SICLIRSOC-PHMar 10, 2017

NetSpam: a Network-based Spam Detection Framework for Reviews in Online Social Media

arXiv:1703.03609v1139 citations
Originality Incremental advance
AI Analysis

This addresses spam detection for online reviews, which impacts consumer decisions, but it is incremental as it builds on prior network-based methods with feature analysis.

The authors tackled the problem of detecting spam reviews in online social media by proposing NetSpam, a framework that models reviews as heterogeneous information networks and uses feature importance, resulting in improved performance over existing methods on Yelp and Amazon datasets.

Nowadays, a big part of people rely on available content in social media in their decisions (e.g. reviews and feedback on a topic or product). The possibility that anybody can leave a review provide a golden opportunity for spammers to write spam reviews about products and services for different interests. Identifying these spammers and the spam content is a hot topic of research and although a considerable number of studies have been done recently toward this end, but so far the methodologies put forth still barely detect spam reviews, and none of them show the importance of each extracted feature type. In this study, we propose a novel framework, named NetSpam, which utilizes spam features for modeling review datasets as heterogeneous information networks to map spam detection procedure into a classification problem in such networks. Using the importance of spam features help us to obtain better results in terms of different metrics experimented on real-world review datasets from Yelp and Amazon websites. The results show that NetSpam outperforms the existing methods and among four categories of features; including review-behavioral, user-behavioral, reviewlinguistic, user-linguistic, the first type of features performs better than the other categories.

Foundations

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