Compilation and linguistic analysis of 129 LLM prompt datasets identifies distinguishing features, with syntactic distributions enabling high-accuracy lightweight routing and quality prediction in three downstream tasks.
It provides real multi-model response comparisons (e.g., GPT-4, ChatGPT, NewBing, Wenxin) and continuous updates via collaborative platforms
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Large Language Model Prompt Datasets: An In-depth Analysis and Insights
Compilation and linguistic analysis of 129 LLM prompt datasets identifies distinguishing features, with syntactic distributions enabling high-accuracy lightweight routing and quality prediction in three downstream tasks.