Abstract Voice phishing (vishing) attacks represent a growing threat in cybersecurity, with attackers increasingly using sophisticated audio manipulation techniques to deceive victims. This paper presents a novel approach to automatically detecting voice phishing attacks using large audio models. We develop a comprehensive framework that leverages advanced audio processing techniques and machine learning to identify malicious voice communications in real-time.
Jan 1, 2026
A multi-task relation learning approach for extracting protected health information from multilingual hacker communities.
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A domain-adaptive soft prompting framework for multi-type bias detection in news content.
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Pioneering research on the application of large language models for cybersecurity text analysis, threat detection, and security intelligence.
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A computational design science approach for improving threat mitigation through cybersecurity risk management.
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A deep transfer learning approach for creating proactive cyber threat intelligence using hacker exploit labels.
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A multi-label transformer approach for mapping exploit code to the MITRE ATT&CK framework.
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A graph embedding approach for disrupting ransomware actors on the Bitcoin blockchain.
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