Multi-Task Learning of Generation and Classification for Emotion-Aware Dialogue Response Generation
Tatsuya Ide, Daisuke Kawahara
Abstract
For a computer to naturally interact with a human, it needs to be human-like. In this paper, we propose a neural response generation model with multi-task learning of generation and classification, focusing on emotion. Our model based on BART (Lewis et al., 2020), a pre-trained transformer encoderdecoder model, is trained to generate responses and recognize emotions simultaneously. Furthermore, we weight the losses for the tasks to control the update of parameters. Automatic evaluations and crowdsourced manual evaluations show that the proposed model makes generated responses more emotionally aware.
Topics & Concepts
Computer scienceArtificial intelligenceEncoderTask (project management)TransformerMachine learningSpeech recognitionEngineeringVoltageElectrical engineeringOperating systemSystems engineeringTopic ModelingSpeech and dialogue systemsSentiment Analysis and Opinion Mining