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A polynomial-time algorithm for learning nonparametric causal graphs

22 June 2020
Ming Gao
Yi Ding
Bryon Aragam
    CML
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Abstract

We establish finite-sample guarantees for a polynomial-time algorithm for learning a nonlinear, nonparametric directed acyclic graphical (DAG) model from data. The analysis is model-free and does not assume linearity, additivity, independent noise, or faithfulness. Instead, we impose a condition on the residual variances that is closely related to previous work on linear models with equal variances. Compared to an optimal algorithm with oracle knowledge of the variable ordering, the additional cost of the algorithm is linear in the dimension ddd and the number of samples nnn. Finally, we compare the proposed algorithm to existing approaches in a simulation study.

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