(Version 0.1.8.1, updated on 2024-06-06, release history)
A find(e)r of influential cases in structural equation modeling based mainly on the sensitivity analysis procedures presented by Pek and MacCallum (2011).
This package supports two approaches: leave-one-out analysis and approximate case influence.
This approach examines the influence of each case by refitting a model with this case removed.
Unlike other similar packages, the workflow adopted in semfindr separates the leave-one-out analysis (refitting a model with one case removed) from the case influence measures.
Users first do the leave-one-out model fitting for all cases, or
cases selected based on some criteria
(vignette("selecting_cases", package = "semfindr")
), using
lavaan_rerun()
.
Users then compute case influence measures
using the output of lavaan_rerun()
.
This approaches avoids unnecessarily refitting the models for each set of influence measures, and also allows analyzing only probable influential cases when the model takes a long time to fit.
The functions were designed to be flexible such that users can compute case influence measures such as
lavaan::fitMeasures()
.This package can also be generate plots to visualize
case influence, including a bubble plot similar to that by car::influencePlot()
All plots generated are ggplot
plots that can be further modified by users.
More can be found in Quick Start (vignette("semfindr", package = "semfindr")
).
This approach computes the approximate influence of each case using casewise
scores and casewise likelihood. This method is efficient because it does
not requires refitting the model for each case. However, it can only approximate
the influence, unlike the leave-one-out approach, which produce exact influence.
This approach can be used when the number of cases is very large
and/or the model takes a long time to fit. Technical details can be found in the
vignette Approximate Case Influence Using Scores and Casewise Likelihood
(vignette("casewise_scores", package = "semfindr")
).
The stable version at CRAN can be installed by install.packages()
:
install.packages("semfindr")
The latest developmental version can be installed by remotes::install_github
:
remotes::install_github("sfcheung/semfindr")
You can learn more about this package at the
Github page of this
package and
Quick Start (vignette("semfindr", package = "semfindr")
).
Pek, J., & MacCallum, R. (2011). Sensitivity analysis in structural equation models: Cases and their influence. Multivariate Behavioral Research, 46(2), 202-228. https://doi.org/10.1080/00273171.2011.561068
Please post your comments, suggestions, and bug reports as issues
at GitHub, or contact
the maintainer by email. Thanks in advance for trying out semfindr
.