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Generating up-to-date starting values for detailed forecasting models.

机译:为详细的预测模型生成最新的起始值。

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摘要

In economic forecasting, it is important that the forecasts be based on data that is both reliable and up-to-date. The most reliable data typically come from conducting a census. These censuses produce estimates with a long lag between the reference year and the date of publication. However, we also have other sources of economic data that are less reliable but published more frequently. These higher frequency data should be a source of useful information for analyzing economic activity in the current, incomplete year.;The objective of this study is to use high frequency (monthly and quarterly) data to generate forecasts of the annual data from reliable sources used in an inter-industry forecasting model. The results will be used as starting values to improve the model's short-term forecast performance.;The distinguishing feature of this dissertation is that it studies the economic data at the sectoral level as opposed to other studies that only try to generate aggregate data. The aggregate data will be a by-product of these detailed estimates. Thus, we can forecast the trends of the aggregates and observe sectors that contribute to these trends.;In this dissertation, I study data on four main aspects of the U.S. economy: (1) Personal consumption expenditures, (2) Investment in equipment and software, (3) Investment in structures, and (4) Gross output.;By historical simulations, I find that the performance of the forecasts depends heavily on the accuracy of the exogenous variables used in each forecast. The estimated detailed values are consistent with the macroeconomic data, used as regressors in the processes. Thus, generally, the results will be reliable as long as we have a good forecast of macroeconomic variables.;The performance of the first-period forecast also depends on where in the calendar year the last published data is. The closer to the end of the year, the better is the accuracy of the forecast.
机译:在经济预测中,重要的是,预测应基于可靠且最新的数据。最可靠的数据通常来自普查。这些普查产生的估计值在参考年和发布日期之间存在很长的滞后时间。但是,我们还有其他经济数据来源,可靠性较差,但发布频率较高。这些较高频率的数据应为分析当前不完整年度的经济活动提供有用的信息来源。此项研究的目的是使用高频(每月和每季度)数据来生成可靠数据来源对年度数据的预测在行业间的预测模型中。结果将作为初始值,以提高模型的短期预测性能。本论文的显着特点是,它研究部门层面的经济数据,而不是仅仅试图生成汇总数据的其他研究。汇总数据将是这些详细估算的副产品。因此,我们可以预测总量的趋势,并观察对这些趋势有贡献的部门。本文,我研究了美国经济四个主要方面的数据:(1)个人消费支出,(2)设备投资和软件,(3)结构投资和(4)总产出。通过历史模拟,我发现预测的性能在很大程度上取决于每个预测中使用的外生变量的准确性。估计的详细值与宏观经济数据一致,在过程中用作回归数据。因此,一般而言,只要我们对宏观经济变量有良好的预测,结果就将是可靠的。第一次预测的结果还取决于最近一次公布的数据在日历年中的位置。距离年底越近,预测的准确性越好。

著录项

  • 作者

    Sampattavanija, San.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Economics General.;Economics Commerce-Business.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 542 p.
  • 总页数 542
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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