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Empirical Analysis of Sampling Based Estimators for Evaluating RBMs

机译:基于抽样的估算RBM估计量的经验分析

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The Restricted Boltzmann Machines (RBM) can be used either as classifiers or as generative models. The quality of the generative RBM is measured through the average log-likelihood on test data. Due to the high computational complexity of evaluating the partition function, exact calculation of test log-likelihood is very difficult. In recent years some estimation methods are suggested for approximate computation of test log-likelihood. In this paper we present an empirical comparison of the main estimation methods, namely, the AIS algorithm for estimating the partition function, the CSL method for directly estimating the log-likelihood, and the RAISE algorithm that combines these two ideas.
机译:受限玻尔兹曼机(RBM)可用作分类器或生成模型。生成的RBM的质量是通过测试数据的平均对数似然来衡量的。由于评估分区函数的计算复杂度很高,因此很难准确计算出测试对数似然。近年来,提出了一些估计方法来近似计算测试对数似然。在本文中,我们对主要估计方法进行了经验比较,即用于估计分区函数的AIS算法,用于直接估计对数似然的CSL方法以及结合了这两种思想的RAISE算法。

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