Stack Overflow Is Not Dead Yet: Crowd Answers Still Matter
- URL: http://arxiv.org/abs/2509.05879v1
- Date: Sun, 07 Sep 2025 00:43:38 GMT
- Title: Stack Overflow Is Not Dead Yet: Crowd Answers Still Matter
- Authors: Denis Helic, Tiago Santos,
- Abstract summary: ChatGPT was introduced on Stack Overflow in November 2022.<n>This paper estimates the effect of ChatGPT on the length and difficulty of user questions and code examples.<n>Our results suggest that ChatGPT has effectively raised the bar for questions on Stack Overflow.
- Score: 0.9990687944474739
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Millions of users visit Stack Overflow regularly to ask community for answers to their programming questions. However, like many other platforms, Stack Overflow consistently struggles with low user retention and declining levels of user contributions to the platform. With the introduction of ChatGPT in November 2022, these ongoing difficulties on Stack Overflow were further magnified, as many users moved toward ChatGPT for programming help. In this paper, we build upon recent research on this phenomenon by analyzing the transformation of user-generated content on Stack Overflow during the post-ChatGPT period. Specifically, we analyze two years of Stack Overflow data and fit multiple causal regression models to estimate the effect of ChatGPT on the length and difficulty of user questions and code examples. We confirm an acceleration of decline in user contributions but find that ChatGPT had a significant positive effect on question and answer length, code length, and question difficulty on Stack Overflow across programming languages. Our results suggest that ChatGPT has effectively raised the bar for questions on Stack Overflow, as users increasingly turn to crowdsourced platforms for help with more complex and challenging problems. With our work we contribute to the ongoing discussion on the impact of tools such as ChatGPT on help-seeking in programming and, more broadly, on collaborative knowledge creation. Our results provide actionable insights for platform operators to support information management and user retention in the aftermath of ChatGPT's launch.
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