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MugRep: A Multi-Task Hierarchical Graph Representation Learning Framework for Real Estate Appraisal

About

Real estate appraisal refers to the process of developing an unbiased opinion for real property's market value, which plays a vital role in decision-making for various players in the marketplace (e.g., real estate agents, appraisers, lenders, and buyers). However, it is a nontrivial task for accurate real estate appraisal because of three major challenges: (1) The complicated influencing factors for property value; (2) The asynchronously spatiotemporal dependencies among real estate transactions; (3) The diversified correlations between residential communities. To this end, we propose a Multi-Task Hierarchical Graph Representation Learning (MugRep) framework for accurate real estate appraisal. Specifically, by acquiring and integrating multi-source urban data, we first construct a rich feature set to comprehensively profile the real estate from multiple perspectives (e.g., geographical distribution, human mobility distribution, and resident demographics distribution). Then, an evolving real estate transaction graph and a corresponding event graph convolution module are proposed to incorporate asynchronously spatiotemporal dependencies among real estate transactions. Moreover, to further incorporate valuable knowledge from the view of residential communities, we devise a hierarchical heterogeneous community graph convolution module to capture diversified correlations between residential communities. Finally, an urban district partitioned multi-task learning module is introduced to generate differently distributed value opinions for real estate. Extensive experiments on two real-world datasets demonstrate the effectiveness of MugRep and its components and features.

Weijia Zhang, Hao Liu, Lijun Zha, Hengshu Zhu, Ji Liu, Dejing Dou, Hui Xiong• 2021

Related benchmarks

TaskDatasetResultRank
Spatiotemporal forecastingMianyang 500 (train)
MAE0.982
12
Spatiotemporal forecastingZhuhai 20 Instances (train)
MAE6.95
12
Spatiotemporal forecastingZhuhai (train)
MAE3.03
12
Spatiotemporal forecastingShaoxing 20 Instances (train)
MAE3.316
12
Spatiotemporal forecastingMianyang 100 (train)
MAE1.451
12
Spatiotemporal forecastingShaoxing 100 Instances (train)
MAE3.005
12
Spatiotemporal forecastingShaoxing (train)
MAE2.682
12
Spatiotemporal forecastingZhuhai 100 (train)
MAE5.89
12
Spatiotemporal forecastingMianyang 20 (train)
MAE1.771
12
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