A Minimal "Functionally Sentient" Organism Trained With Backpropagation Through Time

ADAPTIVE BEHAVIOR(2023)

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摘要
This article presents a scenario where a simple simulated organism must explore and exploit an environment containing a food pile. The organism learns to make observations of the environment, use memory to record those observations, and thus plan and navigate to the regions with the strongest food density. We compare different reinforcement learning algorithms with an adaptive dynamic programming algorithm and conclude that backpropagation through time can convincingly solve this recurrent neural-network challenge. Furthermore, we argue that this algorithm successfully mimics a minimal 'functionally sentient' organism's fundamental objectives and mental environmental-mapping skills while seeking a food pile distributed statically or randomly in an environment.
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关键词
Back propagation through time,BPTT,adaptive behaviour,ADP algorithm,control task,partially observable environment
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