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Unsupervised Bayesian Part of Speech Inference with Particle Gibbs

机译:粒子Gibbs的无监督贝叶斯语音推理部分

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As linguistic models incorporate more subtle nuances of language and its structure, standard inference techniques can fall behind. These models are often tightly coupled such that they defy clever dynamic programming tricks. Here we demonstrate that Sequential Monte Carlo approaches, i.e. particle filters, are well suited to approximating such models. We implement two particle filters, which jointly sample either sentences or word types, and incorporate them into a Particle Gibbs sampler for Bayesian inference of syntactic part-of-speech categories. We analyze the behavior of the samplers and compare them to an exact block sentence sampler, a local sampler, and an existing heuristic word type sampler. We also explore the benefits of mixing Particle Gibbs and standard samplers.
机译:由于语言模型包含了语言及其结构的更多细微差别,因此标准推理技术可能会落后。这些模型通常紧密耦合,以至于它们无视聪明的动态编程技巧。在这里,我们证明了顺序蒙特卡罗方法(即粒子滤波器)非常适合逼近此类模型。我们实现了两个粒子过滤器,它们共同对句子或单词类型进行采样,并将它们合并到粒子Gibbs采样器中,以用于句法词性类别的贝叶斯推理。我们分析了采样器的行为,并将它们与确切的正楷句子采样器,本地采样器和现有的启发式单词类型采样器进行比较。我们还探讨了混合使用微粒Gibbs和标准采样器的好处。

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