Social Media Anomaly Detection: Challenges and Solutions

Yan Liu, S. Chawla
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引用次数: 3

Abstract

Anomaly detection is of critical importance to prevent malicious activities such as bullying, terrorist attack planning, and fraud information dissemination. With the recent popularity of social media, new types of anomalous behaviors arise, causing concerns from various parties. While a large body of work haven been dedicated to traditional anomaly detection problems, we observe a surge of research interests in the new realm of social media anomaly detection. In this tutorial, we survey existing work on social media anomaly detection, focusing on the new anomalous phenomena in social media and most recent techniques to detect those special types of anomalies. We aim to provide a general overview of the problem domain, common formulations, existing methodologies and future directions.
社交媒体异常检测:挑战与解决方案
异常检测对于防止欺凌、恐怖袭击策划和欺诈信息传播等恶意活动至关重要。随着近年来社交媒体的普及,出现了新的异常行为类型,引起了各方的关注。虽然大量的工作一直致力于传统的异常检测问题,但我们观察到对社交媒体异常检测新领域的研究兴趣激增。在本教程中,我们调查了社交媒体异常检测的现有工作,重点关注社交媒体中的新异常现象和检测这些特殊类型异常的最新技术。我们的目标是提供问题领域的总体概述,常见的公式,现有的方法和未来的方向。
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