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~ similar to 2605.29059· 20 results

cs.SEcs.AIcs.CRRecentMay 27, 2026

SCDBench: A Benchmark for LLM-Based Smart Contract Decompilers

Kaihua Qin, Dawn Song, Arthur Gervais

The paper introduces SCDBench, a comprehensive benchmark dataset and methodology that rigorously evaluates LLM-based smart contract decompilers, finding that while frontier models can produce compilab…

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cs.SEcs.AIcs.CRRecentApr 14, 2026

CoDe-R: Refining Decompiler Output with LLMs via Rationale Guidance and Adaptive Inference

Qiang Zhang, Zhongnian Li

The paper proposes CoDe-R, a two-stage framework that significantly improves the accuracy and re-executability of decompiled code generated by LLMs, achieving a new SOTA in the lightweight regime.

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cs.CRcs.AIRecentMay 11, 2026

Benchmarking LLM-Based Static Analysis for Secure Smart Contract Development: Reliability, Limitations, and Potential Hybrid Solutions

Stefan-Claudiu Susan, Andrei Arusoaie, Dorel Lucanu

This paper benchmarks LLMs for smart contract security analysis, concluding that while LLMs show potential, their reliability is limited by lexical bias and requires integration with traditional stati…

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cs.CRcs.AIcs.CLRecentJun 2, 2026

Decoupled Smart Contract Audits: Lightweight LLM Framework via Distillation and Aggregation

Bagus Rakadyanto Oktavianto Putra, Muhamad Risqi Utama Saputra, Widyawan, Guntur Dharma Putra

The paper introduces an efficient, lightweight LLM framework for smart contract auditing that decouples the audit process into multiple components, achieving high accuracy while significantly reducing…

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cs.CRcs.SERecentMay 4, 2026

SCRIBE: Practical Static Binary Patching via Binary-Aware Recompilation of Decompiled Code

Han Dai, Soumyakant Priyadarshan, Abdullah Imran, Ruoyu Wang +1 more

SCRIBE is a novel framework that enables reliable source-level patching of binaries by performing 'binary-aware' recompilation, successfully resolving syntactic and semantic inaccuracies inherent in d…

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cs.SEcs.CRRecentMay 28, 2026

CODEFUSE-DEBENCH: An Empirical Study on Readability, Recompilability, and Functionality

Puzhuo Liu, Yuhan Huang, Jianlei Chi, Peng Di +1 more

The paper introduces DEBENCH, a novel framework that evaluates binary decompilers based on three orthogonal dimensions—readability, recompilability, and functionality—revealing that functional recover…

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cs.CRcs.SERecentMar 27, 2026

Reentrancy Detection in the Age of LLMs

Dalila Ressi, Alvise Spanò, Matteo Rizzo, Lorenzo Benetollo +1 more

This paper evaluates modern reentrancy detection tools, finding that leading LLMs significantly outperform most existing static analyzers and ML models on both real-world and handcrafted benchmarks.

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cs.SEcs.CRRecentApr 1, 2026

LibScan: Smart Contract Library Misuse Detection with Iterative Feedback and Static Verification

Yishun Wang, Wenkai Li, Xiaoqi Li, Zongwei Li +2 more

LibScan is an automated framework that detects eight categories of smart contract library misuse by combining LLM-based semantic reasoning with rule-based analysis, achieving 85.15% accuracy on real-w…

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cs.CRcs.AIRecentApr 7, 2026

LLM4CodeRE: Generative AI for Code Decompilation Analysis and Reverse Engineering

Hamed Jelodar, Samita Bai, Tochukwu Emmanuel Nwankwo, Parisa Hamedi +3 more

The paper introduces LLM4CodeRE, a domain-adaptive LLM framework that significantly improves bidirectional code reverse engineering by unifying assembly-to-source and source-to-assembly translation.

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cs.CRcs.SERecentApr 29, 2026

An Empirical Security Evaluation of LLM-Generated Cryptographic Rust Code

Mohamed Elsayed, Kenneth Fulton, Jeong Yang

This study empirically evaluates the cryptographic security of LLM-generated Rust code, finding that while general analysis tools are insufficient, a custom crypto-specific analyzer successfully ident…

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cs.CRcs.AIcs.CLRecentApr 4, 2026

CREBench: Evaluating Large Language Models in Cryptographic Binary Reverse Engineering

Baicheng Chen, Yu Wang, Ziheng Zhou, Xiangru Liu +3 more

The paper introduces CREBench, a comprehensive benchmark for evaluating Large Language Models (LLMs) on cryptographic binary reverse engineering, finding that while LLMs show promise, human experts st…

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cs.SEcs.AIcs.CRRecentMay 12, 2026

Decaf: Improving Neural Decompilation with Automatic Feedback and Search

Alexander Shypula, Osbert Bastani, Edward Schwartz

The paper introduces Decaf, a system that uses automatic feedback and search to significantly improve the semantic correctness and accuracy of neural decompilers, boosting the decompilation rate from…

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cs.CRcs.PLcs.SERecentApr 28, 2026

Symbolic Execution Meets Multi-LLM Orchestration: Detecting Memory Vulnerabilities in Incomplete Rust CVE Snippets

Zeyad Abdelrazek, Young Lee

The paper introduces a novel multi-LLM orchestration system combined with symbolic execution to successfully detect memory vulnerabilities in uncompilable, incomplete Rust CVE code snippets, achieving…

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quant-phcs.CRRecentMay 13, 2026

QCIVET: A Quantum--Classical Pipeline Integrity Framework with Contract-Based Subtype Verification and Hash-Chained Audit Traces

Esra Yeniaras, Muhammad Amin Karimov

QCIVET introduces a novel contract-based framework to ensure the integrity of hybrid quantum-classical pipelines by verifying both the structure (syntactic) and the behavior (semantic) of quantum stag…

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cs.CRRecentApr 27, 2026

GoAT-X: A Graph of Auditing Thoughts for Securing Token Transactions in Cross-Chain Contracts

Zijun Feng, Yuming Feng, Yu Wang, Weizhe Zhang +3 more

GoAT-X introduces a novel framework that structures cross-chain smart contract auditing as a Graph of Auditing Thoughts, significantly improving the detection of complex, semantic vulnerabilities in m…

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cs.CRRecentApr 16, 2026

Feedback-Driven Execution for LLM-Based Binary Analysis

XiangRui Zhang, Qiang Li, Haining Wang

The paper introduces FORGE, a feedback-driven execution system that improves LLM-based binary analysis by interleaving reasoning and tool interaction, achieving high-quality vulnerability discovery on…

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cs.CRRecentApr 29, 2026

Beyond Code Reasoning: Specification-Anchored Auditing of Multi-Implementation Distributed Protocols

Masato Kamba, Hirotake Murakami, Akiyoshi Sannai

The paper introduces SPECA, an LLM-driven framework that audits distributed protocols by deriving and enforcing security properties from natural-language specifications, enabling cross-implementation…

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cs.CRRecentMay 7, 2026

Benchmarking Large Language Models for IoC Recovery under Adversarial Code Obfuscation and Encryption

Jaime Morales, Sergio Pastrana, Juan Tapiador

The paper introduces a systematic benchmark to test LLMs' ability to recover Indicators of Compromise (IoCs) from JavaScript code, finding that while LLMs handle simple obfuscation well, encryption-ba…

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cs.CRcs.SERecentMay 14, 2026

Exploiting LLM Agent Supply Chains via Payload-less Skills

Xinyu Liu, Yukai Zhao, Xing Hu, Xin Xia

The paper introduces Semantic Compliance Hijacking (SCH), a novel payload-less attack that exploits LLM agent supply chains by manipulating compliance rules to force unauthorized code generation, achi…

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cs.CRcs.SERecentMar 17, 2026

SseRex: Practical Symbolic Execution of Solana Smart Contracts

Tobias Cloosters, Pascal Winkler, Jens-Rene Giesen, Ghassan Karame +1 more

The paper introduces SseRex, a novel symbolic execution framework designed to detect unique and complex vulnerabilities in Solana smart contracts, significantly outperforming existing tools.

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