Effect Identification and Unit Categorization in the Multi-Score Regression Discontinuity Design with Application to LED Manufacturing
Philipp Alexander Schwarz, Oliver Schacht, Sven Klaassen, Johannes Oberpriller, Martin Spindler

TL;DR
This paper extends multi-score regression discontinuity design to multi-dimensional cutoff rules, providing theoretical tools for better unit classification and causal effect estimation in complex decision-making systems, especially in manufacturing.
Contribution
It introduces a formal framework for classifying units under multi-dimensional cutoff rules and analyzes how rule decomposition improves causal effect estimation accuracy.
Findings
Framework validated with semi-synthetic simulations and real manufacturing data.
Improved classification of units leads to more accurate causal effect estimates.
Application reduces estimation variance and refines production policies.
Abstract
RDD (Regression discontinuity design) is a widely used framework for identifying and estimating causal effects at the cutoff of a single running variable. In practice, however, decision-making often involves multiple thresholds and criteria, especially in production systems. Standard MRD (multi-score RDD) methods address this complexity by reducing the problem to a one-dimensional design. This simplification allows existing approaches to be used to identify and estimate causal effects, but it can introduce non-compliance by misclassifying units relative to the original cutoff rules. We develop theoretical tools to detect and reduce "fuzziness" when estimating the cutoff effect for units that comply with individual subrules of a multi-rule system. In particular, we propose a formal definition and categorization of unit behavior types under multi-dimensional cutoff rules, extending…
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Taxonomy
TopicsOptimal Experimental Design Methods · Industrial Vision Systems and Defect Detection · Forecasting Techniques and Applications
