Title :
Reinforced snap-drift learning for proxylet selection in active computer networks
Author :
Lee, Sin Wee ; Palmer-Brown, Dominic ; Roadknight, Chris
Author_Institution :
Sch. of Comput., Leeds Metropolitan Univ., UK
Abstract :
A new continuous learning method is applied to the problem of optimizing the selection of services in response to user requests in an active computer network simulation environment. The learning is an enhanced version of the ´snap-drift´ algorithm, a hybrid form of learning that employs the complementary modes: fast, minimalist (snap) learning; and slower drift (towards the input patterns) learning, in a non-stationary environment where new patterns are continually introduced. Snap is based on adaptive resonance theory, and drift on learning vector quantization. The new algorithm swaps its learning style between the two modes of self-organisation when declining performance levels are received, but maintains the same learning style during episodes of improved performance. Performance updates occur at the end of each epoch. Reinforcement also occurs by maintaining successful adaptations, since learning is enabled with a probability that increases with declining performance. The method is capable of rapidly re-learning and is used in the design of a modular neural network system, performance-guided adaptive resonance theory. Simulations demonstrate that the learning is stable, effective and able to discover alternative solutions in response to new performance requirements and significant changes in the stream of input patterns.
Keywords :
ART neural nets; computer networks; learning (artificial intelligence); probability; vector quantisation; active computer networks; adaptive resonance theory; computer network simulation environment; learning vector quantization; modular neural network system; optimization; probability; proxylet selection; reinforced snap-drift learning; self organisation; snap-drift algorithm; Adaptive systems; Computational intelligence; Computer networks; Fuzzy set theory; Intelligent networks; Learning systems; Neural networks; Resonance; Silicon compounds; Subspace constraints;
Conference_Titel :
Neural Networks, 2004. Proceedings. 2004 IEEE International Joint Conference on
Print_ISBN :
0-7803-8359-1
DOI :
10.1109/IJCNN.2004.1380185