异方差指数

Marwa Hassan, M. Hossny, S. Nahavandi, D. Creighton
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引用次数: 6

摘要

时间序列预测试图预测时间序列的未来值。它的工作是基于对先前观测值的研究。异方差时间序列具有变量和不可预测的离散度量。统计分布参数的不确定性对预测模型提出了严峻的挑战。人们已经做了很多尝试来确定时间序列的异方差。然而,所有这些尝试都依赖于假设检验,并没有量化检验时间序列中异方差的数量。另一方面,量化异方差确实提供了关于时间序列行为的额外信息。研究这种行为将改善对行为相关时间序列(如股票市场数据)的预测。提出了一种基于局部方差方差的异方差指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heteroskedasticity Variance Index
Time series forecasting attempts to predict future values of time series. Its work is based on studying previously observed values. A heteroskedastic time series features variable and unpredictable measures of dispersion. This uncertainty in statistical distribution parameters imposes a serious challenge to the forecasting models. There have been many attempts to identify the heteroskedasticity in time series. However, all these attempts rely on hypothesis testing and do not quantify the amount of heteroskedasticity in the examined time series. On the other hand, quantifying heteroskedasticity does provide extra information about the behavior of the time series. Studying this behavior will improve forecasting of behavioral dependent time series such as stock market data. This paper introduces a novel heteroskedasticity index based on variance of localized variances.
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