LGDec 12, 2024

Uplift modeling with continuous treatments: A predict-then-optimize approach

arXiv:2412.09232v24 citationsh-index: 3Has Code
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It addresses the problem of optimizing treatment doses in real-world scenarios for decision-makers in fields such as healthcare and finance, representing an incremental extension from binary to continuous treatments.

The paper tackles uplift modeling for continuous treatments by proposing a predict-then-optimize framework that estimates conditional average dose responses and uses integer linear programming for dose allocation, demonstrating trade-offs in policy value and fairness across applications like healthcare and lending.

The goal of uplift modeling is to recommend actions that optimize specific outcomes by determining which entities should receive treatment. One common approach involves two steps: first, an inference step that estimates conditional average treatment effects (CATEs), and second, an optimization step that ranks entities based on their CATE values and assigns treatment to the top k within a given budget. While uplift modeling typically focuses on binary treatments, many real-world applications are characterized by continuous-valued treatments, i.e., a treatment dose. This paper presents a predict-then-optimize framework to allow for continuous treatments in uplift modeling. First, in the inference step, conditional average dose responses (CADRs) are estimated from data using causal machine learning techniques. Second, in the optimization step, we frame the assignment task of continuous treatments as a dose-allocation problem and solve it using integer linear programming (ILP). This approach allows decision-makers to efficiently and effectively allocate treatment doses while balancing resource availability, with the possibility of adding extra constraints like fairness considerations or adapting the objective function to take into account instance-dependent costs and benefits to maximize utility. The experiments compare several CADR estimators and illustrate the trade-offs between policy value and fairness, as well as the impact of an adapted objective function. This showcases the framework's advantages and flexibility across diverse applications in healthcare, lending, and human resource management. All code is available on github.com/SimonDeVos/UMCT.

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