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首页> 外文期刊>Indian Journal of Science and Technology >Optimal Feature for Text Similarity based Hybrid Clustering Technique with Aid of MGWO
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Optimal Feature for Text Similarity based Hybrid Clustering Technique with Aid of MGWO

机译:MGWO的文本相似度混合聚类技术的最优特征

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Objectives: The way toward gathering high dimensional information into groups is not exact and maybe not up to the level of desire when the dimensions of the dataset is high. It is presently centering gigantic consideration towards innovative work. Methods/Analysis: Initially the input high dimensional data is fed to similarity measure for text processing for feature selection, in which similarity between the categorical data is evaluated. Then we have planned to utilize optimal feature selection method. Feature determination is a vital subject in data mining, particularly for high dimensional datasets. In our proposed technique, Modified Grey Wolf Optimization technique is used for optimal feature selection. Next the selected features are grouped with the help of clustering technique. Here we are hybrid two clustering techniques for grouping the optimal features. Findings: The performance of the proposed technique is evaluated by means of clustering accuracy, Jaccard coefficient and Dice's coefficient. The proposed technique is compared with existing clustering algorithms. Novelty/Improvements: The primary intension of this research is to achieving promising results in text similarity based clustering technique. Here we are hybridizing k means and fuzzy c means clustering algorithm for grouping the optimal features.
机译:目标:将高维信息收集到组中的方法并不精确,并且在数据集的维数较高时可能未达到期望的水平。目前,它将巨大的考虑集中在创新工作上。方法/分析:最初,将输入的高维数据输入相似度度量以进行文本处理以进行特征选择,其中评估分类数据之间的相似度。然后我们计划利用最佳特征选择方法。特征确定是数据挖掘中至关重要的主题,尤其是对于高维数据集。在我们提出的技术中,改进的灰狼优化技术用于最优特征选择。接下来,借助聚类技术将所选功能分组。在这里,我们是用于对最佳特征进行分组的两种混合聚类技术。结果:通过聚类精度,Jaccard系数和Dice系数对所提出技术的性能进行了评估。将该技术与现有的聚类算法进行了比较。新颖性/改进:这项研究的主要目的是在基于文本相似性的聚类技术中取得可喜的结果。在这里,我们将k均值和模糊c均值聚类算法进行混合,以对最佳特征进行分组。

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