MLLGEMSTOct 25, 2023

Causal Q-Aggregation for CATE Model Selection

arXiv:2310.16945v55 citationsh-index: 39
Originality Incremental advance
AI Analysis

This addresses model selection challenges in personalized decision-making, offering a theoretical foundation for CATE ensembling with broad applicability, though it builds incrementally on prior empirical work.

The paper tackles the problem of model selection for conditional average treatment effects (CATE) estimation by proposing causal Q-aggregation, which achieves statistically optimal oracle regret rates of log(M)/n with M models and n samples, validated on semi-synthetic datasets.

Accurate estimation of conditional average treatment effects (CATE) is at the core of personalized decision making. While there is a plethora of models for CATE estimation, model selection is a nontrivial task, due to the fundamental problem of causal inference. Recent empirical work provides evidence in favor of proxy loss metrics with double robust properties and in favor of model ensembling. However, theoretical understanding is lacking. Direct application of prior theoretical work leads to suboptimal oracle model selection rates due to the non-convexity of the model selection problem. We provide regret rates for the major existing CATE ensembling approaches and propose a new CATE model ensembling approach based on Q-aggregation using the doubly robust loss. Our main result shows that causal Q-aggregation achieves statistically optimal oracle model selection regret rates of $\frac{\log(M)}{n}$ (with $M$ models and $n$ samples), with the addition of higher-order estimation error terms related to products of errors in the nuisance functions. Crucially, our regret rate does not require that any of the candidate CATE models be close to the truth. We validate our new method on many semi-synthetic datasets and also provide extensions of our work to CATE model selection with instrumental variables and unobserved confounding.

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