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Thanks for providing this code and shiny app along with your article in Nature Machine Intelligence.
I'm greatly interested in the interplay between causality and machine learning, and personally work on medical applications. As an ML practitioner working on applications your method seems interesting, but the provided examples are not very accessible.
Could you provide an example that may relate to real-world data? I'm thinking:
clinical parameters from patients, generated by distinct disease phenotypes (e.g. records of age, sex, blood pressure, lung function etc, simulated according to some disease model with different underlying factors)
images (e.g. generated through different causal models)
I'd happily think along with generating some example simulations
The text was updated successfully, but these errors were encountered:
Thanks for providing this code and shiny app along with your article in Nature Machine Intelligence.
I'm greatly interested in the interplay between causality and machine learning, and personally work on medical applications. As an ML practitioner working on applications your method seems interesting, but the provided examples are not very accessible.
Could you provide an example that may relate to real-world data? I'm thinking:
I'd happily think along with generating some example simulations
The text was updated successfully, but these errors were encountered: