SkillsRec:一种基于教师指导的个人学习环境语义分析驱动的学习者技能挖掘和过滤方法

Z. A. Shaikh, D. Gillet, S. Khoja
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引用次数: 0

摘要

本文提出了SkillsRec——一种基于教师指导的学习者技能挖掘和过滤方法,该方法使用潜在语义分析(LSA)技术识别基于个人学习环境(PLE)的学习场景的学习者技能。Skills Rec是根据指导型PLEs模型的PLE设计和开发原则开发的[1]。Skills Rec将教师的能力/角色[2]和学习者的兴趣作为输入,使用LSA将它们融合,并将学习者的技能作为输出返回给基于语言的学习。我们比较了通过传统的信息检索(IR)和关键词匹配(KM)技术生成的学习者技能相似度得分。目的是报告技能识别相对于传统IR技术的收益。基于Skills Rec的结果,本文还为给定的主动学习者提供了最可能相似的N=8个用户-用户推荐作为测试数据。
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SkillsRec: A Novel Semantic Analysis Driven Learner Skills Mining and Filtering Approach for Personal Learning Environments Based on Teacher Guidance
This paper presents SkillsRec - a novel teacher guidance based learner skills mining and filtering approach that identifies learner skills for Personal Learning Environment (PLE) based learning scenarios using Latent Semantic Analysis (LSA) technique. Skills Rec is developed on PLE design and development principles of the guided PLEs model [1]. Skills Rec takes teacher competencies/roles [2] and learner interests as input, melds them using LSA, and returns learner skills for the PLE-based learning as output. We compare learner-skill similarity scores of the Skills Rec with those generated through conventional Information Retrieval (IR) and Keywords Matching (KM) techniques. The aim is to report Skills Rec gains over conventional IR techniques. Based on Skills Rec results, this paper also provides top N=8 user-user recommendations most likely to be similar for a given active learner as a testing data.
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