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Socio-contextual Filters for Discovering Similar Knowledge-Gathering Tasks in Generic Information Systems

机译:社会上下文过滤器,用于发现通用信息系统中的类似知识收集任务

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摘要

The task of knowledge-gathering through an Information System has become increasingly challenging, due to the multitude of activities that are being facilitated through the system. A user-centric approach is presented in this paper where various activities executed by a user, for a knowledge-gathering task, are mapped to certain cognitive states in our model and the transitions between those states are used to indicate the progress made by the user. We propose a socio-contextual filtering algorithm for discovering similar tasks that were executed by other users and claim that such a socio-contextually related task would help in reducing the cognitive load, efforts and the time required for a user, naieve to a given knowledge gathering task. We demonstrate this through the fewer number of state transitions that occur in our model for a guided user.
机译:由于信息系统促进了许多活动,因此通过信息系统进行知识收集的任务变得越来越具有挑战性。本文提出了一种以用户为中心的方法,其中用户执行的用于知识收集任务的各种活动被映射到我们模型中的某些认知状态,并且这些状态之间的转换用于指示用户所取得的进步。我们提出了一种社交上下文过滤算法,用于发现其他用户执行的相似任务,并声称此类社交上下文相关任务将有助于减少用户的认知负担,工作量和所需时间,从而使其不了解给定知识收集任务。我们通过在模型中为指导用户进行的状态转换次数减少来证明这一点。

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