结合已实现指标预测房地产投资信托基金波动

IF 1.3 Q3 BUSINESS, FINANCE Journal of European Real Estate Research Pub Date : 2020-06-29 DOI:10.1108/jerer-03-2020-0021
Jian Zhou
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引用次数: 7

摘要

本研究旨在表明,在预测房地产投资信托基金(REIT)波动时,不同市场表现最佳的已实现指标有所不同。这一发现对从业者在面对新市场时使用哪一种方法提供了很少的指导。作者试图通过寻找一个可以研究不同市场的通用估计量来填补这一空白。设计/方法/方法作者通过借鉴一般预测文献来做到这一点,这些文献发现,个人预测的组合往往比最好的个人预测表现更好。作者首先介绍了一些常用的实现措施,然后考虑了几种不同的组合策略。作者将所有单项指标及其不同组合应用于全球三个主要房地产投资信托基金市场(澳大利亚、英国和美国)。研究结果表明,在研究的三个市场中,基于回归的组合的无约束和约束版本始终名列最佳预测者之列。包括三个简单的组合和所有的单独测量,他们的同龄人都做不到。结论对评价指标和样本外评价期的选择具有鲁棒性。独创性/价值该研究为实践者提供了如何预测REIT波动的易于遵循的见解,即使用基于回归的个人已实现指标组合。该研究还扩展了使用高频数据来检查房地产投资信托基金波动性的薄弱房地产文献。
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Combining realized measures to forecast REIT volatility
Purpose This study aims to show that the best-performing realized measures vary across markets when it comes to forecast real estate investment trust (REIT) volatility. This finding provides little guidance for practitioners on which one to use when facing a new market. The authors attempt to fill the hole by seeking a common estimator, which can study for different markets. Design/methodology/approach The authors do so by drawing upon the general forecasting literature, which finds that combinations of individual forecasts often outperform even the best individual forecast. The authors carry out the study by first introducing a number of commonly used realized measures and then considering several different combination strategies. The authors apply all of the individual measures and their different combinations to three major global REIT markets (Australia, UK and US). Findings The findings show that both unconstrained and constrained versions of the regression-based combinations consistently rank among the group of best forecasters across the three markets under study. None of their peers can do it including the three simple combinations and all of the individual measures. The conclusions are robust to the choice of evaluation metrics and of the out-of-sample evaluation periods. Originality/value The study provides practitioners with easy-to-follow insights on how to forecast REIT volatility, that is, use a regression-based combination of individual realized measures. The study has also extended the thin real estate literature on using high-frequency data to examine REIT volatility.
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来源期刊
CiteScore
3.10
自引率
7.70%
发文量
18
期刊最新文献
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