Backcasting, Nowcasting, and Forecasting Residential Repeat-Sales Returns: Big Data meets Mixed Frequency

Matteo Garzoli, Alberto Plazzi, Rossen Valkanov
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Abstract

The Case-Shiller is the reference repeat-sales index for the U.S. residential real estate market, yet it is released with a two-month delay. We find that incorporating recent information from 71 financial and macro predictors improves backcasts, now-casts, and short-term forecasts of the index returns. Combining individual forecasts with recently-proposed weighting schemes delivers large improvements in forecast accuracy at all horizons. Additional gains obtain with mixed-data sampling methods that exploit the daily frequency of financial variables, reducing the mean square forecast error by as much as 13% compared to a simple autoregressive benchmark. The forecast improvements are largest during economic turmoils, throughout the 2020 COVID-19 pandemic period, and in more populous metropolitan areas.
反向预测、临近预测和住宅重复销售回报预测:大数据与混合频率
凯斯-席勒指数是美国住宅房地产市场的参考二手房销售指数,但该指数的发布要推迟两个月。我们发现,纳入来自71个金融和宏观预测者的最新信息,可以改善对指数回报的反向预测、现在预测和短期预测。将个别预测与最近提出的加权方案相结合,可大大提高所有视界的预测准确性。混合数据采样方法利用金融变量的每日频率获得额外收益,与简单的自回归基准相比,将均方预测误差降低了13%。在经济动荡期间、整个2020年COVID-19大流行期间以及人口较多的大都市地区,预测改善幅度最大。
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