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Exercise-Enhanced Sequential Modeling for Student Performance Prediction

机译:学生绩效预测的运动增强顺序建模

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In online education systems, for offering proactive services to students (e.g., personalized exercise recommendation), a crucial demand is to predict student performance (e.g., scores) on future exercising activities. Existing prediction methods mainly exploit the historical exercising records of students, where each exercise is usually represented as the manually labeled knowledge concepts, and the richer information contained in the text descriptions of exercises is still underex-plored. In this paper, we propose a novel Exercise-Enhanced Recurrent Neural Network (EERNN) framework for student performance prediction by taking full advantage of both student exercising records and the text of each exercise. Specifically, for modeling the student exercising process, we first design a bidirectional LSTM to learn each exercise representation from its text description without any expertise and information loss. Then, we propose a new LSTM architecture to trace student states (i.e., knowledge states) in their sequential exercising process with the combination of exercise representations. For making final predictions, we design two strategies under EERNN, i.e., EERNNM with Markov property and EERNNA with Attention mechanism. Extensive experiments on large-scale real-world data clearly demonstrate the effectiveness of EERNN framework. Moreover, by incorporating the exercise correlations, EERNN can well deal with the cold start problems from both student and exercise perspectives.
机译:在在线教育系统中,为学生提供积极服务(例如,个性化的练习推荐),至关重要的需求是预测未来行使活动的学生表现(例如,得分)。现有的预测方法主要利用学生的历史锻炼记录,其中每个练习通常代表被称为手动标记的知识概念,并且练习的文本描述中包含的更丰富的信息仍然是缺陷的。在本文中,我们提出了一种新的运动增强的经常性神经网络(EERNN),用于学生绩效预测,通过锻炼记录和每个练习的文本充分利用。具体而言,对于对学生进行建模,我们首先设计一个双向LSTM,以从文本描述中学习每个练习表示,没有任何专业知识和信息丢失。然后,我们提出了一种新的LSTM架构,以在他们的顺序行使过程中追踪学生状态(即知识状态),同时具有运动表示的结合。为了做出最终预测,我们在eernn下设计了两种策略,即,与马尔可夫财产和EERNNA的EERNNM为受关注机制。对大型现实数据的广泛实验清楚地证明了欧洲央行框架的有效性。此外,通过纳入运动相关性,Eernn可以很好地处理学生和运动视角的冷启动问题。

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