oversamplingbased
Oversampling-based refers to methods that increase data representation by generating or acquiring additional samples beyond the original data. It is used to improve temporal or spectral resolution, reduce distortion, or address imbalances in datasets. It contrasts with undersampling, which reduces data.
In digital signal processing and communications, oversampling involves sampling a signal at a rate higher than
In machine learning, oversampling-based techniques address class imbalance by increasing minority class samples. Simple replication duplicates
Practical considerations include choosing methods appropriate to the data modality and problem, being mindful of overfitting,