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Risk evaluations with robust approximate factor models

机译:稳健的近似因子模型进行风险评估

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Approximate factor models and their extensions are widely used in economic analysis and forecasting due to their ability to extracting useful information from a large number of relevant variables. In these models, candidate predictors are typically subject to some common components. In this paper we propose a new method for robustly estimating the approximate factor models and use it in risk assessments. We consider a class of approximate factor models in which the candidate predictors are additionally subject to idiosyncratic large uncommon components such as jumps or outliers. By assuming that occurrences of the uncommon components are rare, we develop an estimation procedure to simultaneously disentangle and estimate the common and uncommon components. We then use the proposed method to investigate whether risks from the latent factors are priced for expected returns of Fama and French 100 size and book-to-market ratio portfolios. We find that while the risk from the common factor is priced for the 100 portfolios, the risks from the idiosyncratic factors are not. However, we find that model uncertainty risks of the idiosyncratic factors are priced, suggesting that with effective diversifications, only the predictable idiosyncratic risks can be reduced, but the unpredictable ones may still exist. We also illustrate how the proposed method can be adopted on evaluating value at risk (VaR) and find it can "delivery comparable results as the conventional methods on VaR evaluations. (C) 2016 Elsevier B.V. All rights reserved.
机译:近似因子模型及其扩展由于能够从大量相关变量中提取有用信息而广泛用于经济分析和预测。在这些模型中,候选预测变量通常要服从一些通用组件。在本文中,我们提出了一种用于稳健估计近似因子模型并将其用于风险评估的新方法。我们考虑一类近似因子模型,其中候选预测变量还受到特有的大型不常见成分(例如跳跃或离群值)的影响。通过假设罕见部分的出现很少,我们开发了一种估计程序,可以同时解开并估计常见和罕见部分。然后,我们使用提议的方法调查潜在因素的风险是否为Fama和French 100规模以及市销率组合的预期收益定价。我们发现,尽管为100个投资组合定价了来自公共因素的风险,但没有针对特殊因素的风险。但是,我们发现,特质因素的模型不确定性风险已定价,这表明通过有效的分散,只有可预测的特质风险可以降低,但不可预测的风险仍然存在。我们还说明了如何在风险价值(VaR)评估中采用建议的方法,并发现它可以“提供与VaR评估的常规方法可比的结果。(C)2016 Elsevier B.V.保留所有权利。

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