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A spatio-temporal, Gaussian process regression, real-estate price predictor
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A spatio-temporal, Gaussian process regression, real-estate price predictor

Henry Crosby, Paul Davis, Theo Damoulas and Stephen A. Jarvis
Proceedings of the 24th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems, pp.1-4
ACM Other Conferences
SIGSPATIAL'16: 24th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems
31/10/2016

Abstract

Gaussian process regression space time cube machine learning real estate valuation universal kriging
This paper introduces a novel four-stage methodology for real-estate valuation. This research shows that space, property, economic, neighbourhood and time features are all contributing factors in producing a house price predictor in which validation shows a 96.6% accuracy on Gaussian Process Regression beating regression-kriging, random forests and an M5P-decision-tree. The output is integrated into a commercial real estate decision engine.

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