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首页> 外文期刊>Annals of the American Thoracic Society >Classification and Analysis of MOOCs Learner's State: The Study of Hidden Markov Model
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Classification and Analysis of MOOCs Learner's State: The Study of Hidden Markov Model

机译:Moocs学习者国家的分类与分析:隐马尔可夫模型研究

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In MOOCs, learner's state is a key factor to learning effect. In order to study on learner's state and its change, the Hidden Markov Model was applied in our study, and some data of learner were analyzed, which includes MOOCs learner's basic information, learning behavior data, curriculum scores and data of participation in learning activities. The relationship of the learning state, the environment factors and the learner's individual conditions was found based on the data mining of the above of learning behavior data. Generally, there are three main conclusions in our research. Firstly, learners with different educational background have different learning states when they first learn from MOOCs. Secondly, the environmental factors such as curriculum quality, overall learning status and number of learners will influence the change of learners' learning status. Thirdly, the learner's behavioral expression is an observational signal of different learning states, which can be used to detect and manage the learner's learning states in different periods. From the analysis results of Hidden Markov Model, it is found that learners in different learning states can adopt appropriate methods to improve their learning efficiency. If the learner is in a negative state, the learning efficiency can be improved by improving the learning environment. If the learner is in a positive state, the positive learning status of the surrounding learners can help him or her maintain current state. Our research can help the MOOCs institutions improve the curriculum and provide reference for the development of MOOCs teaching.
机译:在MOOCS中,学习者的国家是学习效果的关键因素。为了研究学习者的状态及其变化,隐藏的马尔可夫模型在我们的研究中应用,分析了一些学习者数据,其中包括Moocs学习者的基本信息,学习行为数据,课程评分和参与学习活动的数据。基于上述学习行为数据的数据挖掘,找到了学习状态,环境因素和学习者个人条件的关系。通常,我们的研究中有三个主要结论。首先,当他们首次从Moocs学习时,学习者有不同的教育背景有不同的学习状态。其次,课程质量等环境因素,总体学习地位和学习者人数将影响学习者学习状态的变化。第三,学习者的行为表达是不同学习状态的观察信号,其可用于在不同时期中检测和管理学习者的学习状态。从隐马尔可夫模型的分析结果来看,发现不同学习状态的学习者可以采用适当的方法来提高学习效率。如果学习者处于负状态,则通过改善学习环境可以提高学习效率。如果学习者处于正状态,周围学习者的积极学习状态可以帮助他或她保持当前的状态。我们的研究可以帮助Moocs机构改善课程,并为MooCs教学提供参考。

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