Improving spam email classification accuracy using ensemble techniques: a stacking approach
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https://hdl.handle.net/10037/31848Dato
2023-09-20Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Spam emails pose a substantial cybersecurity danger, necessitating accurate classification to reduce unwanted messages and
mitigate risks. This study focuses on enhancing spam email classification accuracy using stacking ensemble machine learning
techniques.We trained and tested five classifiers: logistic regression, decision tree, K-nearest neighbors (KNN), Gaussian naive
Bayes and AdaBoost. To address overfitting, two distinct datasets of spam emails were aggregated and balanced. Evaluating
individual classifiers based on recall, precision and F1 score metrics revealed AdaBoost as the top performer. Considering
evolving spam technology and new message types challenging traditional approaches, we propose a stacking method. By
combining predictions from multiple base models, the stacking method aims to improve classification accuracy. The results
demonstrate superior performance of the stacking method with the highest accuracy (98.8%), recall (98.8%) and F1 score
(98.9%) among tested methods. Additional experiments validated our approach by varying dataset sizes and testing different
classifier combinations. Our study presents an innovative combination of classifiers that significantly improves accuracy,
contributing to the growing body of research on stacking techniques. Moreover, we compare classifier performances using
a unique combination of two datasets, highlighting the potential of ensemble techniques, specifically stacking, in enhancing
spam email classification accuracy. The implications extend beyond spam classification systems, offering insights applicable
to other classification tasks. Continued research on emerging spam techniques is vital to ensure long-term effectiveness.
Forlag
Springer NatureSitering
Adnan, Imam, Javed, Murtza. Improving spam email classification accuracy using ensemble techniques: a stacking approach. International Journal of Information Security. 2023Metadata
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Copyright 2023 The Author(s)