移动搜索的逐项查询自动完成

S. Vargas, Roi Blanco, P. Mika
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引用次数: 12

摘要

随着移动搜索的使用不断增加,文本输入通常很慢而且容易出错,帮助用户制定他们的查询有助于获得更令人满意的搜索体验。查询自动完成(Query auto-completion, QAC)技术预测用户查询的可能完成情况,是查询辅助的典型示例,在大多数搜索引擎中都有出现。然而,我们认为,经典的QAC,通过建议整个查询完成来操作,对于移动搜索来说可能不是最优的,因为显示建议的可用屏幕空间有限,而且编辑通常比桌面搜索慢。在本文中,我们提出了逐词QAC的思想,这是一种受预测键盘启发的新技术,每次向用户建议一个词,而不是整个查询补全。我们描述了实现该技术的有效机制,以及对先前用户模型的适应,以使用查询日志数据评估标准和逐项QAC方法的有效性。我们对来自商业搜索引擎的移动查询日志进行了实验,结果表明,根据该用户模型,我们的方法在节省字符、节省术语和检查工作量方面是有效的。最后,与标准QAC相比,用户研究提供了关于我们逐项技术的进一步见解,其中涉及基于查询日志的评估中分析的变量,以及与成功、交互速度和提交查询属性相关的其他变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Term-by-Term Query Auto-Completion for Mobile Search
With the ever increasing usage of mobile search, where text input is typically slow and error-prone, assisting users to formulate their queries contributes to a more satisfactory search experience. Query auto-completion (QAC) techniques, which predict possible completions for user queries, are the archetypal example of query assistance and are present in most search engines. We argue, however, that classic QAC, which operates by suggesting whole-query completions, may be sub-optimal for the case of mobile search as the available screen real estate to show suggestions is limited and editing is typically slower than in desktop search. In this paper we propose the idea of term-by-term QAC, which is a new technique inspired by predictive keyboards that suggests to the user one term at a time, instead of whole-query completions. We describe an efficient mechanism to implement this technique and an adaptation of a prior user model to evaluate the effectiveness of both standard and term-by-term QAC approaches using query log data. Our experiments with a mobile query log from a commercial search engine show the validity of our approach according to this user model with respect to saved characters, saved terms and examination effort. Finally, a user study provides further insights about our term-by-term technique compared with standard QAC with respect to the variables analyzed in the query log-based evaluation and additional variables related to the successfulness, the speed of the interactions and the properties of the submitted queries.
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