This research paper introduces SMARTINTENTNN, a new automated tool that leverages deep learning to identify potentially malicious intent embedded within smart contracts.
Bibliographic Information: Huang, Y., Fang, S., Li, J., Hu, B., & Zhang, T. (2024). SMARTINTENTNN: Towards Smart Contract Intent Detection. arXiv preprint arXiv:2211.13670v4.
Research Objective: The study aims to address the critical security gap in existing smart contract analysis by developing a method to automatically detect malicious developer intent hidden within the code.
Methodology: SMARTINTENTNN utilizes a three-stage approach:
Key Findings: Evaluated on a dataset of 20,000 smart contracts, SMARTINTENTNN significantly outperformed baseline models, including traditional machine learning approaches (LSTM, BiLSTM, CNN) and large language models (GPT-3.5-turbo, GPT-4o-mini), achieving an F1-score of 0.8633. The study also demonstrated the effectiveness of the intent highlighting module in improving detection accuracy.
Main Conclusions: SMARTINTENTNN offers a promising solution for enhancing smart contract security by automatically identifying potentially malicious intent during the development stage. This proactive approach can help mitigate financial risks associated with malicious smart contracts.
Significance: This research pioneers the application of deep learning for intent detection in smart contracts, providing a valuable tool for developers, auditors, and users to assess and mitigate potential risks associated with malicious code.
Limitations and Future Research: The study acknowledges the limitations of the predefined intent categories and suggests exploring a broader range of malicious behaviors. Future research could focus on refining the model's accuracy, generalizability, and scalability to handle the evolving landscape of smart contract vulnerabilities.
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by Youwei Huang... о arxiv.org 10-18-2024
https://arxiv.org/pdf/2211.13670.pdfГлибші Запити