In time-series analyses, particularly for finance, generalized autoregressive conditional heteroscedasticity (GARCH) models are widely applied statistical tools for modelling volatility clusters (i.e., periods of increased or decreased risk). In contrast, it has not been considered to be of critical importance until now to model spatial dependence in the conditional second moments. Only a few models have been proposed for modelling local clusters of increased risks. In this paper, we introduce a novel spatial GARCH process in a unified spatial and spatiotemporal GARCH framework, which also covers all previously proposed spatial ARCH models, exponential spatial GARCH, and time-series GARCH models. In contrast to previous spatiotemporal and time series models, this spatial GARCH allows for instantaneous spill-overs across all spatial units. For this common modelling framework, estimators are derived based on a non-linear least-squares approach. Eventually, the use of the model is demonstrated by a Monte Carlo simulation study and by an empirical example that focuses on real estate prices from 1995 to 2014 across the ZIP-Code areas of Berlin. A spatial autoregressive model is applied to the data to illustrate how locally varying model uncertainties (e.g., due to latent regressors) can be captured by the spatial GARCH-type models.
翻译:在时间序列分析中,特别是对于金融而言,普遍自动递退、有条件的超常性(GARCH)模型被广泛用于模拟波动群集(即风险增加或减少的时期)的统计工具。相比之下,到目前为止,还没有人认为在有条件的第二个时刻模拟空间依赖性至关重要。只提出了几个模型来模拟增加风险的当地集群。在本文件中,我们在一个统一的空间和广空GARCH框架内引入了一个全新的GARCH空间流程,其中还涵盖以前提出的所有空间ARCH模型、指数式空间GARCH和时序GARCH模型。与以往的时空和时序模型相比,这一空间GARCH模型允许在所有空间单位间瞬间溢出溢出。对于这一共同的模型框架,根据非线性最小度方法推算出出一些估计值。最后,蒙特卡洛模拟研究和一个侧重于1995年至2014年全年房地产价格的经验实例,即快速移动空间定位模型可适用于柏林地区。