Data di Pubblicazione:
2019
Abstract:
Improving generalization is one of the main challenges for training deep neural networks on classification tasks. In particular, a number of techniques have been proposed, aiming to boost the performance on unseen data: from standard data augmentation techniques to the โ2 regularization, dropout, batch normalization, entropy-driven SGD and many more. In this work we propose an elegant, simple and principled approach: post-synaptic potential regularization (PSP). We tested this regularization on a number of different state-of-the-art scenarios. Empirical results show that PSP achieves a classification error comparable to more sophisticated learning strategies in the MNIST scenario, while improves the generalization compared to โ2 regularization in deep architectures trained on CIFAR-10.
Tipologia CRIS:
04A-Conference paper in volume
Elenco autori:
Tartaglione, Enzo; Perlo, Daniele; Grangetto, Marco
Link alla scheda completa:
Titolo del libro:
Artificial Neural Networks and Machine Learning โ ICANN 2019: Deep Learning. ICANN 2019
Pubblicato in: