Real estate appraisal is a crucial issue for urban applications, which aims to value the properties on the market. Traditional methods perform appraisal based on the domain knowledge, but suffer from the efforts of hand-crafted design. Recently, several methods have been developed to automatize the valuation process by taking the property trading transaction into account when estimating the property value. However, existing methods only consider the real estate itself, ignoring the relation between the properties. Moreover, naively aggregating the information of neighbors fails to model the relationships between the transactions. To tackle these limitations, we propose a novel Neighbor Relation Graph Learning Framework (ReGram) by incorporating the relation between target transaction and surrounding neighbors with the attention mechanism. To model the influence between communities, we integrate the environmental information and the past price of each transaction from other communities. Moreover, since the target transactions in different regions share some similarities and differences of characteristics, we introduce a dynamic adapter to model the different distributions of the target transactions based on the input-related kernel weights. Extensive experiments on the real-world dataset with various scenarios demonstrate that ReGram robustly outperforms the state-of-the-art methods. Furthermore, comprehensive ablation studies were conducted to examine the effectiveness of each component in ReGram.
翻译:对城市应用来说,房地产评估是一个至关重要的问题,城市应用的目的是估价市场中的地产。传统方法根据领域知识进行评估,但受到手工设计设计的努力的影响。最近,开发了几种方法,通过在估计地产价值时考虑地产交易,使估价过程自动化;然而,现有方法只考虑地产本身,忽视地产之间的关系。此外,天真地汇集邻国的信息无法模拟交易之间的关系。为了解决这些限制,我们提议采用一个新的“邻里关系图表学习框架(ReGram)”,将目标交易与周围邻居的关系纳入关注机制。为了模拟社区之间的影响力,我们综合了环境信息和其他社区交易的过去价格。此外,由于不同区域的目标交易具有一些相似性和不同的特点,我们引入了一种动态的调整器,以模拟基于与投入相关的内核重量的目标交易的不同分布。对真实世界数据集进行的广泛实验,通过将各种情景结合将目标交易与周围的邻居之间的关系纳入关注机制。为了模拟社区之间的影响力,我们把环境信息与其他社区之间的过去价格结合起来。此外,由于不同区域的目标交易有某些相似性和不同的特点,我们引入一种动态的模型来模拟,根据投入的内核质的重量,对Regram的每个组成部分的每个方法进行了全面的研究。