Evolutionary Granular Kernel Machines

Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining applications with good generalization properties. Performance of SVMs for solving nonlinear problems is highly affected by kernel functions. The complexity of SVMs training is mainly related to the si...

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Main Author: Jin, Bo
Format: Others
Published: Digital Archive @ GSU 2007
Subjects:
Online Access:http://digitalarchive.gsu.edu/cs_diss/15
http://digitalarchive.gsu.edu/cgi/viewcontent.cgi?article=1014&context=cs_diss
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spelling ndltd-GEORGIA-oai-digitalarchive.gsu.edu-cs_diss-10142013-04-23T03:18:55Z Evolutionary Granular Kernel Machines Jin, Bo Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining applications with good generalization properties. Performance of SVMs for solving nonlinear problems is highly affected by kernel functions. The complexity of SVMs training is mainly related to the size of a training dataset. How to design a powerful kernel, how to speed up SVMs training and how to train SVMs with millions of examples are still challenging problems in the SVMs research. For these important problems, powerful and flexible kernel trees called Evolutionary Granular Kernel Trees (EGKTs) are designed to incorporate prior domain knowledge. Granular Kernel Tree Structure Evolving System (GKTSES) is developed to evolve the structures of Granular Kernel Trees (GKTs) without prior knowledge. A voting scheme is also proposed to reduce the prediction deviation of GKTSES. To speed up EGKTs optimization, a master-slave parallel model is implemented. To help SVMs challenge large-scale data mining, a Minimum Enclosing Ball (MEB) based data reduction method is presented, and a new MEB-SVM algorithm is designed. All these kernel methods are designed based on Granular Computing (GrC). In general, Evolutionary Granular Kernel Machines (EGKMs) are investigated to optimize kernels effectively, speed up training greatly and mine huge amounts of data efficiently. 2007-05-03 text application/pdf http://digitalarchive.gsu.edu/cs_diss/15 http://digitalarchive.gsu.edu/cgi/viewcontent.cgi?article=1014&context=cs_diss Computer Science Dissertations Digital Archive @ GSU machine learning large-scale data mining Bioinformatics Computer Sciences
collection NDLTD
format Others
sources NDLTD
topic machine learning
large-scale data mining
Bioinformatics
Computer Sciences
spellingShingle machine learning
large-scale data mining
Bioinformatics
Computer Sciences
Jin, Bo
Evolutionary Granular Kernel Machines
description Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining applications with good generalization properties. Performance of SVMs for solving nonlinear problems is highly affected by kernel functions. The complexity of SVMs training is mainly related to the size of a training dataset. How to design a powerful kernel, how to speed up SVMs training and how to train SVMs with millions of examples are still challenging problems in the SVMs research. For these important problems, powerful and flexible kernel trees called Evolutionary Granular Kernel Trees (EGKTs) are designed to incorporate prior domain knowledge. Granular Kernel Tree Structure Evolving System (GKTSES) is developed to evolve the structures of Granular Kernel Trees (GKTs) without prior knowledge. A voting scheme is also proposed to reduce the prediction deviation of GKTSES. To speed up EGKTs optimization, a master-slave parallel model is implemented. To help SVMs challenge large-scale data mining, a Minimum Enclosing Ball (MEB) based data reduction method is presented, and a new MEB-SVM algorithm is designed. All these kernel methods are designed based on Granular Computing (GrC). In general, Evolutionary Granular Kernel Machines (EGKMs) are investigated to optimize kernels effectively, speed up training greatly and mine huge amounts of data efficiently.
author Jin, Bo
author_facet Jin, Bo
author_sort Jin, Bo
title Evolutionary Granular Kernel Machines
title_short Evolutionary Granular Kernel Machines
title_full Evolutionary Granular Kernel Machines
title_fullStr Evolutionary Granular Kernel Machines
title_full_unstemmed Evolutionary Granular Kernel Machines
title_sort evolutionary granular kernel machines
publisher Digital Archive @ GSU
publishDate 2007
url http://digitalarchive.gsu.edu/cs_diss/15
http://digitalarchive.gsu.edu/cgi/viewcontent.cgi?article=1014&context=cs_diss
work_keys_str_mv AT jinbo evolutionarygranularkernelmachines
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