用随机梯度下降法简单归纳语音战术(确定性)概率有限状态自动机

Huteng Dai, Richard Futrell
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引用次数: 1

摘要

我们介绍了一个简单的、高度通用的语音定向学习器,它从词形数据中诱导出一个概率有限状态自动机。我们描述了学习器,并展示了如何参数化它以诱导不受限制的规则语言,以及如何将其限制为某些子规则类,如严格k-Local和严格k-分段语言。我们评估了学习器在玩具示例和克丘亚语和纳瓦霍语数据集中学习语音定向约束的能力。我们发现,当对训练中未见过的证明形式建模时,无限制学习器总体上是最准确的;然而,只有严格分段式语言类的学习者才能成功地捕捉到某些非局部音致性约束。我们的学习器可以作为更复杂方法的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simple induction of (deterministic) probabilistic finite-state automata for phonotactics by stochastic gradient descent
We introduce a simple and highly general phonotactic learner which induces a probabilistic finite-state automaton from word-form data. We describe the learner and show how to parameterize it to induce unrestricted regular languages, as well as how to restrict it to certain subregular classes such as Strictly k-Local and Strictly k-Piecewise languages. We evaluate the learner on its ability to learn phonotactic constraints in toy examples and in datasets of Quechua and Navajo. We find that an unrestricted learner is the most accurate overall when modeling attested forms not seen in training; however, only the learner restricted to the Strictly Piecewise language class successfully captures certain nonlocal phonotactic constraints. Our learner serves as a baseline for more sophisticated methods.
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