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Nonparametric Bayesian inference on environmental waters chromatographic profiles

机译:环境水分色谱型材的非参数贝叶斯推断

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Chromatographic signals have a specific microscopic behaviour which enables to statistically model the retention time of molecules. Such microscopic point of view is adopted in this paper for addressing the inverse problem of chromatographic profiles inference in a Nonparametric Bayesian framework in order to propose an automatic unsupervised alternative to the traditional chemometrics methods. An application on inference on the concentration of micropollutants in lake water highlights the relevance of this approach when the studied mixture contains an unknown number of components.
机译:色谱信号具有特定的微观行为,其能够统计模拟分子的保留时间。本文采用这种微观观点,用于解决非参数贝叶斯框架中色谱谱推断的逆问题,以提出传统化学计量方法的自动无监督的替代方法。对湖水中微污染物浓度的推断施加突出了这种方法当研究含有未知数量的组分时的相关性。

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