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A methodology to discover and understand complex patterns: Interpreted Integrative Multiview Clustering ((IMC)-M-2)

机译:发现和理解复杂模式的方法:解释性集成多视图聚类((IMC)-M-2)

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The main goal of this work is to develop a methodology for finding nutritional patterns from a variety of individual characteristics which can contribute to better understand the interactions between nutrition and health, provided that the complexity of the phenomenon gives poor performance using classical approaches. An innovative methodology based on a combination of advanced clustering techniques and consistent conceptual interpretation of clusters is proposed to find more understandable patterns or clusters. The Interpreted Integrative Multiview Clustering ((IMC)-M-2) combines the previously proposed Integrative Multiview Clustering (IMC) with a new interpretation methodology NCIMS. IMC uses crossing operations over the several partitions obtained with the different views. Comparison with other classical clustering techniques is provided to assess the performance of this approach. IMC helps to reduce the high dimensionality of the data based on multiview division of variables.
机译:这项工作的主要目的是开发一种方法,以从多种个体特征中寻找营养模式,这有助于更好地理解营养与健康之间的相互作用,前提是该现象的复杂性使用经典方法会导致不良表现。提出了一种基于先进聚类技术和对聚类的一致概念解释的组合的创新方法,以找到更易理解的模式或聚类。解释性集成多视图聚类((IMC)-M-2)将先前提出的集成多视图聚类(IMC)与新的解释方法NCIMS结合在一起。 IMC在通过不同视图获得的几个分区上使用交叉操作。提供与其他经典聚类技术的比较以评估此方法的性能。 IMC基于变量的多视图划分,有助于降低数据的高维度。

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