搭配抽取中关联度量的有效性和效率的多维比较

IF 1.6 2区 文学 0 LANGUAGE & LINGUISTICS International Journal of Corpus Linguistics Pub Date : 2022-05-10 DOI:10.1075/ijcl.19111.den
Yaochen Deng, Dilin Liu
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引用次数: 1

摘要

由于搭配在语言使用/学习中的普遍存在和重要性,如何有效和高效地识别搭配一直是人们感兴趣的话题。虽然一些研究已经评估了许多用于搭配自动识别的现有关联测量(AMs),但由于现有研究的各种局限性,迄今为止的结果并不一致和不明确。因此,本研究从多维度上评价了七种主要人工智能在识别五种类型、七种不同大小语料库的三种搭配中的有效性和效率。结果表明,虽然对数似然比(Log Likelihood Ratio)和立方互信息(Cubic Mutual Information, MI3)等几种类型化方法始终比其他五种类型化方法更有效,但单独使用一种类型化方法可能不足以识别不同类型和语料库大小的不同类型的搭配。本文还讨论了研究的意义。
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A multi-dimensional comparison of the effectiveness and efficiency of association measures in collocation extraction
Because of the ubiquity and importance of collocations in language use/learning, how to effectively and efficiently identify collocations has been a topic of interest. Although some studies have evaluated many of the existing association measures (AMs) used in the automatic identification of collocations, the results so far have been inconsistent and unclear due to various limitations of the existing studies. Hence, this study makes a multi-dimensional evaluation of the effectiveness and efficiency of seven major AMs in the identification of three types of collocations across five genres and seven corpora of different sizes. The results indicate that while a few AMs, such as Log Likelihood Ratio and Cubic Mutual Information (MI3), are consistently more effective and efficient than the other five AMs being examined, no one AM alone may be adequate in the identification of different types of collocations across different genres and corpus sizes. Research implications are also discussed.
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来源期刊
CiteScore
3.30
自引率
0.00%
发文量
43
期刊介绍: The International Journal of Corpus Linguistics (IJCL) publishes original research covering methodological, applied and theoretical work in any area of corpus linguistics. Through its focus on empirical language research, IJCL provides a forum for the presentation of new findings and innovative approaches in any area of linguistics (e.g. lexicology, grammar, discourse analysis, stylistics, sociolinguistics, morphology, contrastive linguistics), applied linguistics (e.g. language teaching, forensic linguistics), and translation studies. Based on its interest in corpus methodology, IJCL also invites contributions on the interface between corpus and computational linguistics.
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