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Accepted to NLP4PI @ ACL 2025

Adaptive Linguistic Prompting (ALP) Enhances Phishing Webpage Detection in Multimodal Large Language Models

Atharva Bhargude, Chandler Haney, Dave Yoon, Ishan Gonehal, Kaustubh Vinnakota

Abstract

Phishing attacks represent a significant cybersecurity threat, necessitating adaptive detection techniques. This study explores few-shot Adaptive Linguistic Prompting (ALP) in detecting phishing webpages through the multimodal capabilities of state-of-the-art large language models (LLMs) such as GPT-4o and Gemini 1.5 Pro. ALP is a structured semantic reasoning method that guides LLMs to analyze textual deception by breaking down linguistic patterns, detecting urgency cues, and identifying manipulative diction commonly found in phishing content. By integrating textual, visual, and URL-based analysis, we propose a unified model capable of identifying sophisticated phishing attempts. Our experiments demonstrate that ALP significantly enhances phishing detection accuracy, achieving an F1-score of 0.93—surpassing traditional approaches.

Citation

Atharva Bhargude, Chandler Haney, Dave Yoon, Ishan Gonehal, Kaustubh Vinnakota. "Adaptive Linguistic Prompting (ALP) Enhances Phishing Webpage Detection in Multimodal Large Language Models". Accepted to NLP4PI @ ACL 2025.

Details

Conference
Accepted to NLP4PI @ ACL 2025
Authors
5 authors

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