Using Machine Theory of Mind to Learn Agent Social Network Structures from Observed Interactive Behaviors with Targets
Journal
29th IEEE International Conference on Robot and Human Interactive Communication, RO-MAN 2020
Pages
1013-1019
ISBN
978-1728160757
Date Issued
2020
Author(s)
Chuang, Y.-S.
Hung, H.-Y.
Gamborino, E.
Abstract
Human social interactions are laden with behavioral preferences that stem from hidden social network representations. In this study, we applied an artificial neural network with machine theory of mind (ToMnet+) to learn and predict social preferences based on implicit information from the way agents and social targets interact behaviorally. Our findings have implications for machine applications that seek to infer hidden information structures solely from third-person observation of behaviors. We consider that social machines with such an ability would have an enhanced potential for more naturalistic human-machine interactions. © 2020 IEEE.
Publisher
Institute of Electrical and Electronics Engineers Inc.
Type
conference paper