DocumentCode
3860984
Title
Discrete vector quantization for arbitrary distance function estimation
Author
J. Oommen;I.K. Altinel;N. Aras
Author_Institution
Sch. of Comput. Sci., Carleton Univ., Ottawa, Ont., Canada
Volume
28
Issue
4
fYear
1998
Firstpage
496
Lastpage
510
Abstract
There are currently many vastly different areas of research involving adaptive learning. Among them are the two areas that concern neural networks and learning automata. This paper develops a method by which the general philosophies of vector quantization (VQ) and discretized automata learning can be incorporated for the computation of arbitrary distance functions. The latter is a problem which has important applications in logistics and location analysis. The input to our problem is the set of coordinates of a large number of nodes whose internode arbitrary "distances" have to be estimated. To render the problem interesting, nontrivial, and realistic, we assume that the explicit form of this distance function is both unknown and uncomputable. Unlike traditional operations research methods, which use optimized parametric functional estimators, we have utilized discretized VQ principles to first adaptively polarize the nodes into subregions. Subsequently, the parameters characterizing the subregions are learned by using a variety of methods (including, for academic purposes, a VQ strategy in the meta-domain). After an initial training phase, a system which achieves distance estimation attempts to yield an estimate of any node-pair distance without actually deriving an explicit form for the unknown function. The algorithms have been rigorously tested for the actual road-travel distances involving cities in Turkey and the results obtained are conclusive. Indeed, these present results are the best currently available from any single or hybrid strategy.
Keywords
"Vector quantization","Learning automata","Phase estimation","Yield estimation","Neural networks","Logistics","Operations research","Optimization methods","Polarization","Testing"
Journal_Title
IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics)
Publisher
ieee
ISSN
1083-4419
Type
jour
DOI
10.1109/3477.704289
Filename
704289
Link To Document