Aggregation Pheromone Density Based Classification

A. Halder, Susmita K. Ghosh, Ashish Ghosh
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引用次数: 2

Abstract

Social insects like ants, bees deposit pheromone (a type of chemical) in order to communicate between the members of their community. Pheromone, that causes clumping behavior in a species and brings individuals into a closer proximity, is called aggregation pheromone. This article presents a new algorithm (called, APC) for pattern classification based on the property of aggregation pheromone found in natural behavior of real ants. Here each data pattern is considered as an ant, and the training patterns (ants) form several groups or colonies depending on the number of classes present in the data set. A new (test pattern) ant will move along the direction where average aggregation pheromone density (at the location of the new ant) formed due to each colony of ants is higher and hence eventually it will join that colony. Thus each individual test ant will finally join a particular colony. The proposed algorithm is evaluated with a number of benchmark data sets in terms of classification accuracy. Results are compared with other state of the art techniques. Experimental results show the potentiality of the proposed algorithm.
基于聚集信息素密度的分类
像蚂蚁、蜜蜂这样的群居昆虫会分泌信息素(一种化学物质),以便在群体成员之间进行交流。在一个物种中引起聚集行为并使个体靠近的信息素被称为聚集信息素。本文提出了一种基于真实蚂蚁自然行为中聚集信息素特性的模式分类新算法(APC)。在这里,每个数据模式都被认为是一只蚂蚁,训练模式(蚂蚁)根据数据集中存在的类的数量形成几个组或蚁群。一个新的(测试模式)蚂蚁将沿着平均聚集信息素密度(在新蚂蚁的位置)的方向移动,因为每个蚂蚁群体形成的平均聚集信息素密度更高,因此最终它将加入该群体。因此,每只测试蚂蚁最终都会加入一个特定的蚁群。用大量的基准数据集对算法的分类精度进行了评估。结果与其他先进技术进行了比较。实验结果表明了该算法的可行性。
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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