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Optimizing Query Results Integration Process Using an Extended Fuzzy C-Means Algorithm

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DOI: 10.4236/jsea.2014.75032    2,033 Downloads   2,960 Views  

ABSTRACT

Cleaning duplicate data is a major problem that persists even though many works have been done to solve it, due to the exponential growth of data amount treated and the necessity to use scalable and speed algorithms. This problem depends on the type and quality of data, and differs according to the volume of data set manipulated. In this paper we are going to introduce a novel framework based on extended fuzzy C-means algorithm by using topic ontology. This work aims to improve the OLAP querying process over heterogeneous data warehouses that contain big data sets, by improving query results integration, eliminating redundancies by using the extended classification algorithm, and measuring the loss of information.

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Mouhni, N. , Elkalay, A. and Chakraoui, M. (2014) Optimizing Query Results Integration Process Using an Extended Fuzzy C-Means Algorithm. Journal of Software Engineering and Applications, 7, 354-359. doi: 10.4236/jsea.2014.75032.

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