基于决策树的空间数据库查询结果分类方法

Xiangfu Meng, Xiaoyan Zhang, Jinguang Sun, Lin Li, Changzheng Xing, Chongchun Bi
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引用次数: 0

摘要

空间数据库查询通常是探索性的。用户经常发现他们的查询返回了太多的答案,其中许多可能是不相关的。基于空间对象之间的耦合关系,提出了一种新的分类方法,分为两个步骤。首先通过考虑空间对象之间的位置接近性和语义相似度,分析空间对象的耦合关系,然后在空间对象上生成一组聚类,每个聚类代表一种用户需求类型。当用户发出空间查询时,第二步向用户呈现一棵类别树,该类别树是在聚类上使用改进的C4.5决策树算法生成的,用户可以通过搜索树的中间节点上分配的标签,方便地选择符合自己需求的查询结果子集。实验表明,本文提出的空间目标聚类方法能够有效地捕获空间目标之间的语义相关性和位置相关性。最后,验证了该分类算法的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Decision Tree-Based Approach for Categorizing Spatial Database Query Results
Spatial database queries are often exploratory. The users often find that their queries return too many answers and many of them may be irrelevant. Based on the coupling relationships between spatial objects, this paper proposes a novel categorization approach which consists of two steps. The first step analyzes the spatial object coupling relationship by considering the location proximity and semantic similarity between spatial objects, and then a set of clusters over the spatial objects can be generated, where each cluster represents one type of user need. When a user issues a spatial query, the second step presents to the user a category tree which is generated by using modified C4.5 decision tree algorithm over the clusters such that the user can easily select the subset of query results matching his/her needs by exploring the labels assigned on intermediate nodes of the tree. The experiments demonstrate that our spatial object clustering method can efficiently capture both the semantic and location correlations between spatial objects. The effectiveness and efficiency of the categorization algorithm is also demonstrated.
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