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Modeling of Geographic Dependencies for Real Estate Ranking on Site Selection

机译:选址中房地产排名的地理依存关系建模

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With the development of new ways of collecting estate-related mobile data, there is a potential to leverage geographic dependencies of estates for enhancing estate appraisal. Indeed, the geographic dependencies of the investment value of an estate can be from the characteristics of its own neighborhood (individual), the values of its nearby estates (peer), and the prosperity of the affiliated latent business area (zone). To this end, in this dissertation, we propose a geographic method, named ClusRanking, for estate appraisal by leveraging the mutual enforcement of ranking and clustering power. ClusRanking is able to exploit geographic individual, peer, and zone dependencies in a probabilistic ranking model. Specifically, we first extract the geographic utility of estates from geography data, estimate the neighborhood popularity of estates by mining taxicab trajectory data, and model the influence of latent business areas. Also, we fuse these three influential factors and predict real estate investment value. Moreover, we simultaneously consider individual, peer and zone dependencies, and derive an estate-specific ranking likelihood as the objective function. Furthermore, we propose an improved method named CR-ClusRanking by incorporating checkin information as a regularization term which reduces the performance volatility of estate ranking system. Finally, we conduct a comprehensive evaluation with the real estate related data of Beijing, and the experimental results demonstrate the effectiveness of our proposed methods.
机译:随着收集遗产相关移动数据的新方法的发展,有可能利用遗产的地理依赖性来增强遗产评估。实际上,房地产投资价值的地域依赖性可以来自其自身社区(个体)的特征,其附近房地产的价值(对等)以及相关的潜在业务区域(区域)的繁荣。为此,本文提出了一种地理方法,即ClusRanking,该方法利用等级和聚类力的相互强制作用进行房地产评估。 ClusRanking能够在概率排名模型中利用地理上的个人,同伴和区域依赖性。具体来说,我们首先从地理数据中提取房地产的地理效用,通过挖掘出租车的轨迹数据来估计房地产在社区中的受欢迎程度,并对潜在业务区域的影响进行建模。此外,我们融合了这三个影响因素,并预测房地产投资价值。此外,我们同时考虑了个人,同伴和区域的依赖性,并得出了特定于房地产的排名可能性作为目标函数。此外,我们提出了一种改进的方法,称为CR-ClusRanking,它通过将签入信息作为正则化项进行合并,从而降低了房地产排名系统的性能波动性。最后,我们利用北京的房地产相关数据进行了综合评估,实验结果证明了所提出方法的有效性。

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