Reducing Dimensionality Using NMF Based Cholesky Decomposition

Jasem M. Alostad
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引用次数: 4

Abstract

This paper aims to resolve the problem associated with increased data dimensionality in datasets using modified Non-integer Matrix Factorization (NMF). Further, the increased dimensionality arising due to non-orthogonally from NMF is resolved using Cholesky decomposition (cd-NMF). The cd-NMF is used to extract the feature vector from the dataset and the data vector is linearly mapped from upper triangular matrix obtained from the Cholesky decomposition. The experiment is validated in terms of accuracy and normalized mutual information metrics again three different text databases with varied patterns. Further, the results proves that the proposed technique fits well with larger instances in finding the documents as per the query, than NMF, NPNMF, MM-NMF, RNMF, GNMF, HNMF and cd-NMF.
基于NMF的Cholesky分解降维方法
本文旨在利用改进的非整数矩阵分解(NMF)来解决数据集中数据维数增加的问题。此外,使用Cholesky分解(cd-NMF)解决了由NMF引起的非正交增加的维数。利用cd-NMF从数据集中提取特征向量,并将Cholesky分解得到的上三角矩阵线性映射到数据向量上。实验在准确性和规范化互信息度量方面进行了验证,再次在三个不同模式的文本数据库中。结果表明,与NMF、NPNMF、MM-NMF、RNMF、GNMF、HNMF和cd-NMF相比,该方法更适合于更大的搜索实例。
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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