Kolcz, A. and Allinson, N. M. (1994) Euclidean input mapping in a N-tuple approximation network. In: 1994 Sixth IEEE Digital Signal Processing Workshop, 2-5 October 1994, Yosemite National Park, CA, USA.
Full content URL: http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumb...
Documents |
|
![]() |
PDF
00379821.pdf - Whole Document Restricted to Repository staff only 500kB |
Item Type: | Conference or Workshop contribution (Paper) |
---|---|
Item Status: | Live Archive |
Abstract
A type of the N-tuple neural architecture can be shown to perform function approximation based on local interpolation, similar that performed by RBF networks. Since the size and speed of operation in this implementation are independent of the training set size, it is attractive for practical adaptive solutions. However, the kernel function used by the network is non-Euclidean, which can cause performance losses for high-dimensional input data. The authors investigate methods for realising more isotropic kernel basis functions by use of special data encoding techniques
Additional Information: | A type of the N-tuple neural architecture can be shown to perform function approximation based on local interpolation, similar that performed by RBF networks. Since the size and speed of operation in this implementation are independent of the training set size, it is attractive for practical adaptive solutions. However, the kernel function used by the network is non-Euclidean, which can cause performance losses for high-dimensional input data. The authors investigate methods for realising more isotropic kernel basis functions by use of special data encoding techniques |
---|---|
Keywords: | N-tuple techniques, neural nets, function approximation, interpolation |
Subjects: | G Mathematical and Computer Sciences > G730 Neural Computing |
Divisions: | College of Science > School of Computer Science |
ID Code: | 5076 |
Deposited On: | 20 Apr 2012 15:48 |
Repository Staff Only: item control page