Corpus ID: 219708855

A Hybrid Natural Language Generation System Integrating Rules and Deep Learning Algorithms

  title={A Hybrid Natural Language Generation System Integrating Rules and Deep Learning Algorithms},
  author={W. Wei and B. Zhou and G. Leontidis},
  • W. Wei, B. Zhou, G. Leontidis
  • Published 2020
  • Computer Science
  • ArXiv
  • This paper proposes an enhanced natural language generation system combining the merits of both rulebased approaches and modern deep learning algorithms, boosting its performance to the extent where the generated textual content is capable of exhibiting agile human-writing styles and the content logic of which is highly controllable. We also come up with a novel approach called HMCU to measure the performance of the natural language processing comprehensively and precisely. 

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