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Using Artificial Neural Networks to Identify Learning Styles

机译:使用人工神经网络识别学习方式

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Adaptive learning systems may be used to provide personalized content to students based on their learning styles which can improve students' performance and satisfaction, or reduce the time to learn. Although typically questionnaires exist to identify students' learning styles, there are several disadvantages when using such questionnaires. In order to overcome these disadvantages, research has been conducted on automatic approaches to identify learning styles. However, this line of research is still in an early stage and the accuracy levels of current approaches leave room for improvement before they can be effectively used in adaptive systems. In this paper, we introduce an approach which uses artificial neural networks to identify students' learning styles. The approach has been evaluated with data from 75 students and found to outperform current state of the art approaches. By increasing the accuracy level of learning style identification, more accurate advice can be provided to students, either by adaptive systems or by teachers who are informed about students' learning styles, leading to benefits for students such as higher performance, greater learning satisfaction and less time required to learn.
机译:自适应学习系统可用于基于学生的学习风格向他们提供个性化内容,从而可以提高学生的表现和满意度,或减少学习时间。尽管通常存在调查表来识别学生的学习方式,但使用此类调查表存在一些弊端。为了克服这些缺点,已经对识别学习风格的自动方法进行了研究。但是,这方面的研究仍处于早期阶段,当前方法的准确度水平尚待改进,然后才能有效地用于自适应系统中。在本文中,我们介绍了一种使用人工神经网络来识别学生的学习风格的方法。已使用来自75名学生的数据对这种方法进行了评估,发现该方法的性能优于当前的最新方法。通过提高学习风格识别的准确性水平,可以通过自适应系统或由了解学生学习风格的老师向学生提供更准确的建议,从而为学生带来诸如更高的绩效,更高的学习满意度和更少的学习收益学习所需的时间。

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