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Negative Deceptive Opinion Spam

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TLDR
This work creates and study the first dataset of deceptive opinion spam with negative sentiment reviews, and finds that standard n-gram text categorization techniques can detect negative deceptive opinions spam with performance far surpassing that of human judges.
Abstract
The rising influence of user-generated online reviews (Cone, 2011) has led to growing incentive for businesses to solicit and manufacture DECEPTIVE OPINION SPAM—fictitious reviews that have been deliberately written to sound authentic and deceive the reader. Recently, Ott et al. (2011) have introduced an opinion spam dataset containing gold standard deceptive positive hotel reviews. However, the complementary problem of negative deceptive opinion spam, intended to slander competitive offerings, remains largely unstudied. Following an approach similar to Ott et al. (2011), in this work we create and study the first dataset of deceptive opinion spam with negative sentiment reviews. Based on this dataset, we find that standard n-gram text categorization techniques can detect negative deceptive opinion spam with performance far surpassing that of human judges. Finally, in conjunction with the aforementioned positive review dataset, we consider the possible interactions between sentiment and deception, and present initial results that encourage further exploration of this relationship.

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DissertationDOI

Attack-Resistant Digital Reputation and Privacy Assessment in Social Media

Yongbo Zeng
TL;DR: A novel angle of fake review detection is introduced, which is called Equal Rating Opportunity (ERO) principle, and a quantitative online social network privacy risk analysis framework – TAPE is proposed, based on ERO principle, ERO analysis is proposed.
Book ChapterDOI

A Method for User Avatar Authenticity Based on Multi-feature Fusion

TL;DR: This paper attempts to automatically discriminate the authenticity of the user’s uploaded person avatar based on the machine learning method by combining user- based features, avatar features, and text-based features.
Journal ArticleDOI

Deceptive Opinions Detection Using New Proposed Arabic Semantic Features

TL;DR: In this paper, a semi-supervised Support Vector Machine classifier (SVM) was used to detect deceptive opinions spam in Arabic text, where spammers try to gain or to profit from posting untruthful reviews.
Book ChapterDOI

Formulaic Sequences as a Potential Marker of Deception: A Preliminary Investigation

TL;DR: The authors found that deception is more cognitively demanding than truth-telling, and that individuals may seek to compensate for the additional cognitive demands of lying by increasing their reliance on formulaic sequences.
Journal ArticleDOI

UNIDECOR: A Unified Deception Corpus for Cross-Corpus Deception Detection

Aswathy Velutharambath, +1 more
- 05 Jun 2023 - 
TL;DR: In this paper , a unified deception corpus (UNIDECOR) is presented, which includes domains like social media reviews, court testimonials, opinion statements on specific topics, and deceptive dialogues from online strategy games.
References
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Journal ArticleDOI

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TL;DR: It is proposed that people judge others' deceptions more harshly than their own and that this double standard in evaluating deceit can explain much of the accumulated literature.
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