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Prototype Generation Using Self-Organizing Maps for Informativeness-Based Classifier

机译:使用基于信息分类器的自组织映射生成原型

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摘要

The k nearest neighbor is one of the most important and simple procedures for data classification task. The kNN, as it is called, requires only two parameters: the number of k and a similarity measure. However, the algorithm has some weaknesses that make it impossible to be used in real problems. Since the algorithm has no model, an exhaustive comparison of the object in classification analysis and all training dataset is necessary. Another weakness is the optimal choice of k parameter when the object analyzed is in an overlap region. To mitigate theses negative aspects, in this work, a hybrid algorithm is proposed which uses the Self-Organizing Maps (SOM) artificial neural network and a classifier that uses similarity measure based on information. Since SOM has the properties of vector quantization, it is used as a Prototype Generation approach to select a reduced training dataset for the classification approach based on the nearest neighbor rule with informativeness measure, named iNN. The SOMiNN combination was exhaustively experimented and the results show that the proposed approach presents important accuracy in databases where the border region does not have the object classes well defined.
机译:k最近邻居是用于数据分类任务的最重要和最简单的过程之一。所谓的kNN仅需要两个参数:k的数量和相似性度量。但是,该算法具有一些弱点,无法在实际问题中使用。由于该算法没有模型,因此有必要在分类分析和所有训练数据集之间进行详尽的比较。另一个缺点是,当分析对象位于重叠区域时,k参数的最佳选择。为了减轻这些负面影响,在这项工作中,提出了一种混合算法,该算法使用自组织映射(SOM)人工神经网络和使用基于信息的相似性度量的分类器。由于SOM具有矢量量化的特性,因此它被用作原型生成方法,以基于具有信息量度的最近邻规则(称为iNN)为分类方法选择简化的训练数据集。对SOMiNN组合进行了详尽的实验,结果表明,该方法在边界区域没有定义好的对象类别的数据库中具有重要的准确性。

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