论文标题

使用地理空间网络嵌入来提高房屋价格预测

Boosting House Price Predictions using Geo-Spatial Network Embedding

论文作者

Das, Sarkar Snigdha Sarathi, Ali, Mohammed Eunus, Li, Yuan-Fang, Kang, Yong-Bin, Sellis, Timos

论文摘要

房地产对世界各地的所有主要经济体都有巨大贡献。特别是,房价直接影响利益相关者,从购房者到融资公司。因此,为房地产价格预测开发了大量技术。大多数现有技术都依靠不同的房屋功能来建立各种预测模型来预测房价。考虑到空间依赖对房价的影响,一些后来的作品着重于引入空间回归模型以改善预测性能。但是,他们未能考虑到邻里便利设施的地理空间环境,例如房屋离火车站,高度排名的学校或购物中心。这样的上下文信息可能在用户在房屋中的利益中起着至关重要的作用,从而直接影响其价格。在本文中,我们建议利用图形神经网络的概念来捕获房屋附近的地理空间环境。特别是,我们提出了一种新颖的方法,即地理空间网络嵌入(GSNE),该方法以多目标网络的形式学习了房屋和各种兴趣点(POI)的嵌入,其中房屋和POI被表示为归因的节点及其之间的关系。大量回归技术的广泛实验表明,我们提出的GSNE技术产生的嵌入始终如一,并显着改善了房屋价格预测任务的性能,无论下游回归模型如何。

Real estate contributes significantly to all major economies around the world. In particular, house prices have a direct impact on stakeholders, ranging from house buyers to financing companies. Thus, a plethora of techniques have been developed for real estate price prediction. Most of the existing techniques rely on different house features to build a variety of prediction models to predict house prices. Perceiving the effect of spatial dependence on house prices, some later works focused on introducing spatial regression models for improving prediction performance. However, they fail to take into account the geo-spatial context of the neighborhood amenities such as how close a house is to a train station, or a highly-ranked school, or a shopping center. Such contextual information may play a vital role in users' interests in a house and thereby has a direct influence on its price. In this paper, we propose to leverage the concept of graph neural networks to capture the geo-spatial context of the neighborhood of a house. In particular, we present a novel method, the Geo-Spatial Network Embedding (GSNE), that learns the embeddings of houses and various types of Points of Interest (POIs) in the form of multipartite networks, where the houses and the POIs are represented as attributed nodes and the relationships between them as edges. Extensive experiments with a large number of regression techniques show that the embeddings produced by our proposed GSNE technique consistently and significantly improve the performance of the house price prediction task regardless of the downstream regression model.

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