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Main Authors: Abdisa, Atomsa Gemechu, Zhou, Yingchun, Qiu, Yuqi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.12818
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author Abdisa, Atomsa Gemechu
Zhou, Yingchun
Qiu, Yuqi
author_facet Abdisa, Atomsa Gemechu
Zhou, Yingchun
Qiu, Yuqi
contents In observational studies, confounding variables affect both treatment and outcome. Moreover, instrumental variables also influence the treatment assignment mechanism. This situation sets the study apart from a standard randomized controlled trial, where the treatment assignment is random. Due to this situation, the estimated average treatment effect becomes biased. To address this issue, a standard approach is to incorporate the estimated propensity score when estimating the average treatment effect. However, these methods incur the risk of misspecification in propensity score models. To solve this issue, a novel method called the "Self balancing neural network" (Sbnet), which lets the model itself obtain its pseudo propensity score from the balancing net, is proposed in this study. The proposed method estimates the average treatment effect by using the balancing net as a key part of the feedforward neural network. This formulation resolves the estimation of the average treatment effect in one step. Moreover, the multi-pseudo propensity score framework, which is estimated from the diversified balancing net and used for the estimation of the average treatment effect, is presented. Finally, the proposed methods are compared with state-of-the-art methods on three simulation setups and real-world datasets. It has been shown that the proposed self-balancing neural network shows better performance than state-of-the-art methods.
format Preprint
id arxiv_https___arxiv_org_abs_2507_12818
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Self Balancing Neural Network: A Novel Method to Estimate Average Treatment Effect
Abdisa, Atomsa Gemechu
Zhou, Yingchun
Qiu, Yuqi
Machine Learning
In observational studies, confounding variables affect both treatment and outcome. Moreover, instrumental variables also influence the treatment assignment mechanism. This situation sets the study apart from a standard randomized controlled trial, where the treatment assignment is random. Due to this situation, the estimated average treatment effect becomes biased. To address this issue, a standard approach is to incorporate the estimated propensity score when estimating the average treatment effect. However, these methods incur the risk of misspecification in propensity score models. To solve this issue, a novel method called the "Self balancing neural network" (Sbnet), which lets the model itself obtain its pseudo propensity score from the balancing net, is proposed in this study. The proposed method estimates the average treatment effect by using the balancing net as a key part of the feedforward neural network. This formulation resolves the estimation of the average treatment effect in one step. Moreover, the multi-pseudo propensity score framework, which is estimated from the diversified balancing net and used for the estimation of the average treatment effect, is presented. Finally, the proposed methods are compared with state-of-the-art methods on three simulation setups and real-world datasets. It has been shown that the proposed self-balancing neural network shows better performance than state-of-the-art methods.
title Self Balancing Neural Network: A Novel Method to Estimate Average Treatment Effect
topic Machine Learning
url https://arxiv.org/abs/2507.12818