(锁)
概率逻辑
相关性(法律)
人工智能
多样性(控制论)
机器学习
人工神经网络的类型
神经系统网络模型
循环神经网络
数学
过程(计算)
计算机安全
政治学
纯数学
法学
操作系统
作者
Martin Anthony,Peter L. Bartlett
摘要
This important work describes recent theoretical advances in the study of artificial neural networks. It explores probabilistic models of supervised learning problems, and addresses the key statistical and computational questions. Chapters survey research on pattern classification with binary-output networks, including a discussion of the relevance of the Vapnik Chervonenkis dimension, and of estimates of the dimension for several neural network models. In addition, Anthony and Bartlett develop a model of classification by real-output networks, and demonstrate the usefulness of classification with a margin. The authors explain the role of scale-sensitive versions of the Vapnik Chervonenkis dimension in large margin classification, and in real prediction. Key chapters also discuss the computational complexity of neural network learning, describing a variety of hardness results, and outlining two efficient, constructive learning algorithms. The book is self-contained and accessible to researchers and graduate students in computer science, engineering, and mathematics.
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