Publication | Closed Access
Identifying suspicious URLs
499
Citations
20
References
2009
Year
Unknown Venue
Abuse DetectionEngineeringMachine LearningInformation ForensicsText MiningNatural Language ProcessingSpam FilteringInformation RetrievalData ScienceData MiningLink AnalysisCriminal ScamsThreat DetectionKnowledge DiscoveryLabeled UrlsComputer ScienceSuspicious UrlsBotnet DetectionOnline Learning ApproachesPhishing
This paper explores online learning approaches for detecting malicious Web sites (those involved in criminal scams) using lexical and host-based features of the associated URLs. We show that this application is particularly appropriate for online algorithms as the size of the training data is larger than can be efficiently processed in batch and because the distribution of features that typify malicious URLs is changing continuously. Using a real-time system we developed for gathering URL features, combined with a real-time source of labeled URLs from a large Web mail provider, we demonstrate that recently-developed online algorithms can be as accurate as batch techniques, achieving classification accuracies up to 99% over a balanced data set.
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