首页> 外文会议>International Conference on Tools with Artificial Intelligence >A Probabilistic Query Suggestion Approach without Using Query Logs
【24h】

A Probabilistic Query Suggestion Approach without Using Query Logs

机译:不使用查询日志的概率查询建议方法

获取原文

摘要

Commercial web search engines include a querysuggestion module so that given a user's keyword query, alternativesuggestions are offered and served as a guide to assistthe user in formulating queries which capture his/her intendedinformation need in a quick and simple manner. Majorityof these modules, however, perform an in-depth analysis oflarge query logs and thus (i) their suggestions are mostlybased on queries frequently posted by users and (ii) theirdesign methodologies cannot be applied to make suggestions oncustomized search applications for enterprises for which theirrespective query logs are not large enough or non-existent. To address these design issues, we have developed PQS, aprobabilistic query suggestion module. Unlike its counterparts, PQS is not constrained by the existence of query logs, sinceit solely relies on the availability of user-generated contentfreely accessible online, such as the Wikipedia.org documentcollection, and applies simple, yet effective, probabilistic-andinformation retrieval-based models, i.e., the Multinomial, BigramLanguage, and Vector Space Models, to provide usefuland diverse query suggestions. Empirical studies conductedusing a set of test queries and the feedbacks provided byMechanical Turk appraisers have verified that PQS makesmore useful suggestions than Yahoo! and is almost as goodas Google and Bing based on the relatively small difference inperformance measures achieved by Google and Bing over PQS.
机译:商业网络搜索引擎包括查询建议模块,以便在给定用户关键字查询的情况下,提供其他建议并将其用作指导,以帮助用户制定查询,以快速,简单的方式捕获其预期的信息需求。但是,这些模块中的大多数模块都会对大型查询日志进行深入分析,因此(i)他们的建议主要基于用户经常发布的查询,并且(ii)他们的设计方法不能应用于针对各自所针对的企业的定制搜索应用程序提出建议查询日志不够大或不存在。为了解决这些设计问题,我们开发了PQS(概率查询建议模块)。与PQS不同,PQS不受查询日志的限制,因为它仅依赖于用户生成的可在线免费访问的内容(例如Wikipedia.org文档集合)的可用性,并应用了简单但有效的基于概率和信息检索的方法多项式,Bigram语言和向量空间模型,以提供有用且多样化的查询建议。通过使用一组测试查询和Mechanical Turk评估人员提供的反馈进行的实证研究已经证明,PQS比Yahoo!提出了更多有用的建议。基于Google和Bing在PQS上取得的相对较小的绩效指标差异,其效果几乎与Google和Bing一样好。

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