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To Predict or to Reject: Causal Effect Estimation with Uncertainty on Networked Data

Authors :
Wen, Hechuan
Chen, Tong
Chai, Li Kheng
Sadiq, Shazia
Zheng, Kai
Yin, Hongzhi
Publication Year :
2023

Abstract

Due to the imbalanced nature of networked observational data, the causal effect predictions for some individuals can severely violate the positivity/overlap assumption, rendering unreliable estimations. Nevertheless, this potential risk of individual-level treatment effect estimation on networked data has been largely under-explored. To create a more trustworthy causal effect estimator, we propose the uncertainty-aware graph deep kernel learning (GraphDKL) framework with Lipschitz constraint to model the prediction uncertainty with Gaussian process and identify unreliable estimations. To the best of our knowledge, GraphDKL is the first framework to tackle the violation of positivity assumption when performing causal effect estimation with graphs. With extensive experiments, we demonstrate the superiority of our proposed method in uncertainty-aware causal effect estimation on networked data.<br />Comment: Accepted by ICDM'23

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.08165
Document Type :
Working Paper