首页> 外文期刊>IEEE Transactions on Fuzzy Systems >IVTURS: A Linguistic Fuzzy Rule-Based Classification System Based On a New Interval-Valued Fuzzy Reasoning Method With Tuning and Rule Selection
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IVTURS: A Linguistic Fuzzy Rule-Based Classification System Based On a New Interval-Valued Fuzzy Reasoning Method With Tuning and Rule Selection

机译:IVTURS:基于语言模糊规则的分类系统,基于带有调整和规则选择的新区间值模糊推理方法

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Interval-valued fuzzy sets have been shown to be a useful tool to deal with the ignorance related to the definition of the linguistic labels. Specifically, they have been successfully applied to solve classification problems, performing simple modifications on the fuzzy reasoning method to work with this representation and making the classification based on a single number. In this paper, we present IVTURS, which is a new linguistic fuzzy rule-based classification method based on a new completely interval-valued fuzzy reasoning method. This inference process uses interval-valued restricted equivalence functions to increase the relevance of the rules in which the equivalence of the interval membership degrees of the patterns and the ideal membership degrees is greater, which is a desirable behavior. Furthermore, their parametrized construction allows the computation of the optimal function for each variable to be performed, which could involve a potential improvement in the system’s behavior. Additionally, we combine this tuning of the equivalence with rule selection in order to decrease the complexity of the system. In this paper, we name our method IVTURS-FARC, since we use the FARC-HD method to accomplish the fuzzy rule learning process. The experimental study is developed in three steps in order to ascertain the quality of our new proposal. First, we determine both the essential role that interval-valued fuzzy sets play in the method and the need for the rule selection process. Next, we show the improvements achieved by IVTURS-FARC with respect to the tuning of the degree of ignorance when it is applied in both an isolated way and when combined with the tuning of the equivalence. Finally, the significance of IVTURS-FARC is further depicted by means of a comparison by which it is proved to outperform the results of FARC-HD and FURIA, which are two high performing fuzzy classification algorithms.
机译:区间值模糊集已被证明是处理与语言标签定义相关的无知的有用工具。具体而言,它们已成功应用于解决分类问题,对模糊推理方法进行简单修改以使用此表示形式,并基于单个数字进行分类。在本文中,我们提出了IVTURS,它是一种基于新的基于语言模糊规则的分类方法,该方法基于一种新的完全区间值模糊推理方法。该推理过程使用区间值的受限等价函数来增加规则的相关性,在该规则中,模式的区间隶属度和理想隶属度的等价度较大,这是理想的行为。此外,它们的参数化构造允许对每个变量执行最佳功能的计算,这可能涉及系统行为的潜在改善。另外,我们将等效性的这种调整与规则选择相结合,以降低系统的复杂性。在本文中,我们将方法命名为IVTURS-FARC,因为我们使用FARC-HD方法来完成模糊规则学习过程。为了确定我们新建议的质量,实验研究分三个步骤进行。首先,我们确定区间值模糊集在方法中扮演的重要角色以及规则选择过程的必要性。接下来,我们展示了IVTURS-FARC在无知程度的调整(以隔离方式应用以及与等效项的调整结合使用)方面实现的改进。最后,通过比较进一步说明了IVTURS-FARC的重要性,事实证明,IVTURS-FARC优于FARC-HD和FURIA这两种高性能的模糊分类算法。

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