Estimating Interventional Distributions with Uncertain Causal Graphs through Meta-Learning
By: Anish Dhir , Cristiana Diaconu , Valentinian Mihai Lungu and more
Potential Business Impact:
Finds hidden cause-and-effect in data.
In scientific domains -- from biology to the social sciences -- many questions boil down to \textit{What effect will we observe if we intervene on a particular variable?} If the causal relationships (e.g.~a causal graph) are known, it is possible to estimate the intervention distributions. In the absence of this domain knowledge, the causal structure must be discovered from the available observational data. However, observational data are often compatible with multiple causal graphs, making methods that commit to a single structure prone to overconfidence. A principled way to manage this structural uncertainty is via Bayesian inference, which averages over a posterior distribution on possible causal structures and functional mechanisms. Unfortunately, the number of causal structures grows super-exponentially with the number of nodes in the graph, making computations intractable. We propose to circumvent these challenges by using meta-learning to create an end-to-end model: the Model-Averaged Causal Estimation Transformer Neural Process (MACE-TNP). The model is trained to predict the Bayesian model-averaged interventional posterior distribution, and its end-to-end nature bypasses the need for expensive calculations. Empirically, we demonstrate that MACE-TNP outperforms strong Bayesian baselines. Our work establishes meta-learning as a flexible and scalable paradigm for approximating complex Bayesian causal inference, that can be scaled to increasingly challenging settings in the future.
Similar Papers
MetaCaDI: A Meta-Learning Framework for Scalable Causal Discovery with Unknown Interventions
Machine Learning (Stat)
Finds hidden causes in experiments with little data.
Black Box Causal Inference: Effect Estimation via Meta Prediction
Machine Learning (CS)
Teaches computers to figure out what causes what.
Causal machine learning for high-dimensional mediation analysis using interventional effects mapped to a target trial
Methodology
Helps find ways to lower sickness by changing causes.