首页> 外文会议>19th international world wide web conference 2010 >Enabling Entity-Based Aggregators for Web 2.0 data
【24h】

Enabling Entity-Based Aggregators for Web 2.0 data

机译:为Web 2.0数据启用基于实体的聚合器

获取原文

摘要

Selecting and presenting content culled from multiple heterogeneous and physically distributed sources is a challenging task. The exponential growth of the web data in modern times has brought new requirements to such integration systems. Data is not any more produced by content providers alone, but also from regular users through the highly popular Web 2.0 social and semantic web applications. The plethora of the available web content, increased its demand by regular users who could not any more wait the development of advanced integration tools. They wanted to be able to build in a short time their own specialized integration applications. Aggregators came to the risk of these users. They allowed them not only to combine distributed content, but also to process it in ways that generate new services available for further consumption.To cope with the heterogeneous data, the Linked Data initiative aims at the creation and exploitation of correspondences across data values. In this work, although we share the Linked Data community vision, we advocate that for the modern web, linking at the data value level is not enough. Aggregators should base their integration tasks on the concept of an entity, I.e., identifying whether different pieces of information correspond to the same real world entity, such as an event or a person. We describe our theory, system, and experimental results that illustrate the approach's effectiveness.
机译:选择和呈现从多个异构且物理分布的源中选出的内容是一项艰巨的任务。 Web数据在现代的指数级增长对这种集成系统提出了新的要求。数据不再仅由内容提供者产生,而是由普通用户通过非常流行的Web 2.0社交和语义Web应用程序产生。普通用户已经迫不及待地想要开发高级集成工具,因此大量可用的Web内容增加了对Web内容的需求。他们希望能够在短时间内构建自己的专业集成应用程序。聚集者冒着这些用户的风险。他们不仅允许他们组合分布式内容,而且可以以生成可用于进一步消费的新服务的方式对其进行处理。 为了应对异构数据,“链接数据”计划旨在创建和利用跨数据值的对应关系。在这项工作中,尽管我们拥有链接数据社区的远见,但我们主张对于现代Web而言,仅在数据价值级别上进行链接是不够的。聚集者应将其集成任务基于实体的概念,即,确定不同的信息是否对应于同一真实世界的实体,例如事件或人。我们描述了说明该方法有效性的理论,系统和实验结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号