Some Theorems for Feed Forward Neural Networks

09/17/2015
by   K. Eswaran, et al.
0

In this paper we introduce a new method which employs the concept of "Orientation Vectors" to train a feed forward neural network and suitable for problems where large dimensions are involved and the clusters are characteristically sparse. The new method is not NP hard as the problem size increases. We `derive' the method by starting from Kolmogrov's method and then relax some of the stringent conditions. We show for most classification problems three layers are sufficient and the network size depends on the number of clusters. We prove as the number of clusters increase from N to N+dN the number of processing elements in the first layer only increases by d(logN), and are proportional to the number of classes, and the method is not NP hard. Many examples are solved to demonstrate that the method of Orientation Vectors requires much less computational effort than Radial Basis Function methods and other techniques wherein distance computations are required, in fact the present method increases logarithmically with problem size compared to the Radial Basis Function method and the other methods which depend on distance computations e.g statistical methods where probabilistic distances are calculated. A practical method of applying the concept of Occum's razor to choose between two architectures which solve the same classification problem has been described. The ramifications of the above findings on the field of Deep Learning have also been briefly investigated and we have found that it directly leads to the existence of certain types of NN architectures which can be used as a "mapping engine", which has the property of "invertibility", thus improving the prospect of their deployment for solving problems involving Deep Learning and hierarchical classification. The latter possibility has a lot of future scope in the areas of machine learning and cloud computing.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/27/2017

Nearest Neighbour Radial Basis Function Solvers for Deep Neural Networks

We present a radial basis function solver for convolutional neural netwo...
research
07/24/2021

Neural Function Modules with Sparse Arguments: A Dynamic Approach to Integrating Information across Layers

Feed-forward neural networks consist of a sequence of layers, in which e...
research
03/08/2019

Approximating Optimisation Solutions for Travelling Officer Problem with Customised Deep Learning Network

Deep learning has been extended to a number of new domains with critical...
research
06/11/2018

When and where do feed-forward neural networks learn localist representations?

According to parallel distributed processing (PDP) theory in psychology,...
research
05/19/2023

Complexity of Feed-Forward Neural Networks from the Perspective of Functional Equivalence

In this paper, we investigate the complexity of feed-forward neural netw...
research
10/19/2019

A simple approach to design quantum neural networks and its applications to kernel-learning methods

We give an explicit simple method to build quantum neural networks (QNNs...
research
06/20/2023

Deep Level-set Method for Stefan Problems

We propose a level-set approach to characterize the region occupied by t...

Please sign up or login with your details

Forgot password? Click here to reset