计算语言学与话语复杂学:范式与研究方法

IF 1.5 0 LANGUAGE & LINGUISTICS
V. Solovyev, M. Solnyshkina, D. McNamara
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引用次数: 9

摘要

由于人工神经网络不仅具有学习和适应的能力,而且能够自动进行语言分析,选择、修改和比较各种类型和体裁的文本,现代语言学研究的急剧扩展和语言分析准确性的提高已经成为现实。这篇文章和这期杂志作为一个整体的目的是呈现计算语言学和语言复杂学的现代研究领域,并为新的跨学科领域,即话语复杂学,定义一个坚实的基础。计算语言学的发展趋势主要集中在以下几个方面:应用问题和方法、计算语言学资源、理论语言学对计算语言学的贡献以及深度学习神经网络的应用。该专题还讨论了客观和相对文本复杂性及其评估的问题。我们关注语言复杂性评估的两种主要方法:“参数方法”和机器学习。发表在本期特刊上的研究结果表明,计算语言学对语篇复杂学做出了重大贡献,包括为解决语篇复杂学问题而开发的新算法。该问题概述了语言复杂性学的研究领域,并提供了指导其进一步发展的框架,包括为各种类型和体裁的文本设计复杂性矩阵,改进复杂性预测因子列表,验证新的复杂性标准,以及扩展自然语言数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational linguistics and discourse complexology: Paradigms and research methods
The dramatic expansion of modern linguistic research and enhanced accuracy of linguistic analysis have become a reality due to the ability of artificial neural networks not only to learn and adapt, but also carry out automate linguistic analysis, select, modify and compare texts of various types and genres. The purpose of this article and the journal issue as a whole is to present modern areas of research in computational linguistics and linguistic complexology, as well as to define a solid rationale for the new interdisciplinary field, i.e. discourse complexology. The review of trends in computational linguistics focuses on the following aspects of research: applied problems and methods, computational linguistic resources, contribution of theoretical linguistics to computational linguistics, and the use of deep learning neural networks. The special issue also addresses the problem of objective and relative text complexity and its assessment. We focus on the two main approaches to linguistic complexity assessment: “parametric approach” and machine learning. The findings of the studies published in this special issue indicate a major contribution of computational linguistics to discourse complexology, including new algorithms developed to solve discourse complexology problems. The issue outlines the research areas of linguistic complexology and provides a framework to guide its further development including a design of a complexity matrix for texts of various types and genres, refining the list of complexity predictors, validating new complexity criteria, and expanding databases for natural language.
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来源期刊
Russian Journal of Linguistics
Russian Journal of Linguistics Arts and Humanities-Language and Linguistics
CiteScore
3.00
自引率
33.30%
发文量
43
审稿时长
14 weeks
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