Optimizing Data Augmentation Policy Through Random Unidimensional Search
Dong, Xiaomeng, Potter, Michael, Kumar, Gaurav, Tsai, Yun-Chan, Saripalli, V. Ratna, Trafalis, Theodore
–arXiv.org Artificial Intelligence
It is no secret amongst deep learning researchers that finding the optimal data augmentation strategy during training can mean the difference between state-of-the-art performance and a run-of-the-mill result. To that end, the community has seen many efforts to automate the process of finding the perfect augmentation procedure for any task at hand. Unfortunately, even recent cutting-edge methods bring massive computational overhead, requiring as many as 100 full model trainings to settle on an ideal configuration. We show how to achieve equivalent performance using just 6 trainings with Random Unidimensional Augmentation. Source code is available at https://github.com/fastestimator/RUA/tree/v1.0
arXiv.org Artificial Intelligence
Jul-14-2023
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