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DMIN
2006

Hyper-Rectangular and k-Nearest-Neighbor Models in Stochastic Discrimination

14 years 28 days ago
Hyper-Rectangular and k-Nearest-Neighbor Models in Stochastic Discrimination
The stochastic discrimination (SD) theory considers learning as building models of uniform coverage over data distributions. Despite successful trials of the derived SD method in several application domains, a number of difficulties related to its practical implementation still exist. This paper reports analysis of simple examples as a first step towards presenting the practical implementation issues, such as model generation and preliminary estimations to set parameters. Two implementations using different methods for model generation are discussed. One uses the nearest neighbor approach to maintain the projectability condition, the other constructs hyper-rectangular regions by randomly selecting subintervals in each dimension. Analysis of these implementations shows that for high-dimensional data, parallel model generation with the nearest neighbor approach is a favorable alternative to the interval model generation with random manipulation of the feature subspaces.
Iryna Skrypnyk, Tin Kam Ho
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2006
Where DMIN
Authors Iryna Skrypnyk, Tin Kam Ho
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