Uncertain Interval Data EFCM-ID Clustering Algorithm Based on Machine Learning
Author(s) -
Yimin Mao,
Yinping Liu,
Muhammad Asim Khan,
Jiawei Wang,
Dinghui Mao,
Jian Hu
Publication year - 2019
Publication title -
journal of robotics and mechatronics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.257
H-Index - 19
eISSN - 1883-8049
pISSN - 0915-3942
DOI - 10.20965/jrm.2019.p0339
Subject(s) - cluster analysis , quartile , interval (graph theory) , computer science , data mining , algorithm , fuzzy clustering , uncertain data , degree (music) , artificial intelligence , machine learning , mathematics , confidence interval , statistics , physics , combinatorics , acoustics
In clustering problems based on fuzzy c-means (FCM) for uncertain interval data, points within the interval are usually assumed to have uniform distribution, resulting in the difficulty of accurately describing the interval. Furthermore, the clustering results are considerably affected by the initial clustering centers, and the update speed of the membership degree is slow. To address these problems, a new clustering algorithm called uncertain FCM for interval data (EFCM-ID) is presented. On the basis of a quartile, a median quartile-spacing distance measurement for generally distributed interval data based on machine learning is designed to precisely determine these data. Simultaneously, we sample the whole dataset and consider the density centers as the initial clustering centers to increase accuracy. We call this method samplingbased density-center selection (SDCS). To reduce the running time, a new measurement based on competitive-learning theory to update the membership is developed. It accelerates the update speed by different degrees according to value of the membership degree. Experiments conducted on synthetic interval datasets show the feasibility of EFCM-ID.
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