viðbótaraðferðir
Viðbótaraðferðir, also known as augmentation methods, refer to techniques used to enhance or improve existing data, particularly in machine learning and artificial intelligence. The primary goal of viðbótaraðferðir is to increase the size and diversity of a training dataset without collecting new data. This is crucial for tasks where data scarcity is an issue, or to improve the robustness and generalization capabilities of machine learning models.
Common viðbótaraðferðir are often applied to image data. These include geometric transformations such as rotation, translation
Beyond image data, viðbótaraðferðir can be applied to other data types like text and audio. In natural
The effective use of viðbótaraðferðir can lead to significant improvements in model performance, reducing overfitting and