首页> 外文会议>International Workshop on Fuzzy Logic and Applications(WILF 2007); 20070707-10; Camogli(IT) >Time-Series Alignment by Non-negative Multiple Generalized Canonical Correlation Analysis
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Time-Series Alignment by Non-negative Multiple Generalized Canonical Correlation Analysis

机译:非负多重广义规范相关分析的时间序列比对

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For a quantitative analysis of differential protein expression, one has to overcome the problem of aligning time series of measurements from liquid chromatography coupled to mass spectrometry. When repeating experiments one typically observes that the time axis is deformed in a non-linear way. In this paper we propose a technique to align the time series based on generalized canonical correlation analysis (GCCA) for multiple datasets. The monotonicity constraint in time series alignment is incorporated in the GCCA algorithm. The alignment function is learned both in a supervised and a semi-supervised fashion. We compare our approach with previously published methods for aligning mass spectrometry data on a large proteomics dataset.
机译:对于差异蛋白质表达的定量分析,必须克服对齐液相色谱与质谱联用的测量时间序列的问题。在重复实验时,通常会观察到时间轴以非线性方式变形。在本文中,我们提出了一种基于广义规范相关分析(GCCA)的多个数据集对齐时间序列的技术。时间序列对齐中的单调性约束已合并到GCCA算法中。对齐功能以有监督和半监督方式学习。我们将我们的方法与以前发布的在大型蛋白质组学数据集上对齐质谱数据的方法进行了比较。

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