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Beyond the Wrapper: Identifying Artifact Reliance in Static Malware Classifiers Using TRUSTEE
Modern cybersecurity relies heavily on static machine-learning-based malware classifiers. However, transformations such as packing and other non-semantic modifications applied to executable files limit their reliability. Malware classifiers often learn these unnecessary artifacts rather than the...
Fishing for Phishers: Learning-Based Phishing Detection in Ethereum Transactions
Phishing detection on Ethereum has increasingly leveraged advanced machine learning techniques to identify fraudulent transactions. However, limited attention has been given to understanding the effectiveness of feature selection strategies and the role of graph-based models in enhancing detectio...