A Multi-Modal Deep Learning Based Approach for House Price Prediction
Md Hasebul Hasan, Md Abid Jahan, Mohammed Eunus Ali, Yuan-Fang Li and, Timos Sellis

TL;DR
This paper introduces a multi-modal deep learning framework that integrates house features, textual descriptions, geo-spatial data, and images to significantly enhance house price prediction accuracy.
Contribution
It presents a novel multi-modal approach that combines diverse data types into a joint embedding for improved house price prediction accuracy.
Findings
Text and image embeddings improve prediction accuracy
Multi-modal model outperforms traditional methods
Public dataset and code are provided
Abstract
Accurate prediction of house price, a vital aspect of the residential real estate sector, is of substantial interest for a wide range of stakeholders. However, predicting house prices is a complex task due to the significant variability influenced by factors such as house features, location, neighborhood, and many others. Despite numerous attempts utilizing a wide array of algorithms, including recent deep learning techniques, to predict house prices accurately, existing approaches have fallen short of considering a wide range of factors such as textual and visual features. This paper addresses this gap by comprehensively incorporating attributes, such as features, textual descriptions, geo-spatial neighborhood, and house images, typically showcased in real estate listings in a house price prediction system. Specifically, we propose a multi-modal deep learning approach that leverages…
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Taxonomy
TopicsHousing Market and Economics
