Prompt-based mental health screening from social media text
Santos, Wesley Ramos dos, Paraboni, Ivandre
–arXiv.org Artificial Intelligence
This article presents a method for prompt-based mental health screening from a large and noisy dataset of social media text. Our method uses GPT 3.5. prompting to distinguish publications that may be more relevant to the task, and then uses a straightforward bag-of-words text classifier to predict actual user labels. Results are found to be on pair with a BERT mixture of experts classifier, and incurring only a fraction of its computational costs.
arXiv.org Artificial Intelligence
Jan-11-2024
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