Active Bayesian Causal Inference
Christian Toth, Lars Lorch, Christian Knoll, Andreas Krause, Franz, Pernkopf, Robert Peharz, Julius von K\"ugelgen

TL;DR
This paper introduces a Bayesian active learning framework that jointly infers causal models and queries, improving data efficiency and uncertainty quantification in causal inference tasks.
Contribution
It proposes Active Bayesian Causal Inference (ABCI), a fully Bayesian method that integrates causal discovery and reasoning for nonlinear additive noise models using Gaussian processes.
Findings
More data-efficient than baselines focusing solely on causal graph learning
Accurately estimates causal queries with fewer samples
Provides well-calibrated uncertainty estimates
Abstract
Causal discovery and causal reasoning are classically treated as separate and consecutive tasks: one first infers the causal graph, and then uses it to estimate causal effects of interventions. However, such a two-stage approach is uneconomical, especially in terms of actively collected interventional data, since the causal query of interest may not require a fully-specified causal model. From a Bayesian perspective, it is also unnatural, since a causal query (e.g., the causal graph or some causal effect) can be viewed as a latent quantity subject to posterior inference -- other unobserved quantities that are not of direct interest (e.g., the full causal model) ought to be marginalized out in this process and contribute to our epistemic uncertainty. In this work, we propose Active Bayesian Causal Inference (ABCI), a fully-Bayesian active learning framework for integrated causal…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Machine Learning and Algorithms · Explainable Artificial Intelligence (XAI)
