Abstract: This paper presents some ideas about a new neural network architecture that can be compared to a Taylor
analysis when dealing with patterns. Such architecture is based on lineal activation functions with an axo-axonic
architecture. A biological axo-axonic connection between two neurons is defined as the weight in a connection
in given by the output of another third neuron. This idea can be implemented in the so called Enhanced Neural
Networks in which two Multilayer Perceptrons are used; the first one will output the weights that the second MLP
uses to computed the desired output. This kind of neural network has universal approximation properties even with
lineal activation functions. There exists a clear difference between cooperative and competitive strategies. The
former ones are based on the swarm colonies, in which all individuals share its knowledge about the goal in order
to pass such information to other individuals to get optimum solution. The latter ones are based on genetic models,
that is, individuals can die and new individuals are created combining information of alive one; or are based on
molecular/celular behaviour passing information from one structure to another. A swarm-based model is applied to
obtain the Neural Network, training the net with a Particle Swarm algorithm.
Keywords: Neural Networks, Swarm Computing, Particle Swarm Optimization.
ACM Classification Keywords: F.1.1 Theory of Computation - Models of Computation, I.2.6 Artificial Intelligence -
Learning, G.1.2 Numerical Analysis - Approximation.
Link:
POLYNOMIAL APPROXIMATION USING PARTICLE SWARM OPTIMIZATION OF
LINEAR ENHANCED NEURAL NETWORKS WITH NO HIDDEN LAYERS
Luis F. de Mingo, Miguel A. Muriel, Nuria Gómez Blas, Daniel Triviño G.
http://www.foibg.com/ijima/vol01/ijima01-3-p01.pdf