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Discriminative and Generative Models in Causal and Anticausal Settings

机译:因果关系和反因果条件下的判别和生成模型

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摘要

Having knowledge about the real underlying causal structure of a data generation process has various implications for different machine learning problems. We address the idea of causal and anticausal learning with respect to a comparison of discriminative and generative models. In particular, we conjecture the hypothesis that generative models perform better in anticausal problems than in causal problems. We empirical evaluate our hypothesis with different real-world data sets.
机译:了解数据生成过程的真正潜在因果结构会对不同的机器学习问题产生各种影响。关于判别模型和生成模型的比较,我们讨论了因果学习和反因果学习的思想。尤其是,我们推测这样一个假设:生成模型在反因果问题中的表现要优于因果问题。我们用不同的现实世界数据集对我们的假设进行实证评估。

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