Integrating Floor Plans into Hedonic Models for Rent Price Appraisal
Kirill Solovev, Nicolas Pr\"ollochs

TL;DR
This paper demonstrates that analyzing apartment floor plans through deep learning significantly improves rent price predictions, reducing errors by up to 10.56%, especially for older and smaller units.
Contribution
It introduces a novel two-stage deep learning approach to incorporate visual floor plan analysis into hedonic rent price models, enhancing valuation accuracy.
Findings
Floor plan design has significant explanatory power for rent prices.
Incorporating floor plans reduces prediction error by up to 10.56%.
Greater gains are observed for older and smaller apartments.
Abstract
Online real estate platforms have become significant marketplaces facilitating users' search for an apartment or a house. Yet it remains challenging to accurately appraise a property's value. Prior works have primarily studied real estate valuation based on hedonic price models that take structured data into account while accompanying unstructured data is typically ignored. In this study, we investigate to what extent an automated visual analysis of apartment floor plans on online real estate platforms can enhance hedonic rent price appraisal. We propose a tailored two-staged deep learning approach to learn price-relevant designs of floor plans from historical price data. Subsequently, we integrate the floor plan predictions into hedonic rent price models that account for both structural and locational characteristics of an apartment. Our empirical analysis based on a unique dataset of…
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Taxonomy
TopicsHousing Market and Economics
