Research and Design of Big Data Relevance Analysis System for Land Development Industry Chain

X. Xie, Jingyi Shen, Yifan Zhao, R. Yang
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引用次数: 1

Abstract

In the land development industry chain, there are a variety of data, such as land transaction data, building sales data, developer data, etc. These data are relatively scattered, difficult to aggregate and share, unable to play the hidden value of the data. This paper presents an improved algorithm for Chinese address segmentation, and based on this algorithm, the entity linking algorithm of building and land is proposed, which correlates a large number of discrete building data with land data, and finally, the entity link algorithm is applied to the big data association analysis system as the service of the association analysis subsystem, and the analysis results are visualized through the client and server. The results show that the system can correlate a large number of isolated building and land, effectively correlate and integrate discrete data, and has good data analysis ability, which provides a strong support for enterprises and users to make decisions.
土地开发产业链大数据关联分析系统研究与设计
在土地开发产业链中,有各种各样的数据,如土地交易数据、楼宇销售数据、开发商数据等。这些数据相对分散,难以聚合和共享,无法发挥数据的隐藏价值。本文提出了一种改进的中文地址分割算法,并在此算法的基础上提出了建筑与土地的实体链接算法,将大量离散的建筑数据与土地数据进行关联,最后将实体链接算法作为关联分析子系统的服务应用于大数据关联分析系统,并通过客户端和服务器端实现分析结果的可视化。结果表明,该系统能够关联大量孤立的建筑和土地,有效关联和整合离散数据,具有良好的数据分析能力,为企业和用户决策提供有力支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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