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Journal ArticleDOI

An optimization-based deep belief network for the detection of phishing e-mails

M Arshey, +1 more
- 16 Jul 2020 - 
- Vol. 54, Iss: 4, pp 529-549
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TLDR
The e-mail phishing detection is performed in this paper using the optimization-based deep learning networks and it is clear that the proposed method acquired the maximal accuracy, sensitivity and specificity compared with the existing methods.
Abstract
Phishing is a serious cybersecurity problem, which is widely available through multimedia, such as e-mail and Short Messaging Service (SMS) to collect the personal information of the individual. However, the rapid growth of the unsolicited and unwanted information needs to be addressed, raising the necessity of the technology to develop any effective anti-phishing methods.,The primary intention of this research is to design and develop an approach for preventing phishing by proposing an optimization algorithm. The proposed approach involves four steps, namely preprocessing, feature extraction, feature selection and classification, for dealing with phishing e-mails. Initially, the input data set is subjected to the preprocessing, which removes stop words and stemming in the data and the preprocessed output is given to the feature extraction process. By extracting keyword frequency from the preprocessed, the important words are selected as the features. Then, the feature selection process is carried out using the Bhattacharya distance such that only the significant features that can aid the classification are selected. Using the selected features, the classification is done using the deep belief network (DBN) that is trained using the proposed fractional-earthworm optimization algorithm (EWA). The proposed fractional-EWA is designed by the integration of EWA and fractional calculus to determine the weights in the DBN optimally.,The accuracy of the methods, naive Bayes (NB), DBN, neural network (NN), EWA-DBN and fractional EWA-DBN is 0.5333, 0.5455, 0.5556, 0.5714 and 0.8571, respectively. The sensitivity of the methods, NB, DBN, NN, EWA-DBN and fractional EWA-DBN is 0.4558, 0.5631, 0.7035, 0.7045 and 0.8182, respectively. Likewise, the specificity of the methods, NB, DBN, NN, EWA-DBN and fractional EWA-DBN is 0.5052, 0.5631, 0.7028, 0.7040 and 0.8800, respectively. It is clear from the comparative table that the proposed method acquired the maximal accuracy, sensitivity and specificity compared with the existing methods.,The e-mail phishing detection is performed in this paper using the optimization-based deep learning networks. The e-mails include a number of unwanted messages that are to be detected in order to avoid the storage issues. The importance of the method is that the inclusion of the historical data in the detection process enhances the accuracy of detection.

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Citations
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Journal ArticleDOI

Deep Cybersecurity: A Comprehensive Overview from Neural Network and Deep Learning Perspective

TL;DR: In this paper, a comprehensive overview from the perspective of these neural networks and deep learning techniques according to today's diverse needs is presented, and the applicability of these techniques in various cybersecurity tasks such as intrusion detection, identification of malware or botnets, phishing, predicting cyberattacks, e.g. denial of service, fraud detection or cyberanomalies, etc.
Journal ArticleDOI

A Systematic Literature Review on Phishing Email Detection Using Natural Language Processing Techniques

TL;DR: This study aims to systematically review and synthesise research on the use of NLP for detecting phishing emails, and finds that the main research area in phishing detection studies is feature extraction and selection, followed by methods for classifying and optimizing the detection of phishingmails.
Journal ArticleDOI

Applications of deep learning for phishing detection: a systematic literature review

TL;DR: In this paper , the authors performed a systematic literature review (SLR) to identify, assess, and synthesize the results on deep learning approaches for phishing detection as reported by the selected scientific publications.
Journal ArticleDOI

Deep Learning for Phishing Detection: Taxonomy, Current Challenges and Future Directions

- 01 Jan 2022 - 
TL;DR: In this paper , a taxonomy of deep learning algorithm for phishing detection is proposed by examining 81 selected papers using a systematic literature review approach. But, the proposed taxonomy is not sufficient for all the existing literature.
Journal ArticleDOI

Deep Learning for Phishing Detection: Taxonomy, Current Challenges and Future Directions

TL;DR: A taxonomy of deep learning algorithm for phishing detection by examining 81 selected papers using a systematic literature review approach and an empirical analysis showed that the common issues among most of the state-of-the-art deep learning algorithms are manual parameter-tuning, long training time, and deficient detection accuracy.
References
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