Paper Title :Mutual Information Based Ensemble Support Vector Data Description
Author :Faruk Sukru Uslu, Abdullah Bal
Article Citation :Faruk Sukru Uslu ,Abdullah Bal ,
(2016 ) " Mutual Information Based Ensemble Support Vector Data Description " ,
International Journal of Electrical, Electronics and Data Communication (IJEEDC) ,
pp. 25-27,
Volume-4,Issue-2
Abstract : Hyperspectral imagery (HSI) has spatial and detailed spectral information. Therefore, it has been used in many
different areas for anomaly and target detection or classification problems. Because it consists large amount of data,
effective, accurate and fast computational methods have become critical issue in machine learning. The support vector data
description (SVDD) is one of the powerful methods as a one-class classifier for classification problems in machine learning
area. It is a non-parametric boundary method that tries to enclose the target objects in a minimum hypersphere as much as
possible. Using kernel function is one of its advantages. The kernelization makes SVDD more efficient algorithms, when the
objective data is not spherically distributed. Apart from using kernel function, ensemble methods can be also used to
improve classification performance of the SVDD. Giving proper weight to each classifier before combination is one of the
important part of ensemble methods. In this paper, we have offered Mutual Information (MI) between each classifier in order
to use as coefficients to weighted combinators.
Keywords- Bagging; Classification; Hyperspectral imagery; Machine learning; Mutual Information; Support vector data
description.
Type : Research paper
Published : Volume-4,Issue-2
DOIONLINE NO - IJEEDC-IRAJ-DOIONLINE-4305
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Copyright: © Institute of Research and Journals
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Published on 2016-04-13 |
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