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Connectionist recommendation in the wild: on the utility and scrutability of neural networks for personalized course guidance

机译:狂野的连接主义者推荐:关于神经网络用于个性化课程指导的实用性和可扩展性

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摘要

The aggregate behaviors of users can collectively encode deep semantic information about the objects with which they interact. In this paper, we demonstrate novel ways in which the synthesis of these data can illuminate the terrain of users' environment and support them in their decision making and wayfinding. A novel application of recurrent neural networks and skip-gram models, approaches popularized by their application to modeling language, are brought to bear on student university enrollment sequences to create vector representations of courses and map out traversals across them. We present demonstrations of how scrutability from these neural networks can be gained and how the combination of these techniques can be seen as an evolution of content tagging and a means for a recommender to balance user preferences inferred from data with those explicitly specified. From validation of the models to the development of a UI, we discuss additional requisite functionality informed by the results of a usability study leading to the ultimate deployment of the system at a university.
机译:用户的聚集行为可以集体编码有关与其交互的对象的深层语义信息。在本文中,我们展示了新颖的方式,这些数据的综合可以照亮用户环境的地形,并支持他们的决策和寻路。递归神经网络和跳跃语法模型的一种新颖应用(通过其在建模语言中的应用而流行)被带到了学生大学的入学序列上,以创建课程的矢量表示并绘制出遍历它们的路线。我们展示了如何从这些神经网络获得可擦写性的演示,以及如何将这些技术的组合视为内容标签的发展以及推荐者平衡从数据推断出的用户偏好与明确指定的偏好的方式的演示。从模型的验证到UI的开发,我们将讨论可用性研究的结果所带来的其他必要功能,这些结果将导致该系统在大学中得到最终部署。

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