A Meta Heuristic Multi-View Data Analysis over Unconditional Labeled Material: An Intelligence OCMHAMCV

IF 0.9 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
SRINIVAS KOLLI, A. V. Praveen Krishna, M. Sreedevi
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引用次数: 0

Abstract

Artificial intelligence has been provided powerful research attributes like data mining and clustering for reducing bigdata functioning. Clustering in multi-labeled categorical analysis gives huge amount of relevant data that explains evaluation and portrayal of qualities as trending notion. A wide range of scenarios, data from many dimensions may be used to provide efficient clustering results. Multi-view clustering techniques had been outdated, however they all provide less accurate results when a single clustering of input data is applied. Numerous data groups are conceivable due to diversity of multi-dimensional data, each with its own unique set of viewpoints. When dealing multi-view labelled data, obtaining quantifiable and realistic cluster results may be challenge. This study provides unique strategy termed OCMHAMCV (Orthogonal Constrained Meta Heuristic Adaptive Multi-View Cluster). In beginning, OMF approach used to cluster similar labelled sample data into prototypes of dimensional clusters of low-dimensional data. Utilize adaptive heuristics integrate complementary data several dimensions complexity of computational analysis data representation data in appropriate orthonormality constrained viewpoint. Studies on massive data sets reveal that proposed method outperforms more traditional multi-view clustering techniques scalability and efficiency. The performance measures like accuracy 98.32%, sensitivity 93.42%, F1-score 98.53% and index score 96.02% has been attained, which was good improvement. Therefore it is proved that proposed methodology suitable for document summarization application for future scientific analysis.
无条件标注材料的元启发式多视图数据分析:一个智能ocmhammcv
人工智能为减少大数据功能提供了数据挖掘、聚类等强大的研究属性。多标签分类分析中的聚类提供了大量的相关数据,这些数据解释了作为趋势概念的质量评价和描述。在广泛的场景中,来自多个维度的数据可用于提供有效的聚类结果。多视图聚类技术已经过时,但是当对输入数据进行单一聚类时,它们提供的结果都不太准确。由于多维数据的多样性,可以想象有许多数据组,每个数据组都有自己独特的一组视点。在处理多视图标记数据时,如何获得可量化的、真实的聚类结果是一个挑战。本研究提出了一种独特的策略,称为OCMHAMCV(正交约束元启发式自适应多视图聚类)。起初,OMF方法用于将相似的标记样本数据聚类成低维数据的维度聚类原型。利用自适应启发式方法,以适当的正交性约束视点整合互补数据、计算分析数据、复杂性数据。对海量数据集的研究表明,该方法在可扩展性和效率上都优于传统的多视图聚类技术。准确度达到98.32%,灵敏度达到93.42%,f1得分达到98.53%,指标得分达到96.02%,取得了较好的提高。因此,本文提出的方法适用于文献摘要,为今后的科学分析提供依据。
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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来源期刊
Scalable Computing-Practice and Experience
Scalable Computing-Practice and Experience COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.00
自引率
0.00%
发文量
10
期刊介绍: The area of scalable computing has matured and reached a point where new issues and trends require a professional forum. SCPE will provide this avenue by publishing original refereed papers that address the present as well as the future of parallel and distributed computing. The journal will focus on algorithm development, implementation and execution on real-world parallel architectures, and application of parallel and distributed computing to the solution of real-life problems.
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