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Deep convolutional forest: a dynamic deep ensemble approach for spam detection in text.

Mai A Shaaban1, Yasser F Hassan2, Shawkat K Guirguis3

  • 1Department of Mathematics and Computer Science, Faculty of Science, Alexandria University, Alexandria, Egypt.

Complex & Intelligent Systems
|May 2, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces a dynamic deep ensemble model for effective spam detection, significantly improving the filtering of phishing attacks and misinformation. The model achieves over 98% accuracy, enhancing online security and reducing user risks.

Keywords:
Deep learningEnsemble methodsMachine learningSpam classificationText messages

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Area of Science:

  • Computer Science
  • Information Security

Background:

  • Mobile messaging services facilitate social engineering attacks like phishing, leading to sensitive data theft.
  • Misinformation and rumors, especially during health crises like COVID-19, spread rapidly on social media, causing public fear.
  • Current spam classification methods, including machine learning and deep learning, face limitations such as manual feature engineering and high computational costs.

Purpose of the Study:

  • To develop an advanced spam detection model that overcomes the limitations of existing approaches.
  • To introduce a dynamic deep ensemble model capable of automatic feature extraction and adaptive complexity for enhanced spam classification.

Main Methods:

  • The proposed model integrates convolutional and pooling layers for automatic feature extraction.
  • It utilizes base classifiers like random forests and extremely randomized trees.
  • Ensemble learning techniques, including boosting and bagging, are employed to enhance classification performance.

Main Results:

  • The dynamic deep ensemble model achieved a high precision, recall, f1-score, and accuracy of 98.38%.
  • The model demonstrates superior performance in classifying texts as spam or legitimate.

Conclusions:

  • The developed dynamic deep ensemble model offers an efficient and accurate solution for spam detection.
  • This approach effectively mitigates risks associated with phishing and misinformation spread through digital communication channels.