4.6 Article

A Novel Hybrid SBM Clustering Method Based on Fuzzy Time Series

Journal

IEEE ACCESS
Volume 11, Issue -, Pages 60693-60708

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3273010

Keywords

Fuzzy time series; SBM; nonparametric frontier; clustering algorithm

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With the development of machine learning algorithm and fuzzy theory, the fuzzy clustering algorithm based on time series has gained attention. The proposed multivariate fuzzy time series clustering method based on Slacks Based Measure (MFTS-SBM) can handle fuzziness and uncertainty, and also considers the correlation of data attributes. It is important for data decision making.
With the development of machine learning algorithm and fuzzy theory, the fuzzy clustering algorithm based on time series has received more and more attention. Based on the time series theory and considering the correlation of data attributes, it proposes a novel multivariate fuzzy time series clustering method based on Slacks Based Measure (MFTS-SBM). Compared with traditional fuzzy clustering that it has the ability to deal with fuzziness and uncertainty, the proposed hybrid SBM clustering method employs with input and output items and considers the clustering results and the influencing factors of nonparametric frontier. Thus, it is important for data decision making because decision makers are interested in understanding the changes required to combine input variables in order to classify them into the desired clusters. The simulation experiment results of different samples are given to explain the use and effectiveness of the proposed hybrid SBM clustering method. Therefore, the hybrid method has strong theoretical significance and practical value.

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