I need to Examine the evaluation results on testing data: MAE and RMSE. The correct answer suppose to be MAE: 4671, RMSE: 7734. Do I miss any code when I adding "kernel = poly, degree = 5"? When I change the value of C, the result is still the same. Could you please correct my code? Thank you # Build a SVM model with C = 10.0, kernel = poly, degree = 5 model_SVM10 = SVR(C=10, kernel = 'poly', degree = 5) model_SVM10.fit(predictors_train_insurance, target_train_insurance) # Make predictions on testing and training data predictions_on_test_insurance = model_SVM10.predict(predictors_test_insurance) # Examine the evaluation results on testing data: MAE and RMSE MAE = mean_absolute_error(target_test_insurance, predictions_on_test_insurance) RMSE = mean_squared_error(target_test_insurance, predictions_on_test_insurance, squared=False) print("MAE:", MAE) print("RMSE:", RMSE) MAE: 7259.965471230366 RMSE: 13035.30123325080

Computer Networking: A Top-Down Approach (7th Edition)
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ISBN:9780133594140
Author:James Kurose, Keith Ross
Publisher:James Kurose, Keith Ross
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I need to Examine the evaluation results on testing data: MAE and RMSE. The correct answer suppose to be MAE: 4671, RMSE: 7734. Do I miss any code when I adding "kernel = poly, degree = 5"? When I change the value of C, the result is still the same. Could you please correct my code? Thank you

# Build a SVM model with C = 10.0, kernel = poly, degree = 5

model_SVM10 = SVR(C=10, kernel = 'poly', degree = 5)

model_SVM10.fit(predictors_train_insurance, target_train_insurance)

# Make predictions on testing and training data

predictions_on_test_insurance = model_SVM10.predict(predictors_test_insurance)

# Examine the evaluation results on testing data: MAE and RMSE

MAE = mean_absolute_error(target_test_insurance, predictions_on_test_insurance)

RMSE = mean_squared_error(target_test_insurance, predictions_on_test_insurance, squared=False)

print("MAE:", MAE)

print("RMSE:", RMSE)

MAE: 7259.965471230366

RMSE: 13035.301233250802

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