受限玻尔兹曼机上的无数据集权重初始化

Muneki Yasuda, Ryosuke Maeno, Chako Takahashi
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引用次数: 0

摘要

在前馈神经网络中,已经开发出了无数据集权重初始化方法,如 LeCun、Xavier(或 Glorot)和 He 初始化方法。这些方法基于特定分布(如高斯分布或均匀分布)随机确定权重参数的初始值,而无需使用训练数据集。在本研究中,我们基于统计力学分析,为伯努利--伯努利 RBM 提出了一种无数据集权重初始化方法。在所提出的权重初始化方法中,权重参数取自均值为零的高斯分布。高斯分布的标准偏差是根据我们的假设进行优化的,即标准偏差在两层之间提供较大的层相关性(LC)可以提高学习效率。LC 的表达式是基于统计力学分析得出的。标准偏差的最佳值对应于 LC 的最大点。所提出的权重初始化方法与特定情况下的 Xavier 初始化方法相同(即两层的大小相同,各层的随机变量为 $\{-1,1\}$ 二进制,且所有偏置参数为零)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dataset-Free Weight-Initialization on Restricted Boltzmann Machine
In feed-forward neural networks, dataset-free weight-initialization method such as LeCun, Xavier (or Glorot), and He initializations have been developed. These methods randomly determine the initial values of weight parameters based on specific distributions (e.g., Gaussian or uniform distributions) without using training datasets. To the best of the authors' knowledge, such a dataset-free weight-initialization method is yet to be developed for restricted Boltzmann machines (RBMs), which are probabilistic neural networks consisting of two layers, In this study, we derive a dataset-free weight-initialization method for Bernoulli--Bernoulli RBMs based on a statistical mechanical analysis. In the proposed weight-initialization method, the weight parameters are drawn from a Gaussian distribution with zero mean. The standard deviation of the Gaussian distribution is optimized based on our hypothesis which is that a standard deviation providing a larger layer correlation (LC) between the two layers improves the learning efficiency. The expression of the LC is derived based on a statistical mechanical analysis. The optimal value of the standard deviation corresponds to the maximum point of the LC. The proposed weight-initialization method is identical to Xavier initialization in a specific case (i.e., in the case the sizes of the two layers are the same, the random variables of the layers are $\{-1,1\}$-binary, and all bias parameters are zero).
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