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Extension of the Generative Approach for Categorical Variables
The same idea for the cause-effect pair problem for continuous variables could be used for categorical variables or mixed variables. To the best of our knowledge, only few attempts have been made to solve the cause-effect pair problem with categorical data.
It may be explained by the fact that the cause-effect problem for categorical data may be really harder than for continuous data, because there is in general less information to exploit in the distribution of the noise and in the asymmetry of the causal mechanisms.
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Data Science
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Extension of the Generative Approach for Categorical Variables
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