首页> 外文期刊>Computational statistics & data analysis >SEMIFAR models-a semiparametric approach to modelling trends, long-range dependence and nonstationarity
【24h】

SEMIFAR models-a semiparametric approach to modelling trends, long-range dependence and nonstationarity

机译:SEMIFAR模型-一种半参数方法,用于对趋势,长期依赖性和非平稳性进行建模

获取原文
获取原文并翻译 | 示例
           

摘要

Time series in many areas of application often display local or global trends. Statistical "explanations" of such trends are, for example, polynomial regression, smooth bounded trends that are estimated nonparametrically, and difference-stationary processes such as, for instance, integrated ARIMA processes. In addition, there is a fast growing literature on stationary processes with long memory which generate spurious local trends. Visual distinction between deterministic, stochastic and spurious trends can be very difficult. For some time series, several "trend generating" mechanisms may occur simultaneously. Here, a class of semiparametric fractional autoregressive models (SEMIFAR) is proposed that includes deterministic trends, difference stationarity and stationarity with short- and long-range dependence. The components of the model can be estimated by combining maximum likelihood estimation with kernel smoothing in an iterative plug-in algorithm. The method helps the data analyst to decide whether the observed process contains a stationary short- or long-memory component, a difference stationary component, and/or a deterministic trend component. Data examples from climatology, economics and dendrochronology illustrate the method. Finite sample behaviour is studied in a small simulation study.
机译:在许多应用领域中的时间序列通常显示局部或全局趋势。这种趋势的统计“解释”是,例如多项式回归,非参数估计的平滑有界趋势以及差异平稳过程,例如集成ARIMA过程。另外,关于具有长期记忆的平稳过程的文献正在迅速增长,这会产生虚假的局部趋势。确定性,随机和虚假趋势之间的视觉区别可能非常困难。对于某些时间序列,可能同时发生几种“趋势生成”机制。在此,提出了一类半参数分数自回归模型(SEMIFAR),该模型包括确定性趋势,差异平稳性和具有短期和长期依赖性的平稳性。可以通过在迭代插件算法中将最大似然估计与内核平滑相结合来估计模型的组件。该方法帮助数据分析人员确定所观察的过程是否包含固定的短期或长期存储成分,差异​​的固定成分和/或确定性趋势成分。来自气候学,经济学和树木年代学的数据示例说明了该方法。在一个小型模拟研究中研究了有限样本行为。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号