高频感应清单

Lei Liu, Tongxi Gong, Jianjun Shi, Yi Guo
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摘要

为了帮助外语学习者掌握英语词汇,人们编制了许多高频词汇表。尽管这些单词表被广泛使用,但它们并没有考虑单词的含义。外语学习者不清楚他们应该首先关注哪些词义。为了解决这个问题,我们使用 BERT 模型对当代美国英语语料库 (COCA) 和英国国家语料库 (BNC) 进行了语义注释,注释准确率很高。从这些注释语料库中,我们计算了不同义项的语义频率,并筛选出 5000 个义项,创建了高频义项列表。随后,我们检查了该列表的有效性,并将其与已有的有影响力词表进行了比较。该列表有三个显著特点。首先,它在不同语料库中实现了稳定的覆盖。其次,它能更准确地识别高频词项。它与 GSL、NGSL 和 New-GSL 等词表的覆盖率相当,但词条数量明显较少。特别是,它包括了过去被排除在高频词列表之外的日常用语,而无需人工调整。第三,它清楚地描述了哪些词义使用频率最高,因此初学者应重点学习。这项研究是对大型语料库进行语义注释并根据语义频率创建词表的一项开创性工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A high-frequency sense list
A number of high-frequency word lists have been created to help foreign language learners master English vocabulary. These word lists, despite their widespread use, did not take word meaning into consideration. Foreign language learners are unclear on which meanings they should focus on first. To address this issue, we semantically annotated the Corpus of Contemporary American English (COCA) and the British National Corpus (BNC) with high accuracy using a BERT model. From these annotated corpora, we calculated the semantic frequency of different senses and filtered out 5000 senses to create a High-frequency Sense List. Subsequently, we checked the validity of this list and compared it with established influential word lists. This list exhibits three notable characteristics. First, it achieves stable coverage in different corpora. Second, it identifies high-frequency items with greater accuracy. It achieves comparable coverage with lists like GSL, NGSL, and New-GSL but with significantly fewer items. Especially, it includes everyday words that used to fall off high-frequency lists without requiring manual adjustments. Third, it describes clearly which senses are most frequently used and therefore should be focused on by beginning learners. This study represents a pioneering effort in semantic annotation of large corpora and the creation of a word list based on semantic frequency.
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