解决Web收集中的实例歧义

Zhixu Li, Xiangliang Zhang, Hai Huang, Qing Xie, Jia Zhu, Xiaofang Zhou
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引用次数: 1

摘要

Web harvest可以通过从Web检索所需的信息来丰富不完整的数据集。然而,实例的模糊性可能会大大降低收集数据的质量,因为当试图在Web上识别本地数据集中的任何实例时,它都可能变得含糊不清。尽管已经提出了大量的消歧方法来处理各种情况下的歧义问题,但没有一种方法能够处理Web收获中的实例歧义问题。在本文中,我们提出了一种基于协同身份识别思想的消歧方法来实现Web采集中的实例消歧。特别是,我们希望在列表中的实例之间以潜在共享属性值的形式找到一些公共属性,这样这些共享属性值就可以区分列表中的实例和Web上那些不明确的实例。我们广泛的实验评估说明了协作消歧对一个流行的Web收集应用程序的效用,并表明它大大提高了收集数据的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Addressing Instance Ambiguity in Web Harvesting
Web Harvesting enables the enrichment of incomplete data sets by retrieving required information from the Web. However, the ambiguity of instances may greatly decrease the quality of the harvested data, given that any instance in the local data set may become ambiguous when attempting to identify it on the Web. Although plenty of disambiguation methods have been proposed to deal with the ambiguity problems in various settings, none of them are able to handle the instance ambiguity problem in Web Harvesting. In this paper, we propose to do instance disambiguation in Web Harvesting with a novel disambiguation method inspired by the idea of collaborative identity recognition. In particular, we expect to find some common properties in forms of latent shared attribute values among instances in the list, such that these shared attribute values can differentiate instances within the list against those ambiguous ones on the Web. Our extensive experimental evaluation illustrates the utility of collaborative disambiguation for a popular Web Harvesting application, and shows that it substantially improves the accuracy of the harvested data.
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