Team Hitachi @ AutoMin 2021: Reference-free Automatic Minuting Pipeline with Argument Structure Construction over Topic-based Summarization
This paper introduces the proposed automatic minuting system of the Hitachi team for the First Shared Task on Automatic Minuting (AutoMin-2021). We utilize a reference-free approach (i.e., without using training minutes) for automatic minuting (Task A), which first splits a transcript into blocks on...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
05.12.2021
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Subjects | |
Online Access | Get full text |
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Summary: | This paper introduces the proposed automatic minuting system of the Hitachi
team for the First Shared Task on Automatic Minuting (AutoMin-2021). We utilize
a reference-free approach (i.e., without using training minutes) for automatic
minuting (Task A), which first splits a transcript into blocks on the basis of
topics and subsequently summarizes those blocks with a pre-trained BART model
fine-tuned on a summarization corpus of chat dialogue. In addition, we apply a
technique of argument mining to the generated minutes, reorganizing them in a
well-structured and coherent way. We utilize multiple relevance scores to
determine whether or not a minute is derived from the same meeting when either
a transcript or another minute is given (Task B and C). On top of those scores,
we train a conventional machine learning model to bind them and to make final
decisions. Consequently, our approach for Task A achieve the best adequacy
score among all submissions and close performance to the best system in terms
of grammatical correctness and fluency. For Task B and C, the proposed model
successfully outperformed a majority vote baseline. |
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DOI: | 10.48550/arxiv.2112.02741 |