房价的外推时间序列模型:以澳大利亚悉尼为例

S. Herath, V. Mangioni, S. Shi, X. Ge
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引用次数: 0

摘要

目的房价波动向经济的许多领域发出了重要信号,政府和房地产开发商对房价的长期预测非常感兴趣。尽管基于经济基本面的预测模型被广泛使用,但对此类研究的共同要求是基础数据是稳定的。本文旨在证明替代过滤方法在预测房价方面的有用性。设计/方法/方法我们特别关注1994年第三季度至2017年第一季度悉尼房价中值的指数平滑、趋势调整和乘法分解。使用样本外预测技术和针对二次数据源的稳健性检查来评估模型性能。Findings乘法分解在预测精度上优于指数平滑。高级分解模型表明,季节性和周期性成分为预测房价提供了重要的额外信息。2017年至2028年的预测表明,公寓市场的价格将缓慢上涨,到2020年将超过2016年的水平,到2022/2023年将超过独立住房市场的水平。研究局限性/含义我们证明,过滤模型简单(只需要历史房价的单变量模型),易于实施(没有平稳性条件),广泛应用于金融交易、体育博彩和其他领域,在这些领域,产生准确的预测比解释变化的驱动因素更重要。本文提出了一个将过滤模型纳入预测工具包的案例,作为比较替代模型预测的有用参考点。原创性/价值据作者所知,本文首次对悉尼住房市场的两个过滤模型进行了系统比较。
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Extrapolative time-series modelling of house prices: a case study from Sydney, Australia
Purpose House price fluctuations send vital signals to many parts of the economy, and long-term predictions of house prices are of great interest to governments and property developers. Although predictive models based on economic fundamentals are widely used, the common requirement for such studies is that underlying data are stationary. This paper aims to demonstrate the usefulness of alternative filtering methods for forecasting house prices. Design/methodology/approach We specifically focus on exponential smoothing with trend adjustment and multiplicative decomposition using median house prices for Sydney from Q3 1994 to Q1 2017. The model performance is evaluated using out-of-sample forecasting techniques and a robustness check against secondary data sources. Findings Multiplicative decomposition outperforms exponential smoothing at forecasting accuracy. The superior decomposition model suggests that seasonal and cyclical components provide important additional information for predicting house prices. The forecasts for 2017–2028 suggest that prices will slowly increase, going past 2016 levels by 2020 in the apartment market and by 2022/2023 in the detached housing market. Research limitations/implications We demonstrate that filtering models are simple (univariate models that only require historical house prices), easy to implement (with no condition of stationarity) and widely used in financial trading, sports betting and other fields where producing accurate forecasts is more important than explaining the drivers of change. The paper puts forward a case for the inclusion of filtering models within the forecasting toolkit as a useful reference point for comparing forecasts from alternative models. Originality/value To the best of the authors’ knowledge, this paper undertakes the first systematic comparison of two filtering models for the Sydney housing market.
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CiteScore
2.80
自引率
29.40%
发文量
68
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