Forecasting House Prices: The Role of Fundamentals, Credit Conditions, and Supply Indicators

N. Kundan Kishor
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Abstract

This paper evaluates the ability of various indicators related to macroeconomic fundamentals, credit conditions, and housing supply to predict house price growth in the United States during the post-financial crisis period. We find that the inclusion of different measures of housing supply indicators significantly improves the forecasting performance for the period of 2010-2022. Specifically, incorporating the monthly supply of new homes into a VAR model with house price growth reduces the RMSE by over 30 percent compared to a univariate benchmark. Moreover, forecasting accuracy improves further at a longer forecast horizon (greater than three months) when the mortgage rate spread is also used as a predictor. Further improvements are made if "Direct" forecasts are used instead of iterative forecasts. The shrinkage method like LASSO shows that the monthly supply of new homes is an important predictor at all forecasting horizons, while the mortgage spread is most relevant for longer forecast horizons.

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预测房价:基本面的作用,信贷条件,和供应指标
本文评估了与宏观经济基本面、信贷条件和住房供应相关的各种指标预测后金融危机时期美国房价增长的能力。我们发现,纳入不同的住房供应指标显著改善了2010-2022年期间的预测绩效。具体来说,与单变量基准相比,将每月新房供应量纳入具有房价增长的VAR模型可将RMSE降低30%以上。此外,当抵押贷款利率息差也被用作预测指标时,在较长的预测范围内(大于三个月),预测准确性进一步提高。如果使用“直接”预测而不是迭代预测,则会进一步改进。像LASSO这样的收缩方法表明,在所有预测范围内,每月新屋供应量都是一个重要的预测指标,而抵押贷款息差与更长的预测范围最相关。
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