SEset - Computing Statistically-Equivalent Path Models
Tools to compute and analyze the set of
statistically-equivalent (Gaussian, linear) path models which
generate the input precision or (partial) correlation matrix.
This procedure is useful for understanding how statistical
network models such as the Gaussian Graphical Model (GGM)
perform as causal discovery tools. The statistical-equivalence
set of a given GGM expresses the uncertainty we have about the
sign, size and direction of directed relationships based on the
weights matrix of the GGM alone. The derivation of the
equivalence set and its use for understanding GGMs as causal
discovery tools is described by Ryan, O., Bringmann, L.F., &
Schuurman, N.K. (2022) <doi: 10.31234/osf.io/ryg69>.