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Optimal Rule-Based Granular Systems From Data Streams

Daniel Leite, Goran Andonovski, Igor Škrjanc, Fernando Gomide

2020IEEE Transactions on Fuzzy Systems53 citationsDOI

Abstract

We introduce an incremental learning method for the optimal construction of rule-based granular systems from numerical data streams. The method is developed within a multiobjective optimization framework considering the specificity of information, model compactness, and variability and granular coverage of the data. We use α-level sets over Gaussian membership functions to set model granularity and operate with hyperrectangular forms of granules in nonstationary environments. The resulting rule-based systems are formed in a formal and systematic fashion. They can be useful in time series modeling, dynamic system identification, predictive analytics, and adaptive control. Precise estimates and enclosures are given by linear piecewise and inclusion functions related to optimal granular mappings.

Topics & Concepts

GranularityComputer scienceData stream miningGranular computingData miningPiecewiseSystem identificationMathematical optimizationSet (abstract data type)Identification (biology)Rough setAlgorithmMathematicsMeasure (data warehouse)Mathematical analysisBiologyProgramming languageOperating systemBotanyTime Series Analysis and ForecastingFuzzy Logic and Control SystemsRough Sets and Fuzzy Logic
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