This research presents a robust deep learning framework designed to identify and classify phishing websites through the synergistic analysis of visual and textual features. The proposed model integrates Convolutional Neural Networks (CNNs) for image analysis and Recurrent Neural Networks (RNNs) for text processing, providing a comprehensive examination of web content. By leveraging the strengths of both modalities, the framework enhances accuracy in distinguishing between legitimate and malicious sites. The deep learning approach facilitates automatic feature extraction, enabling the system to adapt dynamically to evolving phishing tactics.
Through the fusion of visual and textual analysis, our framework offers a more nuanced understanding of deceptive web elements, thereby contributing to improved detection capabilities. The incorporation of CNNs and RNNs ensures that the model captures intricate patterns in both images and text, allowing for a holistic evaluation of the webpage's legitimacy. This innovative approach holds promise for bolstering cybersecurity defenses, providing a multi-faceted and adaptive solution to the challenge of phishing website identification.
The experimental results demonstrate the efficacy of the proposed framework in achieving high accuracy and robust performance across diverse datasets. By addressing the limitations of traditional methods and embracing a holistic approach, our model showcases potential applications in real-world scenarios, contributing to the advancement of cybersecurity measures against evolving phishing threats.
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