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Data uncertainty: Empirical evidence, general-equilibrium implications, and hedging strategies.

机译:数据不确定性:经验证据,一般均衡含义和对冲策略。

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摘要

In the first chapter we document the empirical properties of revisions to major macroeconomic variables in the U.S., over the period 1966–2000. We find that these revisions do not have a zero mean, which indicates that the initial announcements by statistical agencies are biased. We also find that the revisions are quite large compared to the original variables. They are predictable using the information set at the time of the initial announcement, which means that the initial announcements of statistical agencies are not rational forecasts. We also provide some evidence that professional forecasters ignore this predictability. Our findings suggest that data revisions in the U.S. do not satisfy simple desirable statistical properties.;In the second chapter, using the empirical results from the previous chapter as the motivation, we study the effects of data revisions in a general equilibrium framework. We find that the presence of data revisions, or data uncertainty, creates a precautionary motive and causes significant changes in the decisions of agents. We also find that the model with revisions captures some aspects of the business cycle dynamics of the US data better than the benchmark model with no revisions. Using our model we measure the cost of having data revisions to be about ;In the third chapter we take the first step in analyzing ways of hedging the risk of data revisions. We show that we can construct portfolios of assets, which are maximally correlated with revisions to macroeconomic variables. The average correlation of the returns of these hedging portfolios and the underlying revision risk are in the order of 0.50, which is very promising in terms of hedging performance.
机译:在第一章中,我们记录了1966-2000年期间美国主要宏观经济变量的修正的经验性质。我们发现这些修订没有零均值,这表明统计机构的最初公告是有偏见的。我们还发现,与原始变量相比,修订版相当大。使用初次发布时设置的信息可以预测它们,这意味着统计机构的初次发布不是合理的预测。我们还提供了一些证据,表明专业预测员忽略了这种可预测性。我们的发现表明,美国的数据修订不能满足简单的期望统计属性。第二章,以前一章的经验结果为动机,我们研究了在一般均衡框架下数据修订的影响。我们发现,数据修订或数据不确定性的存在会产生预防动机,并会导致代理商的决策发生重大变化。我们还发现,带修订的模型比不带修订的基准模型更好地捕获了美国数据的商业周期动态的某些方面。使用我们的模型,我们可以估算出进行数据修订的成本约为;在第三章中,我们迈出了第一步,分析了对冲数据修订风险的方法。我们证明了我们可以构建资产组合,这些组合与宏观经济变量的修正最大相关。这些对冲投资组合的收益与潜在的修订风险的平均相关性约为0.50,这在对冲表现方面非常有前途。

著录项

  • 作者

    Aruoba, S. Boragan.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Economics General.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 231 p.
  • 总页数 231
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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