Analisis Kinerja Algoritma Clustering Fuzzy C-Means dengan Fuzzy Tsukamoto
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Date
2017Author
Parlina, Iin
Advisor(s)
Efendi, Syahril
Mawengkang, Herman
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Based on the analysis algorithm performance clustering models Tsukamoto
Fuzzy and Fuzzy C-Means displays seyeral variables that vary in number.
For grouping was done to determine the value of the performance of the
algorithm is effective. And therefore, needed a method to facilitate the
grouping of employee value. With fuzzy clustering approach, the division of
labor based on the target group or the values Main Duties (Tu),
Competence (Kom) and Compliance (Kep). In this research clustering
process value using Fuz4, C-Means algorithm. By using Fw4t C-Means
aims to facilitate categorize a value with the result of the rule Excellent
value (1.765), Better (0,900), Good + (0.59), OKay (0.405), Almost Good
(0.206) and No Good ( 0.121). From the results obtained both models is to
have a good performance and the results are equally equivalents.
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