使用时间编码建模房地产动态

Chen Jiang, Jingjing Li, Wenlu Wang, Wei-Shinn Ku
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引用次数: 4

摘要

深度学习以各种方式帮助现代生活。一个例子是,准确的经济预测有助于人们更好地配置和分配他们的资源。在美国,房价在COVID-19大流行期间一直在加速上涨,2021年3月比去年上涨了13.3%。房地产市场预测对于购房者和投资者做出明智的决策至关重要。在某些情况下,对房价的准确预测在帮助决策者减少金融错误方面比平时更重要。在本文中,我们引入了一个大规模的房地产相关数据集来进行价值预测任务。它由Zillow1的数字房地产价格历史数据和人口普查局公共数据集的调查数据组成。我们的目标是利用不同层次的数据,用时间和非时间数据对房地产动态建模。我们建议使用变压器嵌入时序时间特征,并将它们与非时序特征结合起来用于后续的预测任务,并使用不同数量的类L{2,3,4,5}进行评估。例如,当L = 2时,我们提出的模型的预测精度达到了93.5%,当L = 3时,我们提出的模型的预测精度达到了90.1%。结果表明,所提出的模型总体上优于所有基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Real Estate Dynamics Using Temporal Encoding
Deep learning has assisted modern life in various ways. One example is that accurate economic prediction helps people better allocate and distribute their resources. In the U.S., home prices have been accelerating during the COVID-19 pandemic and climbed 13.3% in March 2021 from the previous year. Real estate market prediction is critical for home buyers and investors to make wise decisions. In some circumstances, accurate predictions on home prices are more important than usual in helping decision-makers to reduce financial mistakes. In this paper, we introduce a large-scale real estate-related dataset for the value prediction task. It consists of numerical real estate price history data from Zillow1 and survey data from Census Bureau public dataset. Our goal is to utilize data from different levels to model the real-estate dynamics with temporal and non-temporal data. We propose to embed sequential temporal features using a transformer and combine them with non-temporal features for subsequent prediction tasks, and evaluate using a different number of classes L ϵ {2, 3, 4, 5}. As an example, when L = 2, we have achieved 93.5% accuracy with our proposed model, and when L = 3, our proposed model has achieved 90.1% prediction accuracy. The results suggest that the proposed model overall outperforms all the baseline models.
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