bit.ly/malicious: Deep Dive into Short URL based e-Crime Detection
Neha Gupta, Anupama Aggarwal, Ponnurangam Kumaraguru

TL;DR
This paper analyzes the effectiveness of Bitly's short URL spam detection, revealing weaknesses in current practices and proposing features for improved classification of malicious links, achieving 86.41% accuracy.
Contribution
It provides the first large-scale analysis of Bitly's spam detection effectiveness and introduces a feature set for malicious URL classification.
Findings
Bitly's spam detection is underutilized and ineffective.
Suspicious accounts often go unnoticed despite malicious activity.
Proposed features can classify malicious URLs with 86.41% accuracy.
Abstract
Existence of spam URLs over emails and Online Social Media (OSM) has become a massive e-crime. To counter the dissemination of long complex URLs in emails and character limit imposed on various OSM (like Twitter), the concept of URL shortening has gained a lot of traction. URL shorteners take as input a long URL and output a short URL with the same landing page (as in the long URL) in return. With their immense popularity over time, URL shorteners have become a prime target for the attackers giving them an advantage to conceal malicious content. Bitly, a leading service among all shortening services is being exploited heavily to carry out phishing attacks, work-from-home scams, pornographic content propagation, etc. This imposes additional performance pressure on Bitly and other URL shorteners to be able to detect and take a timely action against the illegitimate content. In this study,…
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Taxonomy
TopicsSpam and Phishing Detection · Web Data Mining and Analysis · Advanced Malware Detection Techniques
