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Main Authors: Luo, Shanshan, Li, Wei, Wang, Xueli, Wei, Shaojie, Geng, Zhi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.12478
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author Luo, Shanshan
Li, Wei
Wang, Xueli
Wei, Shaojie
Geng, Zhi
author_facet Luo, Shanshan
Li, Wei
Wang, Xueli
Wei, Shaojie
Geng, Zhi
contents In contrast to evaluating treatment effects, causal attribution analysis focuses on identifying the key factors responsible for an observed outcome. For two binary exposure variables and a binary outcome variable, researchers need to assess not only the likelihood that an observed outcome was caused by a particular exposure, but also the likelihood that it resulted from the interaction between the two exposures. For example, in the case of a male worker who smoked, was exposed to asbestos, and developed lung cancer, researchers aim to explore whether the cancer resulted from smoking, asbestos exposure, or their interaction. Even in randomized controlled trials, widely regarded as the gold standard for causal inference, identifying and evaluating retrospective causal interactions between two exposures remains challenging. In this paper, we define posterior probabilities to characterize the interactive causes of an observed outcome. We establish the identifiability of posterior probabilities by using a secondary outcome variable that may appear after the primary outcome. We apply the proposed method to the classic case of smoking and asbestos exposure. Our results indicate that for lung cancer patients who smoked and were exposed to asbestos, the disease is primarily attributable to the synergistic effect between smoking and asbestos exposure.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12478
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Assessing Interactive Causes of an Occurred Outcome Due to Two Binary Exposures
Luo, Shanshan
Li, Wei
Wang, Xueli
Wei, Shaojie
Geng, Zhi
Applications
In contrast to evaluating treatment effects, causal attribution analysis focuses on identifying the key factors responsible for an observed outcome. For two binary exposure variables and a binary outcome variable, researchers need to assess not only the likelihood that an observed outcome was caused by a particular exposure, but also the likelihood that it resulted from the interaction between the two exposures. For example, in the case of a male worker who smoked, was exposed to asbestos, and developed lung cancer, researchers aim to explore whether the cancer resulted from smoking, asbestos exposure, or their interaction. Even in randomized controlled trials, widely regarded as the gold standard for causal inference, identifying and evaluating retrospective causal interactions between two exposures remains challenging. In this paper, we define posterior probabilities to characterize the interactive causes of an observed outcome. We establish the identifiability of posterior probabilities by using a secondary outcome variable that may appear after the primary outcome. We apply the proposed method to the classic case of smoking and asbestos exposure. Our results indicate that for lung cancer patients who smoked and were exposed to asbestos, the disease is primarily attributable to the synergistic effect between smoking and asbestos exposure.
title Assessing Interactive Causes of an Occurred Outcome Due to Two Binary Exposures
topic Applications
url https://arxiv.org/abs/2601.12478