Attribute Reduction for Credit Evaluation using Rough Set Approach

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Anjali Kulkarni, Dr. Seema Purohit

Abstract

Generation of an Integrated Model is an important technique in the research area. It is a powerful technique to improve the accuracy of classifiers. This approach has been applied to different types of real time data. The unprocessed data leads to give wrong results by using some of the machine learning techniques. For generation of an integrated model attribute reduction and re-sampling technique is necessary. For attribute reduction Rough set is the best approach as it requires less execution time, high Interpretability, high reduction rate and high accuracy

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How to Cite
, A. K. D. S. P. (2017). Attribute Reduction for Credit Evaluation using Rough Set Approach. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 3(11), 443–446. Retrieved from http://www.ijfrcsce.org/index.php/ijfrcsce/article/view/328
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