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arxiv 2101.03309 v1 pith:CDLMRYHR submitted 2021-01-09 cs.LG

Identifying Decision Points for Safe and Interpretable Reinforcement Learning in Hypotension Treatment

classification cs.LG
keywords batchdecisioninterpretablepointsallowsalternativesapplicationsapply
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many batch RL health applications first discretize time into fixed intervals. However, this discretization both loses resolution and forces a policy computation at each (potentially fine) interval. In this work, we develop a novel framework to compress continuous trajectories into a few, interpretable decision points --places where the batch data support multiple alternatives. We apply our approach to create recommendations from a cohort of hypotensive patients dataset. Our reduced state space results in faster planning and allows easy inspection by a clinical expert.

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