AI RESEARCH
Evaluation of Large Language Models via Coupled Token Generation
arXiv CS.LG
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ArXi:2502.01754v3 Announce Type: replace-cross State of the art large language models rely on randomization to respond to a prompt. As an immediate consequence, a model may respond differently to the same prompt if asked multiple times. In this work, we argue that the evaluation and ranking of large language models should control for the randomization underpinning their functioning. Our starting point is the development of a causal model for coupled autoregressive generation, which allows different large language models to sample responses with the same source of randomness.