基于遗传聚类的手写体数字分类新技术

S. Impedovo, Francesco Maurizio Mangini
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引用次数: 5

摘要

本文提出了一种基于遗传聚类的手写体数字识别新技术。聚类设计分为两步。第一步侧重于生成集群解决方案,而第二步涉及从一组合适的候选者开始构建最佳集群解决方案。提出了实现这些目标的方法。聚类被认为是一个优化问题,其中要最小化的目标函数是与分类相关的代价函数。采用遗传算法确定最佳聚类中心,在不影响准确率的前提下减少了分类时间。分类任务由k近邻分类器执行。它还开发了一个新的特征和基于索卡尔-米切纳不相似度度量的距离度量来描述和比较手写数字。在MNIST数据集上进行了实验测试,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Technique for Handwritten Digit Classification Using Genetic Clustering
The aim of this paper is to introduce a novel technique for handwritten digit recognition based on genetic clustering. Cluster design is proposed as a two-step process. The first step is focused on generating cluster solutions, while the second one involves the construction of the best cluster solution starting from a set of suitable candidates. An approach for achieving these goals is presented. Clustering is considered as an optimization problem in which the objective function to be minimized is the cost function associated to the classification. A genetic algorithm is used to determine the best cluster centers to reduce classification time, without greatly affecting the accuracy. The classification task is performed by k-nearest neighbor classifier. It has also been developed a new feature and a distance measure based on the Sokal-Michener dissimilarity measure to describe and compare handwritten numerals. This technique has been evaluated through experimental testing on MNIST dataset and its effectiveness has been proved.
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