Retrieval-Enhanced Real Estate Appraisal
This work addresses the selection of comparables in real estate appraisal, an incremental improvement for automated valuation models.
The study tackled the problem of selecting comparable properties for real estate appraisal using the Sales Comparison Approach, demonstrating that learning a selection policy improves selection over state-of-the-art algorithms and enables models with fewer comparables and parameters while maintaining competitive performance across datasets in the US, Brazil, and France.
The Sales Comparison Approach (SCA) is one of the most popular when it comes to real estate appraisal. Used as a reference in real estate expertise and as one of the major types of Automatic Valuation Models (AVM), it recently gained popularity within machine learning methods. The performance of models able to use data represented as sets and graphs made it possible to adapt this methodology efficiently, yielding substantial results. SCA relies on taking past transactions (comparables) as references, selected according to their similarity with the target property's sale. In this study, we focus on the selection of these comparables for real estate appraisal. We demonstrate that the selection of comparables used in many state-of-the-art algorithms can be significantly improved by learning a selection policy instead of imposing it. Our method relies on a hybrid vector-geographical retrieval module capable of adapting to different datasets and optimized jointly with an estimation module. We further show that the use of carefully selected comparables makes it possible to build models that require fewer comparables and fewer parameters with performance close to state-of-the-art models. All our evaluations are made on five datasets which span areas in the United States, Brazil, and France.