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Bayesian perspectives on portfolio allocation and stock return prediction.

机译:贝叶斯关于投资组合分配和股票收益预测的观点。

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This dissertation consists of two essays that use Bayesian statistical methods to examine aspects of financial asset pricing and asset price prediction. The first essay examines portfolio choice when an investor lacks full confidence in an asset pricing model. The second essay examines prediction of future asset returns when an investor is uncertain which prediction model is correct.; In the first essay, I examine the portfolio choices of hypothetical mean-variance investors who use the Capital Asset Pricing Model (CAPM) to allocate wealth between a momentum portfolio and the market portfolio. An investor with complete confidence in the CAPM would allocate nothing to the momentum portfolio. In contrast, an investor who lacks full confidence in the CAPM might abandon the model entirely. Rather than take this harsh approach, an investor could instead specify this lack of confidence as a Bayesian prior belief in the ability of the CAPM to price the momentum portfolio. In this way, the investor can make use of the asset pricing model without having to rely on it entirely. I use data for 1926 through 2001 to examine the portfolio allocation choices investors with different prior beliefs would have made. Not surprisingly, investors with less prior confidence in the CAPM eventually allocate more to the momentum portfolio. However, and somewhat surprisingly, an investor with near complete confidence in the CAPM would still have allocated a substantial percentage to the momentum portfolio.; In the second essay, I examine prediction of future stock returns. Previous studies have identified several variables that would have predicted stock returns, though others studies suggest these results may be due to data mining. To guard against data mining, previous researchers have suggested use of Bayesian model averaging to account for the uncertainty about prediction models. In common with other researchers, I find some evidence of predictability when a hypothetical investor uses Bayesian model averaging with no restrictions on use of predictive variables. However, when I limit the hypothetical investor to using only variables whose predictive ability would have been known at the time of the forecast, the predictability disappears.
机译:本文由两篇采用贝叶斯统计方法研究金融资产定价和资产价格预测方面的论文组成。第一篇文章探讨了当投资者对资产定价模型缺乏完全信心时的投资组合选择。第二篇文章探讨了当投资者不确定哪种预测模型正确时对未来资产收益的预测。在第一篇文章中,我研究了使用资本资产定价模型(CAPM)在动量投资组合和市场投资组合之间分配财富的假设均值方差投资者的投资组合选择。对CAPM完全有信心的投资者不会向动量投资组合分配任何资金。相反,对CAPM缺乏完全信心的投资者可能会完全放弃该模型。与其采取这种苛刻的方法,投资者可以将这种缺乏信心指定为贝叶斯先验的信念,认为CAPM能够为动量组合定价。这样,投资者可以使用资产定价模型,而不必完全依赖它。我使用1926年到2001年的数据来检验具有不同先验信念的投资者所做出的投资组合分配选择。毫不奇怪,先前对CAPM信心不足的投资者最终会向动量组合分配更多资金。然而,出乎意料的是,对CAPM几乎完全充满信心的投资者仍然会为动量投资组合分配相当大的比例。在第二篇文章中,我研究了对未来股票收益的预测。先前的研究已经确定了一些可以预测库存回报的变量,尽管其他研究表明这些结果可能是由于数据挖掘所致。为了防止数据挖掘,以前的研究人员建议使用贝叶斯模型平均来解决预测模型的不确定性。与其他研究人员一样,当假设的投资者使用贝叶斯模型平均时,对预测变量的使用没有限制,我发现了一些可预测的证据。但是,当我将假设的投资者限制为仅使用在预测时已经知道其预测能力的变量时,可预测性就会消失。

著录项

  • 作者

    Turner, James A.;

  • 作者单位

    The University of Utah.;

  • 授予单位 The University of Utah.;
  • 学科 Economics Finance.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 86 p.
  • 总页数 86
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 财政、金融;
  • 关键词

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