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Main Authors: Zhu, Minqin, Wu, Anpeng, Li, Haoxuan, Xiong, Ruoxuan, Li, Bo, Yang, Xiaoqing, Qin, Xuan, Zhen, Peng, Guo, Jiecheng, Wu, Fei, Kuang, Kun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.14232
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author Zhu, Minqin
Wu, Anpeng
Li, Haoxuan
Xiong, Ruoxuan
Li, Bo
Yang, Xiaoqing
Qin, Xuan
Zhen, Peng
Guo, Jiecheng
Wu, Fei
Kuang, Kun
author_facet Zhu, Minqin
Wu, Anpeng
Li, Haoxuan
Xiong, Ruoxuan
Li, Bo
Yang, Xiaoqing
Qin, Xuan
Zhen, Peng
Guo, Jiecheng
Wu, Fei
Kuang, Kun
contents Estimating the individuals' potential response to varying treatment doses is crucial for decision-making in areas such as precision medicine and management science. Most recent studies predict counterfactual outcomes by learning a covariate representation that is independent of the treatment variable. However, such independence constraints neglect much of the covariate information that is useful for counterfactual prediction, especially when the treatment variables are continuous. To tackle the above issue, in this paper, we first theoretically demonstrate the importance of the balancing and prognostic representations for unbiased estimation of the heterogeneous dose-response curves, that is, the learned representations are constrained to satisfy the conditional independence between the covariates and both of the treatment variables and the potential responses. Based on this, we propose a novel Contrastive balancing Representation learning Network using a partial distance measure, called CRNet, for estimating the heterogeneous dose-response curves without losing the continuity of treatments. Extensive experiments are conducted on synthetic and real-world datasets demonstrating that our proposal significantly outperforms previous methods.
format Preprint
id arxiv_https___arxiv_org_abs_2403_14232
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Contrastive Balancing Representation Learning for Heterogeneous Dose-Response Curves Estimation
Zhu, Minqin
Wu, Anpeng
Li, Haoxuan
Xiong, Ruoxuan
Li, Bo
Yang, Xiaoqing
Qin, Xuan
Zhen, Peng
Guo, Jiecheng
Wu, Fei
Kuang, Kun
Machine Learning
Estimating the individuals' potential response to varying treatment doses is crucial for decision-making in areas such as precision medicine and management science. Most recent studies predict counterfactual outcomes by learning a covariate representation that is independent of the treatment variable. However, such independence constraints neglect much of the covariate information that is useful for counterfactual prediction, especially when the treatment variables are continuous. To tackle the above issue, in this paper, we first theoretically demonstrate the importance of the balancing and prognostic representations for unbiased estimation of the heterogeneous dose-response curves, that is, the learned representations are constrained to satisfy the conditional independence between the covariates and both of the treatment variables and the potential responses. Based on this, we propose a novel Contrastive balancing Representation learning Network using a partial distance measure, called CRNet, for estimating the heterogeneous dose-response curves without losing the continuity of treatments. Extensive experiments are conducted on synthetic and real-world datasets demonstrating that our proposal significantly outperforms previous methods.
title Contrastive Balancing Representation Learning for Heterogeneous Dose-Response Curves Estimation
topic Machine Learning
url https://arxiv.org/abs/2403.14232