Federated Causal Inference from Observational Data
Thanh Vinh Vo, Young lee, Tze-Yun Leong

TL;DR
This paper introduces a privacy-preserving federated framework for causal inference from decentralized observational data, addressing challenges like data heterogeneity and missing values with three innovative methods.
Contribution
It proposes a novel federated causal inference framework with three specific methods, enabling causal effect estimation without raw data exchange and handling incomplete data.
Findings
FedCI estimates causal effects with uncertainty quantification.
CausalRFF learns source similarities without prior info.
CausalFI handles incomplete data under missing at random.
Abstract
Decentralized data sources are prevalent in real-world applications, posing a formidable challenge for causal inference. These sources cannot be consolidated into a single entity owing to privacy constraints. The presence of dissimilar data distributions and missing values within them can potentially introduce bias to the causal estimands. In this article, we propose a framework to estimate causal effects from decentralized data sources. The proposed framework avoid exchanging raw data among the sources, thus contributing towards privacy-preserving causal learning. Three instances of the proposed framework are introduced to estimate causal effects across a wide range of diverse scenarios within a federated setting. (1) FedCI: a Bayesian framework based on Gaussian processes for estimating causal effects from federated observational data sources. It estimates the posterior distributions…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Advanced Causal Inference Techniques · Data Quality and Management
