On the Actionability of Outcome Prediction
Lydia T. Liu, Solon Barocas, Jon Kleinberg, Karen Levy

TL;DR
This paper argues that outcome prediction alone is often insufficient for effective decision-making in social impact domains, and emphasizes the importance of measuring actionable latent states to improve intervention strategies.
Contribution
It demonstrates through a simple model that outcome prediction rarely maximizes action utility and highlights the benefits of measuring actionable latent states for better interventions.
Findings
Outcome prediction rarely maximizes action value.
Measuring actionable latent states improves intervention effectiveness.
The degree of improvement depends on action costs and outcome models.
Abstract
Predicting future outcomes is a prevalent application of machine learning in social impact domains. Examples range from predicting student success in education to predicting disease risk in healthcare. Practitioners recognize that the ultimate goal is not just to predict but to act effectively. Increasing evidence suggests that relying on outcome predictions for downstream interventions may not have desired results. In most domains there exists a multitude of possible interventions for each individual, making the challenge of taking effective action more acute. Even when causal mechanisms connecting the individual's latent states to outcomes is well understood, in any given instance (a specific student or patient), practitioners still need to infer -- from budgeted measurements of latent states -- which of many possible interventions will be most effective for this individual. With…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Health Systems, Economic Evaluations, Quality of Life · Health Policy Implementation Science
