Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Heteroscedastic Causal Structure Learning

About

Heretofore, learning the directed acyclic graphs (DAGs) that encode the cause-effect relationships embedded in observational data is a computationally challenging problem. A recent trend of studies has shown that it is possible to recover the DAGs with polynomial time complexity under the equal variances assumption. However, this prohibits the heteroscedasticity of the noise, which allows for more flexible modeling capabilities, but at the same time is substantially more challenging to handle. In this study, we tackle the heteroscedastic causal structure learning problem under Gaussian noises. By exploiting the normality of the causal mechanisms, we can recover a valid causal ordering, which can uniquely identify the causal DAG using a series of conditional independence tests. The result is HOST (Heteroscedastic causal STructure learning), a simple yet effective causal structure learning algorithm that scales polynomially in both sample size and dimensionality. In addition, via extensive empirical evaluations on a wide range of both controlled and real datasets, we show that the proposed HOST method is competitive with state-of-the-art approaches in both the causal order learning and structure learning problems.

Bao Duong, Thin Nguyen• 2023

Related benchmarks

TaskDatasetResultRank
Runtime EfficiencySynthetic Graphs d=100
Runtime (s)17.332
12
Runtime EfficiencySynthetic Graphs d=50
Runtime (seconds)7.177
12
Causal OrderingSyntren
ODR42
12
Runtime EfficiencySynthetic Graphs d=20
Runtime (seconds)4.159
12
Runtime EfficiencySynthetic Graphs d=5
Runtime (s)0.625
12
Runtime EfficiencySynthetic Graphs d=10
Runtime (seconds)1.967
12
Causal OrderingSachs
ODR18
12
Showing 7 of 7 rows

Other info

Follow for update