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Labeled clustering a unique method to label unsupervised classes

机译:标记聚类是标记非监督类的独特方法

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This paper proposes a method to label unsupervised classes. Clustering is an unsupervised classification technique that is used to group data on the basis of similarity measures. K-Means clustering is one of the methods which is used to classify given dataset in number of groups on the basis of Euclidean distance of data points in Cartesian system. On the basis of similarity and dissimilarity the data points are divided into multiple clusters which do not have identification labels. K means clustering can given a broadened insight into the data if the resulting groups bear some identification. A unique method for labeling unsupervised classes by using correlation analysis and frequent membership function is proposed. The method is applied to custom world energy dataset and divided world nations into five labeled clusters which increased the opportunities for energy sector to derive valuable patterns for guided decisions. The results showed minor deviations from the real energy scenario because of the factors discussed in the paper.
机译:本文提出了一种标记非监督类的方法。聚类是一种无监督的分类技术,用于基于相似性度量对数据进行分组。 K-Means聚类是用于基于笛卡尔系统中数据点的欧式距离将给定数据集按组进行分类的方法之一。根据相似性和不相似性,将数据点分为多个没有标识标签的聚类。 K表示,如果结果组具有某种识别性,则聚类可以提供对数据的更广泛的洞察力。提出了一种利用相关分析和频繁隶属度函数标记无监督类的独特方法。该方法应用于定制的世界能源数据集,并将世界国家划分为五个标记的集群,这增加了能源部门获得指导性决策的宝贵模式的机会。由于本文中讨论的因素,结果显示与实际能源方案的偏差很小。

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