Which Prompts Make The Difference? Data Prioritization For Efficient Human LLM Evaluation · The Large Language Model Bible Contribute to LLM-Bible

Which Prompts Make The Difference? Data Prioritization For Efficient Human LLM Evaluation

Boubdir Meriem, Kim Edward, Ermis Beyza, Fadaee Marzieh, Hooker Sara. Arxiv 2023

[Paper]    
Efficiency And Optimization Prompting Uncategorized

Human evaluation is increasingly critical for assessing large language models, capturing linguistic nuances, and reflecting user preferences more accurately than traditional automated metrics. However, the resource-intensive nature of this type of annotation process poses significant challenges. The key question driving our work: “is it feasible to minimize human-in-the-loop feedback by prioritizing data instances which most effectively distinguish between models?” We evaluate several metric-based methods and find that these metrics enhance the efficiency of human evaluations by minimizing the number of required annotations, thus saving time and cost, while ensuring a robust performance evaluation. We show that our method is effective across widely used model families, reducing instances of indecisive (or “tie”) outcomes by up to 54% compared to a random sample when focusing on the top-20 percentile of prioritized instances. This potential reduction in required human effort positions our approach as a valuable strategy in future large language model evaluations.

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