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A Survey on MR-MNBC:MAX-REL based Feature Selection for the Multi-Relational Bayesian Belief Network

Author(s):

Disha Sheth , Ipcowala institute Of Engineering and Technology; Premal Patel, Ipcowala institute Of Engineering and Technology

Keywords:

Multi-relational classification, Tuple ID Propagation, Semantic Relationship Graph, Bayesian Belief Network, Feature Selection

Abstract

High dimensional data often contains irrelevant features that reduce the accuracy of data mining techniques and slow down the process and it is hard to interpret so the Feature selection has become an active area in the data mining. Feature selection selects the relevant subset of attributes, provides the better accuracy and improves the comprehensibility of the models. Feature selection also defying the curse of dimensionality to improve prediction performance. We will propose the method which is based on Feature selection as a preprocessing task of MRDM on probabilistic model. We analyzed our algorithm over large pkdd dataset and get the better accuracy compare to the existing methods.

Other Details

Paper ID: IJSRDV2I12099
Published in: Volume : 2, Issue : 12
Publication Date: 01/03/2015
Page(s): 80-84

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