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Divergence-Based Motivation for Online EM and Combining Hidden Variable Models

机译:基于分歧的在线EM和结合隐藏变量模型的激励

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Expectation-Maximization (EM) is a prominent approach for parameter estimation of hidden (aka latent) variable models. Given the full batch of data, EM forms an upper-bound of the negative log-likelihood of the model at each iteration and updates to the minimizer of this upper-bound. We first provide a “model level” interpretation of the EM upper-bound as a sum of relative entropy divergences to a set of singleton models induced by the batch of observations. Our alternative motivation unifies the “observation level” and the “model level” view of the EM. As a result, we formulate an online version of the EM algorithm by adding an analogous inertia term which is a relative entropy divergence to the old model. Our motivation is more widely applicable than the previous approaches and leads to simple online updates for mixture of exponential distributions, hidden Markov models, and the first known online update for Kalman filters. Additionally, the finite sample form of the inertia term lets us derive online updates when there is no closed-form solution. Finally, we extend the analysis to the distributed setting where we motivate a systematic way of combining multiple hidden variable models. Experimentally, we validate the results on synthetic as well as real-world datasets.
机译:期望 - 最大化(EM)是隐藏(AKA潜在)变模型参数估计的突出方法。鉴于完整批次的数据,EM在每个迭代的模型的负值似然的上限和更新到这一上限的最小值。我们首先提供“模型水平”解释EM上限作为由批次观察诱导的一组单例模型的相对熵分歧的总和。我们的替代动机统一了“观察水平”和EM的“模型水平”。结果,我们通过添加类似惯性术语来制定EM算法的在线版本,这是对旧模型的相对熵分流。我们的动机比以前的方法更广泛地适用,并导致指数分布,隐马尔可夫模型的混合的简单在线更新,以及卡尔曼滤镜的第一个已知的在线更新。此外,惯性术语的有限样本形式可让我们在没有闭合方案时派生在线更新。最后,我们将分析扩展到分布式设置,其中我们激励了组合多个隐藏变量模型的系统方式。通过实验,我们验证了合成和现实世界数据集的结果。

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