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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Completion of multiview missing data based on multi-manifold regularised non-negative matrix factorisation
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Completion of multiview missing data based on multi-manifold regularised non-negative matrix factorisation

机译:基于多流形正则化非负矩阵分子完成的多视图缺失数据

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摘要

In multi-source data analysis, the absence of data values or attributes is inevitably brought about by various influencing factors including environment, which results in the loss of knowledge to be conveyed by data. To solve the problem of missing data in multi-source data analysis, completion method for multiview missing data based on multi-manifold regularized non-negative matrix factorization was proposed in this paper. This method was based on the assumption of consistency of the multiview data and an algorithm of multi-manifold regularized non-negative matrix factorization is adopted to obtain homogeneous manifold and global clustering. On this basis, a multiview synergistic discrimination model is built of the non-missing view that referred to the Gaussian mixture model to pre-mark the clustering that the incremental missing data belonged to. Using the consistency of each view in the low-dimensional space, a prediction model of missing data at the specified view is established using the multiple linear regression technique to achieve accurate data completion under conditions of missing multi-attributes. Through the establishment of data filling model with three handling methods for missing values, namely CMMD-MNMF, FIMUS and Hot deck, the completion performance, clustering performance and classification performance of data sets including UCI, Flower17 and Flower102 are analyzed by simulation experiments. As shown in the results, the method of multi-view data missing completion is verified to be effective.
机译:在多源数据分析中,不可避免地通过包括环境的各种影响因素来缺乏数据值或属性,这导致通过数据传达的知识丧失。为了解决多源数据分析中缺失数据的问题,本文提出了基于多流形正则化非负矩阵分解的多视图缺失数据的完成方法。该方法基于多视图数据的一致性的假设,采用多歧管正则化非负矩阵分解的算法来获得均匀的歧管和全局聚类。在此基础上,构建了多视图协同识别模型,其引用了高斯混合模型,以预先标记增量缺失数据所属的群集。利用低维空间中的每个视图的一致性,使用多个线性回归技术建立指定视图中缺失数据的预测模型,以在缺少多属性的条件下实现准确的数据完成。通过建立具有三种处理方法的数据填充模型,用于缺失值,即CMMD-MNMF,FIMU和热甲板,通过模拟实验分析包括UCI,Flower17和Flower102的数据集的完成性能,聚类性能和分类性能。如结果所示,验证了多视图数据丢失完成的方法以有效。

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