ETRI Journal (Jul 2020)

Korean TableQA: Structured data question answering based on span prediction style with S

  • Cheoneum Park,
  • Myungji Kim,
  • Soyoon Park,
  • Seungyoung Lim,
  • Jooyoul Lee,
  • Changki Lee

DOI
https://doi.org/10.4218/etrij.2019-0189
Journal volume & issue
Vol. 42, no. 6
pp. 899 – 911

Abstract

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The data in tables are accurate and rich in information, which facilitates the performance of information extraction and question answering (QA) tasks. TableQA, which is based on tables, solves problems by understanding the table structure and searching for answers to questions. In this paper, we introduce both novice and intermediate Korean TableQA tasks that involve deducing the answer to a question from structured tabular data and using it to build a question answering pair. To solve Korean TableQA tasks, we use S3‐NET, which has shown a good performance in machine reading comprehension (MRC), and propose a method of converting structured tabular data into a record format suitable for MRC. Our experimental results show that the proposed method outperforms a baseline in both the novice task (exact match (EM) 96.48% and F1 97.06%) and intermediate task (EM 99.30% and F1 99.55%).

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