Interaction and Intelligent Behavior
Author(s)
Mataric, Maja J.
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Show full item recordAbstract
We introduce basic behaviors as primitives for control and learning in situated, embodied agents interacting in complex domains. We propose methods for selecting, formally specifying, algorithmically implementing, empirically evaluating, and combining behaviors from a basic set. We also introduce a general methodology for automatically constructing higher--level behaviors by learning to select from this set. Based on a formulation of reinforcement learning using conditions, behaviors, and shaped reinforcement, out approach makes behavior selection learnable in noisy, uncertain environments with stochastic dynamics. All described ideas are validated with groups of up to 20 mobile robots performing safe--wandering, following, aggregation, dispersion, homing, flocking, foraging, and learning to forage.
Date issued
1994-08-01Other identifiers
AITR-1495
Series/Report no.
AITR-1495
Keywords
group behavior, learning, multi-agent systems, situated agents, behavior-based control, collective behavior