Towards a Better Uncertainty Quantification in Automated Valuation Models
Arne Johan Pollestad,
Arild Brandrud Næss,
Are Oust
Abstract:This study introduces a novel framework for quantifying prediction uncertainty in automated valuation models (AVMs), crucial tools in modern real estate finance. While non-linear AVMs excel in predictive performance, their limited methods for assessing prediction uncertainty reduces reliability and practical utility. We address this gap by proposing an approach for quantifying the uncertainty associated with predicted house prices and by introducing a model-specific AVM uncertainty estimate (AVMU) for AVM comp… Show more
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