Mail_Alert: Online Suspicious URL Detection of Tweets from Twitter Public Timeline
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.3, No. 4)Publication Date: 2014-04-30
Authors : SPOORTHI K; SARVAMANGALA D R;
Page : 817-824
Keywords : Twitter; Trained SVM classifier; share URLs; mail_alert;
Abstract
Twitter, a famous social networking site where thousands of users use it to tweet to the world, is prone to spam, phishing, and malware distribution. Tweets are the atomic building blocks of Twitter, 140-character status updates with additional associated metadata. People tweet for a variety of reasons about a multitude of topics. Traditional spam detection scheme for twitter are ineffective against feature fabrications or consume much time and resources. Conventional suspicious URL detection schemes utilize several features including lexical features of URLs, URL redirection, HTML content, and dynamic behavior. However, evading techniques such as time-based evasion and crawler evasion exist. In this paper, we propose a suspicious URL detection system for Twitter in which numerous tweets from the Twitter public timeline is collected and dynamic trained classifier is been built to classify among suspicious and the real ones. Timelines are collections of Tweets, ordered with the most recent first. Evaluation results show that our classifier accurately and efficiently detects suspicious URLs. A near real-time system for classifying suspicious URLs in the Twitter stream. In this paper I propose to block the malicious URLs and provide mail alert for malicious URLs occur in the twitter stream.
Other Latest Articles
- Efficient Data Storage and Searching for Location Based Services using Quadtrees and H-ordering?
- Data Security using Hadoop on Cloud Computing
- Energy Efficient Data Gathering in Wireless Sensor Network?
- A Revived Survey of Various Credit Card Fraud Detection Techniques?
- A Comparative Analysis of OLSR, DSR and ZRP Routing Protocols in MANETs
Last modified: 2014-04-26 00:36:57