探索性搜索的个性化支持

Daniel T. J. Backhausen
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引用次数: 1

摘要

回答研究问题或解决问题等复杂任务需要进行纵向过程,需要收集、收集、解释、分析和评估不同的信息对象[1]。这样的过程通常包括几个搜索和探索会话,在这些会话中,用户交互地深入到一个或多或少未知的领域。这项研究是由这样一个事实驱动的:大多数常见的系统都是为适合一般用户而设计的,其中用户提交查询,检索系统返回结果的排序列表。无论用户是谁,查询总是返回相同的结果列表。年龄、性别、职业或经验等个人因素往往不被考虑在内,例如儿童和成人在搜索方面的差异。不幸的是,许多系统都针对查找搜索进行了优化,期望用户只对事实感兴趣,而对解决问题不感兴趣。此外,常见的系统仍然假设用户有一个静态的信息需求,在搜索过程中保持不变。在整个搜索过程的每一步中,用户都面临着知识和信息需要变化的新情况。这会影响信息对象的相关性,并可能将每个用户单独引导到不同的主题、领域、任务甚至搜索策略。由于不确定性和知识缺失,探索性搜索活动需要更多的帮助,比如缩小不同搜索会话之间的差距,让用户更容易地回顾和继续他们的搜索。此外,工作任务的复杂性和个人资格要求为搜索者提供个性化的支持。本研究的目标是研究一个概念,帮助用户在这种交互式探索性搜索活动中,通过个性化搜索过程实现有效的信息探索。个性化IR系统需要适应相关因素,并致力于特定用户和个人搜索行为。在整个搜索过程中对用户进行引导,提出符合用户搜索行为和当前情况的有用的搜索策略和有效的策略。为了连接不同的搜索会话,过去的活动必须以面包屑或时间轴的形式可视化。这就是为什么我们目前正在原型化一种使用Timeline JS来可视化个人谷歌搜索历史的方法。为了进一步为用户提供战略性搜索支持,有必要了解用户本人以及可能与情况相关的特定上下文环境。关于用户的一般信息,如性别或年龄,以及相关反馈可以显式地获取,允许系统以更粗粒度的方式进行调整(例如决定呈现结果的方式)。此外,集成常用的应用程序(例如Evernote)或提供其他方式让用户管理任务将有助于理解搜索活动的目标。因此,我们目前正在研究将搜索活动与任务管理联系起来的方法。通过记录(例如查询日志)和检查系统交互,可以传递有关搜索行为和间接用户知识和专业知识的信息。获取的数据应该对用户透明,显示到目前为止已经收集到的信息类型。隐式获得的信息必须与显式信息以及从不同接口或传感器(例如时间、位置)隐性收集的其他上下文数据进行细化。将所有这些组合在一起将允许更细粒度的系统适应方式,并在长期搜索活动中提供新的选项,以帮助用户显示个性化搜索策略和适合信息需求和经验水平的可能的下一步搜索步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized support in exploratory search
Complex tasks like answering research questions or solving problems require to carry out longitudinal processes where different information objects need to be gathered, collected, interpreted, analyzed, and evaluated [1]. Such a process normally includes several search and exploration sessions where the user interactively digs deeper into a more or less unknown domain. This research is driven by the fact that most common systems are designed to fit a general user where users are submitting queries and the retrieval system returns a ranked list of results. Regardless of the user, the query always returns the same list of results. Individual aspects like age, gender, profession or experience are often not taken into account, for example the difference in searching between children and adults. Unfortunately many systems are optimized for lookup searches, expecting that the user is only interested in facts and not in problem solving. Additionally common systems still assume that the user has a static information need which remains unchanged during the seeking process. In each step of the overall seeking process, the user faces a new situation in which knowledge and information need changes. This influences the relevance of information objects and may direct each user individually to different topics, domains, tasks or even search strategies. Due to uncertainty and missing knowledge, exploratory search activities need far more assistance like closing the the gap between different search sessions, allowing the user to review and continue their search more easily. Moreover the complexity of working tasks and the individual qualifications require personalized support to the searcher. The goal of this research is to investigate a concept assisting the user within such interactive exploratory search activities, allowing an effective information exploration by personalizing the seeking & searching process. Personalized IR systems need to adapt to relevant factors and commit itself to the specific user and the personal search behavior. The user should be guided throughout the searching process, suggesting useful search strategies and effective tactics which matches the users searching behavior and the current situation. To bridge different search sessions, past activities must be visualized in a kind of breadcrumb or timeline. That's why we are currently prototyping a way to visualize the personal Google search history using Timeline JS. To further assist the user with strategic search support, it is necessary to be aware of the user herself and specific contextual circumstances which may be relevant to the situation. General information about the user like gender or age but also relevance feedback can be fetched explicitly, allowing the system to adapt in a more coarse grained way (e.g. deciding the way of presenting results). Moreover integrating common used applications (e.g. Evernote) or providing other ways to let the user manage tasks will help to understand the goal of the search activities. For this reason we are currently investigating ways to link search activities with task management. Information about the search behavior and indirectly the users knowledge and expertise can be conveyed by logging (e.g. query logs) and examining system interactions. The fetched data should be made transparent to the user, showing what kind of information has been gathered so far. The implicitly gained information has to be refined with the explicit ones and also other contextual data collected tacitly from different interfaces or sensors (e.g. time, location). Bringing it all together will allow a more fine grained way of system adaption and offers new options in assisting the user during the long-term search activities showing personalized search strategies and possible next search steps appropriate to the information need and level of experience.
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