运用动态因子模型预测美国商业地产价格指数

Alex M. van de Minne, Marc K. Francke, D. Geltner
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引用次数: 5

摘要

动态因子模型(DFM)的一般目的是将大量的时间序列归纳为几个公共因子。在这里,我们探索了一些DFM规范,这些规范适用于2001年至2017年期间美国商业房地产价格的80个颗粒状非重叠指数。我们研究了因子的性质和结构,以及利用dfm可以产生的指数预测。我们考虑了1、2、3和4个共同因素趋势的规格。由于使用DFM的主要动机是它们能够改善许多相关序列系统的样本外预测,我们将DFM估计的因子回报应用于自回归分布滞后(ARDL)模型中来预测单个房地产价格序列。我们将预测的残差与传统的自回归(AR)预测模型作为两个市场的“基准”进行比较:波士顿公寓和达拉斯商业。结果表明,ARDL模型对危机和随后的复苏的预测非常好,而“基准”模型通常遵循之前的价格趋势。我们发现DFM预测在只有一个或两个因素时是最精确的。这两个突出的因素可能分别反映了总体经济状况和租赁住房市场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting US Commercial Property Price Indexes Using Dynamic Factor Models
The general purpose of a dynamic factor model (DFM) is to summarize a large number of time series into a few common factors. Here we explore a number of DFM specifications applied to 80 granular, non-overlapping indexes of commercial property prices in the US, quarterly from 2001 to 2017. We examine the nature and the structure of the factors and the index forecasts that can be produced using the DFMs. We consider specifications of 1, 2, 3 and 4 common factor trends. As a major motivation for the use of DFMs is their ability to improve out-of-sample forecasting of systems of numerous related series, we apply the DFM estimated factor returns in an Autoregressive Distributed Lag (ARDL) model to forecast the individual real estate price series. We compare the forecasted residuals to a conventional Autoregressive (AR) forecast model as a "benchmark" for two markets: Boston apartments and Dallas commercial. The results show that the ARDL model predicts the crisis and subsequent recovery really well, whereas the "benchmark" model typically follows the previous price trend. We find that the DFM forecasts are most precise with only one or two factors. The two prominent factors may reflect general economic conditions and the rental housing market, respectively.
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