Estimating the Self-Consistency of LLMs

Abstract

Systems often repeat the same prompt to large language models (LLMs) and aggregate responses to improve reliability. This short note analyzes an estimator of the self-consistency of LLMs and the tradeoffs it induces under a fixed compute budget B=mn, where m is the number of prompts sampled from the task distribution and n is the number of repeated LLM calls per prompt; the resulting analysis favors a rough split m,nB.

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