语音学习的计算模型

IF 3 1区 文学 0 LANGUAGE & LINGUISTICS Annual Review of Linguistics Pub Date : 2019-01-16 DOI:10.1146/ANNUREV-LINGUISTICS-011718-011832
G. Jarosz
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引用次数: 12

摘要

最近在计算建模方面的进展导致了语音知识的表示和获取以及语言学习和变化的限制方面的重大发现。这些发现是将计算学习模型应用于越来越丰富和复杂的自然语言数据,同时对学习任务做出越来越现实的假设的结果。本文回顾了计算建模的最新发展,这些发展使完全明确的学习理论、自然发生的语料库数据和丰富的心理语言学和类型学数据之间的联系成为可能。这些进展分为两个广泛的研究领域:(a)开发能够学习自然主义数据特征的定量、嘈杂和不一致模式的模型;(b)开发能够从未标记数据中学习隐藏语音结构的模型。在回顾了这些进展之后,文章总结了一些最重要的发现。
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Computational Modeling of Phonological Learning
Recent advances in computational modeling have led to significant discoveries about the representation and acquisition of phonological knowledge and the limits on language learning and variation. These discoveries are the result of applying computational learning models to increasingly rich and complex natural language data while making increasingly realistic assumptions about the learning task. This article reviews the recent developments in computational modeling that have made connections between fully explicit theories of learning, naturally occurring corpus data, and the richness of psycholinguistic and typological data possible. These advances fall into two broad research areas: ( a) the development of models capable of learning the quantitative, noisy, and inconsistent patterns that are characteristic of naturalistic data and ( b) the development of models with the capacity to learn hidden phonological structure from unlabeled data. After reviewing these advances, the article summarizes some of the most significant consequent discoveries.
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来源期刊
CiteScore
7.20
自引率
6.20%
发文量
37
期刊介绍: The Annual Review of Linguistics, in publication since 2015, covers significant developments in the field of linguistics, including phonetics, phonology, morphology, syntax, semantics, pragmatics, and their interfaces. Reviews synthesize advances in linguistic theory, sociolinguistics, psycholinguistics, neurolinguistics, language change, biology and evolution of language, typology, as well as applications of linguistics in many domains.
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