:og:description: Thresholding the estimated precision matrix. Assuming Gaussian data, absense of an edge between a pair of nodes corresponds to conditional independence given a separating set of nodes. :og:image:alt: Benchpress logo :og:sitename: Benchpress causal discovery platform :og:title: Precmat thresh (Benchpress) .. meta:: :title: Precmat thresh (Benchpress) :description: Thresholding the estimated precision matrix. Assuming Gaussian data, absense of an edge between a pair of nodes corresponds to conditional independence given a separating set of nodes. .. _prec_thresh: Precmat thresh (Benchpress) **************************** .. list-table:: * - Module name - `prec_thresh `__ * - Package - `Benchpress `__ * - Version - * - Language - `Python `__ * - Docs - * - Paper - * - Graph type - `UG `__ * - MCMC - No * - Edge constraints - No * - Data type - C * - Data missingness - * - Intervention type - * - Docker - `bpimages/datascience-python:1.1 `__ Precmat thresh ------------------ Thresholding the estimated precision matrix. Assuming Gaussian data, absense of an edge between a pair of nodes corresponds to conditional independence given a separating set of nodes. .. rubric:: Example JSON .. code-block:: json [ { "id": "pthresh", "thresh": 0.5, "timeout": null } ] .. footbibliography::