A Comparative Study of Statistical and Rough Computing Models in Predictive Data Analysis

Author:

Acharjya Debi1,Anitha A.2

Affiliation:

1. School of Computing Science and Engineering, VIT University, Vellore, India

2. School of Information Technology and Engineering, VIT University, Vellore, India

Abstract

Information and technology revolution has brought a radical change in the way data are collected. The data collected is of no use unless some useful information is derived from it. Therefore, it is essential to think of some predictive analysis for analyzing data and to get meaningful information. Much research has been carried out in the direction of predictive data analysis starting from statistical techniques to intelligent computing techniques and further to hybridize computing techniques. The prime objective of this paper is to make a comparative analysis between statistical, rough computing, and hybridized techniques. The comparative analysis is carried out over financial bankruptcy data set of Greek industrial bank ETEVA. It is concluded that rough computing techniques provide better accuracy 88.2% as compared to statistical techniques whereas hybridized computing techniques provides still better accuracy 94.1% as compared to rough computing techniques.

Publisher

IGI Global

Subject

Software

Reference26 articles.

1. Comparative Study of Rough Sets on Fuzzy Approximation Spaces and Intuitionistic Fuzzy Approximation Spaces.;D. P.Acharjya;International Journal of Computational and Applied Mathematics,2009

2. Acharjya, D. P. (2015). Knowledge Extraction from Information System Using Rough Computing. In Improving Knowledge Discovery through the Integration of Data Mining Techniques (p. 161).

3. A Knowledge Mining Model for Ranking Institutions using Rough Computing with ordering rules and formal concept analysis.;D. P.Acharjya;International Journal of Computer Science Issues,2011

4. Rough sets on fuzzy approximation spaces and applications to distributed knowledge systems

5. Rough Sets on Intuitionistic Fuzzy Approximation Spaces and Knowledge Representation.;D. P.Acharjya;International Journal of Artificial Intelligence and Computational Research,2009

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