Table-to-Text Generation by Structure-Aware Seq2seq Learning

Authors

  • Tianyu Liu Peking University
  • Kexiang Wang Peking University
  • Lei Sha Peking University
  • Baobao Chang Peking University
  • Zhifang Sui Peking University

DOI:

https://doi.org/10.1609/aaai.v32i1.11925

Keywords:

Table-to-text, Structure-aware Seq2seq

Abstract

Table-to-text generation aims to generate a description for a factual table which can be viewed as a set of field-value records. To encode both the content and the structure of a table, we propose a novel structure-aware seq2seq architecture which consists of field-gating encoder and description generator with dual attention. In the encoding phase, we update the cell memory of the LSTM unit by a field gate and its corresponding field value in order to incorporate field information into table representation. In the decoding phase, dual attention mechanism which contains word level attention and field level attention is proposed to model the semantic relevance between the generated description and the table. We conduct experiments on the WIKIBIO dataset which contains over 700k biographies and corresponding infoboxes from Wikipedia. The attention visualizations and case studies show that our model is capable of generating coherent and informative descriptions based on the comprehensive understanding of both the content and the structure of a table. Automatic evaluations also show our model outperforms the baselines by a great margin. Code for this work is available on https://github.com/tyliupku/wiki2bio.

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Published

2018-04-26

How to Cite

Liu, T., Wang, K., Sha, L., Chang, B., & Sui, Z. (2018). Table-to-Text Generation by Structure-Aware Seq2seq Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 32(1). https://doi.org/10.1609/aaai.v32i1.11925

Issue

Section

Main Track: NLP and Knowledge Representation