IBM Data Science Practice Test 2026 – Comprehensive Exam Prep

Question: 1 / 400

What is the purpose of hyperparameter tuning?

To adjust the model after it has been trained

To find the best set of parameters for a model to improve performance

Hyperparameter tuning is a crucial aspect of developing machine learning models as it focuses on identifying the optimal set of hyperparameters that govern the training process and ultimately influence the model's performance. Hyperparameters are settings that are not learned from the data during the training phase but instead need to be preset before the learning process begins. These parameters can include aspects like the learning rate, the number of trees in a random forest, the number of layers in a neural network, and regularization values.

By methodically exploring different combinations of hyperparameters, practitioners can significantly enhance the accuracy, speed, and overall effectiveness of the model. This optimized configuration helps ensure that the model can generalize well to unseen data, thereby improving its predictive capabilities. Thus, the purpose of hyperparameter tuning revolves around meticulously searching for the best set of parameters that will lead to the highest performance metric, be it accuracy, F1-score, or any other evaluation criteria relevant to the specific task at hand.

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To simplify the model architecture

To increase the number of features in a model

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