O escalonamento de recursos é uma etapa crucial de pré-processamento em aprendizado de máquina and dados útil that involves adjusting the values of independent variables (features) to a common scale without distorting differences in the ranges of values. This technique is essential when the features have different units or magnitudes, as many machine learning algorithms dependem da distância entre os pontos de dados.
Dois métodos comuns de escalonamento de recursos são:
- Escalonamento Min-Max: This method rescales the feature to a fixed range, typically [0, 1]. The formula for min-max scaling is:
- Padronização (Normalização Z-score): This method centers the data around the mean with a standard deviation of 1, transforming the data into a standard distribuição normal. The formula is:
X_scaled = (X - X_min) / (X_max - X_min)
X_standardized = (X - mean) / standard_deviation
Choosing the appropriate feature scaling method depends on the specific algorithm being used. For instance, algorithms that use distance measurements, such as k-nearest neighbors (KNN) and Máquinas de Vetores de Suporte (SVM), benefit significantly from feature scaling. In contrast, tree-based algorithms like decision trees and random forests are generally invariant to feature scaling.
Overall, applying feature scaling improves the performance and convergence of many machine learning models, leading to more accurate predictions and enhanced interpretabilidade do modelo.