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Extracting Feature Patterns in the Health Status of Elderly People Needing Nursing Care by Data Synchronization

机译:通过数据同步提取需要护理护理的老年人健康状况的特征模式

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We devised a method for data mining from multivariate data using a network of coupled phase oscillators subject to an analogue of the Kuramoto model for collective synchronization. In our method, the natural frequencies of the phase oscillators are extended to vector quantities to which multivariate data are assigned. The common frequency vectors of partially synchronized groups of phase oscillators are interpreted to be the template vectors representing the major features of the data set. We applied our method to care-needs-certification data in the Japanese public long-term care insurance program, and extracted major patterns in the health status of the elderly needing nursing care and their dependence on the model parameter representing the level of coarsegraining for data clustering.
机译:我们设计了一种用于使用耦合阶段振荡器网络的多变量数据进行数据挖掘的方法,该网络经受Kuramoto模型的模拟进行集体同步。在我们的方法中,相位振荡器的自然频率扩展到分配多变量数据的向量数量。局部同步的相位振荡器组的公共频率向量被解释为表示数据集的主要特征的模板矢量。我们将我们的方法应用于日本公共长期护理计划中的关怀需求认证数据,并提取了老年人需要护理的健康状况及其对代表数据的大晶级水平的模型参数的依赖性的主要模式聚类。

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