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Weighted Multi-View Data Clustering via Joint Non-Negative Matrix Factorization

机译:通过联合非负矩阵分解实现加权多视图数据聚类

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In recent years, datasets which exist in present world are comprising of various representations of the data or in multiview environment, which frequently give the important data to each other. Multi-view clustering based on Non-negative matrix factorization (NMF) has turned to be a very hot direction of research in the field of Pattern Reognition, Machine Learning (ML), and data mining. and data mining due to unsupervised confuse information of Numerous Views. The main problem of employing NMF to multi-view clustering is how to define the factorizations to give significant and commensurate clustering solutions. Specially, multi-view clustering based NMF has achieved extensive attention due to its dimensionality reduction property. Existing methods based on NMF barely produced meaningful clustering solution from heterogeneous numerous views due to their complementary behaviors. To address this issue, we design a innovative NMF technique based Multiview clustering approach, which gives the more meaningful and compatible clustering solution over Numerous Views. The main outcome of the work, is to a design combined NMF method with view weight and constraint co-efficient which will bring the clustering solution to a common point for each view. The effectiveness of propose method is validated by conducting the experiments on real-world datasets.
机译:近年来,当今世界中存在的数据集由数据的各种表示形式或在多视图环境中组成,它们经常将重要的数据相互提供。基于非负矩阵分解(NMF)的多视图聚类已成为模式识别,机器学习(ML)和数据挖掘领域中非常热门的研究方向。由于无人看管的混淆视图信息而导致数据和数据挖掘。使用NMF进行多视图聚类的主要问题是如何定义因式分解以提供重要且相称的聚类解决方案。特别地,基于多视图聚类的NMF由于其降维特性而受到了广泛的关注。基于NMF的现有方法由于其互补行为,几乎无法从异构的众多观点中产生有意义的聚类解决方案。为解决此问题,我们设计了一种基于Nview技术的创新性Multiview聚类方法,该方法在众多视图上提供了更有意义和兼容的聚类解决方案。这项工作的主要成果是设计一种结合视图权重和约束系数的NMF方法,从而将聚类解决方案带到每个视图的共同点。通过对真实数据集进行实验,验证了提出方法的有效性。

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