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Main Authors: Jung, Jee-weon, Sharma, Roshan, Chen, William, Raj, Bhiksha, Watanabe, Shinji
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.06806
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author Jung, Jee-weon
Sharma, Roshan
Chen, William
Raj, Bhiksha
Watanabe, Shinji
author_facet Jung, Jee-weon
Sharma, Roshan
Chen, William
Raj, Bhiksha
Watanabe, Shinji
contents Abstractive speech summarization (SSUM) aims to generate human-like summaries from speech. Given variations in information captured and phrasing, recordings can be summarized in multiple ways. Therefore, it is more reasonable to consider a probabilistic distribution of all potential summaries rather than a single summary. However, conventional SSUM models are mostly trained and evaluated with a single ground-truth (GT) human-annotated deterministic summary for every recording. Generating multiple human references would be ideal to better represent the distribution statistically, but is impractical because annotation is expensive. We tackle this challenge by proposing AugSumm, a method to leverage large language models (LLMs) as a proxy for human annotators to generate augmented summaries for training and evaluation. First, we explore prompting strategies to generate synthetic summaries from ChatGPT. We validate the quality of synthetic summaries using multiple metrics including human evaluation, where we find that summaries generated using AugSumm are perceived as more valid to humans. Second, we develop methods to utilize synthetic summaries in training and evaluation. Experiments on How2 demonstrate that pre-training on synthetic summaries and fine-tuning on GT summaries improves ROUGE-L by 1 point on both GT and AugSumm-based test sets. AugSumm summaries are available at https://github.com/Jungjee/AugSumm.
format Preprint
id arxiv_https___arxiv_org_abs_2401_06806
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AugSumm: towards generalizable speech summarization using synthetic labels from large language model
Jung, Jee-weon
Sharma, Roshan
Chen, William
Raj, Bhiksha
Watanabe, Shinji
Computation and Language
Artificial Intelligence
Abstractive speech summarization (SSUM) aims to generate human-like summaries from speech. Given variations in information captured and phrasing, recordings can be summarized in multiple ways. Therefore, it is more reasonable to consider a probabilistic distribution of all potential summaries rather than a single summary. However, conventional SSUM models are mostly trained and evaluated with a single ground-truth (GT) human-annotated deterministic summary for every recording. Generating multiple human references would be ideal to better represent the distribution statistically, but is impractical because annotation is expensive. We tackle this challenge by proposing AugSumm, a method to leverage large language models (LLMs) as a proxy for human annotators to generate augmented summaries for training and evaluation. First, we explore prompting strategies to generate synthetic summaries from ChatGPT. We validate the quality of synthetic summaries using multiple metrics including human evaluation, where we find that summaries generated using AugSumm are perceived as more valid to humans. Second, we develop methods to utilize synthetic summaries in training and evaluation. Experiments on How2 demonstrate that pre-training on synthetic summaries and fine-tuning on GT summaries improves ROUGE-L by 1 point on both GT and AugSumm-based test sets. AugSumm summaries are available at https://github.com/Jungjee/AugSumm.
title AugSumm: towards generalizable speech summarization using synthetic labels from large language model
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2401.06806