TY - JOUR TI - Estimating and explaining regional land value distribution using attention-enhanced deep generative models KW - Land price estimation KW - Generative adversarial networks (GAN) KW - Generative artificial intelligence (generative KW - AI) KW - Deep learning KW - Attention mechanism KW - Deep generative models UR - http://dx.doi.org/10.1016/j.compind.2024.104103 PB - ELSEVIER VL - 159-16 Y1 - 2024/08// A1 - Jiang, F A1 - Ma, J A1 - Webster, CJ A1 - Chen, W A1 - Wang, W N2 - Accurate land valuation is crucial in sustainable urban development, influencing pivotal decisions on resource allocation and land-use strategies. Most existing studies, primarily using point-based modeling approaches, face challenges on granularity, generalizability, and spatial effect capturing, limiting their effectiveness in regional land valuation with high granularity. This study therefore proposes the LVGAN (i.e., land value generative adversarial networks) framework for regional land value estimation. The LVGAN model redefines land valuation as an image generation task, employing deep generative techniques combined with attention mechanisms to forecast high-resolution relative value distributions for informed decision-making. Applied to a case study of New York City (NYC), the LVGAN model outperforms typical deep generative methods, with MAE (Mean Absolute Error) and MSE (Mean Squared Error) averagely reduced by 36.58 % and 59.28 %, respectively. The model exhibits varied performance across five NYC boroughs and diverse urban contexts, excelling in Manhattan with limited value variability, and in areas characterized by residential zoning and high density. It identifies influential factors such as road network, built density, and land use in determining NYC land valuation. By enhancing data-driven decision-making at early design stages, the LVGAN model can promote stakeholder engagement and strategic planning for sustainable and well-structured urban environments. AV - restricted EP - 18 JF - Computers in Industry N1 - This version is the author accepted manuscript. For information on re-use, please refer to the publisher's terms and conditions. ID - discovery10194930 ER -