SS-GEN: A Social Story Generation Framework with Large Language Models
Children with Autism Spectrum Disorder (ASD) often misunderstand social situations and struggle to participate in daily routines. Social Stories are traditionally crafted by psychology experts under strict constraints to address these challenges but are costly and limited in diversity. As Large Lang...
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Zusammenfassung: | Children with Autism Spectrum Disorder (ASD) often misunderstand social
situations and struggle to participate in daily routines. Social Stories are
traditionally crafted by psychology experts under strict constraints to address
these challenges but are costly and limited in diversity. As Large Language
Models (LLMs) advance, there's an opportunity to develop more automated,
affordable, and accessible methods to generate Social Stories in real-time with
broad coverage. However, adapting LLMs to meet the unique and strict
constraints of Social Stories is a challenging issue. To this end, we propose
\textbf{SS-GEN}, a \textbf{S}ocial \textbf{S}tory \textbf{GEN}eration framework
with LLMs. Firstly, we develop a constraint-driven sophisticated strategy named
\textbf{\textsc{StarSow}} to hierarchically prompt LLMs to generate Social
Stories at scale, followed by rigorous human filtering to build a high-quality
dataset. Additionally, we introduce \textbf{quality assessment criteria} to
evaluate the effectiveness of these generated stories. Considering that
powerful closed-source large models require very complex instructions and
expensive API fees, we finally fine-tune smaller language models with our
curated high-quality dataset, achieving comparable results at lower costs and
with simpler instruction and deployment. This work marks a significant step in
leveraging AI to personalize Social Stories cost-effectively for autistic
children at scale, which we hope can encourage future research. The prompt,
code and data will release in the \texttt{Technical Appendix} and \texttt{Code
\& Data Appendix} at \url{https://github.com/MIMIFY/SS-GEN}. |
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DOI: | 10.48550/arxiv.2406.15695 |