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Discovery of Action Patterns and User Correlations in Task-Oriented Processesfor Goal-Driven Learning Recommendation

机译:在目标驱动的学习建议的任务导向过程中发现动作模式和用户关联

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摘要

With the high development of social networks, collaborations in a socialized web-based learning environment has become increasing important, which means people can learn through interactions and collaborations in communities across social networks. In this study, in order to support the enhanced collaborative learning, two important factors, user behavior patterns and user correlations, are taken into account to facilitate the information and knowledge sharing in a task-oriented learning process. Following a hierarchical graph model for enhanced collaborative learning within a task-oriented learning process, which describes relations of learning actions, activities, sub-tasks and tasks in communities, the learning action pattern and Goal-driven Learning Group, as well as their formal definitions and related algorithms, are introduced to extract and analyze users' learning behaviors in both personal and cooperative ways. In addition, a User Networking Model, which is used to represent the dynamical user relationships, is proposed to calculate user correlations in accordance with their interactions in a social community. Based on these, an integrated mechanism is developed to utilize both user behavior patterns and user correlations for the recommendation of individualized learning actions. The system architecture is described finally, and the experiment results are presented and discussed to demonstrate the practicability and usefulness of our methods.
机译:随着社交网络的高度发展,基于社交的基于Web的学习环境中的协作变得越来越重要,这意味着人们可以通过跨社交网络的社区中的交互和协作来学习。在这项研究中,为了支持增强的协作学习,考虑了两个重要因素,即用户行为模式和用户相关性,以促进面向任务的学习过程中的信息和知识共享。遵循用于在面向任务的学习过程中增强协作学习的分层图模型,该模型描述了学习行动,活动,子任务和社区中的任务,学习行动模式和目标驱动的学习小组及其正式形式之间的关系引入定义和相关算法,以个人和合作方式提取和分析用户的学习行为。另外,提出了一种用于表示动态用户关系的用户网络模型,以根据用户在社交社区中的交互来计算用户相关性。基于这些,开发了一种集成机制来利用用户行为模式和用户相关性来推荐个性化的学习动作。最后对系统架构进行了描述,并给出了实验结果并进行了讨论,以证明该方法的实用性和实用性。

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