首页> 外文期刊>Knowledge-Based Systems >Hybrid recommendation approach for learning material based on sequential pattern of the accessed material and the learner's preference tree
【24h】

Hybrid recommendation approach for learning material based on sequential pattern of the accessed material and the learner's preference tree

机译:基于访问材料的顺序模式和学习者偏好树的学习材料混合推荐方法

获取原文
获取原文并翻译 | 示例

摘要

The explosion of the learning materials in personal learning environments has caused difficulties to locate appropriate learning materials to learners. Personalized recommendations have been used to support the activities of learners in personal learning environments and this technology can deliver suitable learning materials to learners. In order to improve the quality of recommendations, this research considers the multidimensional attributes of material, rating of learners, and the order and sequential patterns of the learner's accessed material in a unified model. The proposed approach has two modules. In the sequential-based recommendation module, latent patterns of accessing materials are discovered and presented in two formats including the weighted association rules and the compact tree structure (called Pattern-tree). In the attribute-based module, after clustering the learners using latent patterns by K-means algorithm, the learner preference tree (LPT) is introduced to consider the multidimensional attributes of materials, rating of learners, and also order of the accessed materials. The mixed, weighted, and cascade hybrid methods are employed to generate the final combined recommendations. The experiments show that the proposed approach outperforms the previous algorithms in terms of precision, recall, and intra-list similarity measure. The main contributions are improvement of the recommendations' quality and alleviation of the sparsity problem by combining the contextual information, including order and sequential patterns of the accessed material, rating of learners, and the multidimensional attributes of materials.
机译:在个人学习环境中,学习材料的爆炸式增长给寻找合适的学习材料带来了困难。个性化推荐已用于支持学习者在个人学习环境中的活动,并且该技术可以为学习者提供合适的学习材料。为了提高建议的质量,本研究在统一模型中考虑了材料的多维属性,学习者的等级以及学习者访问材料的顺序和顺序模式。所提出的方法具有两个模块。在基于顺序的推荐模块中,发现访问材料的潜在模式并以两种格式显示,包括加权关联规则和紧凑树结构(称为模式树)。在基于属性的模块中,在通过K-means算法使用潜在模式对学习者进行聚类之后,引入了学习者偏好树(LPT),以考虑材料的多维属性,学习者的等级以及所访问材料的顺序。混合,加权和级联混合方法用于生成最终的组合建议。实验表明,该方法在准确性,查全率和列表内相似度方面优于以前的算法。主要的贡献是通过结合上下文信息(包括所访问材料的顺序和顺序模式,学习者的评分以及材料的多维属性)来提高建议的质量和减轻稀疏性问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号