A computational model for causal learning in cognitive agents
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摘要
To mimic human tutors and provide optimal training, a cognitive tutoring agent should be able to continuously learn from its interactions with learners. An important element that helps a tutor better understand learner’s mistake is finding the causes of the learners’ mistakes. In this paper, we explain how we have designed and integrated a causal learning mechanism in a cognitive agent named CELTS (Conscious Emotional Learning Tutoring System) that assists learners during learning activities. Unlike other works in cognitive agents that used Bayesian Networks to deal with causality, CELTS’s causal learning mechanism is implemented using data mining algorithms that can be used with large amount of data. The integration of a causal learning mechanism within CELTS allows it to predict learners’ mistakes. Experiments showed that the causal learning mechanism help CELTS improve learners’ performance.
论文关键词:Cognitive agents,Computational causal modeling, and learning,Emotions,Consciousness,Episodic memory,Causal memory
论文评审过程:Received 12 January 2011, Revised 5 September 2011, Accepted 6 September 2011, Available online 6 November 2011.
论文官网地址:https://doi.org/10.1016/j.knosys.2011.09.005