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Towards Explainable Real Estate Valuation via Evolutionary Algorithms

Authors :
Angrick, Sebastian
Bals, Ben
Hastrich, Niko
Kleissl, Maximilian
Schmidt, Jonas
Doskoč, Vanja
Katzmann, Maximilian
Molitor, Louise
Friedrich, Tobias
Publication Year :
2021

Abstract

Human lives are increasingly influenced by algorithms, which therefore need to meet higher standards not only in accuracy but also with respect to explainability. This is especially true for high-stakes areas such as real estate valuation. Unfortunately, the methods applied there often exhibit a trade-off between accuracy and explainability. One explainable approach is case-based reasoning (CBR), where each decision is supported by specific previous cases. However, such methods can be wanting in accuracy. The unexplainable machine learning approaches are often observed to provide higher accuracy but are not scrutable in their decision-making. In this paper, we apply evolutionary algorithms (EAs) to CBR predictors in order to improve their performance. In particular, we deploy EAs to the similarity functions (used in CBR to find comparable cases), which are fitted to the data set at hand. As a consequence, we achieve higher accuracy than state-of-the-art deep neural networks (DNNs), while keeping interpretability and explainability. These results stem from our empirical evaluation on a large data set of real estate offers where we compare known similarity functions, their EA-improved counterparts, and DNNs. Surprisingly, DNNs are only on par with standard CBR techniques. However, using EA-learned similarity functions does yield an improved performance.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.05116
Document Type :
Working Paper