IS

Zeng, Daniel

Topic Weight Topic Terms
0.294 detection deception assessment credibility automated fraud fake cues detecting results screening study detect design indicators
0.159 users user new resistance likely benefits potential perspective status actual behavior recognition propose user's social
0.104 data classification statistical regression mining models neural methods using analysis techniques performance predictive networks accuracy

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Abbasi, Ahmed 1 Chen, Yan 1 Chen, Hsinchun 1 Nunamaker, Jr., Jay F. 1
Zahedi, Fatemeh Mariam 1
credibility assessment 1 design science 1 data mining 1 genre theory 1
Internet fraud 1 phishing websites 1 phishing 1 website genres 1

Articles (1)

Enhancing Predictive Analytics for Anti-Phishing by Exploiting Website Genre Information (Journal of Management Information Systems, 2015)
Authors: Abstract:
    Phishing websites continue to successfully exploit user vulnerabilities in household and enterprise settings. Existing anti-phishing tools lack the accuracy and generalizability needed to protect Internet users and organizations from the myriad of attacks encountered daily. Consequently, users often disregard these tools' warnings. In this study, using a design science approach, we propose a novel method for detecting phishing websites. By adopting a genre theoretic perspective, the proposed genre tree kernel method utilizes fraud cues that are associated with differences in purpose between legitimate and phishing websites, manifested through genre composition and design structure, resulting in enhanced anti-phishing capabilities. To evaluate the genre tree kernel method, a series of experiments were conducted on a testbed encompassing thousands of legitimate and phishing websites. The results revealed that the proposed method provided significantly better detection capabilities than state-of-the-art anti-phishing methods. An additional experiment demonstrated the effectiveness of the genre tree kernel technique in user settings; users utilizing the method were able to better identify and avoid phishing websites, and were consequently less likely to transact with them. Given the extensive monetary and social ramifications associated with phishing, the results have important implications for future anti-phishing strategies. More broadly, the results underscore the importance of considering intention/purpose as a critical dimension for automated credibility assessment: focusing not only on the ÒwhatÓ but rather on operationalizing the ÒwhyÓ into salient detection cues. > >