LGCYAPMLJul 7, 2025

Bridging Prediction and Intervention Problems in Social Systems

arXiv:2507.05216v111 citationsh-index: 37
Originality Incremental advance
AI Analysis

This addresses the problem of misaligned ADS design for stakeholders in social systems, though it is incremental as it builds on existing statistical frameworks.

The paper tackles the disconnect between prediction-focused automated decision systems (ADS) and their real-world role in policy interventions, arguing for a shift to an interventionist paradigm that considers predictions as decision support, final decisions, and outcomes.

Many automated decision systems (ADS) are designed to solve prediction problems -- where the goal is to learn patterns from a sample of the population and apply them to individuals from the same population. In reality, these prediction systems operationalize holistic policy interventions in deployment. Once deployed, ADS can shape impacted population outcomes through an effective policy change in how decision-makers operate, while also being defined by past and present interactions between stakeholders and the limitations of existing organizational, as well as societal, infrastructure and context. In this work, we consider the ways in which we must shift from a prediction-focused paradigm to an interventionist paradigm when considering the impact of ADS within social systems. We argue this requires a new default problem setup for ADS beyond prediction, to instead consider predictions as decision support, final decisions, and outcomes. We highlight how this perspective unifies modern statistical frameworks and other tools to study the design, implementation, and evaluation of ADS systems, and point to the research directions necessary to operationalize this paradigm shift. Using these tools, we characterize the limitations of focusing on isolated prediction tasks, and lay the foundation for a more intervention-oriented approach to developing and deploying ADS.

Foundations

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