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Methods of cluster analysis for detection of homogeneous groups of healthcare time series

机译:聚类分析方法,用于检测医疗保健时间序列的同类组

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Statistical analysis is widely used for problem solving in different fields. We present a research on Saint Petersburg morbidity rate. The aim of the work is to detect the heterogeneity in districts of the city with respect to morbidity rate, which was chosen as an indicator of population health. Methods of cluster analysis was utilized for grouping districts to homogeneous sets. Clustering can be considered as an optimization problem as the distance between elements from the same group must be as little as possible, at the same time the distance between elements from different clusters must be as great as possible. Key feature of the research is that data are time dependent so it is necessary to use special dissimilarity measures. Besides each district is characterized by three values: children, teenagers and adult morbidity that call for multidimensional time series analysis. Firstly, a multidimensional clustering analysis was made. Then we conduct the analysis of children morbidity rate and propose a new dissimilarity measure for short time series.
机译:统计分析被广泛用于解决不同领域的问题。我们目前对圣彼得堡的发病率进行研究。该工作的目的是检测城市地区发病率的异质性,该发病率被选为人口健康的指标。利用聚类分析的方法将地区分组为同类集。聚类可以被视为优化问题,因为来自同一组的元素之间的距离必须尽可能小,同时来自不同聚类的元素之间的距离也必须尽可能大。该研究的关键特征是数据是时间相关的,因此有必要使用特殊的差异度量。除了每个地区,还具有三个值:儿童,青少年和成人发病率,需要进行多维时间序列分析。首先,进行了多维聚类分析。然后,我们对儿童的发病率进行了分析,并提出了一种针对短时间序列的新的相似度度量。

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