Decision-Aware Learning for Optimizing Health Supply Chains

11/15/2022
by   Tsai-Hsuan Chung, et al.
0

We study the problem of allocating limited supply of medical resources in developing countries, in particular, Sierra Leone. We address this problem by combining machine learning (to predict demand) with optimization (to optimize allocations). A key challenge is the need to align the loss function used to train the machine learning model with the decision loss associated with the downstream optimization problem. Traditional solutions have limited flexibility in the model architecture and scale poorly to large datasets. We propose a decision-aware learning algorithm that uses a novel Taylor expansion of the optimal decision loss to derive the machine learning loss. Importantly, our approach only requires a simple re-weighting of the training data, ensuring it is both flexible and scalable, e.g., we incorporate it into a random forest trained using a multitask learning framework. We apply our framework to optimize the distribution of essential medicines in collaboration with policymakers in Sierra Leone; highly uncertain demand and limited budgets currently result in excessive unmet demand. Out-of-sample results demonstrate that our end-to-end approach can significantly reduce unmet demand across 1040 health facilities throughout Sierra Leone.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/14/2017

A unified decision making framework for supply and demand management in microgrid networks

This paper considers two important problems - on the supply-side and dem...
research
12/07/2021

Predict and Optimize: Through the Lens of Learning to Rank

In the last years predict-and-optimize approaches (Elmachtoub and Grigas...
research
10/22/2017

Smart "Predict, then Optimize"

Many real-world analytics problems involve two significant challenges: p...
research
02/29/2020

Decision Trees for Decision-Making under the Predict-then-Optimize Framework

We consider the use of decision trees for decision-making problems under...
research
11/09/2022

A Note on Task-Aware Loss via Reweighing Prediction Loss by Decision-Regret

In this short technical note we propose a baseline for decision-aware le...
research
08/17/2020

Stochastic Optimization Forests

We study conditional stochastic optimization problems, where we leverage...
research
10/11/2019

A parameter-free population-dynamical approach to health workforce supply forecasting of EU countries

Many countries face challenges like impending retirement waves, negative...

Please sign up or login with your details

Forgot password? Click here to reset