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Home/Authors/Shengda Zhuo

Shengda Zhuo

2 indexed papers

Recent (6 mo)
2
With code
0
Influential cites
0
Benchmarked
0

Publications per year

2
26

Top categories

Crypto×2AI×1Social Networks×1

Frequent co-authors

Wangjie Qiu2×
Zhiming Zheng2×
Zelin Guan1×
Zeyan Li1×
Jinchun He1×
Shuqiang Huang1×

Research Timeline

2026
UniDetect: LLM-Driven Universal Fraud Detection across Heterogeneous Blockchains

UniDetect is a novel LLM-driven method that detects cross-chain cryptocurrency fraud by generating generalized transaction summaries, significantly outperforming existing detection techniques across multiple blockchains.

E-MIA: Exam-Style Black-Box Membership Inference Attacks against RAG Systems

E-MIA introduces a novel, stealthy black-box membership inference attack that converts verifiable hard evidence within a candidate document into an objective, multi-part exam score to determine if the document was ingested into a RAG knowledge base.

Highlighted terms show continued research focus across papers

Papers

cs.CRcs.AIRecentMay 1, 2026

E-MIA: Exam-Style Black-Box Membership Inference Attacks against RAG Systems

Zelin Guan, Shengda Zhuo, Zeyan Li, Jinchun He +3 more

E-MIA introduces a novel, stealthy black-box membership inference attack that converts verifiable hard evidence within a candidate document into an objective, multi-part exam score to determine if the…

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cs.CRcs.SIRecentApr 14, 2026

UniDetect: LLM-Driven Universal Fraud Detection across Heterogeneous Blockchains

Shuyi Miao, Wangjie Qiu, Shengda Zhuo, Fei Shen +4 more

UniDetect is a novel LLM-driven method that detects cross-chain cryptocurrency fraud by generating generalized transaction summaries, significantly outperforming existing detection techniques across m…

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