"TRAPShield Supporting Datasets"
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https://ieee-dataport.org/documents/trapshield-supporting-datasets
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资源简介:
"This is the Supporting datasets of our submission, entitled \"TRAPShield: Real-Time APT File Theft Defense with Multi-Domain Behavioral Characterization and Transparent Decoy Redirection\". Our submission presents a novel APT file theft defense framework that directly targets the ultimate goal of the attack, enabling effective protection of critical files. TRAPShield identifies malicious access to sensitive files through multi-granularity, multi-domain behavioral characterization, combined with an adaptive identity authentication mechanism. It transparently intercepts malicious accesses and redirects them to highly similar deceptive decoy files. By leveraging contextual information around decoy-triggering points, TRAPShield enables continuous tracking of the entire attack campaign without file leaking. We conduct extensive experiments on three groups of datasets constructed from large-scale real-world APT reports, covering diverse APT file theft modalities. Results demonstrate that TRAPShield achieves F1 scores exceeding 90.95% in identifying file theft behaviors, and maintains zero false negative rates with authentication required for less than 5% of accesses. For malicious accesses, TRAPShield misguides them to decoys in an average of 0.125 ms, preventing the exfiltration of actual sensitive contents in real-time. Furthermore, it comprehensively tracks and reconstructs all attack scenarios and captures multi-stage malware artifacts, providing vital evidence for forensic investigation and threat attribution."
提供机构:
IEEE DataPort
创建时间:
2025-11-11



