无查询日志时的查询建议

S. Bhatia, Debapriyo Majumdar, P. Mitra
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引用次数: 172

摘要

在终端用户部分输入查询后,智能搜索引擎可以建议部分查询的可能完成,以帮助终端用户快速表达他们的信息需求。所有主要的web搜索引擎和大多数建议查询的方法都依赖于搜索引擎查询日志来确定可能的查询建议。但是,对于企业域中的自定义搜索系统、内部网搜索或个性化搜索(如电子邮件或桌面搜索),或者对于不常见的查询,查询日志要么不可用,要么用户基数和过去用户查询的数量太小,无法学习适当的模型。我们提出了一种概率机制,在不使用查询日志的情况下从语料库生成查询建议。我们利用文档语料库提取一组候选短语。一旦用户开始输入查询,就会选择与部分用户查询高度相关的短语作为部分查询的补全,并作为查询建议提供给用户。我们提出的方法在各种数据集上进行了测试,并与最先进的方法进行了比较。实验结果清楚地证明了我们的方法在建议更高质量的查询方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Query suggestions in the absence of query logs
After an end-user has partially input a query, intelligent search engines can suggest possible completions of the partial query to help end-users quickly express their information needs. All major web-search engines and most proposed methods that suggest queries rely on search engine query logs to determine possible query suggestions. However, for customized search systems in the enterprise domain, intranet search, or personalized search such as email or desktop search or for infrequent queries, query logs are either not available or the user base and the number of past user queries is too small to learn appropriate models. We propose a probabilistic mechanism for generating query suggestions from the corpus without using query logs. We utilize the document corpus to extract a set of candidate phrases. As soon as a user starts typing a query, phrases that are highly correlated with the partial user query are selected as completions of the partial query and are offered as query suggestions. Our proposed approach is tested on a variety of datasets and is compared with state-of-the-art approaches. The experimental results clearly demonstrate the effectiveness of our approach in suggesting queries with higher quality.
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