No Regret Sample Selection with Noisy Labels
Deep Neural Network (DNN) suffers from noisy labeled data because of the heavily overfitting risk. To avoid the risk, in this paper, we propose a novel sample selection framework for learning noisy samples. The core idea is to employ a "regret" minimization approach. The proposed sample selection method adaptively selects a subset of noisy-labeled training samples to minimize the regret to select noise samples. The algorithm efficiently works and performs with theoretical support. Moreover, unlike the typical approaches, the algorithm does not require any side information or learning information depending on the training settings of DNN. The experimental results demonstrate that the proposed method improves the performance of a black-box DNN with noisy labeled data.
READ FULL TEXT