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Estimating Real Estate Value-at-Risk Using Wavelet Denoising and Time Series Model

机译:利用小波去噪和时间序列模型估算房地产风险价值

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摘要

As the real estate market develops rapidly and is increasingly securitized, it has become an important investment asset in the portfolio design. Thus the measurement of its market risk exposure has attracted attentions from academics and industries due to its peculiar behavior and unique characteristics such as heteroscedasticity and multi scale heterogeneity in its risk and noise evolution etc. This paper proposes the wavelet denoising ARMA-GARCH approach for measuring the market risk level in the real estate sector. The multi scale heterogeneous noise level is determined in the level dependent manner in wavelet analysis. The autocorrelation and heteroscedasticity characteristics for both data and noises are modeled in the ARMA-GARCH framework. Experiment results in Chinese real estate market suggest that the proposed methodology achieves the superior performance by improving the reliability of VaR estimated upon those from traditional ARMA-GARCH approach.
机译:随着房地产市场的快速发展和日益证券化,它已成为投资组合设计中的重要投资资产。因此,由于其独特的行为以及风险和噪声演变等方面的异方差和多尺度异质性等独特特征,其市场风险敞口的度量已引起了学术界和行业的关注。房地产行业的市场风险水平。在小波分析中以电平相关的方式确定多尺度异类噪声电平。数据和噪声的自相关和异方差特性在ARMA-GARCH框架中建模。在中国房地产市场的实验结果表明,所提出的方法通过提高基于传统ARMA-GARCH方法估计的VaR的可靠性,从而获得了优异的性能。

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