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首页> 外文期刊>Journal of Physics, A. Mathematical and General: A Europhysics Journal >Supervised learning with restricted training sets: a generating functional analysis
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Supervised learning with restricted training sets: a generating functional analysis

机译:受限训练集的有监督学习:生成功能分析

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摘要

We study the dynamics of supervised on-line learning of realizable tasks in feed-forward neural networks. We focus on the regime where the number of examples used for training is proportional to the number of input channels N. Using generating functional techniques from spin glass theory, we are able to average over the composition of the training set and transform the problem for N --> infinity to an effective single pattern system described completely by the student autocovariance, the student-teacher overlap and the student response function with exact closed equations. Our method applies to arbitrary learning rules, i.e., not necessarily of a gradient-descent type. The resulting exact macroscopic dynamical equations can be integrated without finite-size effects up to any degree of accuracy, but their main value is in providing an exact and simple starting point for analytical approximation schemes. Finally, we show how, in the region of absent anomalous response and using the hypothesis that (as in detailed balance systems) the short-time part of the various operators can be transformed away, one can describe the stationary state of the network succesfully by a set of coupled equations involving only four scalar order parameters. [References: 24]
机译:我们研究前馈神经网络中可实现任务的监督在线学习的动力学。我们关注于用于训练的示例数量与输入通道N的数量成比例的机制。使用自旋玻璃理论生成的函数技术,我们可以对训练集的组成取平均并将N的问题转化为->无限有效的单模式系统,完全由学生自协方差,学生-老师重叠以及具有精确封闭方程的学生响应函数完整描述。我们的方法适用于任意学习规则,即不一定是梯度下降类型。得到的精确的宏观动力学方程可以在没有任何精确度的情况下进行积分而不受有限大小的影响,但是它们的主要价值在于为解析近似方案提供精确而简单的起点。最后,我们展示了在缺少异常响应的区域中,如何使用假设(如在详细的余额系统中)可以将各种算子的短时部分转换掉的假设,可以通过以下方法成功描述网络的稳定状态:一组仅包含四个标量阶数参数的耦合方程。 [参考:24]

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