Dealing With Data Scarcity in Spoken Question Answering

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Date

2024

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Publisher

Assoc Computational Linguistics-acl

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Abstract

This paper focuses on dealing with data scarcity in spoken question answering (QA) using automatic question-answer generation and a carefully selected fine-tuning strategy that leverages limited annotated data (paragraphs and question-answer pairs). Spoken QA is a challenging task due to using spoken documents, i.e., erroneous automatic speech recognition (ASR) transcriptions, and the scarcity of spoken QA data. We propose a framework for utilizing limited annotated data effectively to improve spoken QA performance. To deal with data scarcity, we train a question-answer generation model with annotated data and then produce large amounts of question-answer pairs from unannotated data (paragraphs). Our experiments demonstrate that incorporating limited annotated data and the automatically generated data through a carefully selected fine-tuning strategy leads to 5.5% relative F1 gain over the model trained only with annotated data. Moreover, the proposed framework is also effective in high ASR errors.

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Keywords

Spoken Question Answering, Question Generation

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N/A

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Q2

Source

2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation-LREC-COLING -- May 20-25, 2024 -- Torino, ITALY

Volume

Issue

Start Page

4449

End Page

4455
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