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Liquidity and prices: A cluster analysis of the German residential real estate market

机译:流动性和价格:德国住宅房地产市场的集群分析

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This paper analyses the highly under-researched German residential real estate market. Quality- and spatial-adjusted price and liquidity indices are calculated separately for the investment and rental market on a regional basis. Applying the "Partitioning Around Medoids (RAM)" clustering algorithm, the regions are clustered with respect to their price and liquidity development after the average silhouette method is applied to find the optimal number of clusters. The dataset underlying this analysis comprises more than 4.5 million observations in 380 German regions from 2013 Ql to 2018 Q4. The clusters are then analysed by means of further economic and socioeco-nomic data in order to identify similarities. Furthermore, the clusters are interpreted from a geographic perspective. We find that the allocation to cluster 1 is always supported by higher growth rates in the variables, population, working population and real GDP, implying higher demand for space. Moreover, in each of the analysed categories cluster 1 reveals a lower unemployment rate as well as a higher disposable income. One of the most interesting implications is, that apparently a large part of the German population has developed into professional real estate investors. In Germany the largest share of landlords is the one of the so-called non-professional landlords. As the regions assigned to cluster 1, displaying the most significant price increase, seem to be chosen based on a very sophisticated market analysis by identifying the regions with the strongest fundamental data, it seems like the dominating market players have significantly increased their knowledge and approach for investing in residential real estate.
机译:本文分析了高度研究的德国住宅房地产市场。质量和空间调整价格和流动性指数在区域基础上单独计算投资和租赁市场。在应用平均轮廓方法以找到最佳簇之后,将区域应用于聚类算法的“左右谱系(RAM)”聚类算法,该区域被聚类为其价格和流动性开发。该分析的数据集包括2013年Q1至2018年Q4的380个德国地区的450多万观察。然后通过进一步的经济和社会遗传资料数据分析群集以识别相似性。此外,群集被解释为从地理角度解释。我们发现群集1的分配总是通过更高的变量,人口,工作人口和真实GDP的增长率来支持,这意味着对空间的需求更高。此外,在每个分析的类别中,集群1揭示了较低的失业率以及更高的可支配收入。最有趣的含义之一是,显然德国人口的大部分都已经发展成为专业的房地产投资者。在德国,房东的最大份额是所谓的非专业房东之一。由于分配给集群1的区域,展示最显着的价格增加,似乎是通过识别具有最强基本数据的地区的非常复杂的市场分析,看起来主导的市场参与者显着提高了他们的知识和方法用于投资住宅房地产。

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