Trusting spam reporters

Author:

Zheleva Elena1,Kolcz Aleksander2,Getoor Lise1

Affiliation:

1. University of Maryland, College Park, College Park, MD

2. Microsoft Live Labs, Redmond, WA

Abstract

Spam is a growing problem; it interferes with valid email and burdens both email users and service providers. In this work, we propose a reactive spam-filtering system based on reporter reputation for use in conjunction with existing spam-filtering techniques. The system has a trust-maintenance component for users, based on their spam-reporting behavior. The challenge that we consider is that of maintaining a reliable system, not vulnerable to malicious users, that will provide early spam-campaign detection to reduce the costs incurred by users and systems. We report on the utility of a reputation system for spam filtering that makes use of the feedback of trustworthy users. We evaluate our proposed framework, using actual complaint feedback from a large population of users, and validate its spam-filtering performance on a collection of real email traffic over several weeks. To test the broader implication of the system, we create a model of the behavior of malicious reporters, and we simulate the system under various assumptions using a synthetic dataset.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

Reference37 articles.

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3. DCC. 2006. Dcc reputations. http://www.rhyolite.com/anti-spam/dcc/reputations.html. DCC. 2006. Dcc reputations. http://www.rhyolite.com/anti-spam/dcc/reputations.html.

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