Quantitative probing: Validating causal models using quantitative domain knowledge
Grünbaum, Daniel, Stern, Maike L., Lang, Elmar W.
–arXiv.org Artificial Intelligence
The method is constructed as an analogue of the train/test split in correlation-based machine learning and as an enhancement of current causal validation strategies that are consistent with the logic of scientific discovery. The effectiveness of the method is illustrated using Pearl's sprinkler example, before a thorough simulation-based investigation is conducted. Limits of the technique are identified by studying exemplary failing scenarios, which are furthermore used to propose a list of topics for future research and improvements of the presented version of quantitative probing. The code for integrating quantitative probing into causal analysis, as well as the code for the presented simulation-based studies of the effectiveness of quantitative probing is provided in two separate open-source Python packages.
arXiv.org Artificial Intelligence
Sep-7-2022
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