4.7 Article

An empirical study of supervised email classification in Internet of Things: Practical performance and key influencing factors

期刊

出版社

WILEY
DOI: 10.1002/int.22625

关键词

artificial intelligence; email classification; IoT security; spam detection; supervised learning

资金

  1. National Natural Science Foundation of China [61802077]

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The Internet of Things (IoT) is adopted by many organizations for information collection and sharing. Malicious emails are a security challenge for IoT systems, and email classification using machine learning is a key solution. Empirical research shows that LibSVM and SMO-SVM perform better in email classification.
Internet of Things (IoT) is gradually adopted by many organizations to facilitate the information collection and sharing. In an organization, an IoT node usually can receive and send an email for event notification and reminder. However, unwanted and malicious emails are a big security challenge to IoT systems. For example, attackers may intrude a network by sending emails with phishing links. To mitigate this issue, email classification is an important solution with the aim of distinguishing legitimate and spam emails. Artificial intelligence especially machine learning is a major tool for helping detect malicious emails, but the performance might be fluctuant according to specific datasets. The previous research figured out that supervised learning could be acceptable in practice, and that practical evaluation and users' feedback are important. Motivated by these observations, we conduct an empirical study to validate the performance of common learning algorithms under three different environments for email classification. With over 900 users, our study results validate prior observations and indicate that LibSVM and SMO-SVM can achieve better performance than other selected algorithms.

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