A cyber defense system against phishing attacks with deep learning game theory and LSTM-CNN with African vulture optimization algorithm (AVOA)

Phishing attacks pose a significant threat to online security, utilizing fake websites to steal sensitive user information. Deep learning techniques, particularly convolutional neural networks (CNNs), have emerged as promising tools for detecting phishing attacks. However, traditional CNN-based image classification methods face limitations in effectively identifying fake pages. To address this challenge, we propose an image-based coding approach for detecting phishing attacks using a CNN-LSTM hybrid model. This approach combines SMOTE, an enhanced GAN based on the Autoencoder network, and swarm intelligence algorithms to balance the dataset, select informative features, and generate grayscale images. Experiments on three benchmark datasets demonstrate that the proposed method achieves superior accuracy, precision, and sensitivity compared to other techniques, effectively identifying phishing attacks and enhancing online security.

Erişime Açık
Görüntülenme
17
09.05.2024 tarihinden bu yana
İndirme
1
09.05.2024 tarihinden bu yana
Son Erişim Tarihi
04 Eylül 2024 01:06
Google Kontrol
Tıklayınız
Tam Metin
Tam Metin İndirmek için tıklayın Ön izleme
Detaylı Görünüm
Eser Adı
(dc.title)
A cyber defense system against phishing attacks with deep learning game theory and LSTM-CNN with African vulture optimization algorithm (AVOA)
Yazar
(dc.contributor.author)
Cevat Rahebi
Yayın Yılı
(dc.date.issued)
2024
Tür
(dc.type)
Makale
Özet
(dc.description.abstract)
Phishing attacks pose a significant threat to online security, utilizing fake websites to steal sensitive user information. Deep learning techniques, particularly convolutional neural networks (CNNs), have emerged as promising tools for detecting phishing attacks. However, traditional CNN-based image classification methods face limitations in effectively identifying fake pages. To address this challenge, we propose an image-based coding approach for detecting phishing attacks using a CNN-LSTM hybrid model. This approach combines SMOTE, an enhanced GAN based on the Autoencoder network, and swarm intelligence algorithms to balance the dataset, select informative features, and generate grayscale images. Experiments on three benchmark datasets demonstrate that the proposed method achieves superior accuracy, precision, and sensitivity compared to other techniques, effectively identifying phishing attacks and enhancing online security.
Açık Erişim Tarihi
(dc.date.available)
2024-05-01
Yayıncı
(dc.publisher)
Springer
Dil
(dc.language.iso)
En
Konu Başlıkları
(dc.subject)
Fake pages
Konu Başlıkları
(dc.subject)
Phishing attacks
Konu Başlıkları
(dc.subject)
SMOTE
Konu Başlıkları
(dc.subject)
Deep learning
Konu Başlıkları
(dc.subject)
Game theory
Konu Başlıkları
(dc.subject)
Convolutional neural network
Konu Başlıkları
(dc.subject)
LSTM
Konu Başlıkları
(dc.subject)
Feature selection
Konu Başlıkları
(dc.subject)
African vulture optimization algorithm (AVOA)
Tek Biçim Adres
(dc.identifier.uri)
https://hdl.handle.net/20.500.14081/2074
ISSN
(dc.identifier.issn)
1615-5262
Dergi
(dc.relation.journal)
International Journal of Information Security
Esere Katkı Sağlayan
(dc.contributor.other)
Javad Rahebi
Esere Katkı Sağlayan
(dc.contributor.other)
Mustafa Ahmed Elberri
Esere Katkı Sağlayan
(dc.contributor.other)
Ümit Tokeser
Esere Katkı Sağlayan
(dc.contributor.other)
Jose Manuel Lopez-Guede
DOI
(dc.identifier.doi)
10.1007/s10207-024-00851-x
Orcid
(dc.identifier.orcid)
0000-0001-9875-4860
wosquality
(dc.identifier.wosquality)
Q2
wosauthorid
(dc.contributor.wosauthorid)
DNF-7937-2022
Department
(dc.contributor.department)
Yazılım Mühendisliği
Wos No
(dc.identifier.wos)
WOS:001218782700002
Veritabanları
(dc.source.platform)
Wos
Veritabanları
(dc.source.platform)
Scopus
Analizler
Yayın Görüntülenme
Yayın Görüntülenme
Erişilen ülkeler
Erişilen şehirler
6698 sayılı Kişisel Verilerin Korunması Kanunu kapsamında yükümlülüklerimiz ve çerez politikamız hakkında bilgi sahibi olmak için alttaki bağlantıyı kullanabilirsiniz.
Tamam

creativecommons
Bu site altında yer alan tüm kaynaklar Creative Commons Alıntı-GayriTicari-Türetilemez 4.0 Uluslararası Lisansı ile lisanslanmıştır.
Platforms