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Identifying Causal Direction via Variational Bayesian Compression

About

Telling apart the cause and effect between two random variables with purely observational data is a challenging problem that finds applications in various scientific disciplines. A key principle utilized in this task is the algorithmic Markov condition, which postulates that the joint distribution, when factorized according to the causal direction, yields a more succinct codelength compared to the anti-causal direction. Previous approaches approximate these codelengths by relying on simple functions or Gaussian processes (GPs) with easily evaluable complexity, compromising between model fitness and computational complexity. To address these limitations, we propose leveraging the variational Bayesian learning of neural networks as an interpretation of the codelengths. This allows the improvement of model fitness, while maintaining the succinctness of the codelengths, and the avoidance of the significant computational complexity of the GP-based approaches. Extensive experiments on both synthetic and real-world benchmarks in cause-effect identification demonstrate the effectiveness of our proposed method, showing promising performance enhancements on several datasets in comparison to most related methods.

Quang-Duy Tran, Bao Duong, Phuoc Nguyen, Thin Nguyen• 2025

Related benchmarks

TaskDatasetResultRank
Causal DiscoveryTübingen
AUROC75
37
Bivariate Causal DiscoveryLS-s
Accuracy1
30
Cause-Effect DiscoverySIM-ln
Accuracy89
16
Cause-Effect DiscoverySIM-G
Accuracy78
16
Cause-Effect DiscoverySIM-c
Accuracy54
16
Causal DiscoveryCE-Net
AUROC0.84
11
Causal DiscoveryCE Multi
AUROC91
11
Causal DiscoveryCE-Cha
AUROC0.47
11
Causal DiscoverySIM--
8
Causal DiscoveryAN (ANLSMN)
Accuracy100
7
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