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Bibliographic Details
Main Authors: Zhang, Jennifer Y., Du, Shuyang, Zou, Will Y.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.05511
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author Zhang, Jennifer Y.
Du, Shuyang
Zou, Will Y.
author_facet Zhang, Jennifer Y.
Du, Shuyang
Zou, Will Y.
contents As estimation of Heterogeneous Treatment Effect (HTE) is increasingly adopted across a wide range of scientific and industrial applications, the treatment action space can naturally expand, from a binary treatment variable to a structured treatment policy. This policy may include several policy factors such as a continuous treatment intensity variable, or discrete treatment assignments. From first principles, we derive the formulation for incorporating multiple treatment policy variables into the functional forms of individual and average treatment effects. Building on this, we develop a methodology to directly rank subjects using aggregated HTE functions. In particular, we construct a Neural-Augmented Naive Bayes layer within a deep learning framework to incorporate an arbitrary number of factors that satisfies the Naive Bayes assumption. The factored layer is then applied with continuous treatment variables, treatment assignment, and direct ranking of aggregated treatment effect functions. Together, these algorithms build towards a generic framework for deep learning of heterogeneous treatment policies, and we show their power to improve performance with public datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2507_05511
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Deep Learning of Continuous and Structured Policies for Aggregated Heterogeneous Treatment Effects
Zhang, Jennifer Y.
Du, Shuyang
Zou, Will Y.
Machine Learning
Methodology
As estimation of Heterogeneous Treatment Effect (HTE) is increasingly adopted across a wide range of scientific and industrial applications, the treatment action space can naturally expand, from a binary treatment variable to a structured treatment policy. This policy may include several policy factors such as a continuous treatment intensity variable, or discrete treatment assignments. From first principles, we derive the formulation for incorporating multiple treatment policy variables into the functional forms of individual and average treatment effects. Building on this, we develop a methodology to directly rank subjects using aggregated HTE functions. In particular, we construct a Neural-Augmented Naive Bayes layer within a deep learning framework to incorporate an arbitrary number of factors that satisfies the Naive Bayes assumption. The factored layer is then applied with continuous treatment variables, treatment assignment, and direct ranking of aggregated treatment effect functions. Together, these algorithms build towards a generic framework for deep learning of heterogeneous treatment policies, and we show their power to improve performance with public datasets.
title Deep Learning of Continuous and Structured Policies for Aggregated Heterogeneous Treatment Effects
topic Machine Learning
Methodology
url https://arxiv.org/abs/2507.05511