SEAIJan 14, 2025

I Can Find You in Seconds! Leveraging Large Language Models for Code Authorship Attribution

arXiv:2501.08165v113 citationsh-index: 23
Originality Incremental advance
AI Analysis

This work addresses code authorship attribution for software forensics and cybersecurity, offering a novel application of LLMs with competitive performance but incremental methodological improvements.

This paper tackles the problem of source code authorship attribution by leveraging large language models (LLMs) to determine if code snippets are written by the same author, achieving a Matthews Correlation Coefficient (MCC) of 0.78 in zero-shot prompting and up to 68.7% accuracy in large-scale classification with a tournament-style approach.

Source code authorship attribution is important in software forensics, plagiarism detection, and protecting software patch integrity. Existing techniques often rely on supervised machine learning, which struggles with generalization across different programming languages and coding styles due to the need for large labeled datasets. Inspired by recent advances in natural language authorship analysis using large language models (LLMs), which have shown exceptional performance without task-specific tuning, this paper explores the use of LLMs for source code authorship attribution. We present a comprehensive study demonstrating that state-of-the-art LLMs can successfully attribute source code authorship across different languages. LLMs can determine whether two code snippets are written by the same author with zero-shot prompting, achieving a Matthews Correlation Coefficient (MCC) of 0.78, and can attribute code authorship from a small set of reference code snippets via few-shot learning, achieving MCC of 0.77. Additionally, LLMs show some adversarial robustness against misattribution attacks. Despite these capabilities, we found that naive prompting of LLMs does not scale well with a large number of authors due to input token limitations. To address this, we propose a tournament-style approach for large-scale attribution. Evaluating this approach on datasets of C++ (500 authors, 26,355 samples) and Java (686 authors, 55,267 samples) code from GitHub, we achieve classification accuracy of up to 65% for C++ and 68.7% for Java using only one reference per author. These results open new possibilities for applying LLMs to code authorship attribution in cybersecurity and software engineering.

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