Softstar: Heuristic-Guided Probabilistic Inference
Monfort, Mathew, Lake, Brenden M., Lake, Brenden M., Ziebart, Brian, Lucey, Patrick, Tenenbaum, Josh
–Neural Information Processing Systems
This higher-level abstraction improves generalization in different prediction settings, but computing predictions often becomes intractable in large decision spaces. We propose the Softstar algorithm, a softened heuristic-guided search technique for the maximum entropy inverse optimal control model of sequential behavior. This approach supports probabilistic search with bounded approximation error at a significantly reduced computational cost when compared to sampling based methods. We present the algorithm, analyze approximation guarantees, and compare performance with simulation-based inference on two distinct complex decision tasks. Papers published at the Neural Information Processing Systems Conference.
Neural Information Processing Systems
Feb-14-2020, 12:42:46 GMT
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