Self-Organised Direction Aware Data Partitioning for Type-2 Fuzzy Time Series Prediction

Author(s):  
Arthur C. V. e Pinto ◽  
Petronio C. L. Silva ◽  
Frederico G. Guimaraes ◽  
Christian Wagner ◽  
Eduardo P. de Aguiar
Author(s):  
Mahua Bose ◽  
Kalyani Mali

In recent years, several methods for forecasting fuzzy time series have been presented in different areas, such as stock price, student enrollments, climatology, production sector, etc. Choice of data partitioning technique is a central factor and it highly influences the forecast accuracy. In all existing works on fuzzy time series model, cluster with highest membership is used to form fuzzy logical relationships. But the position of the element within the cluster is not considered. The present study incorporates the idea of fuzzy discretization and shadowed set theory in defining intervals and uses the positional information of elements within a cluster in selection of rules for decision making. The objective of this work is to show the effect of the elements, lying outside the core area on forecast. Performance of the presented model is evaluated on standard datasets.


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