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Forward and Backward Forecasting Ensembles for the Estimation of Time Series Missing Data

机译:估计时间序列缺失数据的前向和后向预测集合

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The presence of missing data in time series is big impediment to the successful performance of forecasting models, as it leads to a significant reduction of useful data. In this work we propose a multiple-imputation-type framework for estimating the missing values of a time series. This framework is based on iterative and successive forward and backward forecasting of the missing values, and constructing ensembles of these forecasts. The iterative nature of the algorithm allows progressive improvement of the forecast accuracy. In addition, the different forward and backward dynamics of the time series provide beneficial diversity for the ensemble. The developed framework is general, and can make use of any underlying machine learning or conventional forecasting model. We have tested the proposed approach on large data sets using linear, as well as nonlinear underlying forecasting models, and show its success.
机译:时间序列中缺少数据的存在严重阻碍了预测模型的成功执行,因为这会导致有用数据的大量减少。在这项工作中,我们提出了一种多输入类型的框架来估计时间序列的缺失值。该框架基于对缺失值的迭代和连续前,后预测,并构建这些预测的集合。该算法的迭代性质允许逐步提高预测准确性。此外,时间序列的不同前向和后向动态特性为合奏提供了有益的多样性。开发的框架是通用的,并且可以利用任何基础的机器学习或常规的预测模型。我们已经使用线性以及非线性基础预测模型在大型数据集上测试了该方法,并显示了其成功。

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