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Main Author: Zawistowski, Krystian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.10267
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author Zawistowski, Krystian
author_facet Zawistowski, Krystian
contents LLM text decoding is key component for perceived LLM quality. We demonstrate two experiments showing that decoding methods could be improved by manipulation of token probabilities. First, we test few LLM on SummEval summary scoring dataset, to measure reading comprehension. We compare scores from greedy decoding to expected values over the next token distribution. We scale logits by large temperature to increase the entropy of scores. This allows strong improvement of performance on SummEval (in terms of correlations to human judgement). We see improvement from 6-8% to 13-28% for 7B Mistral and from 20%-46% to 37%-56% for Mixtral, beating GPT 4 0314 result on two metrics. Part of the gain seems related to positional bias. Secondly, we use probability-based tree sampling algorithm, to examine all most probable generations for given prompt.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10267
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unused information in token probability distribution of generative LLM: improving LLM reading comprehension through calculation of expected values
Zawistowski, Krystian
Computation and Language
Artificial Intelligence
LLM text decoding is key component for perceived LLM quality. We demonstrate two experiments showing that decoding methods could be improved by manipulation of token probabilities. First, we test few LLM on SummEval summary scoring dataset, to measure reading comprehension. We compare scores from greedy decoding to expected values over the next token distribution. We scale logits by large temperature to increase the entropy of scores. This allows strong improvement of performance on SummEval (in terms of correlations to human judgement). We see improvement from 6-8% to 13-28% for 7B Mistral and from 20%-46% to 37%-56% for Mixtral, beating GPT 4 0314 result on two metrics. Part of the gain seems related to positional bias. Secondly, we use probability-based tree sampling algorithm, to examine all most probable generations for given prompt.
title Unused information in token probability distribution of generative LLM: improving LLM reading comprehension through calculation of expected values
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2406.10267