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An Attribute-based Ant Colony System For Adaptive Learningobject Recommendation

机译:基于属性的蚁群自适应学习对象推荐系统

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Teachers usually have a personal understanding of what "good teaching" means, and as a result of their experience and educationally related domain knowledge, many of them create learning objects (LO) and put them on the web for study use. In fact, most students cannot find the most suitable LO (e.g. learning materials, learning assets, or learning packages) from webs. Consequently, many researchers have focused on developing e-learning systems with personalized learning mechanisms to assist on-line web-based learning and to adaptively provide learning paths. However, although most personalized learning mechanism systems neglect to consider the relationship between learner attributes (e.g. learning style, domain knowledge) and LO's attributes. Thus, it is not easy for a learner to find an adaptive learning object that reflects his own attributes in relationship to learning object attributes. Therefore, in this paper, based on an ant colony optimization (ACO) algorithm, we proposed an attributes-based ant colony system (AACS) to help learners find an adaptive learning object more effectively. Our paper makes three critical contributions: (1) It presents an attribute-based search mechanism to find adaptive learning objects effectively; (2) An attributes-ant algorithm was proposed; (3) An adaptive learning rule was developed to identify how learners with different attributes may locate learning objects which have a higher probability of being useful and suitable; (4) A web-based learning portal was created for learners to find the learning objects more effectively.
机译:教师通常对“好的教学”的含义有个人的了解,并且由于他们的经验和与教育相关的领域知识,他们中的许多人会创建学习对象(LO)并将其放在网络上供学习使用。实际上,大多数学生无法从网络中找到最合适的LO(例如学习资料,学习资产或学习包)。因此,许多研究人员致力于开发具有个性化学习机制的电子学习系统,以协助基于网络的在线学习并自适应地提供学习路径。但是,尽管大多数个性化学习机制系统都忽略了考虑学习者属性(例如学习风格,领域知识)和LO的属性之间的关系。因此,对于学习者而言,要找到反映他自己的属性与学习对象属性的关系的自适应学习对象并不容易。因此,本文基于蚁群优化(ACO)算法,提出了一种基于属性的蚁群系统(AACS),以帮助学习者更有效地找到自适应学习对象。本文做出了三个关键的贡献:(1)提出了一种基于属性的搜索机制,可以有效地找到自适应学习对象。 (2)提出了一种属性蚂蚁算法; (3)开发了一种自适应学习规则,以识别具有不同属性的学习者如何定位具有较高实用性和适用性的学习对象; (4)建立了一个基于网络的学习门户,供学习者更有效地找到学习对象。

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