Fuzzy Mean Point Clustering using K-means algorithm for implementing the movecentroid function code
DOI:
https://doi.org/10.24297/ijct.v4i1b.3059Keywords:
Data mining, Clustering, K-means, FMPCNN, movecentroidAbstract
The paper focus on combination of K-Means algorithm for Fuzzy Mean Point Clustering Neural Network (FMPCNN). The algorithm is implemented in JAVA program code for implementing the movecentroid function code into FMPCNN. Here we have provided movecentroid’s output to Fuzzy clustering as criteria, movecentroid is the base function of K-means algorithm as in Fuzzy Mean Point Clustering Neural Network (FMPCNN) algorithm, calculation of cluster based on pre-defined criteria and scope is done. In the experiment we have used four datasets and observed results in nano seconds there is huge difference in output as time is reduced for Fuzzy Min-Max code execution of fuzzy calculations of clustering.Downloads
Download data is not yet available.
Downloads
Published
2013-02-01
How to Cite
Shinde, G. N., S. A., I., & S.M., N. (2013). Fuzzy Mean Point Clustering using K-means algorithm for implementing the movecentroid function code. INTERNATIONAL JOURNAL OF COMPUTERS &Amp; TECHNOLOGY, 4(1), 54–56. https://doi.org/10.24297/ijct.v4i1b.3059
Issue
Section
Research Articles