4.5 Article

Twitter spam detection: Survey of new approaches and comparative study

Journal

COMPUTERS & SECURITY
Volume 76, Issue -, Pages 265-284

Publisher

ELSEVIER ADVANCED TECHNOLOGY
DOI: 10.1016/j.cose.2017.11.013

Keywords

Witter; Spam detection; Machine learning; Social media; Security

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Twitter spam has long been a critical but difficult problem to be addressed. So far, researchers have proposed many detection and defence methods in order to protect Witter users from spamming activities. Particularly in the last three years, many innovative methods have been developed, which have greatly improved the detection accuracy and efficiency compared to those which were proposed three years ago. Therefore, we are motivated to work out a new survey about 'Witter spam detection techniques. This survey includes three parts: 1) A literature review on the state-of-art: this part provides detailed analysis (e.g. taxonomies and biases on feature selection) and discussion (e.g. pros and cons on each typical method); 2) Comparative studies: we will compare the performance of various typical methods on a universal testbed (i.e. same datasets and ground truths) to provide a quantitative understanding of current methods; 3) Open issues: the final part is to summarise the unsolved challenges in current Witter spam detection techniques. Solutions to these open issues are of great significance to both academia and industries. Readers of this survey may include those who do or do not have expertise in this area and those who are looking for deep understanding of this field in order to develop new methods. (C) 2017 Elsevier Ltd. All rights reserved.

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