VCNet and Functional Targeted Regularization For Learning Causal Effects of Continuous Treatments
About
Motivated by the rising abundance of observational data with continuous treatments, we investigate the problem of estimating the average dose-response curve (ADRF). Available parametric methods are limited in their model space, and previous attempts in leveraging neural network to enhance model expressiveness relied on partitioning continuous treatment into blocks and using separate heads for each block; this however produces in practice discontinuous ADRFs. Therefore, the question of how to adapt the structure and training of neural network to estimate ADRFs remains open. This paper makes two important contributions. First, we propose a novel varying coefficient neural network (VCNet) that improves model expressiveness while preserving continuity of the estimated ADRF. Second, to improve finite sample performance, we generalize targeted regularization to obtain a doubly robust estimator of the whole ADRF curve.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Dosage Policy Estimation (DPE) | Debt (test) | Mean DPE207 | 12 | |
| Dosage Policy Estimation (DPE) | NewsHet (test) | Mean DPE6.84 | 12 | |
| Dosage Policy Estimation (DPE) | Warfarin (test) | Mean DPE1.80e+3 | 12 | |
| Dosage Policy Estimation (DPE) | News (test) | Mean DPE5 | 12 | |
| Dosage Policy Estimation (DPE) | Aggregate Debt, Warfarin, TCGA, News, NewsHet | Average Rank8.6 | 12 | |
| Dosage Policy Estimation (DPE) | TCGA (test) | Mean DPE31.6 | 11 |