Prediction of Key Symptoms of Learning Disabilities in School-Age Children Using Rough Sets


Autoria(s): Kannan, Balakrishnan; Julie, David M
Data(s)

22/07/2014

22/07/2014

01/02/2011

Resumo

This paper highlights the prediction of learning disabilities (LD) in school-age children using rough set theory (RST) with an emphasis on application of data mining. In rough sets, data analysis start from a data table called an information system, which contains data about objects of interest, characterized in terms of attributes. These attributes consist of the properties of learning disabilities. By finding the relationship between these attributes, the redundant attributes can be eliminated and core attributes determined. Also, rule mining is performed in rough sets using the algorithm LEM1. The prediction of LD is accurately done by using Rosetta, the rough set tool kit for analysis of data. The result obtained from this study is compared with the output of a similar study conducted by us using Support Vector Machine (SVM) with Sequential Minimal Optimisation (SMO) algorithm. It is found that, using the concepts of reduct and global covering, we can easily predict the learning disabilities in children

International Journal of Computer and Electrical Engineering, Vol.3, No.1, February, 2011 1793-8163

Cochin University of Science & Technology

Identificador

http://dyuthi.cusat.ac.in/purl/4194

Idioma(s)

en

Publicador

IACSIT

Palavras-Chave #Global Covering #Indiscernibility Relation #Learning Disability #Reduct and Core
Tipo

Article