错误规范下因子和自回归模型的评分规则

R. Casarin, Fausto Corradin, F. Ravazzolo, D. Sartore
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引用次数: 1

摘要

因子模型(FM)目前被广泛应用于大时间序列集的预测。另一类模型是多元自回归模型(multivariate autoregressive models, MAR),它可以很容易地在大维度的环境中进行估计和使用,其中假设面板中的序列具有独立的自回归过程。我们比较了FM模型和MAR模型在假设两种模型都是错误的,并且数据生成过程是一个向量自回归模型的情况下的预测能力。我们建立了FM需要满足哪些条件才能在均方预测误差方面优于MAR。该条件表明,在存在错误规范的情况下,FM并不总是优于MAR, FM的预测性能主要取决于数据生成过程的参数值。基于FM和MAR预测性能之间的理论关系,我们提供了一个评分规则,可以对数据进行评估,以选择模型,或者在预测练习中组合模型。在模拟数据和著名的大型经济数据集上提供了一些数值说明。实证结果表明,当FM和MAR预测效果相差较大时,真正信号的频率较大,随着水平的增加而减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Scoring Rule for Factor and Autoregressive Models Under Misspecification
Factor models (FM) are now widely used for forecasting with large set of time series. Another class of models, which can be easily estimated and used in a large dimensional setting, is multivariate autoregressive models (MAR), where independent autoregressive processes are assumed for the series in the panel. We compare the forecasting abilities of FM and MAR models when assuming both models are misspecified and the data generating process is a vector autoregressive model. We establish which conditions need to be satisfied for a FM to overperform MAR in terms of mean square forecasting error. The condition indicates in presence of misspecification that FM is not always overperforming MAR and that the FM predictive performance depends crucially on the parameter values of the data generating process. Building on the theoretical relationship between FM and MAR predictive performances, we provide a scoring rule which can be evaluated on the data to either select the model, or combine the models in forecasting exercises. Some numerical illustrations are provided both on simulated data and on wel-known large economic datasets. The empirical results show that the frequency of the true positive signals is larger when FM and MAR forecasting performances differ substantially and it decreases as the horizon increases.
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