SEAISep 3, 2023

Bias Testing and Mitigation in LLM-based Code Generation

arXiv:2309.14345v482 citations
Originality Incremental advance
AI Analysis

This addresses fairness and ethical concerns in software applications that rely on LLM-generated code, which is an underexplored but critical issue for developers and users.

The paper tackles the problem of social bias in code generated by large language models, finding that biases are prevalent, with 13.47% to 49.10% of generated code showing gender bias, and demonstrates that test execution feedback can reduce bias ratios significantly, e.g., from 59.88% to 4.79% for GPT-4.

As the adoption of LLMs becomes more widespread in software coding ecosystems, a pressing issue has emerged: does the generated code contain social bias and unfairness, such as those related to age, gender, and race? This issue concerns the integrity, fairness, and ethical foundation of software applications that depend on the code generated by these models but are underexplored in the literature. This paper presents a novel bias testing framework that is specifically designed for code generation tasks. Based on this framework, we conduct an extensive empirical study on the biases in code generated by five widely studied LLMs (i.e., PALM-2-CodeChat-bison, Claude-instant-1, GPT-3.5-turbo, GPT-4-turbo, and GPT-4). Our findings reveal that biases are prevalent. For example, 13.47% to 49.10% of the codes generated by these LLMs have biased behaviors towards gender. Moreover, we study five bias mitigation prompt strategies that are commonly used in current code generation scenarios, i.e., zero-shot, one-shot, few-shot, and two Chain-of-Thought (CoT) prompts, with and without provided feedback-driven refinement. Our evaluation results illustrate that using direct prompt engineering strategies has limited effectiveness in mitigating bias, but our test execution feedback can help to reduce the ratio of code biases to a large extent (e.g., from 59.88% to 4.79% for GPT-4).

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