LGMLApr 29, 2024

Reduced-Rank Multi-objective Policy Learning and Optimization

arXiv:2404.18490v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses the challenge of multi-objective policy learning in social benefit programs, offering incremental improvements in handling noisy outcomes for better algorithmic allocations.

The authors tackled the problem of learning optimal treatment policies when multiple noisy outcomes are observed, by developing a reduced-rank regression method to denoise outcomes and improve policy evaluation and optimization. Their approach reduced estimation error in a real-world case study of cash transfer and social intervention data.

Evaluating the causal impacts of possible interventions is crucial for informing decision-making, especially towards improving access to opportunity. However, if causal effects are heterogeneous and predictable from covariates, personalized treatment decisions can improve individual outcomes and contribute to both efficiency and equity. In practice, however, causal researchers do not have a single outcome in mind a priori and often collect multiple outcomes of interest that are noisy estimates of the true target of interest. For example, in government-assisted social benefit programs, policymakers collect many outcomes to understand the multidimensional nature of poverty. The ultimate goal is to learn an optimal treatment policy that in some sense maximizes multiple outcomes simultaneously. To address such issues, we present a data-driven dimensionality-reduction methodology for multiple outcomes in the context of optimal policy learning with multiple objectives. We learn a low-dimensional representation of the true outcome from the observed outcomes using reduced rank regression. We develop a suite of estimates that use the model to denoise observed outcomes, including commonly-used index weightings. These methods improve estimation error in policy evaluation and optimization, including on a case study of real-world cash transfer and social intervention data. Reducing the variance of noisy social outcomes can improve the performance of algorithmic allocations.

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