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Recommending additional study materials: Binary ratings vis-a-vis five-star ratings

机译:推荐额外的学习材料:二进制评级Vis-A-Vis五星级评级

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As various recommender approaches are increasingly considered in e-learning, the need for actual use cases to guide development efforts is growing. We report on our experiences of using non-algorithmic recommender features to recommend additional study materials on an undergraduate course in 2009-2011. The study data comes from student e-questionnaire replies and actual click by- click use data. Our discussion centres on using binary (useful/not useful) rating scale (2009-2010) vis-a-vis five-star rating scale (2011). Using five-star scale to increase the complexity of the rating decision significantly reduced dishonesty (rating items without viewing them), but at the price of fewer ratings overall and increased complexity of interpreting the ratings. In addition to explaining how ratings and other factors inter-influenced item-selecting, we also discuss how different scales (binary and five-star) affect the rating behaviour in e-learning and how the five-star rating distributions in e-learning relate to those in other domains. Furthermore, we discuss two models, high-quality approach and low-cost approach, of employing non-algorithmic recommending features in e-learning that emerge from our findings. The findings provide the field with insight into the actual dynamics of using recommender features in e-learning. Moreover, they provide practitioners with actionable information on dishonesty.
机译:随着各种推荐的方法越来越多地考虑在电子学习中,需要对实际使用案例引导开发工作的需求正在增长。我们报告了我们在2009 - 2011年在本科课程推荐额外的学习材料的经验。研究数据来自Student E-ChineNaire回复和实际单击 - 单击“使用数据”。我们的讨论中心使用二进制(有用/不用)评级规模(2009-2010)VIS-A-Vis五星级评级规模(2011)。使用五星级规模来提高评级决定的复杂性显着减少不诚实(不需要观察评级项目),但总体评级的价格较少,并提高了解释评级的复杂性。除了解释评级和其他因素的间间隔选择的因素外,我们还讨论了不同的尺度(二进制和五星)如何影响电子学习中的评级行为以及电子学习中的五星评级分布方式如何对其他域名的人。此外,我们讨论了两种型号,高质量的方法和低成本方法,在电子学习中采用非算法推荐功能,从我们的研究结果中出现。该研究结果为现场提供了在电子学习中使用推荐特征的实际动态的洞察力。此外,他们为从业者提供了有关不诚实的可行信息。

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