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Challenge: Solving Task Using Bagging Regressor | Commonly Used Bagging Models
Ensemble Learning
course content

Conteúdo do Curso

Ensemble Learning

Ensemble Learning

1. Basic Principles of Building Ensemble Models
2. Commonly Used Bagging Models
3. Commonly Used Boosting Models
4. Commonly Used Stacking Models

Challenge: Solving Task Using Bagging Regressor

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

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Tudo estava claro?

Seção 2. Capítulo 4
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Challenge: Solving Task Using Bagging Regressor

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Mude para o desktop para praticar no mundo realContinue de onde você está usando uma das opções abaixo

Tudo estava claro?

Seção 2. Capítulo 4
toggle bottom row

Challenge: Solving Task Using Bagging Regressor

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Mude para o desktop para praticar no mundo realContinue de onde você está usando uma das opções abaixo

Tudo estava claro?

Tarefa

The load_diabetes dataset contains ten baseline variables (age, sex, BMI, average blood pressure, and six blood serum measurements) for 442 diabetes patients. The target variable is a quantitative measure of disease progression one year after baseline. This dataset is used for predicting the continuous variable, representing diabetes progression, based on the given features.

Your task is to use Bagging Regressor to solve the regression problem on load_diabetes dataset:

  1. Use a simple LinearRegression model as the base model of the ensemble.
  2. Use the BaggingRegressor class to create an ensemble.
  3. Use Mean Squared Error(MSE) to evaluate the results.

Mude para o desktop para praticar no mundo realContinue de onde você está usando uma das opções abaixo
Seção 2. Capítulo 4
Mude para o desktop para praticar no mundo realContinue de onde você está usando uma das opções abaixo
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