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• Explainable ML is a practical diagnostic complement to hedonic pricing models. • Tree-based models improve out-of-sample R 2 by 0.10–0.35 over linear baselines. • SHAP yields spatially explicit, dollar-valued insights for non-linear thresholds. • Continuous distance gradients reveal income-differentiated proximity premiums. • Diagnostics inform TOD zoning, appraisals, and targeted anti-displacement policies.
Noh et al. (Wed,) studied this question.