2021
DOI: 10.48550/arxiv.2106.05256
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URLTran: Improving Phishing URL Detection Using Transformers

Abstract: Browsers often include security features to detect phishing web pages. In the past, some browsers evaluated an unknown URL for inclusion in a list of known phishing pages. However, as the number of URLs and known phishing pages continued to increase at a rapid pace, browsers started to include one or more machine learning classifiers as part of their security services that aim to better protect end users from harm. While additional information could be used, browsers typically evaluate every unknown URL using … Show more

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(1 citation statement)
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“…This proposed model has outperformed six existing classification detection models with 97.3% of detection accuracy. Maneriker et al [26] performed a comprehensive analysis of transformer models on the phishing URL detection task. Authors compared standard and domain-specific masked language models to fine-tuned BERT and RoBERTa models and proposed URLTran.…”
Section: Url-based Phishing Detectionmentioning
confidence: 99%
“…This proposed model has outperformed six existing classification detection models with 97.3% of detection accuracy. Maneriker et al [26] performed a comprehensive analysis of transformer models on the phishing URL detection task. Authors compared standard and domain-specific masked language models to fine-tuned BERT and RoBERTa models and proposed URLTran.…”
Section: Url-based Phishing Detectionmentioning
confidence: 99%