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Using Decision Tree as Local Interpretable Model in Autoencoder-based LIME

The paper introduces a new version of ALIME, which uses a decision tree instead of a linear model as the locally interpretable model.

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Cite this as

Niloofar Ranjbar, Reza Safabakhsh (2024). Dataset: Using Decision Tree as Local Interpretable Model in Autoencoder-based LIME. https://doi.org/10.57702/scu8r8vk

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Additional Info

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Created December 3, 2024
Last update December 3, 2024
Author Niloofar Ranjbar
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Reza Safabakhsh
Homepage https://github.com/nranjbar/interpretable_machine_learning