In the last decade, conversational search has attracted considerable attention. However, most research has focused on systems that can support a \emph{single} searcher. In this paper, we explore how systems can support \emph{multiple} searchers collaborating over an instant messaging platform (i.e., Slack). We present a ``Wizard of Oz'' study in which 27 participant pairs collaborated on three information-seeking tasks over Slack. Participants were unable to search on their own and had to gather information by interacting with a \emph{searchbot} directly from the Slack channel. The role of the searchbot was played by a reference librarian. Conversational search systems must be capable of engaging in \emph{mixed-initiative} interaction by taking and relinquishing control of the conversation to fulfill different objectives. Discourse analysis research suggests that conversational agents can take \emph{two} levels of initiative: dialog- and task-level initiative. Agents take dialog-level initiative to establish mutual belief between agents and task-level initiative to influence the goals of the other agents. During the study, participants were exposed to three experimental conditions in which the searchbot could take different levels of initiative: (1) no initiative, (2) only dialog-level initiative, and (3) both dialog- and task-level initiative. In this paper, we focus on understanding the Wizard's actions. Specifically, we focus on understanding the Wizard's motivations for taking initiative and their rationale for the timing of each intervention. To gain insights about the Wizard's actions, we conducted a stimulated recall interview with the Wizard. We present findings from a qualitative analysis of this interview data and discuss implications for designing conversational search systems to support collaborative search.
翻译:在过去的十年中,对话式搜索已经引起了相当大的关注。然而,大多数研究都集中在能够支持“单个”搜索者的系统上。在本文中,我们探讨了如何支持在即时通讯平台(即 Slack)上协作的“多个”搜索者的系统。我们在 Slack 上进行了一项“金属人”研究,27 对参与者在 Slack 上共同完成了三个信息寻找任务。参与者无法自行搜索,必须通过与一个直接来自 Slack 频道的“搜索机器人”交互来收集信息。搜索机器人由一名参考图书馆管理员扮演。对话式搜索系统必须能够通过采取和放弃对话控制来实现不同的目标,进行“混合主动性”交互。话语分析研究表明,会话代理可以采取“两个”主动性水平:对话级别和任务级别。代理采取对话级别主动性来建立代理之间的共识,采取任务级别主动性来影响其他代理的目标。在研究中,参与者暴露于三种实验条件中,其中搜索机器人可以采取不同的主动性水平:(1)无主动,(2)仅对话级别主动,(3)同时具有对话和任务级别的主动性。在本文中,我们关注理解“金属人”的行动。具体来说,我们专注于理解 Wizard 采取主动的动机以及其针对每次干预的时机进行的理性评估。为了获得对“金属人”的行动的见解,我们对“金属人”进行了一次刺激回忆采访。我们呈现了对这些采访数据的定性分析结果,并讨论了设计对话式搜索系统以支持协同搜索的影响。