When users initiate search sessions, their queries are often unclear or might lack of context; this resulting in inefficient document ranking. Multiple approaches have been proposed by the Information Retrieval community to add context and retrieve documents aligned with users' intents. While some work focus on query disambiguation using users' browsing history, a recent line of work proposes to interact with users by asking clarification questions or/and proposing clarification panels. However, these approaches count either a limited number (i.e., 1) of interactions with user or log-based interactions. In this paper, we propose and evaluate a fully simulated query clarification framework allowing multi-turn interactions between IR systems and user agents.
翻译:当用户启动搜索会时,他们的查询往往不明确,或可能缺乏背景;结果造成文件排位效率低下;信息检索界提出了多种办法,以添加上下文和检索与用户意图一致的文件;虽然有些工作的重点是利用用户浏览历史进行混淆的查询,但最近的一行工作提议与用户互动,提出澄清问题或/或提出澄清小组;然而,这些办法计算了与用户互动或基于日志的互动的有限数目(即1),在本文件中,我们提议并评价一个完全模拟的查询澄清框架,允许IR系统与用户代理进行多轨互动。