深网多源自动标注

Cui Xiao-jun, Peng Zhiyong, Wang Hui
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引用次数: 6

摘要

通过填写搜索表单返回的大量Web页面没有被大多数搜索引擎编入索引。这些网页的集合被称为深网。由于Web数据库返回的结果很少有适当的注释,因此有必要为结果分配有意义的标签。本文提出了一个自动标注框架,利用多标注器对不同方面的结果进行标注。特别是,基于搜索引擎的注释器扩展了AI社区中常用的问答技术,构建验证查询并向搜索引擎提出问题。它通过计算术语和实例之间的相似度来找到最合适的术语来注释数据单元。标注信息可以在没有领域本体支持的情况下自动获取。在四个实际领域的实验表明,该方法是非常有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-source Automatic Annotation for Deep Web
A large number of Web pages returned by filling in search forms are not indexed by most search engines today. The set of such Web pages is referred to as the deep Web. Since results returned by Web databases seldom have proper annotations, it is necessary to assign meaningful labels to the results. This paper presents a framework of automatic annotation which uses multi-annotator to annotate results from different aspects. Especially, search engine-based annotator extends question-answering techniques commonly used in the AI community, constructing validate queries and posing to the search engine. It finds the most appropriate terms to annotate the data units by calculate the similarities between terms and instances. Information for annotating can be acquired automatically without the support of domain ontology. Experiments over four real world domains indicate that the proposed approach is highly effective.
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