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  • Prior works on dialog generation focus on task-oriented setting and utilize multi-turn conversational utterance-response pairs. However, natural language generation (NLG) in the open-domain environment is more challenging. The conversations in an open-domain chit-chat model are mostly single-turn in nature. Current methods used for modeling single-turn conversations often fail to generate contextually relevant responses for a large dataset. In our work, we develop a transformer-based method for natural language generation (NLG) in an open-domain setting. Experiments on the utterance-response pairs show improvement over the baselines, both in terms of quantitative measures like BLEU and ROUGE and human evaluation metrics like fluency and adequacy.
subject
  • Deep learning
  • Information retrieval genres
  • Natural language processing
  • Oral communication
  • Artificial intelligence applications
  • Computational linguistics
  • Tasks of natural language processing
  • Evaluation of machine translation
  • Natural language generation
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