An integer recurrent artificial neural network for classifying feature vectors

R. Brouwer
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引用次数: 18

Abstract

The main contribution of this paper is the development of an Integer Recurrent Artificial Neural Network (IRANN) for classification of feature vectors. The network consists both of threshold units or perceptrons and of counters, which are non-threshold units with binary input and integer output. Input and output of the network consists of vectors of natural numbers that may be used to represent feature vectors. For classification purposes, representatives of sets are stored by calculating a connection matrix such that all the elements in a training set are attracted to members of the same training set. The class of its attractor then classifies an arbitrary element if the attractor is a member of one of the original training sets. The network is successfully applied to the classification of sugar diabetes data, credit application data, and the iris data set.
一种用于特征向量分类的整数递归人工神经网络
本文的主要贡献是开发了一种用于特征向量分类的整数递归人工神经网络(IRANN)。该网络由阈值单元或感知器和计数器组成,计数器是非阈值单元,具有二进制输入和整数输出。网络的输入和输出由可以用来表示特征向量的自然数向量组成。出于分类目的,通过计算连接矩阵来存储集合的代表,使得训练集中的所有元素都被同一训练集中的成员所吸引。然后,如果吸引器是原始训练集之一的成员,则其吸引器的类对任意元素进行分类。该网络成功应用于糖尿病数据、信用申请数据和虹膜数据集的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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