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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >On Convergence of the Class Membership Estimator in Fuzzy $k$-Nearest Neighbor Classifier
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On Convergence of the Class Membership Estimator in Fuzzy $k$-Nearest Neighbor Classifier

机译:关于模糊 $ k $ -nearest edance__nearest edance__nearest邻居分类器的收敛性

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摘要

The fuzzy k-nearest neighbor classifier (FkNN) improves upon the flexibility of the k-nearest neighbor classifier by considering each class as a fuzzy set and estimating the membership of an unlabeled data instance for each of the classes. However, the question of validating the quality of the class memberships estimated by FkNN for a regular multiclass classification problem still remains mostly unanswered. In this paper, we attempt to address this issue by first proposing a novel direction of evaluating a fuzzy classifier by highlighting the importance of focusing on the class memberships estimated by FkNN instead of its misclassification error. This leads us to finding novel theoretical upper bounds, respectively, on the bias and the mean squared error of the class memberships estimated by FkNN. Additionally the proposed upper bounds are shown to converge toward zero with increasing availability of the labeled data points, under some elementary assumptions on the class distribution and membership function. The major advantages of this analysis are its simplicity, capability of a direct extension for multiclass problems, parameter independence, and practical implication in explaining the behavior of FkNN in diverse situations (such as in presence of class imbalance). Furthermore, we provide a detailed simulation study on artificial and real data sets to empirically support our claims.
机译:模糊k最近邻分类器(fknn)通过将每个类视为模糊集并估计每个类的未标记数据实例的成员身份来提高K-Collect邻邻分类器的灵活性。但是,验证FKN估计的课程成员资质质量的问题仍然仍然仍然仍未得到答复。在本文中,我们首先通过突出FKNN估计的课程成员资格而不是其错误分类错误来提出评估模糊分类器的新方向来解决这个问题。这导致我们分别在偏差上找到新颖的理论上界和由FKNN估计的班级成员资格的平均平方误差。另外,在类分布和隶属函数的一些基本假设下,所提出的上限被逐渐收敛到零随着标记数据点的一些基本假设。该分析的主要优点是其简单,多种多组问题,参数独立性和实际意义在解释不同情况下FKNN的行为(例如在类别不平衡存在时)的实际意义的直接扩展。此外,我们提供了对人工和真实数据集的详细仿真研究,以证明我们的索赔。

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