We propose a new unsupervised learning method for clustering a large number of time series based on a latent factor structure. Each cluster is characterized by its own cluster-specific factors in addition to some common factors which impact on all the time series concerned. Our setting also offers the flexibility that some time series may not belong to any clusters. The consistency with explicit convergence rates is established for the estimation of the common factors, the cluster-specific factors, the latent clusters. Numerical illustration with both simulated data as well as a real data example is also reported. As a spin-off, the proposed new approach also advances significantly the statistical inference for the factor model of Lam and Yao (2012).
翻译:我们提出一个新的不受监督的学习方法,在潜在要素结构的基础上将大量时间序列分组,每个组群的特点是其自身的集群特定因素,以及影响所有相关时间序列的一些共同因素。我们的设置也提供了灵活性,即某些时间序列可能不属于任何组群。为了估算共同因素、特定组群因素、潜在组群,与明确的趋同率保持一致。还报告了模拟数据和真实数据示例的数值说明。作为附带因素,拟议的新方法还大大推进了Lam和Yao(2012年)要素模型的统计推论。