Through the Looking-Glass with ALICE - Trying to Imitate using Correspondences
Interactive behavior of biological agents represents an important area in life as we know it. Behavior matching and imitation may serve as fundamental mechanisms for the development of societies and individuals. Imitation and observational learning as means for acquiring new behaviors also represent a largely untapped resource for robotics and artificial life — both in the study of life as it could be and for applications of biological tricks to synthetic worlds. This paper describes a new general imitating mechanism called ALICE (Action Learning for Imitation via Correspondences between Embodiments) that addresses the important correspondence problem in imitation. The mechanism is implemented and illustrated on the chessworld test-bed that was used in previous work to address the effects of agent embodiment, metrics and granularity when learning how to imitate another. The performance of the imitating agent is shown to improve when ALICE is complementing its imitation behavior generating mechanism.
Item Type | Article |
---|---|
Divisions |
?? sbu_scs ?? ?? ri_st ?? ?? rc_csir ?? |
Date Deposited | 18 Nov 2024 11:40 |
Last Modified | 18 Nov 2024 11:40 |