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Editors: Edward Raff, Ethan M. Rudd
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Adversarial Machine Learning Attacks on Financial Reporting via Maximum Violated Multi-Objective Attack
; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:1-27
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Text2VLM: Adapting Text-Only Datasets to Evaluate Alignment Training in Visual Language Models
Gabriel Downer, Sean Craven, Damian Ruck, Jake Thomas; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:28-41
Democratizing ML for Enterprise Security: A Self-Sustained Attack Detection Framework
Sadegh Momeni, Ge Zhang, Birkett Huber, Hamza Harkous, Sam Lipton, Benoit Seguin, Yanis Pavlidis; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:42-65
Red Teaming AI Red Teaming
Subhabrata Majumdar, Brian Pendleton, Abhishek Gupta; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:66-86
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Towards a Generalisable Cyber Defence Agent for Real-World Computer Networks
Tim Dudman, Martyn Bull; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:87-109
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Causal Reinforcement Learning for Labelling Optimization in Cyber Anomaly Detection
Susan Babirye, Gong Yu, Shimadzu Hideyasu, Kyriakopoulos Konstantinos; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:110-134
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PD-AutoR: Towards Automatic Restoration of Poisoned Examples in Machine Learning
Haoyang Chen, Xinyun Liu, Xu Zhou, Ziao Jiao, Xinyu Lei; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:135-167
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ShadowLogic: Backdoors in Any Whitebox LLM
Kasimir Schulz, Amelia Kawasaki, Leo Ring; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:168-179
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ScamAgents: How AI Agents Can Simulate Human-Level Scam Calls
Sanket Badhe; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:180-199
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A Framework for Rapidly Developing and Deploying Protection Against Large Language Model Attacks
Adam Swanda, Amy Chang, Alexander Chen, Fraser Burch, Paul Kassianik, Konstantin Berlin; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:200-221
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Evaluating LLM Generated Detection Rules in Cybersecurity
Anna Bertiger, Bobby Filar, Aryan Luthra, Stefano Meschiari, Aiden Mitchell, Sam Scholten, Vivek Sharath; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:222-238
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RoleSentry: A Multi-Stage Framework for Explainable Detection of AWS Role Chaining Attacks
Godwin Attigah, Austin Gansz; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:239-264
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MADAR: Efficient Continual Learning for Malware Analysis with Distribution-Aware Replay
Mohammad Saidur Rahman, Scott Coull, Qi Yu, Matthew Wright; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:265-291
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RIG-RAG: A GraphRAG Inspired Approach to Agentic Cloud Infrastructure
Benji Lilley, Brian Mitchell, Spiros Mancoridis; Proceedings of the 2025 Conference on Applied Machine Learning for Information Security, PMLR 299:292-311
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