Publication | Open Access
DialogBERT: Discourse-Aware Response Generation via Learning to Recover and Rank Utterances
64
Citations
36
References
2021
Year
Llm Fine-tuningEngineeringMachine LearningNeural Response GenerationSpoken Dialog SystemCommunicationMultilingual PretrainingDiscourse-aware Response GenerationNatural Language ProcessingSpeech RecognitionComputational LinguisticsConversation AnalysisDiscourse AnalysisLanguage StudiesLanguage ModelsMachine TranslationDialogue ManagementUtterance OrderLinguisticsPre-trained ModelsSpeech CommunicationRetrieval Augmented GenerationRank UtterancesUtterance RegressionLanguage Generation
Recent advances in pre-trained language models have significantly improved neural response generation. However, existing methods usually view the dialogue context as a linear sequence of tokens and learn to generate the next word through token-level self-attention. Such token-level encoding hinders the exploration of discourse-level coherence among utterances. This paper presents DialogBERT, a novel conversational response generation model that enhances previous PLM-based dialogue models. DialogBERT employs a hierarchical Transformer architecture. To efficiently capture the discourse-level coherence among utterances, we propose two training objectives, including masked utterance regression and distributed utterance order ranking in analogy to the original BERT training. Experiments on three multi-turn conversation datasets show that our approach remarkably outperforms three baselines, such as BART and DialoGPT, in terms of quantitative evaluation. The human evaluation suggests that DialogBERT generates more coherent, informative, and human-like responses than the baselines with significant margins.
| Year | Citations | |
|---|---|---|
Page 1
Page 1