Journal ArticleUnknown
Analysis of Optimized Machine Learning and Deep Learning Techniques for Spam Detection
Author Affiliations
Jagannath University
Published In2021 IEEE International IOT, Electronics and Mechatronics Conference (IEMTRONICS)
Year2021
Citations31
Abstract
Spam and non-spam email identification are one of the most challenging tasks for both email service providers and consumers. The spammers try to spread misleading facts through irritating messages by attracting user's attention. Several spam identification-models have previously been proposed and tested but the recorded accuracy has shown that further work in this direction is needed to achieve improved accuracy, low training time, and less error rate. In this research work, we have proposed a model that classifies the e-mail into spam and ham. DBSCAN and Isolation Forest are used to identify the extreme values outside of the specific range. Heatmap, Recursive Feature Elimination, and Chi-Square feature selection techniques are used to select the effective features. The proposed model is…
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