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arxiv: 1404.6201 · v1 · pith:3JYIDQC4new · submitted 2014-04-24 · 📊 stat.ME

Time-varying clustering of multivariate longitudinal observations

classification 📊 stat.ME
keywords longitudinalmultivariatealgorithmclusteringmethodmodeltime-varyingadditionally
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We propose a statistical method for clustering of multivariate longitudinal data into homogeneous groups. This method relies on a time-varying extension on the classical K-means algorithm, where a multivariate vector autoregressive model is additionally assumed for modeling the evolution of clusters' centroids over time. We base the inference on a least squares specification of the model and coordinate descent algorithm. To illustrate our work, we consider a longitudinal dataset on human development. Three variables are modeled, namely life expectancy, education and gross domestic product.

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