Publication | Open Access
Learning Discourse-level Diversity for Neural Dialog Models using Conditional Variational Autoencoders
709
Citations
38
References
2017
Year
Unknown Venue
Structured PredictionEngineeringMachine LearningSpoken Dialog SystemMultilingual PretrainingLarge Language ModelCorpus LinguisticsSpeech RecognitionNatural Language ProcessingDiscourse-level DiversityComputational LinguisticsLanguage StudiesMachine TranslationDialogue ManagementNlp TaskLinguisticsConditional Variational AutoencodersDeep LearningMulti-modal SummarizationGeneric ResponsesNeural Dialog ModelsGreedy DecodersLanguage Generation
While recent neural encoder-decoder models have shown great promise in modeling open-domain conversations, they often generate dull and generic responses. Unlike past work that has focused on diversifying the output of the decoder at word-level to alleviate this problem, we present a novel framework based on conditional variational autoencoders that captures the discourse-level diversity in the encoder. Our model uses latent variables to learn a distribution over potential conversational intents and generates diverse responses using only greedy decoders. We have further developed a novel variant that is integrated with linguistic prior knowledge for better performance. Finally, the training procedure is improved by introducing a bag-of-word loss. Our proposed models have been validated to generate significantly more diverse responses than baseline approaches and exhibit competence in discourse-level decision-making.
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