Towards A Human-Ai Hybrid For Adversarial Authorship

IEEE SOUTHEASTCON 2020(2020)

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摘要
In this paper, we compare two types of masking methods for Adversarial Authorship. One method is a human-based interactive form of masking (referred to as AuthorCAAT-V) while the second method is hybrid of three state-of-the-art author masking techniques (referred to as AIM-IT). Our results show that the performances of AuthorCAAT-V and AIM-IT are equal to or better than the performances of the three state-of-the-art author masking techniques in reducing the identification rate of four well-known authorship attribution systems (AASs). Furthermore, our results show that the hybridization of AuthorCAAT-V and AIM-IT provides a greater reduction in the identification rate.
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关键词
AIM-IT,identification rate,authorship attribution systems,hybridization,AuthorCAAT-V,human-AI hybrid,adversarial authorship,human-based interactive form,author masking,privacy
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