IBM Data Science Practice Test 2026 – Comprehensive Exam Prep

Question: 1 / 400

What is the purpose of using regularization techniques in machine learning?

To enhance the model's learning speed

To simplify the model and reduce training time

To prevent overfitting by adding a penalty for larger coefficients

The purpose of using regularization techniques in machine learning is primarily to prevent overfitting by adding a penalty for larger coefficients in the model. Overfitting occurs when a model learns the noise and details in the training data rather than just the underlying trends. This can lead to a model that performs well on training data but poorly on unseen or test data.

Regularization methods, such as L1 (Lasso) and L2 (Ridge) regularization, introduce a constraint on the size of the coefficients. By penalizing larger coefficients, regularization encourages the model to be simpler and more generalizable. This penalty helps in maintaining a balance between fitting the training data well and keeping the model complexity in check. As a result, regularization techniques not only improve the model's predictive performance on new data but also promote the selection of features that contribute meaningfully to the prediction, leading to a more interpretable and efficient model.

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To increase the model complexity

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