Real Estate Query Algorithm Based on User Preference

Keyan Cao, Gongjie Meng, Yukuan Dong, Qiushi Wang
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Abstract

In recent years, as the quality of life has improved, people’s demand for housing has become more refined, and many Internet housing query platforms and query algorithms have emerged. This paper proposes a real estate query algorithm based on user preferences. In order to reduce the cost of time and space in the query process, an index structure that adds a distance factor and a subtree of house hierarchical clustering is proposed—HCIR-Tree (Hierarchical Clustering Information R-Tree) index tree. In order to improve the query efficiency of the houses to which the real estate belongs, a real estate hierarchical clustering subtree is established at the leaf node where the real estate is located. Through a large number of experiments, the query performance of the algorithm proposed in this paper is verified.
基于用户偏好的房地产查询算法
近年来,随着生活质量的提高,人们对住房的需求更加细化,出现了许多互联网住房查询平台和查询算法。提出了一种基于用户偏好的房产查询算法。为了降低查询过程中的时间和空间成本,提出了一种添加距离因子和房屋分层聚类子树的索引结构——hir - tree (hierarchical clustering Information R-Tree)索引树。为了提高房产所属房屋的查询效率,在房产所在的叶节点上建立了房产分层聚类子树。通过大量实验,验证了本文算法的查询性能。
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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