False Negative Rate

Description: The false negative rate is a statistical metric that refers to the proportion of actual positive cases that are incorrectly classified as negative by a classification model. In other words, it measures the number of instances that, although they should have been identified as positive, are mistakenly labeled as negative. This rate is crucial in contexts where identifying positives is vital, such as in medical diagnoses, fraud detection, or security systems. A high false negative rate can have serious consequences, as it means the model is failing to detect cases that truly require attention or action. The rate is calculated by dividing the number of false negatives by the sum of false negatives and true positives, providing a clear view of the model’s effectiveness in identifying positives. In the realm of machine learning and statistical modeling, the false negative rate becomes a critical factor to consider, as adjusting the model’s parameters can directly influence its ability to correctly classify positive cases. Therefore, it is essential to balance the false negative rate with other metrics, such as the true positive rate and the false positive rate, to achieve optimal model performance.

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