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Learning Vector Quantization:generalization ability and dynamics of competing prototypes

机译:学习矢量量化:竞争原型的泛化能力和动力学

摘要

Learning Vector Quantization (LVQ) are popular multi-class classification algorithms. Prototypes in an LVQ system represent the typical features of classes in the data. Frequently multiple prototypes are employed for a class to improve the representation of variations within the class and the generalization ability. In this paper, we investigate the dynamics of LVQ in an exact mathematical way, aiming at understanding the influence of the number of prototypes and their assignment to classes. The theory of on-line learning allows a mathematical description of the learning dynamics in model situations. We demonstrate using a system of three prototypes the different behaviors of LVQ systems of multiple prototype and single prototype class representation.
机译:学习矢量量化(LVQ)是流行的多类分类算法。 LVQ系统中的原型代表数据中类的典型特征。一个类经常使用多个原型,以改善该类中的变化表示形式和泛化能力。在本文中,我们以精确的数学方式研究了LVQ的动力学,旨在了解原型数量及其分配给类的影响。在线学习理论允许对模型情况下的学习动态进行数学描述。我们使用三个原型的系统演示了多个原型和单个原型类表示形式的LVQ系统的不同行为。

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