搭配提取的关联测度

IF 1.6 2区 文学 N/A LANGUAGE & LINGUISTICS International Journal of Corpus Linguistics Pub Date : 2023-08-14 DOI:10.1075/ijcl.21056.su
Qi Su, Chen Gu, Pengyuan Liu
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引用次数: 0

摘要

在这项研究中,我们提出了一种新的评估方案来评估搭配提取措施的优势和局限性,并探索提取搭配的类型敏感方法。我们介绍了在信息检索中广泛使用的池策略,并使用在线词典自动化了评估过程。16个众所周知的指标根据其有效性进行评估,然后进行分布和语言比较。结果表明,A组方法(如z-score、Dice、PMI)在提取尺度相对较小的低频搭配时更有效。相反,B组方法(如t检验、LMI、LLR)在发现高频搭配方面表现更好,随着提取规模的增加,大多数方法都优于A组方法。此外,A组更喜欢NN搭配,而B组则认为搭配具有广泛的句法结构。这项研究为确定混合提取方法的研究以及语言教育工作者和词典编纂者提供了建议。
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Association measures for collocation extraction
In this study, we propose a new evaluation scheme to assess the strengths and limitations of collocation extraction measures and explore type-sensitive methods for extracting collocations. We introduced the pooling strategy widely used in Information Retrieval and automated the evaluation process using online dictionaries. Sixteen well-known metrics are evaluated based on their effectiveness and then distributional and linguistic compared. The results show that Group A methods (e.g. z-score, Dice, PMI) are more effective in extracting low-frequency collocations with relatively small extraction scales. In contrast, Group B methods (e.g. t-test, LMI, LLR) perform better at finding high-frequency collocations, most of which outperform Group A methods as the extraction scale increases. Moreover, Group A prefers NN collocations, while Group B identifies collocations with a wide range of syntactic structures. This study provides suggestions for studies to identify hybrid extraction methods as well as for language educators and dictionary compilers.
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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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