Publication | Closed Access
Automatic discovery and transfer of MAXQ hierarchies
76
Citations
11
References
2008
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningSequential LearningIntelligent SystemsSafe State AbstractionsSuccessful TrajectoryData ScienceData MiningGraph Query LanguageSystems EngineeringHierarchy InductionRobot LearningVery Large DatabaseKnowledge DiscoveryBayesian NetworkAction Model LearningSequential Decision MakingComputer ScienceDatabase TheoryAutomatic DiscoveryAutomated Reasoning
We present an algorithm, HI-MAT (Hierarchy Induction via Models And Trajectories), that discovers MAXQ task hierarchies by applying dynamic Bayesian network models to a successful trajectory from a source reinforcement learning task. HI-MAT discovers subtasks by analyzing the causal and temporal relationships among the actions in the trajectory. Under appropriate assumptions, HI-MAT induces hierarchies that are consistent with the observed trajectory and have compact value-function tables employing safe state abstractions. We demonstrate empirically that HI-MAT constructs compact hierarchies that are comparable to manually-engineered hierarchies and facilitate significant speedup in learning when transferred to a target task.
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