Title
Feature Graph Architectures.
Abstract
In this article we propose feature graph architectures (FGA), which are deep learning systems employing a structured initialisation and training method based on a feature graph which facilitates improved generalisation performance compared with a standard shallow architecture. The goal is to explore alternative perspectives on the problem of deep network training. We evaluate FGA performance for deep SVMs on some experimental datasets, and show how generalisation and stability results may be derived for these models. We describe the effect of permutations on the model accuracy, and give a criterion for the optimal permutation in terms of feature correlations. The experimental results show that the algorithm produces robust and significant test set improvements over a standard shallow SVM training method for a range of datasets. These gains are achieved with a moderate increase in time complexity.
Year
Venue
Field
2013
CoRR
Graph,Generalization,Computer science,Support vector machine,Permutation,Artificial intelligence,Deep learning,Time complexity,Machine learning,Test set
DocType
Volume
Citations 
Journal
abs/1312.4209
0
PageRank 
References 
Authors
0.34
7
3
Name
Order
Citations
PageRank
Richard Davis1585.09
Sanjay Chawla21372105.09
Philip Leong3263.25