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Systemic risk and spatiotemporal dynamics of the US housing market

机译:美国住房市场的系统风险和时空动态

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摘要

Housing markets play a crucial role in economies and the collapse of a real-estate bubble usually destabilizes the financial system and causes economic recessions. We investigate the systemic risk and spatiotemporal dynamics of the US housing market (1975–2011) at the state level based on the Random Matrix Theory (RMT). We identify richer economic information in the largest eigenvalues deviating from RMT predictions for the housing market than for stock markets and find that the component signs of the eigenvectors contain either geographical information or the extent of differences in house price growth rates or both. By looking at the evolution of different quantities such as eigenvalues and eigenvectors, we find that the US housing market experienced six different regimes, which is consistent with the evolution of state clusters identified by the box clustering algorithm and the consensus clustering algorithm on the partial correlation matrices. We find that dramatic increases in the systemic risk are usually accompanied by regime shifts, which provide a means of early detection of housing bubbles.
机译:房地产市场在经济中起着至关重要的作用,房地产泡沫的破裂通常会破坏金融体系的稳定并导致经济衰退。我们根据随机矩阵理论(RMT)在州一级调查美国住房市场(1975-2011年)的系统风险和时空动态。我们发现,与住房市场相比,与住房市场相比,住房市场的最大特征值偏离RMT预测的经济信息更丰富,并且发现特征向量的组成符号既包含地理信息,也包含房价增长率差异的程度,或两者兼而有之。通过查看特征值和特征向量等不同量的演变,我们发现美国住房市场经历了六个不同的体制,这与通过框聚类算法和共识聚类算法在局部相关性上确定的状态聚类的演化相一致。矩阵。我们发现,系统风险的急剧增加通常伴随着政权转移,这为及早发现住房泡沫提供了一种手段。

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