Time-Varying Combinations of Predictive Densities Using Nonlinear Filtering

Monica Billio, R. Casarin, F. Ravazzolo, H. V. Dijk, Vu, Faculteit der Economische Wetenschappen en Bedrijfskunde
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引用次数: 144

Abstract

We propose a Bayesian combination approach for multivariate predictive densities which relies upon a distributional state space representation of the combination weights. Several specifications of multivariate time-varying weights are introduced with a particular focus on weight dynamics driven by the past performance of the predictive densities and the use of learning mechanisms. In the proposed approach the model set can be incomplete, meaning that all models can be individually misspecified. A Sequential Monte Carlo method is proposed to approximate the filtering and predictive densities. The combination approach is assessed using statistical and utility-based performance measures for evaluating density forecasts of simulated data, US macroeconomic time series and surveys of stock market prices. Simulation results indicate that, for a set of linear autoregressive models, the combination strategy is successful in selecting, with probability close to one, the true model when the model set is complete and it is able to detect parameter instability when the model set includes the true model that has generated subsamples of data. Also, substantial uncertainty appears in the weights when predictors are similar; residual uncertainty reduces when the model set is complete; and learning reduces this uncertainty. For the macro series we find that incompleteness of the models is relatively large in the 1970’s, the beginning of the 1980’s and during the recent financial crisis, and lower during the Great Moderation; the predicted probabilities of recession accurately compare with the NBER business cycle dating; model weights have substantial uncertainty attached. With respect to returns of the S&P 500 series, we find that an investment strategy using a combination of predictions from professional forecasters and from a white noise model puts more weight on the white noise model in the beginning of the 1990’s and switches to giving more weight to the professional forecasts over time. Information on the complete predictive distribution and not just on some moments turns out to be very important, above all during turbulent times such as the recent financial crisis. More generally, the proposed distributional state space representation offers great flexibility in combining densities.
使用非线性滤波的时变预测密度组合
我们提出了一种多变量预测密度的贝叶斯组合方法,该方法依赖于组合权重的分布状态空间表示。介绍了多变量时变权重的几个规范,特别关注由预测密度的过去表现和学习机制的使用驱动的权重动态。在提出的方法中,模型集可能是不完整的,这意味着所有模型都可能被单独错误指定。提出了一种序列蒙特卡罗方法来逼近滤波和预测密度。综合方法的评估使用统计和基于效用的绩效指标,以评估模拟数据的密度预测、美国宏观经济时间序列和股票市场价格调查。仿真结果表明,对于一组线性自回归模型,该组合策略能够成功地选择模型集完备时的真实模型,且概率接近于1;当模型集包含已生成数据子样本的真实模型时,该组合策略能够检测出参数的不稳定性。此外,当预测因子相似时,权重会出现很大的不确定性;当模型集完备时,残差不确定性减小;学习可以减少这种不确定性。对于宏观序列,我们发现模型的不完备性在1970年代、1980年代初和最近的金融危机期间相对较大,而在大缓和期间较低;与NBER商业周期日期相比,预测的衰退概率准确;模型权重具有相当大的不确定性。关于标准普尔500指数系列的回报,我们发现,使用专业预测者和白噪声模型预测相结合的投资策略在90年代初更重视白噪声模型,并随着时间的推移转向给予专业预测更多的权重。事实证明,关于整个预测分布(而不仅仅是某些时刻)的信息非常重要,尤其是在动荡时期,比如最近的金融危机。更一般地说,所提出的分布状态空间表示在组合密度方面提供了很大的灵活性。
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