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A Closed-Form Estimator of Fully Visible Boltzmann Machines

机译:全可见玻尔兹曼机的闭式估计

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Several researchers have recently proposed alternative estimation methods of Boltzmann machines (BMs) beyond the standard maximum likelihood framework. Examples are the contrastive divergence or the ratio matching, and also a rather classic pseudolikelihood method. With a loss of statistical efficiency, alternative methods can often speedup the computation and/or simplify the implementation. In this article, as an extreme of this direction, we show the parameter estimation of BMs can be done even with a closed-form estimator, by recasting the problem into linear regression. We confirm our estimator can actually approach the true parameter as the sample size increases, while the convergence can be slow, by a simple simulation experiment.
机译:最近,一些研究人员提出了超出标准最大似然框架的Boltzmann机器(BM)的替代估计方法。例子是对比散度或比率匹配,以及相当经典的伪似然法。由于统计效率的损失,替代方法通常可以加快计算速度和/或简化实现。在这篇文章中,作为这个方向的一个极端,我们展示了通过将问题重铸为线性回归,甚至可以使用闭合形式的估计器来完成BM的参数估计。通过简单的模拟实验,我们确认了估计量实际上可以随着样本数量的增加而接近真实参数,而收敛速度可能会很慢。

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