Title :
GETnet: a general framework for evolutionary temporal neural networks
Author :
Derakhshani, Reza
Author_Institution :
Dept. of Comput. Sci. & Electr. Eng., Missouri Univ., Kansas City, MO, USA
fDate :
31 July-4 Aug. 2005
Abstract :
Among the more challenging problems in the design of temporal neural networks are the incorporation of short and long-term memories and the choice of network topology. Delayed copies of network signals can form short-term memory (STM), whereas feedback loops can constitute long-term memories (LTM). This paper introduces a new general evolutionary temporal neural network framework (GETnet) for the automated design of neural networks with distributed STM and LTM. GETnet is a step towards the realization of general intelligent systems that can be applied to a broad range of problems. GETnet utilizes nonlinear moving average and autoregressive nodes and sub-circuits that are trained by enhanced gradient descent and evolutionary search in architecture, synaptic delay, and synaptic weight spaces. The ability to evolve arbitrary time-delay connections enables GETnet to find novel answers to classification and system identification tasks. A new temporal minimum description length policy ensures creation of fast and compact networks with improved generalization capabilities. Simulations using Mackey-Glass time series are presented to demonstrate the above stated capabilities of GETnet.
Keywords :
autoregressive processes; evolutionary computation; gradient methods; moving average processes; neural nets; time series; GETnet; Mackey-Glass time series; autoregressive node; evolutionary search; evolutionary temporal neural network; feedback loop; gradient descent; intelligent system; long-term memory; network signal; nonlinear moving average node; short-term memory; synaptic delay; synaptic weight space; system identification task; temporal minimum description length; Artificial neural networks; Biological neural networks; Cities and towns; Computer science; Delay lines; Genetics; Humans; Network topology; Neural networks; Signal analysis;
Conference_Titel :
Neural Networks, 2005. IJCNN '05. Proceedings. 2005 IEEE International Joint Conference on
Print_ISBN :
0-7803-9048-2
DOI :
10.1109/IJCNN.2005.1556431