Analysis of Intergrade Variables in the Fuzzy C-Means and Improved Algorithm Cat Swarm Optimization(FCM-ISO) in Search Segmentation

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Abstract

One of the techniques known in Data Mining namely clustering. Image segmentation process does not always represent the actual image which is caused by a combination of algorithms as long as it has not been able to obtain optimal cluster centers. In this research will search for the smallest error with the counting result of a Fuzzy C Means process optimized with Cat swam Algorithm Optimization that has been developed by adding the weight of the energy in the process of Tracing Mode.So with the parameter can be determined the most optimal cluster centers and most closely with the data will be made the cluster. Weigh inertia in this research, namely: (0.1), (0.2), (0.3), (0.4), (0.5), (0.6), (0.7), (0.8) and (0.9). Then compare the results of each variable values inersia (W) which is different and taken the smallest results. Of this weighting analysis process can acquire the right produce inertia variable cost function the smallest.

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APA

Saragih, J., Sitompul, O. S., & Situmorang, Z. (2017). Analysis of Intergrade Variables in the Fuzzy C-Means and Improved Algorithm Cat Swarm Optimization(FCM-ISO) in Search Segmentation. In Journal of Physics: Conference Series (Vol. 930). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/930/1/012013

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