黑[LSCDiscovery共享任务]HSE在西班牙语LSCDiscovery:词法语义变化发现的聚类和分析

Kseniia Kashleva, Alexander Shein, Elizaveta Tukhtina, Svetlana Vydrina
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引用次数: 3

摘要

本文介绍了西班牙语词汇语义变化发现的方法。我们尝试了基于BERT嵌入的聚类方法、基于语法特征的方法和基于排列测试的语法特征方法。结果表明,带有聚类的BERT嵌入在分级和二元语义变化检测中都显示出优于基线的最佳结果。对于分级发现,我们提交的最佳结果是第三名,而对于二进制检测,它是第二名(精度)和第七名(f1分数和召回率)。我们对二进制检测的最高精度为0.75,这是由于使用排列测试改进了语法分析而实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
black[LSCDiscovery shared task] HSE at LSCDiscovery in Spanish: Clustering and Profiling for Lexical Semantic Change Discovery
This paper describes the methods used for lexical semantic change discovery in Spanish. We tried the method based on BERT embeddings with clustering, the method based on grammatical profiles and the grammatical profiles method enhanced with permutation tests. BERT embeddings with clustering turned out to show the best results for both graded and binary semantic change detection outperforming the baseline. Our best submission for graded discovery was the 3rd best result, while for binary detection it was the 2nd place (precision) and the 7th place (both F1-score and recall). Our highest precision for binary detection was 0.75 and it was achieved due to improving grammatical profiling with permutation tests.
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