A LSTM and Graph CNN Combined Network for Community House Price Forecasting

Chuancai Ge
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引用次数: 6

Abstract

Community house price forecasting has been a livelihood issue for the governments and the residents, and accurate forecast of real estimate price is so important to urban planning as well as house-purchase suggestions. However, the price of residential communities involving many aspects including economic factors, community attributes and time series trend. What's more, in this paper, we take spatial dependence among communities into account, which is hard to capture in city-level. Finally, we propose a novel deep network framework to integrate all the aspects and model the spatial-temporal patterns for community house price forecasting.
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基于LSTM和Graph CNN的社区房价预测网络
社区房价预测一直是困扰政府和居民的民生问题,准确预测实际预估价格对城市规划和购房建议都具有重要意义。然而,住宅小区价格涉及经济因素、社区属性和时间序列趋势等诸多方面。此外,本文还考虑了社区间的空间依赖关系,这在城市层面是很难捕捉到的。最后,我们提出了一个新的深度网络框架来整合各个方面,并对社区房价预测的时空模式进行建模。
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