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Fuzzy Inference Methods Applied to the Learning Competence Measure in Dynamic Classifier Selection

机译:动态分类器选择中学习能力测度的模糊推理方法

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The concept of classifier competence in the feature space is fundamental to dynamic classifier selection in multiple classifier systems (MCS). Competence function (measure) of base classifier can be determined using validation set in the two step procedure. The first step consists in creating competence set, i.e. the set of classifier competences for all validation objects. To this end a hypothetical classifier called randomized reference classifier (RRC) is constructed. Since RRC - on average - acts like the evaluated classifier, the competence of the classifier at validation point is calculated as the probability of correct classification at this point of the respective RRC. In the second step, the competences calculated for a validation set are generalised to an entire feature space by constructing a competence function based on a supervised learning procedure. In this study, the second step of the above procedure is addressed by developing the fuzzy inference methods of learning competence functions. Two fuzzy inference systems are developed and applied to the supervised learning competence function of base classifiers in a MCS system with dynamic classifier selection (DCS) and dynamic ensemble selection (DES) scheme: Mamdani fuzzy inference system and Sugeno fuzzy inference system. Both fuzzy inference systems were experimentally tested and compared against 4 literature methods of learning classifier competence (potential function, regression model, multilayer perceptron, k-nearest neighbor scheme) using 9 databases taken from the UCI Machine Learning Repository. The experimental results clearly show the effectiveness of the proposed supervised learning competence function using fuzzy inference systems regardless of the ensemble type used (homogeneous or heterogeneous).
机译:特征空间中分类器能力的概念是多分类器系统(MCS)中动态分类器选择的基础。基本分类器的能力函数(度量)可以使用两步过程中的验证集来确定。第一步包括创建能力集,即所有验证对象的分类器能力集。为此,构建了一个称为随机参考分类器(RRC)的假设分类器。由于RRC(平均而言)的作用类似于所评估的分类器,因此,将验证点处分类器的能力计算为相应RRC在此点正确分类的概率。在第二步中,通过基于监督学习过程构建能力函数,将为验证集计算的能力推广到整个特征空间。在本研究中,通过开发学习能力函数的模糊推理方法来解决上述过程的第二步。开发了两种模糊推理系统并将其应用于具有动态分类器选择(DCS)和动态集成选择(DES)方案的MCS系统中基本分类器的监督学习能力功能:Mamdani模糊推理系统和Sugeno模糊推理系统。这两个模糊推理系统均经过实验测试,并使用来自UCI机器学习存储库的9个数据库与4种学习分类器能力的文献方法(势函数,回归模型,多层感知器,k最近邻方案)进行了比较。实验结果清楚地表明了所提出的使用模糊推理系统的有监督学习能力功能的有效性,而与所使用的集成类型(同质或异质)无关。

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