L1 linear interpolator for missing values in time series

被引:0
|
作者
Zudi Lu
Y. V. Hui
机构
[1] Chinese Academy of Sciences,Institute of Systems Science, Academy of Mathematics and System Sciences
[2] City University of Hong Kong,Department of Management Sciences
[3] Academic Building,undefined
关键词
Autoregressive process; innovation departure; linear interpolation; minimum mean absolute error; missing values;
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中图分类号
学科分类号
摘要
We propose a minimum mean absolute error linear interpolator (MMAELI), based on theL1 approach. A linear functional of the observed time series due to non-normal innovations is derived. The solution equation for the coefficients of this linear functional is established in terms of the innovation series. It is found that information implied in the innovation series is useful for the interpolation of missing values. The MMAELIs of the AR(1) model with innovations following mixed normal andt distributions are studied in detail. The MMAELI also approximates the minimum mean squared error linear interpolator (MMSELI) well in mean squared error but outperforms the MMSELI in mean absolute error. An application to a real series is presented. Extensions to the general ARMA model and other time series models are discussed.
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页码:197 / 216
页数:19
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