Identifiable Energy-based Representations: An Application to Estimating Heterogeneous Causal Effects

Bibliographic Details
Title: Identifiable Energy-based Representations: An Application to Estimating Heterogeneous Causal Effects
Authors: Zhang, Yao, Berrevoets, Jeroen, van der Schaar, Mihaela
Source: Proceedings of the 25th International Conference on Artificial Intelligence and Statistics (AISTATS) 2022
Publication Year: 2021
Collection: Computer Science
Statistics
Subject Terms: Computer Science - Machine Learning, Statistics - Machine Learning
More Details: Conditional average treatment effects (CATEs) allow us to understand the effect heterogeneity across a large population of individuals. However, typical CATE learners assume all confounding variables are measured in order for the CATE to be identifiable. This requirement can be satisfied by collecting many variables, at the expense of increased sample complexity for estimating CATEs. To combat this, we propose an energy-based model (EBM) that learns a low-dimensional representation of the variables by employing a noise contrastive loss function. With our EBM we introduce a preprocessing step that alleviates the dimensionality curse for any existing learner developed for estimating CATEs. We prove that our EBM keeps the representations partially identifiable up to some universal constant, as well as having universal approximation capability. These properties enable the representations to converge and keep the CATE estimates consistent. Experiments demonstrate the convergence of the representations, as well as show that estimating CATEs on our representations performs better than on the variables or the representations obtained through other dimensionality reduction methods.
Comment: 20 pages, 2 figures, 9 tables
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2108.03039
Accession Number: edsarx.2108.03039
Database: arXiv
More Details
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