4.7 Article

Out-of-Sample Tuning for Causal Discovery

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2022.3185842

Keywords

Tuning; Markov processes; Data models; Stars; Task analysis; Predictive models; Estimation; Causal-based simulation; causal discovery; out-of-sample; tuning

Funding

  1. European Research Council under the European Union's Seventh Framework Programme (FP/2007-2013)/ERC [617393]
  2. Hellenic Foundation for Research and Innovation (H.F.R. I.) [1941]

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Causal discovery algorithms require a set of hyperparameters and selecting the optimal combination is a challenge for practitioners. This study proposes an out-of-sample causal tuning method that treats causal models as predictive models and uses out-of-sample protocols. The method can handle general settings and is evaluated against other tuning approaches, showing its effectiveness in causal discovery.
Causal discovery is continually being enriched with new algorithms for learning causal graphical probabilistic models. Each one of them requires a set of hyperparameters, creating a great number of combinations. Given that the true graph is unknown and the learning task is unsupervised, the challenge to a practitioner is how to tune these choices. We propose out-of-sample causal tuning (OCT) that aims to select an optimal combination. The method treats a causal model as a set of predictive models and uses out-of-sample protocols for supervised methods. This approach can handle general settings like latent confounders and nonlinear relationships. The method uses an information-theoretic approach to be able to generalize to mixed data types and a penalty for dense graphs to penalize for complexity. To evaluate OCT, we introduce a causal-based simulation method to create datasets that mimic the properties of real-world problems. We evaluate OCT against two other tuning approaches, based on stability and in-sample fitting. We show that OCT performs well in many experimental settings and it is an effective tuning method for causal discovery.

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