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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Asymptotic Normality of the Maximum Pseudolikelihood Estimator for Fully Visible Boltzmann Machines
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Asymptotic Normality of the Maximum Pseudolikelihood Estimator for Fully Visible Boltzmann Machines

机译:完全可见玻尔兹曼机的最大伪似然估计的渐近正态性

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摘要

Boltzmann machines (BMs) are a class of binary neural networks for which there have been numerous proposed methods of estimation. Recently, it has been shown that in the fully visible case of the BM, the method of maximum pseudolikelihood estimation (MPLE) results in parameter estimates, which are consistent in the probabilistic sense. In this brief, we investigate the properties of MPLE for the fully visible BMs further, and prove that MPLE also yields an asymptotically normal parameter estimator. These results can be used to construct confidence intervals and to test statistical hypotheses. These constructions provide a closed-form alternative to the current methods that require Monte Carlo simulation or resampling. We support our theoretical results by showing that the estimator behaves as expected in simulation studies.
机译:玻尔兹曼机器(Boltzmann machine,BMs)是一类二进制神经网络,针对该类神经网络,已经提出了许多估计方法。最近,已经显示出在BM的完全可见的情况下,最大伪似然估计(MPLE)的方法导致参数估计,该概率在概率意义上是一致的。在本文中,我们进一步研究了完全可见BM的MPLE性质,并证明了MPLE还产生了一个渐近正态参数估计量。这些结果可用于构建置信区间并检验统计假设。这些构造为需要蒙特卡罗模拟或重采样的当前方法提供了一种封闭形式的替代方法。我们通过证明估计器的行为符合仿真研究中的预期,来支持我们的理论结果。

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