经济与金融大数据集的动态学习预测密度组合

R. Casarin, S. Grassi, Francesco Ravazzollo, H. V. Dijk
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引用次数: 5

摘要

介绍了一种灵活的预报密度组合方法,可以处理大数据集。它通过允许模型集不完备性和组合权值的动态学习扩展了专家混合方法。采用顺序聚类机制引入降维步骤,将大的预测密度集分配到少量的子集中,并将大密度集的组合权重建模为一个动态因子模型,其中多个因子等于子集的数量。预测密度组合以非线性状态空间形式表示为一个大的有限混合。提出了一种基于并行顺序聚类和滤波的高效仿真贝叶斯推理方法,并在图形处理单元上实现。该方法用于跟踪标准普尔500指数,该指数结合了基于1856只美国个股的7000多个预测密度,这些预测密度集中在一个相对较小的子集中。通过使用风险价值,可以获得大量的预测和经济收益,特别是在尾部。使用142个系列的大型宏观经济数据集,从美国实际GDP、通货膨胀、国库券收益率和就业的多元预测密度组合中获得了类似的预测收益,包括衰退的概率。获得的关于金融和宏观经济集群动态模式的证据为改进模型和制定更有效的经济和金融政策提供了有用的宝贵信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecast Density Combinations with Dynamic Learning for Large Data Sets in Economics and Finance
A flexible forecast density combination approach is introduced that can deal with large data sets. It extends the mixture of experts approach by allowing for model set incompleteness and dynamic learning of combination weights. A dimension reduction step is introduced using a sequential clustering mechanism that allocates the large set of forecast densities into a small number of subsets and the combination weights of the large set of densities are modelled as a dynamic factor model with a number of factors equal to the number of subsets. The forecast density combination is represented as a large finite mixture in nonlinear state space form. An efficient simulation-based Bayesian inferential procedure is proposed using parallel sequential clustering and filtering, implemented on graphics processing units. The approach is applied to track the Standard & Poor 500 index combining more than 7000 forecast densities based on 1856 US individual stocks that are are clustered in a relatively small subset. Substantial forecast and economic gains are obtained, in particular, in the tails using Value-at-Risk. Using a large macroeconomic data set of 142 series, similar forecast gains, including probabilities of recession, are obtained from multivariate forecast density combinations of US real GDP, Inflation, Treasury Bill yield and Employment. Evidence obtained on the dynamic patterns in the financial as well as macroeconomic clusters provide valuable signals useful for improved modelling and more effective economic and financial policies.
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