MACHINE LEARNING AND THE STUDY OF LANGUAGE CHANGE: A REVIEW OF METHODOLOGIES AND APPLICATION

Nourin Nishat, Muniroopesh Raasetti, A S M Shoaib Basharat Ali
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Abstract

Language change, a fundamental aspect of human communication, has long been a central focus in linguistic research. Traditional methods of analysis, while valuable, have been limited by the scale and complexity of linguistic data. The advent of machine learning (ML) offers transformative potential in this field, enabling the analysis of vast datasets and the discovery of subtle patterns that may elude manual scrutiny. This review paper comprehensively examines the current state of ML methodologies in the study of language change, synthesizing findings from 67 peer-reviewed articles. We delve into diverse ML approaches, including supervised, unsupervised, and deep learning techniques, and critically evaluate their applications across various linguistic domains, such as historical linguistics, sociolinguistics, and language contact. We address challenges related to data availability, bias, and model interpretability, emphasizing the need for transparent and rigorous methodologies. By summarizing key findings and outlining future directions, this review aims to foster interdisciplinary collaboration between linguists and computer scientists, advancing our understanding of the complex dynamics of language evolution.
机器学习与语言变化研究:方法与应用综述
语言变化是人类交流的一个基本方面,长期以来一直是语言学研究的核心重点。传统的分析方法虽然很有价值,但受限于语言数据的规模和复杂性。机器学习(ML)的出现为这一领域带来了变革性的潜力,它可以对庞大的数据集进行分析,并发现可能无法通过人工检查的微妙模式。本综述全面考察了语言变化研究中的机器学习方法的现状,综合了 67 篇同行评审文章的研究结果。我们深入探讨了各种 ML 方法,包括有监督、无监督和深度学习技术,并对它们在历史语言学、社会语言学和语言接触等不同语言学领域的应用进行了批判性评估。我们探讨了与数据可用性、偏差和模型可解释性相关的挑战,强调了透明和严格的方法论的必要性。通过总结主要研究成果和概述未来发展方向,本综述旨在促进语言学家和计算机科学家之间的跨学科合作,推动我们对语言进化复杂动态的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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