AICLApr 20, 2023

Can ChatGPT Reproduce Human-Generated Labels? A Study of Social Computing Tasks

arXiv:2304.10145v2161 citationsh-index: 10
Originality Synthesis-oriented
AI Analysis

This could reduce costs for social computing research, but it is incremental as it applies an existing method to new data.

The study investigated whether ChatGPT can reproduce human-generated labels in social computing tasks, finding it achieved an average accuracy of 0.609, with the highest performance at 64.9% for sentiment analysis.

The release of ChatGPT has uncovered a range of possibilities whereby large language models (LLMs) can substitute human intelligence. In this paper, we seek to understand whether ChatGPT has the potential to reproduce human-generated label annotations in social computing tasks. Such an achievement could significantly reduce the cost and complexity of social computing research. As such, we use ChatGPT to relabel five seminal datasets covering stance detection (2x), sentiment analysis, hate speech, and bot detection. Our results highlight that ChatGPT does have the potential to handle these data annotation tasks, although a number of challenges remain. ChatGPT obtains an average accuracy 0.609. Performance is highest for the sentiment analysis dataset, with ChatGPT correctly annotating 64.9% of tweets. Yet, we show that performance varies substantially across individual labels. We believe this work can open up new lines of analysis and act as a basis for future research into the exploitation of ChatGPT for human annotation tasks.

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