Hymenopteran Colony Stream Clustering Algorithm and Comparison with Particle Swarm Optimization and Genetic Optimization Clustering

Nikhil Parafe, M. Venkatesan, Prabhavathy Panner
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Abstract

Stream is endlessly inbound sequence of information, streamed information is unbounded and every information are often examined one time. Streamed information are often noisy and therefore the variety of clusters within the information and their applied mathematics properties will change over time, wherever random access to the information isn’t possible and storing all the arriving information is impractical. When applying data set processing techniques and specifically stream clustering Algorithms to real time information streams, limitation in execution time and memory have to be oblige to be thought-about carefully. The projected hymenopteran colony stream clustering Algorithmic is a clustering Algorithm which forms cluster according to density variation, in which clusters are separated by high density features from low density feature region with mounted movement of hymenopteran. Result shows that it created denser cluster than antecedently projected Algorithmic program. And with mounted movement of ants conjointly it decreases the loss of data points. And conjointly the changed radius formula of cluster is projected so as to increase performance of model to create it a lot of dynamic with continuous flow of information. And also we changed probability formula for pick up and drop to reduce oulier. Results from hymenopteran experiments conjointly showed that sorting is disbursed in 2 phases, a primary clustering episode followed by a spacing part. In this paper, we have also compared proposed Algorithm with particle swarm optimization and genetic optimization using DBSCAN and k -means clustering.
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膜壳虫群体流聚类算法及其与粒子群优化和遗传优化聚类的比较
流是无休止的入站信息序列,流式信息是无限的,每个信息通常都被检查一次。流化信息通常是有噪声的,因此信息中的簇的多样性及其应用数学性质将随着时间的推移而变化,无论在哪里都不可能随机访问信息,并且存储所有到达的信息是不切实际的。在将数据集处理技术,特别是流聚类算法应用于实时信息流时,必须仔细考虑执行时间和内存的限制。投影处女膜虫群落流聚类算法是一种根据密度变化形成聚类的聚类算法,其中随着处女膜虫的移动,聚类由高密度特征和低密度特征区分隔开来。结果表明,它比预先投影的算法程序创建了更密集的聚类。与蚂蚁的移动相结合,减少了数据点的丢失。并结合聚类的变半径公式进行投影,以提高模型的性能,使其具有连续信息流的动态性。同时,我们还改变了上升和下降的概率公式,以减少oulier。处女膜实验的结果同时表明,分类分为两个阶段,一个是主要的聚类事件,然后是间隔部分。在本文中,我们还将所提出的算法与粒子群优化和使用DBSCAN和k均值聚类的遗传优化进行了比较。
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来源期刊
Journal of Computational and Theoretical Nanoscience
Journal of Computational and Theoretical Nanoscience 工程技术-材料科学:综合
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审稿时长
3.9 months
期刊介绍: Information not localized
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