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The search for causality: A comparison of different techniques for causal inference graphs.

Jolanda J KossakowskiLourens J WaldorpHan L J van der Maas
Published in: Psychological methods (2021)
Estimating causal relations between two or more variables is an important topic in psychology. Establishing a causal relation between two variables can help us in answering that question of why something happens. However, using solely observational data are insufficient to get the complete causal picture. The combination of observational and experimental data may give adequate information to properly estimate causal relations. In this study, we consider the conditions where estimating causal relations might work and we show how well different algorithms, namely the Peter and Clark algorithm, the Downward Ranking of Feed-Forward Loops algorithm, the Transitive Reduction for Weighted Signed Digraphs algorithm, the Invariant Causal Prediction (ICP) algorithm and the Hidden Invariant Causal Prediction (HICP) algorithm, determine causal relations in a simulation study. Results showed that the ICP and the HICP algorithms perform best in most simulation conditions. We also apply every algorithm to an empirical example to show the similarities and differences between the algorithms. We believe that the combination of the ICP and the HICP algorithm may be suitable to be used in future research. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
Keyphrases
  • machine learning
  • deep learning
  • big data
  • neural network
  • emergency department
  • electronic health record
  • computed tomography
  • cross sectional
  • data analysis
  • current status