基于贝叶斯概率模型的城市二手房价格评价体系

Zhaojun Tang, Ping Zhang, Xinjing Qin, Bin Cheng, T. Liu
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引用次数: 0

摘要

将数据挖掘技术应用到房价评估问题中,由于提高了预测精度,近年来受到了广泛的关注。为了便于应用,本文构建了基于区位子市场划分的贝叶斯概率模型的城市二手房价格评价体系。利用房屋位置、周边环境、兴趣点(POI)等城市数据,从网络中抓取二手房交易数据,构建预测模型。它可以帮助用户获取目标房屋的价格,位置,POI信息和特征属性,并查询符合给定要求的合适房屋。系统提供查询结果的可视化显示,并根据查询结果进行演进。
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Urban Second-Hand Housing Price Evaluation System Based on Bayesian Probabilistic Model
Combining data mining technology into housing price evaluation problem has increased great attention in recently years because it improves the prediction accuracy. To facilitate the application, this paper builds an urban secondhand housing price evaluation system based on our Bayesian probabilistic model under location submarket division. Using urban data such as house location, surrounding environment and point of interest (POI) information, a prediction model is constructed based on the second-hand house transaction data crawled from the network. It helps users get the price as well as location, POI information and characteristic attributes of the target house, and query suitable houses meeting some given requirements. The system provides visual display of query results and evolves by using query results.
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