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Home/Authors/Wei Jiang

Wei Jiang

8 indexed papers

Recent (6 mo)
8
With code
0
Influential cites
0
Benchmarked
0

Publications per year

8
26

Top categories

Crypto×5AI×3ML×2NLP×2Vision×2

Frequent co-authors

Zhengwei Jiang2×
Tianneng Shi1×
Robin Rheem1×
Dongwei Jiang1×
Mona Wang1×
Francisco De La Riega1×

Research Timeline

2026
Spike-PTSD: A Bio-Plausible Adversarial Example Attack on Spiking Neural Networks via PTSD-Inspired Spike Scaling

The paper introduces Spike-PTSD, a novel, biologically inspired adversarial attack framework that successfully compromises the robustness of Spiking Neural Networks (SNNs) by modeling abnormal neural firing patterns found in PTSD.

From Context to Rules: Toward Unified Detection Rule Generation

The paper proposes UniRule, a novel agentic RAG framework that unifies the detection rule generation process by mapping context and language to rules, significantly outperforming pure LLM generation.

Beyond Text Prompts: Precise Concept Erasure through Text-Image Collaboration

The paper introduces TICoE, a text-image collaborative framework that achieves precise and faithful concept removal from text-to-image generative models, surpassing existing methods in both precision and content fidelity.

PhishSigma++: Malicious Email Detection with Typed Entity Relations

PhishSigma++ is a novel entity-relation-based detector that improves malicious email detection by focusing on invariant functional relationships between typed entities, significantly outperforming text-centric models under adversarial manipulation.

GiPL: Generative augmented iterative Pseudo-Labeling for Cross-Domain Few-Shot Object Detection

GiPL proposes a novel two-branch framework combining iterative pseudo-label self-training and generative data augmentation to significantly improve Cross-Domain Few-Shot Object Detection by better utilizing limited support set data and reducing overfitting.

MiCU: End-to-End Smart Home Command Understanding with Large Language Model

The paper introduces MiCU, a domain-specific LLM that significantly improves smart home command understanding, especially for ambiguous commands, by synthesizing training data and optimizing the model for efficiency.

Skill-RM: Unifying Heterogeneous Evaluation Criteria via Agent Skill

The paper proposes Skill-RM, a unified framework that treats reward modeling as an agentic task to consistently integrate diverse evaluation criteria, achieving superior performance over traditional methods.

CyberGym-E2E: Scalable Real-World Benchmark for AI Agents' End-to-End Cybersecurity Capabilities

The paper introduces CyberGym-E2E, a large-scale, end-to-end benchmark designed to comprehensively evaluate AI agents' capabilities across the entire lifecycle of real-world software vulnerability discovery, proof-of-concept generation, and patch creation.

Highlighted terms show continued research focus across papers

Papers

cs.CRcs.AIcs.LGRecentJun 3, 2026

CyberGym-E2E: Scalable Real-World Benchmark for AI Agents' End-to-End Cybersecurity Capabilities

Tianneng Shi, Robin Rheem, Dongwei Jiang, Mona Wang +12 more

The paper introduces CyberGym-E2E, a large-scale, end-to-end benchmark designed to comprehensively evaluate AI agents' capabilities across the entire lifecycle of real-world software vulnerability dis…

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cs.LGcs.CLRecentJun 2, 2026

Skill-RM: Unifying Heterogeneous Evaluation Criteria via Agent Skill

Tao Chen, Gangwei Jiang, Pengyu Cheng, Siyuan Huang +9 more

The paper proposes Skill-RM, a unified framework that treats reward modeling as an agentic task to consistently integrate diverse evaluation criteria, achieving superior performance over traditional m…

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cs.CLcs.AIRecentMay 31, 2026

MiCU: End-to-End Smart Home Command Understanding with Large Language Model

Haowei Han, Kexin Hu, Weiwei Cai, Debiao Zhang +5 more

The paper introduces MiCU, a domain-specific LLM that significantly improves smart home command understanding, especially for ambiguous commands, by synthesizing training data and optimizing the model…

View →
cs.CVcs.AIRecentMay 28, 2026

GiPL: Generative augmented iterative Pseudo-Labeling for Cross-Domain Few-Shot Object Detection

Jiacong Liu, Shu Luo, Yikai Qin, Yaze Zhao +2 more

GiPL proposes a novel two-branch framework combining iterative pseudo-label self-training and generative data augmentation to significantly improve Cross-Domain Few-Shot Object Detection by better uti…

View →
cs.CRRecentMay 12, 2026

PhishSigma++: Malicious Email Detection with Typed Entity Relations

Shang Shang, Ruiqi Wang, Ruijie Qi, Hao Li +3 more

PhishSigma++ is a novel entity-relation-based detector that improves malicious email detection by focusing on invariant functional relationships between typed entities, significantly outperforming tex…

View →
cs.CVcs.CRRecentApr 17, 2026

Beyond Text Prompts: Precise Concept Erasure through Text-Image Collaboration

Jun Li, Lizhi Xiong, Ziqiang Li, Weiwei Jiang +3 more

The paper introduces TICoE, a text-image collaborative framework that achieves precise and faithful concept removal from text-to-image generative models, surpassing existing methods in both precision…

View →
cs.CRRecentApr 13, 2026

From Context to Rules: Toward Unified Detection Rule Generation

Cheng Meng, Wenxin Le, Xinyi Li, Qiuyun Wang +3 more

The paper proposes UniRule, a novel agentic RAG framework that unifies the detection rule generation process by mapping context and language to rules, significantly outperforming pure LLM generation.

View →
cs.CRRecentApr 2, 2026

Spike-PTSD: A Bio-Plausible Adversarial Example Attack on Spiking Neural Networks via PTSD-Inspired Spike Scaling

Lingxin Jin, Wei Jiang, Maregu Assefa Habtie, Letian Chen +4 more

The paper introduces Spike-PTSD, a novel, biologically inspired adversarial attack framework that successfully compromises the robustness of Spiking Neural Networks (SNNs) by modeling abnormal neural…

View →