Using Machine Learning to Evaluate Real Estate Prices Using Location Big Data
Walter Coleman, Ben Johann, Nicholas Pasternak, Jaya Vellayan, Natasha, Foutz, Heman Shakeri

TL;DR
This paper explores using mobile location data combined with static census features to improve real estate price prediction models, achieving a 3% reduction in mean squared error over models without dynamic data.
Contribution
It introduces a novel approach of integrating dynamic mobile location data with static features in real estate valuation models, enhancing predictive accuracy.
Findings
Dynamic mobile location data improves model accuracy by 3%.
Stacked random forest with ridge regression effectively combines static and dynamic features.
Mobile data integration offers a promising direction for real estate valuation.
Abstract
With everyone trying to enter the real estate market nowadays, knowing the proper valuations for residential and commercial properties has become crucial. Past researchers have been known to utilize static real estate data (e.g. number of beds, baths, square footage) or even a combination of real estate and demographic information to predict property prices. In this investigation, we attempted to improve upon past research. So we decided to explore a unique approach: we wanted to determine if mobile location data could be used to improve the predictive power of popular regression and tree-based models. To prepare our data for our models, we processed the mobility data by attaching it to individual properties from the real estate data that aggregated users within 500 meters of the property for each day of the week. We removed people that lived within 500 meters of each property, so each…
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Taxonomy
TopicsHousing Market and Economics
