从LIWC和情感分析的角度看作者归属与对抗作者

Joshua Gaston
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引用次数: 6

摘要

虽然文体学已经被有效地用于作者归属,但越来越多的方法被开发出来,允许作者掩盖他们的身份[2,13]。在本文中,我们研究了非传统特征集在作者归属中的使用。通过使用非传统的特征集,可以揭示那些试图逃避基于更传统特征集的作者归属系统检测的敌对作者的身份。此外,我们还演示了如何使用GEFeS(遗传和进化特征选择)来进化由两个非传统特征集组成的高性能混合特征集,用于作者归属:LIWC(语言查询和字数统计)和情感分析。这些杂交种能够将[2]中呈现的测试集上的对抗有效性降低约33.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Authorship Attribution vs. Adversarial Authorship from a LIWC and Sentiment Analysis Perspective
Although Stylometry has been effectively used for Authorship Attribution, there is a growing number of methods being developed that allow authors to mask their identity [2, 13]. In this paper, we investigate the usage of non-traditional feature sets for Authorship Attribution. By using non-traditional feature sets, one may be able to reveal the identity of adversarial authors who are attempting to evade detection from Authorship Attribution systems that are based on more traditional feature sets. In addition, we demonstrate how GEFeS (Genetic & Evolutionary Feature Selection) can be used to evolve high-performance hybrid feature sets composed of two non-traditional feature sets for Authorship Attribution: LIWC (Linguistic Inquiry & Word Count) and Sentiment Analysis. These hybrids were able to reduce the Adversarial Effectiveness on a test set presented in [2] by approximately 33.4%.
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