基于任务的搜索和辅助教程

C. Shah, Ryen W. White
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引用次数: 4

摘要

虽然在搜索和推荐领域取得了巨大的进步,但是在解决信息访问问题方面仍然存在挑战和机遇,这些问题涉及到为各种各样的用户解决任务和实现目标。具体来说,我们缺乏智能系统,不仅可以检测到个人正在提出的请求(什么),还可以在提供信息时理解和利用意图(为什么)和策略(如何)。信息检索、推荐系统、生产力(特别是任务管理和时间管理)和人工智能领域的许多学者已经认识到提取和理解人们的任务以及执行这些任务背后的意图的重要性,以便更好地为他们服务。然而,我们仍然在努力支持它们完成任务,例如,在搜索和帮助方面,超越单查询或单轮交互一直是一个挑战。智能代理的激增为与信息交互开辟了新的模式,但这些代理需要能够更智能地工作,以理解上下文并在任务级别上帮助用户。本教程将向与会者介绍在信息集(有或没有主动搜索)中检测、理解和使用任务和与任务相关的信息的问题。具体来说,它将涵盖几个最新的理论、模型和方法,这些理论、模型和方法展示了如何表示任务并使用行为数据来提取任务信息。然后,它将展示这些知识或模型如何有助于解决新出现的检索和推荐问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tutorial on Task-Based Search and Assistance
While great strides are made in the field of search and recommendation, there are still challenges and opportunities to address information access issues that involve solving tasks and accomplishing goals for a wide variety of users. Specifically, we lack intelligent systems that can detect not only the request an individual is making (what), but also understand and utilize the intention (why) and strategies (how) while providing information. Many scholars in the fields of information retrieval, recommender systems, productivity (especially in task management and time management), and artificial intelligence have recognized the importance of extracting and understanding people's tasks and the intentions behind performing those tasks in order to serve them better. However, we are still struggling to support them in task completion, e.g., in search and assistance, it has been challenging to move beyond single-query or single-turn interactions. The proliferation of intelligent agents has opened up new modalities for interacting with information, but these agents will need to be able to work more intelligently in understanding the context and helping the users at task level. This tutorial will introduce the attendees to the issues of detecting, understanding, and using task and task-related information in an information episode (with or without active searching). Specifically, it will cover several recent theories, models, and methods that show how to represent tasks and use behavioral data to extract task information. It will then show how this knowledge or model could contribute to addressing emerging retrieval and recommendation problems.
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