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Unsupervised Learning of ProbabilisticContext-Free Grammar Using Iterative Biclustering

机译:使用迭代双板的无监督概要学习ProbabilisticContext语法

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This paper presents PCFG-BCL, an unsupervised algorithm that learns a probabilistic context-free grammar (PCFG) from positive samples. The algorithm acquires rules of an unknown PCFG through iterative biclustering of bigrams in the training corpus. Our analysis shows that this procedure uses a greedy approach to adding rules such that each set of rules that is added to the grammar results in the largest increase in the posterior of the grammar given the training corpus. Results of our experiments on several benchmark datasets show that PCFG-BCL is competitive with existing methods for unsupervised CFG learning.
机译:本文介绍了PCFG-BCL,这是一种无监督的算法,用于从正样品中学习概率的无内容语法(PCFG)。该算法通过训练语料库中的Bigrams迭代双板获取未知PCFG的规则。我们的分析表明,该过程使用贪婪的方法来添加规则,使得添加到语法的每组规则导致语法的语法后部的最大增加导致培训语料库。我们在几个基准数据集上的实验结果表明,PCFG-BCL对现有的无监督CFG学习方法具有竞争力。

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