LG-ERM: An Entity-Level Ranking Mechanism for Deep Web Query

Yue Kou, Derong Shen, Ge Yu, Tiezheng Nie
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引用次数: 4

Abstract

With the rapid growth of Web databases, it's necessary to extract and integrate large-scale data available in deep Web automatically. But current Web search engines conduct page-level ranking, which are becoming inadequate for entity-oriented vertical search. In this paper, we present an entity-level ranking mechanism called LG-ERM for deep Web query based on local scoring and global aggregation. Unlike traditional approaches, LG-ERM considers more rank influencing factors including the uncertainty of entity extraction, the style information of entities and the importance of Web sources, as well as the entity relationship. By combining local scoring and global aggregation in ranking, the query result can be more accurate and effective to meet users' needs. The experiments demonstrate the feasibility and effectiveness of the key techniques of LG-ERM.
深度网络查询的实体级排序机制
随着Web数据库的快速增长,需要对深度Web中的大规模数据进行自动提取和集成。但是当前的Web搜索引擎进行页面级排名,这对于面向实体的垂直搜索来说已经变得不够了。本文提出了一种基于局部评分和全局聚合的深度Web查询实体级排序机制LG-ERM。与传统方法不同,LG-ERM考虑了更多的影响因素,包括实体抽取的不确定性、实体的样式信息和Web源的重要性,以及实体之间的关系。将局部评分和全局聚合结合起来进行排序,可以使查询结果更加准确有效,满足用户的需求。实验证明了LG-ERM关键技术的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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