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Learning Phonological Categories by Independent Component Analysis*

机译:通过独立成分分析学习语音分类*

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摘要

This work aims at discovering, in an unsupervised fashion, the nature of phonemes on the basis of their distributional information within a representative corpus. We focus on some basic issues of the phonology tradition such as the vowel/consonant distinction, the configuration of natural phonological classes and the identification of phonologically-motivated constraints such as the vowel harmony. The simulations use a matrix decomposition method, the so-called independent component analysis (ICA), which is able to find latent factors underlying a set of multivariate observations. We designed three different corpora (English, Italian and Finnish) as input to the system in order to test the robustness of the methodology and the consistency of the results. The results are also investigated by means of self-organizing map mappings. The work emphasizes the exploitation of distributional information and its effectiveness in discovering the inherent phonotactic regularities of a given language and generalizing phonological behaviours from these regularities.
机译:这项工作旨在根据代表语料库中音素的分布信息,以无监督的方式发现音素的性质。我们关注音位传统的一些基本问题,例如元音/辅音的区别,自然音位类别的配置以及对音位动机约束的识别,例如元音和声。模拟使用矩阵分解方法,即所谓的独立成分分析(ICA),该方法能够找到一组多变量观测值的潜在因素。我们设计了三种不同的语料库(英语,意大利语和芬兰语)作为系统输入,以测试方法的稳健性和结果的一致性。还通过自组织地图映射调查了结果。这项工作强调了分配信息的利用及其在发现给定语言的固有音韵规律和从这些规律中概括语音行为方面的有效性。

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