Neural Networks in the Educational Sector: Challenges and Opportunities

Ugo Fiore
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引用次数: 3

Abstract

Abstract Given their increasing diffusion, deep learning networks have long been considered an important subject on which teaching efforts should be concentrated, to support a fast and effective training. In addition to that role, the availability of rich data coming from several sources underlines the potential of neural networks used as an analysis tool to identify critical aspects, plan upgrades and adjustments, and ultimately improve learning experience. Analysis and forecasting methods have been widely used in this context, allowing policy makers, managers and educators to make informed decisions. The capabilities of recurring neural networks—in particular Long Short-Term Memory networks—in the analysis of natural language have led to their use in measuring the similarity of educational materials. Massive Online Open Courses provide a rich variety of data about the learning behaviors of online learners. The analysis of learning paths provides insights related to the optimization of learning processes, as well as the prediction of outcomes and performance. Another active area of research concerns the recommendation of suitable personalized, adaptive, learning paths, based on varying sources, including even the tracing of eye-path movements. In this way, the transition from passive learning to active learning can be achieved. Challenges and opportunities in the application of neural networks in the educational sector are presented.
教育领域的神经网络:挑战与机遇
随着深度学习网络的日益普及,深度学习网络一直被认为是教学工作应该集中的一个重要主题,以支持快速有效的培训。除了这个角色,来自多个来源的丰富数据的可用性强调了神经网络作为分析工具的潜力,可以识别关键方面,计划升级和调整,并最终改善学习体验。分析和预测方法已广泛用于这方面,使决策者、管理人员和教育工作者能够作出明智的决定。循环神经网络——特别是长短期记忆网络——在分析自然语言方面的能力已经导致它们被用于测量教育材料的相似性。大规模在线开放课程提供了关于在线学习者学习行为的丰富多样的数据。学习路径的分析提供了与学习过程的优化相关的见解,以及对结果和性能的预测。另一个活跃的研究领域是根据不同的来源,甚至包括追踪眼球运动轨迹,推荐合适的个性化、适应性的学习路径。这样就可以实现从被动学习到主动学习的过渡。提出了神经网络在教育领域应用的挑战和机遇。
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