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“Deep Learning Model for Driver Behavior Detection in Cyber-Physical System-Based Intelligent Transport Systems” has been added to your cart. View cart
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Home Projects Python BGL-PhishNet: Phishing Website Detection Using Hybrid Model-BERT, GNN, and LightGBM
An Efficient and Generic Construction of Public Key Encryption with Equality Test Under the Random Oracle Model
An Efficient and Generic Construction of Public Key Encryption with Equality Test Under the Random Oracle Model ₹5,500.00
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Detecting Oil Spills at Marine Environment Using Automatic Identification System (AIS) And Satellite Datasets
Detecting Oil Spills at Marine Environment Using Automatic Identification System (AIS) And Satellite Datasets ₹5,500.00

BGL-PhishNet: Phishing Website Detection Using Hybrid Model-BERT, GNN, and LightGBM

₹5,500.00

Aim:

This study aims to develop an efficient and scalable system for multi-class classification of URLs into Phishing, Benign, Defacement, and Malware categories using the lightweight and context-aware DistilBERT model.

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Categories: Machine Learning, Python Tags: Agriculture, classification, cybersecurity, Data Analytics, Data Science, DistilBERT, Machine Learning, Phishing, Python Projects, residual pipelining, URL detection
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Description

Aim:

Ā  Ā  Ā  Ā  This study aims to develop an efficient and scalable system for multi-class classification of URLs into Phishing, Benign, Defacement, and Malware categories using the lightweight and context-aware DistilBERT model.

Abstract:

Ā  Ā  Ā  Ā  Ā URLs are common vectors for a range of cyber threats, including phishing, defacement, and malware distribution. Traditional binary detection systems often fall short in recognizing and differentiating between multiple threat types. This research proposes a DistilBERT-based framework that performs multi-class classification of URLs into four categories: Phishing, Benign, Defacement, and Malware. DistilBERT’s ability to understand deep contextual relationships in textual data enables it to capture subtle cues embedded in URLs, allowing for accurate and efficient detection without the need for complex or high-overhead models.

Proposed Method:

Ā  Ā  Ā  Ā  Ā This study proposes a multi-class classification system using the DistilBERT model to categorize URLs as Phishing, Benign, Defacement, or Malware. The model is fine-tuned on a labeled dataset of URLs, where each URL belongs to one of the four classes. DistilBERT processes the tokenized URL strings to extract semantic features for effective classification across these threat categories.

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