Artificial Intelligence Programming 2025 – 400 Free Practice Questions to Pass the Exam

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What does the F1 score measure in relation to a model's performance?

A measure of a model’s accuracy that considers both precision and recall

The F1 score serves as a vital metric for evaluating a model's performance, particularly in scenarios where the balance between precision and recall is crucial. It is the harmonic mean of precision and recall, providing a single score that reflects both the model's accuracy in correctly identifying positive instances (precision) and its ability to capture all relevant instances (recall).

When a model exhibits high precision, it indicates that a significant proportion of the positive predictions it makes are indeed correct. Conversely, high recall implies that the model correctly identifies a significant portion of the actual positive instances within the dataset. The F1 score effectively balances these two aspects, making it especially useful in applications where false positives and false negatives carry different costs, such as in fraud detection or medical diagnosis.

In contrast, other options do not accurately represent what the F1 score measures. For instance, measuring overall error rate pertains more to metrics like accuracy or specific error rates, while training time and model complexity refer to different aspects of model evaluation and development. The F1 score specifically aims to provide insight into the effectiveness of a model in distinguishing between the positive and negative classes in a dataset.

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A measure of the overall error rate of a model

A measure of the model's training time

A measure of the complexity of the model

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