A user preference-based top-K ranking approach for XML query results

Xiaoyan Zhang, Xiangfu Meng
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Abstract

Queries against the large size XML database are often exploratory and users often find their queries return too many answers, this paper proposed a user preference-based top-k ranking approach to deal with this “information overload” problem. We first presented a user preference model which can embody both the partial relations and the interest degree of preferences. And then, the elements orders of XML database are created by considering the user preferences and consequently the representative orders are computed by using the clustering algorithm during the offline step. Finally, based on representative orders selected in the offline time, the the Top-k result elements are selected by using TA algorithm during the online processing step. The efficiency and effectiveness are demonstrated by the experiments.
基于用户偏好的XML查询结果top-K排序方法
针对大型XML数据库的查询通常是探索性的,用户经常发现他们的查询返回太多的答案,本文提出了一种基于用户偏好的top-k排序方法来处理这种“信息过载”问题。首先提出了一个既能体现偏好的部分关系又能体现偏好的兴趣度的用户偏好模型。然后,根据用户偏好创建XML数据库的元素顺序,然后在离线步骤中使用聚类算法计算具有代表性的顺序。最后,根据离线时间选择的代表性订单,在在线处理步骤中使用TA算法选择Top-k结果元素。实验证明了该方法的有效性和有效性。
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