A review of Support Vector Clustering with different Kernel function for Reduction of noise and outlier for Large Database
Journal: International Journal of Advanced Computer Research (IJACR) (Vol.2, No. 7)Publication Date: 2012-01-26
Authors : Deepak Kumar Vishwakarma; Anurag Jain;
Page : 144-150
Keywords : SVC; Kernel function; Outlier; SVM;
Abstract
For a long decade clustering faced a problem of noise and outliers. Support Vector Clustering is one of the techniques in pattern recognition. Support Vector Clustering is Kernel-Based Clustering. Division of patterns, data items, and feature vectors into groups (clusters) is a complicated task since clustering does not assume any prior knowledge, which are the clusters to be searched for. Noise and outlier reduces the mapping probability of sphere in support vector clustering. Support vector clustering is inspired clustering technique form the support vector Machine. The prediction and accuracy of support vector clustering depends upon kernel function of hyper plane. Kernel function is a heart of classifier. In this paper we present review of support vector clustering technique for pattern detection and reorganisation for very large databases. The variation of performance of support vector clustering depends upon kernel of classifier. Here we discuss different method of kernel used in support vector clustering.
Other Latest Articles
- Reduced Order Modelling and Optimal Control of Fluid Flow Instability
- Wireless Sensor Network and Emergency Communication System for Fire Safety
- Improving RBF Kernel Function of Support Vector Machine using Particle Swarm Optimization
- Comparison between Different Scheduling Strategies by Using Cost239 Optical Network
Last modified: 2014-11-25 19:43:51