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Attention-based multi-modal fusion for improved real estate appraisal: a case study in Los Angeles

机译:基于注意力的多模式融合改善房地产评估:洛杉矶的案例研究

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摘要

The geographical presentation of a house, which refers to the sightseeing and topography near the house, is a critical factor to a house buyer. The street map is a type of common data in our daily life, which contains natural geographical presentation. This paper sources real estate data and corresponding street maps of houses in the city of Los Angeles. In the case study, we proposed an innovative method, attention-based multi-modal fusion, to incorporate the geographical presentation from street maps into the real estate appraisal model with a deep neural network. We firstly combine the house attribute features and street map imagery features by applying the attention-based neural network. After that, we apply boosted regression trees to estimate the house price from the fused features. This work explored the potential of attention mechanism and data fusion in the applications of real estate appraisal. The experimental results indicate the competitiveness of proposed method among state-of-the-art methods.
机译:房屋的地理位置表示房屋附近的观光和地形,对购房者来说是至关重要的因素。街道地图是我们日常生活中的一种常见数据,其中包含自然的地理呈现。本文提供了洛杉矶市的房地产数据和相应的房屋街道地图。在案例研究中,我们提出了一种创新的方法,即基于注意力的多模式融合,该方法将来自街道地图的地理表示形式结合到具有深度神经网络的房地产评估模型中。我们首先通过应用基于注意力的神经网络将房屋属性特征与街道地图图像特征相结合。之后,我们应用增强的回归树从融合特征中估算房价。这项工作探索了注意机制和数据融合在房地产评估应用中的潜力。实验结果表明了该方法在最新方法中的竞争力。

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