Learning Individual Treatment Effects under Heterogeneous Interference in Networks

Author:

Zhao Ziyu1ORCID,Bai Yuqi2ORCID,Xiong Ruoxuan3ORCID,Cao Qingyu4ORCID,Ma Chao5ORCID,Jiang Ning5ORCID,Wu Fei1ORCID,Kuang Kun1ORCID

Affiliation:

1. Zhejiang University, Hangzhou, China

2. University of Waterloo, Waterloo, Ontario, Canada

3. Emory University, Atlanta, Georgia, USA

4. Alibaba Group, Hangzhou, China

5. Mashang Consumer Finance Co., Ltd., Chongqing, China

Abstract

Estimating individual treatment effects in networked observational data is a crucial and increasingly recognized problem. One major challenge of this problem is violating the stable unit treatment value assumption (SUTVA), which posits that a unit’s outcome is independent of others’ treatment assignments. However, in network data, a unit’s outcome is influenced not only by its treatment (i.e., direct effect) but also by the treatments of others (i.e., spillover effect) since the presence of interference. Moreover, the interference from other units is always heterogeneous (e.g., friends with similar interests have a different influence than those with different interests). In this article, we focus on the problem of estimating individual treatment effects (including direct effect and spillover effect) under heterogeneous interference in networks. To address this problem, we propose a novel dual weighting regression (DWR) algorithm by simultaneously learning attention weights to capture the heterogeneous interference from neighbors and sample weights to eliminate the complex confounding bias in networks. We formulate the learning process as a bi-level optimization problem. Theoretically, we give a generalization error bound for the expected estimation error of the individual treatment effects. Extensive experiments on four benchmark datasets demonstrate that the proposed DWR algorithm outperforms the state-of-the-art methods in estimating individual treatment effects under heterogeneous network interference.

Funder

National Natural Science Foundation of China

Starry Night Science Fund of Zhejiang University Shanghai Institute

Publisher

Association for Computing Machinery (ACM)

Reference47 articles.

1. Estimating average causal effects under general interference, with application to a social network experiment

2. Alexis Bellot Anish Dhir and Giulia Prando. 2022. Generalization bounds and algorithms for estimating conditional average treatment effect of dosage. arXiv:2205.14692. Retrieved from https://arxiv.org/abs/2205.14692

3. Rohit Bhattacharya, Daniel Malinsky, and Ilya Shpitser. 2020. Causal inference under interference and network uncertainty. In Proceedings of the 35th Uncertainty in Artificial Intelligence Conference. R. P. Adams and V. Gogate (Eds.), PMLR, 1028–1038.

4. Heterogeneous Graph Contrastive Learning for Recommendation

5. Graph Infomax Adversarial Learning for Treatment Effect Estimation with Networked Observational Data

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