短期宏观经济预测中不确定因素处理方法的探讨

Xuping Jiang
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摘要

解决了如何综合多个模型的预测结果和大量不能包含在预测模型中的随机因素的影响而得到最终预测结果的问题。提出了一种用结构模型处理数学模型或系统模型,用半结构方法处理各种随机因素影响的解决方法。实践证明,该方法比单一的预测模型处理效果要好得多
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approach to methods for processing uncertain factors in short-term macroeconomic forecasting
The problem of how to get a final forecast by means of integrating both the forecasts of several models and the influence of large quantities of random factors that cannot be included in the forecast model is addressed. A method of solving this problem by using a structural model for processing the mathematics or systems models and semistructural methods for processing the influence of all kinds of random factors is presented. Practice has demonstrated that the results are much better than that of single forecasting model processing.<>
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