Pujan Paudel (Boston University), Gianluca Stringhini (Boston University)

Online e-commerce scams, ranging from shopping scams to pet scams, globally cause millions of dollars in financial damage every year. In response, the security community has developed highly accurate detection systems able to determine if a website is fraudulent. However, finding candidate scam websites that can be passed as input to these downstream detection systems is challenging: relying on user reports is inherently reactive and slow, and proactive systems issuing search engine queries to return candidate websites suffer from low coverage and do not generalize to new scam types. In this paper, we present LOKI, a system designed to identify search engine queries likely to return a high fraction of fraudulent websites. LOKI implements a keyword scoring model grounded in Learning Under Privileged Information (LUPI) and feature distillation from Search Engine Result Pages (SERPs). We rigorously validate LOKI across 10 major scam categories and demonstrate a 20.58 times improvement in discovery over both heuristic and data-driven baselines across all categories. Leveraging a small seed set of only 1,663 known scam sites, we use the keywords identified by our method to discover 52,493 previously unreported scams in the wild. Finally, we show that LOKI generalizes to previously-unseen scam categories, highlighting its utility in surfacing emerging threats.

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Characterizing the Implementation of Censorship Policies in Chinese LLM...

Anna Ablove (University of Michigan), Shreyas Chandrashekaran (University of Michigan), Xiao Qiang (University of California at Berkeley), Roya Ensafi (University of Michigan)

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Demystifying the Access Control Mechanism of ESXi VMKernel

Yue Liu (Southeast University), Zexiang Zhang (National University of Defense Technology), Jiaxun Zhu (Zhejiang University), Hao Zheng (Independent Researcher), Jiaqing Huang (Independent Researcher), Wenbo Shen (Zhejiang University), Gaoning Pan (Hangzhou Dianzi University), Yuliang Lu (National University of Defense Technology), Min Zhang (National University of Defense Technology), Zulie Pan (National University of Defense Technology), Guang Cheng…

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AirSnitch: Demystifying and Breaking Client Isolation in Wi-Fi Networks

Xin'an Zhou (University of California, Riverside), Juefei Pu (University of California, Riverside), Zhutian Liu (University of California, Riverside), Zhiyun Qian (University of California, Riverside), Zhaowei Tan (University of California, Riverside), Srikanth V. Krishnamurthy (University of California, Riverside), Mathy Vanhoef (DistriNet, KU Leuven)

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