This paper develops a new time series clustering procedure allowing for heteroskedasticity, non-normality and model's non-linearity. At this aim, we follow a fuzzy approach. Specifically, considering a Dynamic Conditional Score (DCS) model, we propose to cluster time series according to their estimated conditional moments via the Autocorrelation-based fuzzy C-means (A-FCM) algorithm. The DCS parametric modelling is appealing because of its generality and computational feasibility. The usefulness of the proposed procedure is illustrated using an experiment with simulated data and several empirical applications with financial time series assuming both linear and nonlinear models' specification and under several assumptions about time series density function.
翻译:本文开发了一个新的时间序列群集程序, 允许四重心、 非常态和模型的非直线性。 我们为此采用了模糊的方法。 具体地说, 考虑到动态条件评分(DCS)模型, 我们提议根据基于自动关系、 模糊的C- 手段( A-FCM) 算法的估计条件时数分组时间序列。 DCS 参数模型具有吸引力, 因为它具有一般性和计算可行性。 模拟数据和若干财务时间序列的经验应用实验假设线性和非线性模型的规格, 并在关于时间序列密度功能的若干假设下, 演示了拟议程序的实用性。