Location-Based Mobile Community Using Ants-Based Cluster Algorithm

Chetneti Srisa-An
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引用次数: 1

Abstract

A location based service (LBS) is widely used on modern smartphone around the world asits built-in features. Each smartphone can access a google API or map. People can therefore share their location (latitude and longitude) among friends. Many LBS spots can easily form “location based mobile community (LBMC).” Since the nodes are mobile, the community group changes dynamically and is unstructured. Ant-based clustering algorithm is a special kind of optimization technique which is highly suitable for finding the adaptive clustering for volatile networks. This Paper Aims To form a location based mobile community (LBMC) by using Ant-based clustering algorithm. Due to the mobile type community, a vanishing community problem is also stated in this paper. Instead of redo a whole algorithm again, we modify an original algorithm by applying a pheromone concept to handle a change. Our algorithm is named as ABCA & VP which stands for Ant-Based Clustering Algorithm with Vanishing problem. More than 5,000 samples from their latitude and longitude coordinates in Thailand. From an experiment, K-means clustering work well in small data size and low number of clusters. In Small size of data between 50 and 1000, our algorithm runs battery when a number of clusters reach 15 clusters. In a big data size (between 1,000 and 5,000 samples), our algorithm outperforms K-means clustering when a number of clusters reach 20 clusters.
基于蚁群算法的基于位置的移动社区
基于位置的服务(LBS)由于其内置功能在世界各地的现代智能手机上广泛使用。每一部智能手机都可以访问谷歌API或地图。因此,人们可以在朋友之间分享他们的位置(经纬度)。许多LBS站点可以很容易地形成“基于位置的移动社区(LBMC)”。由于节点是可移动的,因此社区组是动态变化的,并且是非结构化的。基于蚁群的聚类算法是一种特殊的优化技术,非常适合于寻找易变网络的自适应聚类。本文旨在利用基于蚁群的聚类算法构建基于位置的移动社区(LBMC)。由于移动社区的存在,本文还提出了社区消失的问题。我们不需要重做整个算法,而是通过应用信息素的概念来处理变化,从而修改原始算法。我们的算法被命名为ABCA & VP,即具有消失问题的基于蚁群的聚类算法。超过5000个样本来自他们在泰国的经纬度坐标。从实验来看,K-means聚类在数据量小、聚类数量少的情况下效果很好。在50 - 1000的小数据量中,我们的算法在集群数量达到15个集群时运行电池。在大数据规模(在1000到5000个样本之间)中,当集群数量达到20个集群时,我们的算法优于K-means聚类。
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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