Litcius/Paper detail

An Adaptive Social Spammer Detection Model With Semi-Supervised Broad Learning

Tie Qiu, Xize Liu, Xiaobo Zhou, Wenyu Qu, Zhaolong Ning, C. L. Philip Chen

2020IEEE Transactions on Knowledge and Data Engineering36 citationsDOI

Abstract

Mobile social networks include a large number of social members who forward messages cooperatively. However, spammers post links to viruses and advertisements, or follow a large number of users, which produces many misleading messages in mobile social networks. In this paper, we propose an adaptive social spammer detection (ASSD) model. We build a spammer classifier by using a small number of labeled patterns and some unlabeled patterns. The prediction accuracy is high compared with some conventional supervised learning methods. Moreover, the time and energy required to label the identity of social members are reduced by applying ASSD. Because social spammers frequently change their behavior to deceive the spammer detection model, an incremental learning method is designed to update the spammer detection model adaptively, without retraining. We evaluate ASSD by comparing it with other supervised and semi-supervised machine learning methods using the Social Honeypot Dataset. Experimental results show that the proposed model outperforms the baseline methods in terms of recall and precision. Additionally, ASSD maintains a high detection accuracy by adaptively updating the model with newly generated social media data.

Topics & Concepts

SpammingComputer scienceMachine learningArtificial intelligenceClassifier (UML)Social mediaData miningWorld Wide WebThe InternetSpam and Phishing DetectionNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-voting