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首页> 外文期刊>The British journal of mathematical and statistical psychology >Curiosity-driven recommendation strategy for adaptive learning via deep reinforcement learning
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Curiosity-driven recommendation strategy for adaptive learning via deep reinforcement learning

机译:通过深度加强学习的好奇心推荐策略

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The design of recommendation strategies in the adaptive learning systems focuses on utilizing currently available information to provide learners with individual-specific learning instructions. As a critical motivate for human behaviours, curiosity is essentially the drive to explore knowledge and seek information. In a psychologically inspired view, we propose a curiosity-driven recommendation policy within the reinforcement learning framework, allowing for an efficient and enjoyable personalized learning path. Specifically, a curiosity reward from a well-designed predictive model is generated to model one's familiarity with the knowledge space. Given such curiosity rewards, we apply the actor-critic method to approximate the policy directly through neural networks. Numerical analyses with a large continuous knowledge state space and concrete learning scenarios are provided to further demonstrate the efficiency of the proposed method.
机译:自适应学习系统中推荐策略的设计侧重于利用现有信息为学习者提供个性化的学习指导。好奇心是人类行为的重要动力,本质上是探索知识和寻求信息的动力。从心理学的角度出发,我们在强化学习框架内提出了一种好奇心驱动的推荐策略,从而提供了一条高效、愉快的个性化学习路径。具体来说,一个设计良好的预测模型会产生好奇心奖励,以模拟一个人对知识空间的熟悉程度。考虑到这种好奇心的回报,我们应用演员-批评家方法直接通过神经网络来近似策略。通过对大量连续知识状态空间和具体学习场景的数值分析,进一步验证了该方法的有效性。

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