Suppr超能文献

支持消费者健康信息搜索的策略。

Strategies for supporting consumer health information seeking.

作者信息

McCray Alexa T, Ide Nicholas C, Loane Russell R, Tse Tony

机构信息

National Library of Medicine, Bethesda, MD 20894, USA.

出版信息

Stud Health Technol Inform. 2004;107(Pt 2):1152-6.

Abstract

Despite a growing number of available Web-based health information resources, consumers continue to face a variety of barriers as they attempt to access these resources. Developing a system that appropriately responds to user queries poses several challenges. Guided by an earlier study that analyzed a large number of queries submitted to ClinicalTrials.gov, we developed a variety of techniques to assist user information seeking. We tested the efficacy of these techniques by submitting the original user queries to our new search engine to determine if these techniques would result in better system performance. Overall, the number of query failures was reduced, but the largest improvement was found in the system's query suggestion capability. For a subset of query failures, the current system was able to cut the earlier failure rate almost in half, in most cases providing a suggestion rather than directly finding records. The techniques described here provide a new approach for responding to user queries. The techniques are tolerant of certain types of errors and provide feedback to assist users in reformulating their queries.

摘要

尽管基于网络的健康信息资源数量不断增加,但消费者在尝试获取这些资源时仍面临各种障碍。开发一个能对用户查询做出适当响应的系统存在诸多挑战。在一项早期研究的指导下,该研究分析了提交给ClinicalTrials.gov的大量查询,我们开发了多种技术来协助用户查找信息。我们通过将原始用户查询提交到新搜索引擎来测试这些技术的有效性,以确定这些技术是否会带来更好的系统性能。总体而言,查询失败的数量减少了,但最大的改进体现在系统的查询建议能力上。对于一部分查询失败情况,当前系统能够将早期失败率几乎降低一半,在大多数情况下提供建议而非直接查找记录。这里描述的技术为响应用户查询提供了一种新方法。这些技术能够容忍某些类型的错误,并提供反馈以帮助用户重新表述他们的查询。

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