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PERSONALIZED E-LEARNING USING A DEEP-LEARNING-BASED KNOWLEDGE TRACING AND HINT-TAKING PROPENSITY MODEL

机译:使用基于深度学习的知识跟踪和提示能力模型进行个性化的电子学习

摘要

Techniques are described for jointly modeling knowledge tracing and hint-taking propensity. During a read phase, a co-learning model accepts as inputs an identification of a question and the current knowledge state for a learner, and the model predicts probabilities that the learner will answer the question correctly and that the learner will use a learning aid (e.g., accept a hint). The predictions are used to personalize an e-learning plan, for example, to provide a personalized assessment. By using these predictions to personalize a learner's experience, for example, by offering hints at optimal times, the co-learning system increases efficiencies in learning and improves learning outcomes. Once a learner has interacted with a question, the interaction is encoded and provided to the co-learning model to update the learner's knowledge state during an update phase.
机译:描述了用于联合建模知识跟踪和提示倾向的技术。在阅读阶段,共同学习模型接受问题的标识和学习者当前的知识状态作为输入,并且该模型预测学习者将正确回答问题并且学习者将使用学习辅助工具的概率(例如,接受提示)。预测用于个性化电子学习计划,例如,提供个性化评估。通过使用这些预测来个性化学习者的体验(例如,通过在最佳时间提供提示),共同学习系统可以提高学习效率并改善学习成果。一旦学习者与问题进行了交互,就对该交互进行编码,并提供给共同学习模型,以在更新阶段更新学习者的知识状态。

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