Relaxed Efficient Acquisition of Context and Temporal Features
arXiv cs.LG / 3/13/2026
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Key Points
- The paper introduces REACT, a differentiable framework that jointly optimizes onboarding context selection and adaptive feature-time acquisition under cost constraints for longitudinal biomedical data.
- REACT employs a Gumbel-Sigmoid relaxation with straight-through estimation to enable gradient-based optimization over discrete acquisition masks and backpropagation from both prediction loss and acquisition cost.
- The approach addresses temporally coupled decisions and integrates the onboarding phase, enabling stable contextual descriptors to be selected alongside longitudinal measurements.
- Across real-world longitudinal health and behavioral datasets, REACT achieves improved predictive performance at lower acquisition costs compared to existing baselines.
- The work demonstrates the practical value of modeling onboarding context together with temporally adaptive acquisition in cost-conscious clinical workflows.
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