Recommender E-Learning platform using sentiment analysis aggregation

Jamal Mawane, A. Naji, M. Ramdani
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引用次数: 2

Abstract

The ubiquity and the fast growth of online resources has made it more and more difficult to try to respect the differences between learners in terms of cognitive ability and knowledge structure. This is even clearer with recommendation algorithms that use traditional collaborative filtering as they struggle through identifying more helpful, user friendly and easy learning resources. On top of that, the incoherent recommended content and the compound and nonlinear data on online learning users cannot be effectively handled, thus making the recommendations less efficient. To increase the level of efficiency of learning resource recommendations, this paper introduces a two steps efficient resource recommendation model. this model is based on unsupervised deep learning machine to identify learning styles and users' clusters, and a sentiment analyzer bonus system, based on user experience, to improve or decrease recommender items list classification. The model integrates also teachers to incite them to enhance the quality and the success rate of appropriate selected items. The elaboration of such a model requires the use of a considerable quantity of data learners' features, course content and assessment attributes. Furthermore, this model needs to incorporate learner interactions features. These are the requirements to build Learner features vector as input for the first step and Learner-Content ratings vector to choose the more efficient learning resource to recommend.
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推荐使用情感分析聚合的电子学习平台
网络资源的无所不在和快速增长使得尊重学习者在认知能力和知识结构方面的差异变得越来越困难。这一点在使用传统协同过滤的推荐算法中更加明显,因为它们在努力识别更有用、用户友好和容易学习的资源。此外,推荐内容的不连贯和在线学习用户的复合非线性数据无法得到有效处理,从而降低了推荐的效率。为了提高学习资源推荐的效率水平,本文引入了一种两步高效资源推荐模型。该模型基于无监督深度学习机来识别学习风格和用户簇,基于用户体验的情感分析器奖励系统来改进或减少推荐项目列表分类。该模式还整合了教师,以激励他们提高适当选择项目的质量和成功率。这种模型的阐述需要使用大量的数据学习者的特征、课程内容和评估属性。此外,该模型需要包含学习者交互特征。这些是构建学习者特征向量作为第一步的输入和学习者-内容评级向量以选择更有效的学习资源来推荐的要求。
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