Lya Hulliyyatus Suadaa

1paper

1 Paper

CLFeb 1, 2021
Metric-Type Identification for Multi-Level Header Numerical Tables in Scientific Papers

Lya Hulliyyatus Suadaa, Hidetaka Kamigaito, Manabu Okumura et al.

Numerical tables are widely used to present experimental results in scientific papers. For table understanding, a metric-type is essential to discriminate numbers in the tables. We introduce a new information extraction task, metric-type identification from multi-level header numerical tables, and provide a dataset extracted from scientific papers consisting of header tables, captions, and metric-types. We then propose two joint-learning neural classification and generation schemes featuring pointer-generator-based and BERT-based models. Our results show that the joint models can handle both in-header and out-of-header metric-type identification problems.