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Information and Regularization in Restricted Boltzmann Machines

机译:限制Boltzmann Machines中的信息和正规化

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Recent works suggests an interesting interplay between the information flow between inputs features and hidden representations of a learning and the ability of the algorithm to generalize from trained samples to unobserved data. For instance, some of regularization techniques used to control generalization are expected to impact the corresponding information metrics. In this work, we study mutual information in Restricted Boltzmann Machines (RBM) and its relationship with the different regularization techniques. Our results show some evidence on interesting connections between the mutual information (inputs and its representations) with relevant parameters such as: network dimension, matrix norms and dropout probability, which are known to influence the generalization ability of the network. Results are empirically corroborated with a numerical study.
机译:最近的作品表明,输入特征与学习的隐藏表示之间的信息流与算法从训练的样本概括到未观察数据之间的能力之间的有趣相互作用。 例如,用于控制泛化的一些正则化技术预计会影响相应的信息度量。 在这项工作中,我们研究限制的Boltzmann机器(RBM)的互信息及其与不同正则化技术的关系。 我们的结果显示了具有相关参数的互信息(输入及其表示)之间有趣连接的一些证据,例如:网络维度,矩阵规范和丢弃概率,这已知为影响网络的泛化能力。 结果是用数值研究经验证明的。

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