分层网络中概率的一致推断:预测和推广

Naftali Tishby, E. Levin, S. Solla
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引用次数: 185

摘要

在统计框架下讨论了用分层神经网络学习一般输入输出关系的问题。通过施加一致性条件,即误差最小化等于似然最大化来训练网络,作者在具有相同体系结构的典型网络集合上得到了吉布斯分布。这种统计描述使他们能够在给定的训练集上训练网络后,评估对独立示例进行正确预测的概率。预测概率与网络的泛化能力高度相关,这是在训练集之外测量的。这为通过最小化预测误差来训练分层网络提供了一个通用而实用的准则。作者论证了该准则在连续问题中选择最优结构的实用性。作为统计形式主义的理论应用,他们在一个简单的例子中讨论了学习曲线的问题,并估计了正确泛化所需的足够的训练规模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consistent inference of probabilities in layered networks: predictions and generalizations
The problem of learning a general input-output relation using a layered neural network is discussed in a statistical framework. By imposing the consistency condition that the error minimization be equivalent to a likelihood maximization for training the network, the authors arrive at a Gibbs distribution on a canonical ensemble of networks with the same architecture. This statistical description enables them to evaluate the probability of a correct prediction of an independent example, after training the network on a given training set. The prediction probability is highly correlated with the generalization ability of the network, as measured outside the training set. This suggests a general and practical criterion for training layered networks by minimizing prediction errors. The authors demonstrate the utility of this criterion for selecting the optimal architecture in the continuity problem. As a theoretical application of the statistical formalism, they discuss the question of learning curves and estimate the sufficient training size needed for correct generalization, in a simple example.<>
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