AI RESEARCH
Interpretable experiential learning based on state history and global feedback
arXiv CS.LG
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ArXi:2605.00940v1 Announce Type: new A new interpretable experiential learning model based on state history and global feedback is presented. It is capable of learning a behavioral model represented by a transition graph between sets of states, with transitions attributed with utility and evidence count. This model is expected to be suitable for solving reinforcement learning problem in resource-constrained environments. The model was thoroughly evaluated on the OpenAI Gym Atari Breakout benchmark, nstrating performance comparable to some known neural network-based solutions.