Identifying Complex Causal Dependencies in Configurational Data with Coincidence Analysis

Abstract:

We present cna, a package for performing Coincidence Analysis (CNA). CNA is a config urational comparative method for the identification of complex causal dependencies—in particular, causal chains and common cause structures—in configurational data. After a brief introduction to the method’s theoretical background and main algorithmic ideas, we demonstrate the use of the package by means of an artificial and a real-life data set. Moreover, we outline planned enhancements of the package that will further increase its applicability.

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Authors

Affiliations

Michael Baumgartner

 

Alrik Thiem

 

Published

March 29, 2015

Received

Dec 17, 2014

DOI

10.32614/RJ-2015-014

Volume

Pages

7/1

176 - 184

CRAN packages used

QCA, SetMethods, cna

CRAN Task Views implied by cited packages

CausalInference

Footnotes

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    Citation

    For attribution, please cite this work as

    Baumgartner & Thiem, "The R Journal: Identifying Complex Causal Dependencies in Configurational Data with Coincidence Analysis", The R Journal, 2015

    BibTeX citation

    @article{RJ-2015-014,
      author = {Baumgartner, Michael and Thiem, Alrik},
      title = {The R Journal: Identifying Complex Causal Dependencies in Configurational Data with Coincidence Analysis},
      journal = {The R Journal},
      year = {2015},
      note = {https://doi.org/10.32614/RJ-2015-014},
      doi = {10.32614/RJ-2015-014},
      volume = {7},
      issue = {1},
      issn = {2073-4859},
      pages = {176-184}
    }