Abstract
Aiming at the problems of lack of background knowledge and the inconsistent response of robots in the current human-computer interaction system, we proposed a human-computer interaction model based on a knowledge graph ripple network. The model simulated the natural human communication process to realize a more natural and intelligent human-computer interaction system. This study had three contributions: first, the affective friendliness of human-computer interaction was obtained by calculating the affective evaluation value and the emotional measurement of human-computer interaction. Then, the external knowledge graph was introduced as the background knowledge of the robot, and the conversation entity was embedded into the ripple network of the knowledge graph to obtain the potential entity content of interest of the participant. Finally, the robot replies based on emotional friendliness and content friendliness. The experimental results showed that, compared with the comparison models, the emotional friendliness and coherence of robots with background knowledge and emotional measurement effectively improve the response accuracy by 5.5% at least during human-computer interaction.
Reference35 articles.
1. Emotion and sociable humanoid robots;Breazeal;International Journal of Human-Computer Studies,2003
2. A reinforcement learning model of joy, distress, hope and fear;Broekens;Connection Science,2015
3. The role of expressiveness and attention in human-robot interaction;Bruce,2002
4. The semantic typology of visually grounded paraphrases;Chu;Computer Vision and Image Understanding,2022
5. Multilingual autoregressive entity linking;De Cao;Transactions of the Association for Computational Linguistics,2022