NEW RESULTS ON THE EXISTING FUZZY DISTANCE MEASURES
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Abstract:
In this paper, we investigate the properties of some recently pro-posed fuzzy distance measures. We find out some shortcomings for these dis-tances and then the obtained results are illustrated by solving several examplesand compared with the other fuzzy distances.
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Journal title
volume 10 issue 3
pages 115- 124
publication date 2013-06-01
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