首页> 外文期刊>Software >Comparing keyword search to semantic search: a case study in solving crossword puzzles using the Google~(TM) API
【24h】

Comparing keyword search to semantic search: a case study in solving crossword puzzles using the Google~(TM) API

机译:比较关键字搜索与语义搜索:使用Google〜(TM)API解决填字游戏的案例研究

获取原文
获取原文并翻译 | 示例
       

摘要

Key-word-based search engines such as Google~(TM) index Web pages for human consumption. Sophisticated as such engines have become, surveys indicate almost 25% of Web searchers are unable to find useful results in the first set of URLs returned (Technology Review, March 2004). The lack of machine-interpretable information on the Web limits software agents from matching human searches to desirable results. Tim Berners-Lee, inventor of the Web, has architected the Semantic Web in which machine-interpretable information provides an automated means to traversing the Web. A necessary cornerstone application is the search engine capable of bringing the Semantic Web together into a searchable landscape. We implemented a Semantic Web Search Engine (SWSE) that performs semantic search, providing predictable and accurate results to queries. To compare keyword search to semantic search, we constructed the Google CruciVerbalist (GCV), which solves crossword puzzles by reformulating clues into Google queries processed via the Google API. Candidate answers are extracted from query results. Integrating GCV with SWSE, we quantitatively show how semantic search improves upon keyword search. Mimicking the human brain's ability to create and traverse relationships between facts, our techniques enable Web applications to 'think' using semantic reasoning, opening the door to intelligent search applications that utilize the Semantic Web.
机译:基于关键字的搜索引擎(例如Google〜™索引网页)供人们消费。随着这种引擎的成熟,调查表明,将近25%的Web搜索者无法在返回的第一组URL中找到有用的结果(Technology Review,2004年3月)。 Web上缺少机器可解释的信息,这限制了软件代理无法将人工搜索匹配到所需结果。 Web的发明者Tim Berners-Lee设计了语义Web,其中机器可解释的信息提供了一种遍历Web的自动化方法。一个必要的基础应用程序是能够将语义Web整合到可搜索环境中的搜索引擎。我们实现了执行语义搜索的语义Web搜索引擎(SWSE),可为查询提供可预测和准确的结果。为了将关键字搜索与语义搜索进行比较,我们构建了Google CruciVerbalist(GCV),它通过将线索重新构建为通过Google API处理的Google查询来解决填字游戏。从查询结果中提取候选答案。将GCV与SWSE集成在一起,我们定量地显示了语义搜索如何在关键字搜索之后得到改进。模仿人脑在事实之间建立和遍历的能力,我们的技术使Web应用程序能够使用语义推理来“思考”,从而为使用语义Web的智能搜索应用程序打开了大门。

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