一个在南非新闻数据上训练的词嵌入

Martin Canaan Mafunda, M. Schuld, K. Durrheim, Sindisiwe Mazibuko
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引用次数: 3

摘要

本文介绍了一项研究的结果,该研究开发并测试了在南非新闻文章数据集上训练的词嵌入。词嵌入是一种算法生成的词表示,可以用来分析训练词嵌入的语料库。本文所基于的嵌入是使用Word2Vec算法生成的,该算法在2018年1月至2021年3月期间发表的130万篇非洲新闻文章的数据集上进行了训练,该数据集包含约12.4万个独特词汇。然后测试这种Word2Vec南非新闻嵌入的功效,并与全球使用的GloVe算法提供的功效进行比较。对局部Word2Vec嵌入的测试表明,它的效果很好,与GloVe的效果相当。本研究生成的南非新闻词嵌入免费供公众使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A word embedding trained on South African news data
This article presents results from a study that developed and tested a word embedding trained on a dataset of South African news articles. A word embedding is an algorithm-generated word representation that can be used to analyse the corpus of words that the embedding is trained on. The embedding on which this article is based was generated using the Word2Vec algorithm, which was trained on a dataset of 1.3 million African news articles published between January 2018 and March 2021, containing a vocabulary of approximately 124,000 unique words. The efficacy of this Word2Vec South African news embedding was then tested, and compared to the efficacy provided by the globally used GloVe algorithm. The testing of the local Word2Vec embedding showed that it performed well, with similar efficacy to that provided by GloVe. The South African news word embedding generated by this study is freely available for public use.
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