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The non-negative matrix factorization toolbox for biological data mining

机译:用于生物数据挖掘的非负矩阵分解工具箱

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Background Non-negative matrix factorization (NMF) has been introduced as an important method for mining biological data. Though there currently exists packages implemented in R and other programming languages, they either provide only a few optimization algorithms or focus on a specific application field. There does not exist a complete NMF package for the bioinformatics community, and in order to perform various data mining tasks on biological data. Results We provide a convenient MATLAB toolbox containing both the implementations of various NMF techniques and a variety of NMF-based data mining approaches for analyzing biological data. Data mining approaches implemented within the toolbox include data clustering and bi-clustering, feature extraction and selection, sample classification, missing values imputation, data visualization, and statistical comparison. Conclusions A series of analysis such as molecular pattern discovery, biological process identification, dimension reduction, disease prediction, visualization, and statistical comparison can be performed using this toolbox.
机译:背景技术非负矩阵因式分解(NMF)已作为一种重要的生物数据挖掘方法被引入。尽管目前存在使用R和其他编程语言实现的软件包,但它们要么仅提供一些优化算法,要么专注于特定的应用领域。没有完整的NMF软件包用于生物信息学界,并且无法对生物数据执行各种数据挖掘任务。结果我们提供了一个方便的MATLAB工具箱,其中包含各种NMF技术的实现以及用于分析生物数据的各种基于NMF的数据挖掘方法。在工具箱内实施的数据挖掘方法包括数据聚类和双聚类,特征提取和选择,样本分类,缺失值插补,数据可视化以及统计比较。结论可以使用此工具箱进行一系列分析,例如分子模式发现,生物过程识别,尺寸减小,疾病预测,可视化和统计比较。

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