作者
Mika Juuti, Bo Sun, Tatsuya Mori, N Asokan
发表日期
2018/8/8
图书
European Symposium on Research in Computer Security
页码范围
132-151
出版商
Springer International Publishing
简介
Automatically generated fake restaurant reviews are a threat to online review systems. Recent research has shown that users have difficulties in detecting machine-generated fake reviews hiding among real restaurant reviews. The method used in this work (char-LSTM) has one drawback: it has difficulties staying in context, i.e. when it generates a review for specific target entity, the resulting review may contain phrases that are unrelated to the target, thus increasing its detectability. In this work, we present and evaluate a more sophisticated technique based on neural machine translation (NMT) with which we can generate reviews that stay on-topic. We test multiple variants of our technique using native English speakers on Amazon Mechanical Turk. We demonstrate that reviews generated by the best variant have almost optimal undetectability (class-averaged F-score 47%). We conduct a user study with …
引用总数
201820192020202120222023202411457781
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M Juuti, B Sun, T Mori, N Asokan - European Symposium on Research in Computer …, 2018