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Estimating the Partition Function by Discriminance Sampling

机译:通过鉴别抽样估算分区功能

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Importance sampling (IS) and its variant, annealed IS (AIS) have been widely used for estimating the partition function in graphical models, such as Markov random fields and deep generative models. However, IS tends to underestimate the partition function and is subject to high variance when the proposal distribution is more peaked than the target distribution. On the other hand, "reverse" versions of IS and AIS tend to overestimate the partition function, and degenerate when the target distribution is more peaked than the proposal distribution. In this work, we present a simple, general method that gives much more reliable and robust estimates than either IS (AIS) or reverse IS (AIS). Our method works by converting the estimation problem into a simple classification problem that discriminates between the samples drawn from the target and the proposal. We give extensive theoretical and empirical justification; in particular, we show that an annealed version of our method significantly outperforms both AIS and reverse AIS as proposed by Burda et al. (2015), which has been the state-of-the-art for likelihood evaluation in deep generative models.
机译:重要的采样(IS)及其变体已被广泛用于估算图形模型中的分区功能,例如马尔可夫随机字段和深度生成模型。然而,倾向于低估分区功能并且当提案分布比目标分布更峰值时,经受高方差。另一方面,“反向”版本的is和ais倾向于高估分区功能,并且当目标分布比提案分布更峰值时,退化。在这项工作中,我们提出了一种简单的一般方法,它提供比(AIS)或反向的更可靠和强大的估计值(AIS)。我们的方法通过将估计问题转换为简单的分类问题,这些问题判断从目标绘制的样本和提案之间。我们提供了广泛的理论和经验理由;特别是,我们表明我们的方法的退火版本显着优于Burda等人提出的AIS和反向AIS。 (2015年),这是深度生成模型中的似然评估的最先进的。

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