Bayesian Risk Forecasting for Long Horizons

A. Borowska, Lennart F. Hoogerheide, S. J. Koopman
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引用次数: 1

Abstract

We present an accurate and efficient method for Bayesian forecasting of two financial risk measures, Value-at-Risk and Expected Shortfall, for a given volatility model. We obtain precise forecasts of the tail of the distribution of returns not only for the 10-days-ahead horizon required by the Basel Committee but even for long horizons, like one-month or one-year-ahead. The latter has recently attracted considerable attention due to the different properties of short term risk and long run risk. The key insight behind our importance sampling based approach is the sequential construction of marginal and conditional importance densities for consecutive periods. We report substantial accuracy gains for all the considered horizons in empirical studies on two datasets of daily financial returns, including a highly volatile period of the recent financial crisis. To illustrate the flexibility of the proposed construction method, we present how it can be adjusted to the frequentist case, for which we provide counterparts of both Bayesian applications.
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长期视野的贝叶斯风险预测
对于给定的波动率模型,我们提出了一种准确有效的贝叶斯预测两种金融风险度量,风险价值和预期不足的方法。我们不仅可以获得巴塞尔委员会要求的10天内的回报分布尾部的精确预测,还可以获得一个月或一年的长期预测。由于短期风险和长期风险的不同性质,后者最近引起了相当大的关注。我们基于重要性抽样的方法背后的关键见解是连续时期的边际和条件重要性密度的顺序构建。我们报告了在两个每日财务回报数据集的实证研究中,包括最近金融危机的高度波动时期,所有考虑的视界的准确性都有了实质性的提高。为了说明所提出的构造方法的灵活性,我们介绍了如何将其调整到频率情况,为此我们提供了两种贝叶斯应用程序的对应项。
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