A Constructive Approach for One-Shot Training of Neural Networks Using Hypercube-Based Topological Coverings
Daniel, W. Brent, Yeung, Enoch
Abstract-- In this paper we presented a novel constructive approach for training deep neural networks using geometric approaches. We show that a topological covering can be used to define a class of distributed linear matrix inequalities, which in turn directly specify the shape and depth of a neural network architecture. The key insight is a fundamental relationship between linear matrix inequalities and their ability to bound the shape of data, and the rectified linear unit (ReLU) activation function employed in modern neural networks. We show that unit cover geometry and cover porosity are two design variables in cover-constructive learning that play a critical role in defining the complexity of the model and generalizability of the resulting neural network classifier. In the context of cover-constructive learning, these findings underscore the age old tradeoff between modelcomplexity and overfitting (as quantified by the number of elements in the data cover) and generalizability on test data. Finally, we benchmark on algorithm on the Iris, MNIST, and Wine dataset and show that the constructive algorithm is able to train a deep neural network classifier in one shot, achieving equal or superior levels of training and test classification accuracy with reduced training time. I. INTRODUCTION Artificial neural networks have proven themselves to be useful, highly flexible tools for addressing many complex problems where first-principles solutions are infeasible, impractical, orundesirable.
Jan-9-2019
- Country:
- North America > United States
- Virginia (0.04)
- California > Orange County
- Irvine (0.04)
- Europe > Italy
- North America > United States
- Genre:
- Research Report > New Finding (0.34)
- Technology: