Enhancing The Orca Framework With A New Fuzzy Rule Base System Implementation Compatible With The Jfml Library

IEEE CIS INTERNATIONAL CONFERENCE ON FUZZY SYSTEMS 2021 (FUZZ-IEEE)(2021)

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摘要
Classification and regression techniques are two of the main tasks considered by the Machine Learning area. They mainly depend on the target variable to predict. In this context, ordinal classification represents an intermediate task, which is focused on the prediction of nominal variables where the categories follow a specific intrinsic order given by the problem. Nevertheless, the integration of different algorithms able to solve ordinal classification problems is often unavailable in most of existing Machine Learning software, which hinders the use of new approaches. Therefore, this paper focuses on the incorporation of an ordinal classification algorithm (NSLVOrd) in one of the most complete ordinal regression frameworks, "Ordinal Regression and Classification Algorithms framework (ORCA)" by using both fuzzy rules and the JFML library. The use of NSLVOrd in the ORCA tool as well as a case study with a real database are shown where the obtained results are promising.
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关键词
fuzzy rule base system,JFML library,regression techniques,machine learning area,intermediate task,nominal variables,specific intrinsic order,ordinal classification problems,machine learning software,ordinal classification algorithm,NSLVOrd,complete ordinal regression frameworks,fuzzy rules,ORCA tool,ORCA framework,classification algorithms framework
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