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Goal-Based Messages Recommendation Utilizing Latent Dirichlet Allocation

机译:利用潜在狄利克雷分配的基于目标的消息推荐

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Observing various learning goals from peers allows learners to specify new objectives and sub-goals to improve their personal experience. Setting goals for learning enhances motivation and performance. However an unrelated goal might lead to poor outcome. Hence learners have divergent objectives for a same learning experience. Latent Dirichlet Allocation (LDA) is a model considering documents as a mixture of topics. This study then proposed a recommendation model based on LDA, able to determine distinct categories of goals within a single dataset. Results focused on a dataset of 10 learning subjects and over 16,000 goal-based Twitter messages. It showed (1) different goal categories and (2) the correlation between the LDA parameter for the number of topics and the type of subject. Evaluations of goal attributes also showed an increase of goal specificity, commitment and self-confidence after observing different types of goals from peers.
机译:通过观察同伴的各种学习目标,学习者可以指定新的目标和子目标,以改善他们的个人体验。设定学习目标可以增强动力和绩效。但是,不相关的目标可能会导致不良结果。因此,对于相同的学习经历,学习者有不同的目标。潜在狄利克雷分配(LDA)是一种将文档作为主题混合考虑的模型。然后,这项研究提出了一种基于LDA的推荐模型,该模型能够确定单个数据集中目标的不同类别。结果集中在包含10个学习主题和超过16,000个基于目标的Twitter消息的数据集上。它显示了(1)不同的目标类别,以及(2)LDA参数与主题数量和主题类型之间的相关性。对目标属性的评估还显示,在观察同伴的不同类型目标后,目标专一性,承诺和自信心得到提高。

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