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Wuhan University Journal of Natural Sciences

, Volume 23, Issue 1, pp 79–83 | Cite as

A new anti-spam model based on e-mail address concealment technique

  • Yuqiang Zhang
  • Jingsha He
  • Jing Xu
Physics and Biology

Abstract

To deal with the junk e-mail problem caused by the e-mail address leakage for a majority of Internet users, this paper presents a new privacy protection model in which the e-mail address of the user is treated as a piece of privacy information concealed. Through an interaction pattern that involves three parties and uses an e-mail address code in the place of an e-mail address, the proposed model can prevent the e-mail address from being leaked, thus effectively resolving the junk e-mail problem. We compare the proposed anti-spam method with the filtering technology based on machine learning. The result shows that 100% spams can be filtered out in our scheme, indicating the effectiveness of the proposed anti-spam method.

Keywords

spam e-mail address protection model e-mail address code 

CLC number

TP 393 

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Copyright information

© Wuhan University and Springer-Verlag GmbH Germany, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Beijing Institute of Aerospace Control DevicesBeijingChina
  2. 2.College of Computer Science and TechnologyBeijing University of TechnologyBeijingChina
  3. 3.School of Software EngineeringBeijing University of TechnologyBeijingChina
  4. 4.Department of AutomationTsinghua UniversityBeijingChina

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