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A novel batch training algorithm for learning vector quantization networks using soft-labeled training data and prototypes

机译:一种使用软标签训练数据和原型的用于矢量量化网络的新型批处理训练算法

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摘要

Learning vector quantization (LVQ) network is a prototype based classifier and known as a supervised neural network. Prototypes in LVQs represent the feature of the classes in data. In order to train and adjust network parameters in an offline manner, it is necessary to apply a huge amount of the training samples. In such cases, batch algorithms are efficient. So, this paper concentrates on the existing batch training algorithms and robustness of the LVQs using soft-labeled training data and prototypes. The paper assumes that training sets originally have hard labels where each sample is exclusively associated with a specific class. Hence at first, the samples are converted to soft labels using Keller method. Finally, a novel batch training algorithm is proposed that not only updates the network parameter but also adapts the neighborhood function during training phase. Simulation results show the performance of the proposed algorithm such as convergence rate and data classification accuracy.
机译:学习矢量量化(LVQ)网络是基于原型的分类器,被称为监督神经网络。 LVQ中的原型代表数据中类的特征。为了以离线方式训练和调整网络参数,需要应用大量的训练样本。在这种情况下,批处理算法是有效的。因此,本文将重点讨论现有的批处理训练算法以及使用软标签训练数据和原型的LVQ的鲁棒性。本文假设训练集最初具有硬标签,其中每个样本都专门与特定类别相关联。因此,首先,使用凯勒方法将样本转换为软标签。最后,提出了一种新颖的批量训练算法,该算法不仅可以更新网络参数,而且可以在训练阶段自适应邻域函数。仿真结果表明了该算法的收敛速度和数据分类精度。

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