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Main Authors: Wu, Peng, Li, Haoxuan, Zheng, Chunyuan, Zeng, Yan, Chen, Jiawei, Liu, Yang, Guo, Ruocheng, Zhang, Kun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.06398
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author Wu, Peng
Li, Haoxuan
Zheng, Chunyuan
Zeng, Yan
Chen, Jiawei
Liu, Yang
Guo, Ruocheng
Zhang, Kun
author_facet Wu, Peng
Li, Haoxuan
Zheng, Chunyuan
Zeng, Yan
Chen, Jiawei
Liu, Yang
Guo, Ruocheng
Zhang, Kun
contents Counterfactual inference aims to estimate the counterfactual outcome at the individual level given knowledge of an observed treatment and the factual outcome, with broad applications in fields such as epidemiology, econometrics, and management science. Previous methods rely on a known structural causal model (SCM) or assume the homogeneity of the exogenous variable and strict monotonicity between the outcome and exogenous variable. In this paper, we propose a principled approach for identifying and estimating the counterfactual outcome. We first introduce a simple and intuitive rank preservation assumption to identify the counterfactual outcome without relying on a known structural causal model. Building on this, we propose a novel ideal loss for theoretically unbiased learning of the counterfactual outcome and further develop a kernel-based estimator for its empirical estimation. Our theoretical analysis shows that the rank preservation assumption is not stronger than the homogeneity and strict monotonicity assumptions, and shows that the proposed ideal loss is convex, and the proposed estimator is unbiased. Extensive semi-synthetic and real-world experiments are conducted to demonstrate the effectiveness of the proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2502_06398
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning Counterfactual Outcomes Under Rank Preservation
Wu, Peng
Li, Haoxuan
Zheng, Chunyuan
Zeng, Yan
Chen, Jiawei
Liu, Yang
Guo, Ruocheng
Zhang, Kun
Machine Learning
Counterfactual inference aims to estimate the counterfactual outcome at the individual level given knowledge of an observed treatment and the factual outcome, with broad applications in fields such as epidemiology, econometrics, and management science. Previous methods rely on a known structural causal model (SCM) or assume the homogeneity of the exogenous variable and strict monotonicity between the outcome and exogenous variable. In this paper, we propose a principled approach for identifying and estimating the counterfactual outcome. We first introduce a simple and intuitive rank preservation assumption to identify the counterfactual outcome without relying on a known structural causal model. Building on this, we propose a novel ideal loss for theoretically unbiased learning of the counterfactual outcome and further develop a kernel-based estimator for its empirical estimation. Our theoretical analysis shows that the rank preservation assumption is not stronger than the homogeneity and strict monotonicity assumptions, and shows that the proposed ideal loss is convex, and the proposed estimator is unbiased. Extensive semi-synthetic and real-world experiments are conducted to demonstrate the effectiveness of the proposed method.
title Learning Counterfactual Outcomes Under Rank Preservation
topic Machine Learning
url https://arxiv.org/abs/2502.06398