Ahod Alghuried (University of Central Florida), David Mohaisen (University of Central Florida)

Phishing attacks remain a critical threat to the Ethereum ecosystem, accounting for over 50% of Ethereum-related cybercrimes and prompting the rise of machine learning-based defenses. This paper introduces a comprehensive framework to enhance phishing detection in Ethereum transactions by addressing key challenges in feature selection, class imbalance, model robustness, and algorithm optimization. Through a systematic evaluation of existing approaches, we identify major gaps in practice, particularly in feature manipulation and unsustainable performance gains. Our analytical and empirical assessments demonstrate that the proposed framework improves detection generalizability and effectiveness. These findings underscore the need to refine detection strategies in response to increasingly sophisticated phishing tactics in the blockchain domain.

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CoLD: Collaborative Label Denoising Framework for Network Intrusion Detection

Shuo Yang (The University of Hong Kong), Xinran Zheng (University College London), Jinze Li (The University of Hong Kong), Jinfeng Xu (The University of Hong Kong), Edith C. H. Ngai (The University of Hong Kong)

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Hardfuzz: DataFlow-Guided On-Device Fuzzing for Microcontrollers (Registered Report)

Kai Feng (School of Computing Science, University of Glasgow), Jeremy Singer (School of Computing Science, University of Glasgow), Angelos K Marnerides (Dept. of Electrical & Computer Engineering, KIOS CoE, University of Cyprus)

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Janus: Enabling Expressive and Efficient ACLs in High-speed RDMA...

Ziteng Chen (Southeast University), Menghao Zhang (Beihang University), Jiahao Cao (Tsinghua University & Quan Cheng Laboratory), Xuzheng Chen (Zhejiang University), Qiyang Peng (Beihang University), Shicheng Wang (Unaffiliated), Guanyu Li (Unaffiliated), Mingwei Xu (Quan Cheng Laboratory & Tsinghua University & Southeast University)

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