IEEE Trans. Neural Networks Special Issue: Online Learning in Kernel Methods
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Deadline: May 01, 2011 | Date: March 31, 2012
Venue/Country: Call for papers, Afghanistan
Updated: 2010-12-01 09:58:26 (GMT+9)
Call For Papers - CFP
IEEE Trans. Neural Networks Special Issue: Online Learning in KernelMethodsOnline learning is one of the most powerful and commonly usedtechniques for training adaptive filters and has been usedsuccessfully in neural networks. The last decade has also witnessed aflurry of research efforts in Mercer kernel methods, such as the SVMand kernel regression, kernel principal component analysis etc. Allthese techniques use algorithms that have to work with a large matrix(the Gram Matrix) which makes them computational and memory intensive.It is theoretically possible to arrive at the neighborhood of theoptimal solution using gradient descent techniques, with simpler andless memory intensive algorithms. There are already importantalgorithms in the literature that propose online learning with kernelssuch as resource allocating networks, growing and pruning radial basisfunction networks, kernel recursive least-squares algorithms, kernelleast-mean-square algorithms, kernel affine projection algorithms,etc. These advances are slowly evolving into a new adaptive systemtheory that can be encapsulated under the name of Online Learning inKernel Methods (OLKM). OLKM uses Mercer kernels for nonlinear mappingof the input space into a hidden space of high dimensionality and useslinear adaptive structures (filters, regressors, classifiers) foraccommodating the adaptive requirement. In so doing, it preserves theconceptual simplicity of linear adaptive filters (no local minima),and inherits the rich expressiveness from kernel methods (universalapproximation property). Although OLKM has found applications insignal processing, pattern recognition, data mining, informationalretrieval, and demand forecasting, the theory itself is far fromcomplete. This special issue intends to attract papers that advancethe mathematical foundations, the application and understanding ofthese methodologies.We invite original and unpublished research contributions in all areasrelevant to online learning with kernels. The papers will presentoriginal work or review state-of-the-art approaches that summarize therecent advances in the following non-exhaustive list of topics:? Online learning for kernel adaptive systems? Kernelization of online learning techniques? Optimization, growing and pruning techniques and kernel design foronline kernel learning? Information theoretic learning principles in kernel adaptive systems? Multidimensional kernel adaptive systems (complex, quaternion, andmultichannel)? Convergence, steady-state and error bound analysis of online kernelalgorithms? New applications of online learning with kernelsProspective authors should visit http://ieee-cis.org/pubs/tnn/papers/
for information on paper submission. Manuscripts should be submittedusing the Manuscript Central system at http://mc.manuscriptcentral.com/tnn
.On the first page of the manuscript as well as on the cover letter,indicate clearly that the manuscript is submitted to the TNN SpecialIssue: Online Kernel Learning. Manuscripts will be peer reviewedaccording to the standard IEEE process.Manuscript submission due: May 1, 2011First review completed: October 1, 2011Revised manuscript due: December 1, 2011Second review completed: March 1, 2012Final manuscript due: March 31, 2012Guest editors:Dr. Jose C. Principe, University of Florida, USA,principe
cnel.ufl.eduDr. Seiichi Ozawa, Kobe University, Japan, ozawasei
kobe-u.ac.jpDr. Sergios Theodoridis, University of Athens, Greece,stheodor
di.uoa.grDr. Tülay Adali, University of Maryland, Baltimore County, USA,adali
umbc.eduDr. Danilo P. Mandic, Imperial College London, UK,d.mandic
imperial.ac.ukDr. Weifeng Liu, Amazon.com, USA, weifeng
ieee.org
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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