Conservative Continuous-Time Treatment Optimization
arXiv cs.LG / 3/18/2026
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Key Points
- The paper proposes a conservative continuous-time stochastic control framework for treatment optimization from irregularly sampled patient trajectories.
- It models patient dynamics as a controlled stochastic differential equation with treatment serving as the continuous-time control variable.
- To curb extrapolation errors, a consistent signature-based MMD regularizer on path space is added to penalize plans whose induced trajectory distributions deviate from observed data, leading to a computable upper bound on the true cost.
- Experiments on benchmark datasets show improved robustness and performance compared with non-conservative baselines.
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