Publication | Open Access
<b>frbs</b>: Fuzzy Rule-Based Systems for Classification and Regression in<i>R</i>
160
Citations
41
References
2015
Year
Fuzzy SystemsMachine LearningEngineeringFuzzy ModelingEvolving Intelligent SystemIntelligent SystemsData ScienceData MiningPattern RecognitionManagementSystems EngineeringFuzzy Rule-based SystemsFuzzy Pattern RecognitionFuzzy LogicFuzzy ComputingPredictive AnalyticsR Package FrbsComputer ScienceFrbs ModelsFuzzy Inference SystemsFuzzy MathematicsFuzzy Expert SystemData Modeling
Fuzzy rule-based systems (FRBSs) are a well-known method family within soft computing. They are based on fuzzy concepts to address complex real-world problems. We present the R package frbs which implements the most widely used FRBS models, namely, Mamdani and Takagi Sugeno Kang (TSK) ones, as well as some common variants. In addition a host of learning methods for FRBSs, where the models are constructed from data, are implemented. In this way, accurate and interpretable systems can be built for data analysis and modeling tasks. In this paper, we also provide some examples on the usage of the package and a comparison with other common classification and regression methods available in R.
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