Configurational Comparative Methods (CCMs) aim to learn causal structures from datasets by exploiting Boolean sufficiency and necessity relationships. One important challenge for these methods is that such Boolean relationships are often not satisfied in real-life datasets, as these datasets usually contain noise. Hence, CCMs infer models that only approximately fit the data, introducing a risk of inferring incorrect or incomplete models, especially when data are also fragmented (have limited empirical diversity). To minimize this risk, evaluation measures for sufficiency and necessity should be sensitive to all relevant evidence. This article points out that the standard evaluation measures in CCMs, consistency and coverage, neglect certain evidence for these Boolean relationships. Correspondingly, two new measures, contrapositive consistency and contrapositive coverage, which are equivalent to the binary classification measures specificity and negative predictive value, respectively, are introduced to the CCM context as additions to consistency and coverage. A simulation experiment demonstrates that the introduced contrapositive measures indeed help to identify correct CCM models.
Contents
- Research Articles
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January 12, 2024
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February 2, 2024
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Open AccessRegression(s) discontinuity: Using bootstrap aggregation to yield estimates of RD treatment effectsFebruary 22, 2024
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Open AccessEnergy balancing of covariate distributionsApril 24, 2024
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April 24, 2024
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April 24, 2024
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Open AccessConditional generative adversarial networks for individualized causal mediation analysisMay 21, 2024
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May 21, 2024
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May 23, 2024
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June 15, 2024
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July 12, 2024
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July 12, 2024
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July 11, 2024
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July 25, 2024
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Open AccessAn optimal transport approach to estimating causal effects via nonlinear difference-in-differencesAugust 5, 2024
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August 10, 2024
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November 5, 2024
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Open AccessThe functional average treatment effectNovember 9, 2024
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December 21, 2024
- Review Article
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January 10, 2024
- Special Issue on Neyman (1923) and its influences on causal inference
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Open AccessOptimal allocation of sample size for randomization-based inference from 2K factorial designsFebruary 8, 2024
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Open AccessNeyman meets causal machine learning: Experimental evaluation of individualized treatment rulesAugust 5, 2024
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August 28, 2024
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Open AccessProspective and retrospective causal inferences based on the potential outcome frameworkOctober 24, 2024
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November 20, 2024