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arxiv: 2401.02930 · v1 · pith:PEM7CQ5Unew · submitted 2024-01-05 · 💻 cs.LG · stat.ME· stat.ML

Dagma-DCE: Interpretable, Non-Parametric Differentiable Causal Discovery

classification 💻 cs.LG stat.MEstat.ML
keywords causaldagma-dcedifferentiablediscoveryinterpretablemethodproxiesstrength
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We introduce Dagma-DCE, an interpretable and model-agnostic scheme for differentiable causal discovery. Current non- or over-parametric methods in differentiable causal discovery use opaque proxies of ``independence'' to justify the inclusion or exclusion of a causal relationship. We show theoretically and empirically that these proxies may be arbitrarily different than the actual causal strength. Juxtaposed to existing differentiable causal discovery algorithms, \textsc{Dagma-DCE} uses an interpretable measure of causal strength to define weighted adjacency matrices. In a number of simulated datasets, we show our method achieves state-of-the-art level performance. We additionally show that \textsc{Dagma-DCE} allows for principled thresholding and sparsity penalties by domain-experts. The code for our method is available open-source at https://github.com/DanWaxman/DAGMA-DCE, and can easily be adapted to arbitrary differentiable models.

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