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Cost-Sensitive Learning of Fuzzy Rules for Imbalanced Classification Problems Using FURIA

机译:基于FURIA的不平衡分类问题模糊规则的成本敏感学习

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摘要

This paper is intended to verify that cost-sensitive learning is a competitive approach for learning fuzzy rules in certain imbalanced classification problems. It will be shown that there exist cost matrices whose use in combination with a suitable classifier allows for improving the results of some popular data-level techniques. The well known FURIA algorithm is extended to take advantage of this definition. A numerical study is carried out to compare the proposed cost-sensitive FURIA to other state-of-the-art classification algorithms, based on fuzzy rules and on other classical machine learning methods, on 64 different imbalanced datasets.
机译:本文旨在验证成本敏感型学习是在某些不平衡分类问题中学习模糊规则的竞争方法。将显示存在成本矩阵,将其与合适的分类器结合使用可以改善某些流行的数据级技术的结果。扩展了众所周知的FURIA算法以利用此定义。基于模糊规则和其他经典机器学习方法,在64个不平衡数据集上进行了数值研究,以将建议的成本敏感FURIA与其他最新分类算法进行比较。

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