Enhancing Deep Learning Performance Using Displaced Rectifier Linear Unit Enhancing Deep Learning Performance Using Displaced Rectifier Linear Unit

Enhancing Deep Learning Performance Using Displaced Rectifier Linear Unit

    • 7,49 €
    • 7,49 €

Beschreibung des Verlags

Recently, deep learning has caused a significant impact on computer vision, speech recognition, and natural language understanding. In spite of the remarkable advances, deep learning recent performance gains have been modest and usually rely on increasing the depth of the models, which often requires more computational resources such as processing time and memory usage. To tackle this problem, we turned our attention to the interworking between the activation functions and the batch normalization, which is virtually mandatory currently. In this work, we propose the activation function Displaced Rectifier Linear Unit (DReLU) by conjecturing that extending the identity function of ReLU to the third quadrant enhances compatibility with batch normalization. Moreover, we used statistical tests to compare the impact of using distinct activation functions (ReLU, LReLU, PReLU, ELU, and DReLU) on the learning speed and test accuracy performance of VGG and Residual Networks state-of-the-art models. These convolutional neural networks were trained on CIFAR-10 and CIFAR-100, the most commonly used deep learning computer vision datasets. The results showed DReLU speeded up learning in all models and datasets. Besides, statistical significant performance assessments (p<0.05) showed DReLU enhanced the test accuracy obtained by ReLU in all scenarios. Furthermore, DReLU showed better test accuracy than any other tested activation function in all experiments with one exception.

GENRE
Computer und Internet
ERSCHIENEN
2022
25. März
SPRACHE
EN
Englisch
UMFANG
100
Seiten
VERLAG
Editora Dialética
ANBIETERINFO
Bookwire Brazil Distribuicao de Livros Digitais LTDA.
GRÖSSE
8,6
 MB
Deep Neural Evolution Deep Neural Evolution
2020
Neural Connectomics Challenge Neural Connectomics Challenge
2017
Pan-African Artificial Intelligence and Smart Systems Pan-African Artificial Intelligence and Smart Systems
2022
Transparency and Interpretability for Learned Representations of Artificial Neural Networks Transparency and Interpretability for Learned Representations of Artificial Neural Networks
2022
Artificial Intelligence Applications and Innovations Artificial Intelligence Applications and Innovations
2022
GENERALIZATION WITH DEEP LEARNING GENERALIZATION WITH DEEP LEARNING
2021