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引用次数: 31
摘要
本文描述了一些实验的结果,这些实验探索了以无监督的方式从原始语料库推断句法类别的统计方法。它与Brown et at(1992)以及在此基础上发展起来的工作有某些共同点:它采用统计技术,根据与给定单词相邻的单词派生出类别。然而,我们使用最近邻图的特征向量分解来生成语料库中单词的二维渲染,其中具有相同句法类别的单词倾向于形成聚类和邻域。我们利用这种技术来扩展形态学自动学习的价值。特别是,我们通过无监督的形态学学习来研究语料库中的后缀,并询问这些后缀中哪些具有一致的句法功能(例如,在英语中,-ed主要是动词过去时的标记,但-s同时标记名词复数和动词的第三人称现在时)。
Using eigenvectors of the bigram graph to infer morpheme identity
This paper describes the results of some experiments exploring statistical methods to infer syntactic categories from a raw corpus in an unsupervised fashion. It shares certain points in common with Brown et at (1992) and work that has grown out of that: it employs statistical techniques to derive categories based on what words occur adjacent to a given word. However, we use an eigenvector decomposition of a nearest-neighbor graph to produce a two-dimensional rendering of the words of a corpus in which words of the same syntactic category tend to form clusters and neighborhoods. We exploit this technique for extending the value of automatic learning of morphology. In particular, we look at the suffixes derived from a corpus by unsupervised learning of morphology, and we ask which of these suffixes have a consistent syntactic function (e.g., in English, -ed is primarily a mark of verbal past tense, does but -s marks both noun plurals and 3rd person present on verbs).