Multilingual author profiling using word embedding averages and SVMs

R. Bayot, Teresa Gonçalves
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引用次数: 17

Abstract

This paper describes an experiment done to investigate author profiling of tweets in English and Spanish, particularly for cross genre evaluation. Profiling consists of age and gender classification. The training sets were taken from tweets while genres for evaluation come from blogs, hotel reviews, other tweets collected in a different time, as well as other social media. Comparisons were done between tfidf as a baseline and average of word vectors, using a Support Vector Machine algorithm. Results show that using average of word vectors outperforms tfidf in most cross genre problems for age and gender.
使用词嵌入平均值和支持向量机的多语种作者分析
本文描述了一项研究英语和西班牙语推文作者分析的实验,特别是跨体裁评估。分析包括年龄和性别分类。训练集来自推文,而用于评估的类型来自博客、酒店评论、不同时间收集的其他推文以及其他社交媒体。使用支持向量机算法将tfidf作为基线和单词向量的平均值进行比较。结果表明,在大多数跨体裁的年龄和性别问题中,使用单词向量的平均值优于tfidf。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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