Consider the theoretical setup for a stacking ensemble model designed for a regression task. The first layer of this model includes three different types of regression models: linear regression, ridge regression, and a support vector machine (SVM) with a linear kernel. The second layer, or the final estimator, uses a linear regression model to combine the predictions from the first layer. The goal is to theoretically predict Standard_yield based on features such as Elevation, Slope, Soil_fertility, and Pollution_level, with the intention to evaluate the model's hypothetical performance using the Mean Squared Error (MSE).Given the following theoretical code snippet that outlines this stacking ensemble model's setup, what should replace the _____ in the code to correctly configure the SVM with a linear kernel as part of the base learners in the stacking model?Optionslinearlinsigmoiddegree=1
Question
Consider the theoretical setup for a stacking ensemble model designed for a regression task. The first layer of this model includes three different types of regression models: linear regression, ridge regression, and a support vector machine (SVM) with a linear kernel. The second layer, or the final estimator, uses a linear regression model to combine the predictions from the first layer. The goal is to theoretically predict Standard_yield based on features such as Elevation, Slope, Soil_fertility, and Pollution_level, with the intention to evaluate the model's hypothetical performance using the Mean Squared Error (MSE).Given the following theoretical code snippet that outlines this stacking ensemble model's setup, what should replace the _____ in the code to correctly configure the SVM with a linear kernel as part of the base learners in the stacking model?Optionslinearlinsigmoiddegree=1
Solution
linear
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