Global accuracy is a key performance metric used to evaluate the effectiveness of an intelligence artificielle (AI) model, particularly in classification tasks. It is defined as the ratio of the number of correct predictions made by the model to the total number of predictions, expressed as a percentage. This metric provides a straightforward indication of how well the model is performing across all classes or categories.
Pour calculer la précision globale, la formule utilisée est :
Précision Globale = (Nombre de Prédictions Correctes) / (Nombre Total de Prédictions) × 100%
While overall accuracy is a useful metric, it is important to consider the context in which the model operates. For example, in cases of jeux de données déséquilibrés, where one class significantly outnumbers another, a high overall accuracy may be misleading. In such scenarios, it is advisable to look at additional metrics such as precision, recall, and Score F1 to gain a comprehensive understanding of the model’s performance. These metrics can provide insights into how well the model is identifying each class, especially in situations where the consequences of misclassification may vary.
Overall accuracy is commonly used in various AI applications, including image recognition, traitement du langage naturel, and medical diagnosis, where the ability to correctly classify or predict outcomes is critical.