DoRA: Domain-Based Self-Supervised Learning Framework for Low-Resource Real Estate Appraisal
Wei-Wei Du, Wei-Yao Wang, Wen-Chih Peng

TL;DR
DoRA is a self-supervised learning framework that leverages domain knowledge and contrastive learning to improve real estate appraisal accuracy in low-resource settings, outperforming existing models.
Contribution
The paper introduces DoRA, a novel SSL framework incorporating geographic prediction and contrastive learning for better property valuation with limited data.
Findings
Significantly outperforms SSL, graph-based, and supervised models in few-shot scenarios.
Achieves at least 7.6% improvement in MAPE, 11.59% in MAE, and 3.34% in HR10.
Effective for different property types with limited transaction data.
Abstract
The marketplace system connecting demands and supplies has been explored to develop unbiased decision-making in valuing properties. Real estate appraisal serves as one of the high-cost property valuation tasks for financial institutions since it requires domain experts to appraise the estimation based on the corresponding knowledge and the judgment of the market. Existing automated valuation models reducing the subjectivity of domain experts require a large number of transactions for effective evaluation, which is predominantly limited to not only the labeling efforts of transactions but also the generalizability of new developing and rural areas. To learn representations from unlabeled real estate sets, existing self-supervised learning (SSL) for tabular data neglects various important features, and fails to incorporate domain knowledge. In this paper, we propose DoRA, a Domain-based…
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Taxonomy
TopicsImbalanced Data Classification Techniques · Housing Market and Economics · Stock Market Forecasting Methods
MethodsMasked autoencoder · Contrastive Learning
