State-of-the art Automated Machine Learning python library for Tabular Data
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Updated
Oct 4, 2023 - Python
State-of-the art Automated Machine Learning python library for Tabular Data
This repository contains an example of each of the Ensemble Learning methods: Stacking, Blending, and Voting. The examples for Stacking and Blending were made from scratch, the example for Voting was using the scikit-learn utility.
Learning with Subset Stacking
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Identify the type of disease present on a Cassava Leaf image
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A powerful ensemble learning class πͺπ€ that supports multi-layer stacking π and blending models π for regression tasks π, with K-fold cross-validation πβ and hold-out validation set options π, for robust model performance π.
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