 Challenge: Solving Task Using Stacking Classifier
Challenge: Solving Task Using Stacking Classifier
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The 'blood-transfusion-service-center' dataset is a dataset that contains information related to blood donation. It's often used as a binary classification task to predict whether a blood donor will donate blood again. The dataset includes several features that provide insights into the donor's history and characteristics.
Your task is to solve a classification task using the 'blood-transfusion-service-center' dataset:
- Use 3 different LogisticRegressionmodels as base models. Each model must have different regularization parameters:0.1,1, and10, respectively.
- Use MLPClassifieras meta-model of an ensemble.
- Create a base_modelslist containing all base models of the ensemble.
- Finally, create a StackingClassifiermodel with specified base models and meta-model.
Soluzione
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Challenge: Solving Task Using Stacking Classifier
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Swipe to start coding
The 'blood-transfusion-service-center' dataset is a dataset that contains information related to blood donation. It's often used as a binary classification task to predict whether a blood donor will donate blood again. The dataset includes several features that provide insights into the donor's history and characteristics.
Your task is to solve a classification task using the 'blood-transfusion-service-center' dataset:
- Use 3 different LogisticRegressionmodels as base models. Each model must have different regularization parameters:0.1,1, and10, respectively.
- Use MLPClassifieras meta-model of an ensemble.
- Create a base_modelslist containing all base models of the ensemble.
- Finally, create a StackingClassifiermodel with specified base models and meta-model.
Soluzione
Grazie per i tuoi commenti!
single