The autoregressive (AR) models are used to represent the time-varying random process in which output depends linearly on previous terms and a stochastic term (the innovation). In the classical version, the AR models are based on normal distribution. However, this distribution does not allow describing data with outliers and asymmetric behavior. In this paper, we study the AR models with normal inverse Gaussian (NIG) innovations. The NIG distribution belongs to the class of semi heavy-tailed distributions with wide range of shapes and thus allows for describing real-life data with possible jumps. The expectation-maximization (EM) algorithm is used to estimate the parameters of the considered model. The efficacy of the estimation procedure is shown on the simulated data. A comparative study is presented, where the classical estimation algorithms are also incorporated, namely, Yule-Walker and conditional least squares methods along with EM method for model parameters estimation. The applications of the introduced model are demonstrated on the real-life financial data.
翻译:自动递减模型(AR) 用于代表时间变化随机过程,在这个过程中,输出线性地依赖以前的术语和一个随机术语(创新)。在古典版本中,AR模型以正常分布为基础。然而,这种分布不允许描述外向值和不对称行为的数据。在本文中,我们用正常反向高山(NIG)创新来研究AR模型。NIG分布属于半重尾发散的类别,其形状范围很广,因此可以用可能的跳跃来描述真实生活数据。预期-最大化算法(EM)用于估计所考虑的模式参数。模拟数据显示估算程序的效力。在也包含传统估算算法的模型中,即Yule-Walker和条件性最小方形方法以及模型参数估算的EM方法中进行了比较研究。引入模型的应用在真实生活金融数据中演示。