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Hot PLS-a framework for hierarchically ordered taxonomic classification by partial least squares

机译:Hot PLS-一种通过偏最小二乘进行分层有序分类学分类的框架

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摘要

A novel framework for classification by partial least squares in a fixed hierarchy is presented. The hierarchical approach ensures flexible local modelling with varying complexity. It results in an intuitive classification path from the highest taxonomic levels down to species and beyond. Results are presented as phylogenetic trees with local diagnostic information to gain maximum information about the classification and help the researcher to focus on interesting phenomena. Information on sample replicates is included in the classification to increase performance and avoid misclassifications due to low quality measurements. Detection of samples coming from previously unobserved classes is enabled by estimating cut-off distances from the calibration data classes. To further increase flexibility and improve customization the canonical powered partial least squares algorithm is used for modelling and classification together with linear discriminant analysis. This opens up for additional sample response information and forced sharpening of focus on important variables. The presented framework is not limited to biological taxonomy, but was first developed for this purpose.
机译:提出了一种新颖的框架,用于通过固定层次结构中的局部最小二乘分类。分层方法确保了灵活的局部建模,具有不同的复杂性。从最高的生物分类级别到物种及其他物种,它都提供了直观的分类路径。结果以系统发育树的形式显示,带有局部诊断信息,以获取有关分类的最大信息,并帮助研究人员专注于有趣的现象。分类中包含有关样本重复项的信息,以提高性能并避免由于低质量的测量而导致分类错误。通过估计与校准数据类别的截止距离,可以检测来自先前未观察到的类别的样本。为了进一步提高灵活性和改进定制性,将规范的幂偏最小二乘算法与线性判别分析一起用于建模和分类。这为其他样品响应信息打开了大门,并强化了对重要变量的关注。提出的框架不仅限于生物分类法,而是首先为此目的而开发的。

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