论文标题

Explornn:通过视觉探索了解复发的神经网络

exploRNN: Understanding Recurrent Neural Networks through Visual Exploration

论文作者

Bäuerle, Alex, Albus, Patrick, Störk, Raphael, Seufert, Tina, Ropinski, Timo

论文摘要

由于深度学习的成功及其不断增长的就业市场,来自许多领域的学生和研究人员都对学习DL技术感兴趣。在此学习过程中,可视化已被证明具有很大的帮助。虽然大多数当前的教育可视化量针对一种特定的体系结构或用例,但尚未涵盖能够处理顺序数据的经常性神经网络(RNN)。尽管事实是,在顺序数据上的任务(例如文本和功能分析)是DL研究的最前沿。因此,我们提出了Explornn,这是RNN的第一个可探索的教育可视化。在使学习更轻松,更有趣的基础上,我们定义了针对理解RNN的教育目标。我们使用这些目标为视觉设计过程构成指南。通过可在线访问的Explornn,我们概述了RNN的训练过程,同时还允许对LSTM单元格内的数据流进行详细的检查。在一项实证研究中,我们评估了受试者间设计中的37名受试者,以研究与经典的基于文本的学习环境相比,Explornn的学习成果和认知负荷。虽然文本组中的学习者在肤浅的知识获取方面处于领先地位,但Explornn对更深入了解学习内容特别有用。此外,Explornn中的复杂内容被认为明显容易得多,并且与文本组相比,多余的负载较小。该研究表明,对于诸如经常性网络之类的困难学习材料,深层理解是重要的,诸如Explornn之类的交互式可视化可能会有所帮助。

Due to the success of deep learning (DL) and its growing job market, students and researchers from many areas are interested in learning about DL technologies. Visualization has proven to be of great help during this learning process. While most current educational visualizations are targeted towards one specific architecture or use case, recurrent neural networks (RNNs), which are capable of processing sequential data, are not covered yet. This is despite the fact that tasks on sequential data, such as text and function analysis, are at the forefront of DL research. Therefore, we propose exploRNN, the first interactively explorable educational visualization for RNNs. On the basis of making learning easier and more fun, we define educational objectives targeted towards understanding RNNs. We use these objectives to form guidelines for the visual design process. By means of exploRNN, which is accessible online, we provide an overview of the training process of RNNs at a coarse level, while also allowing a detailed inspection of the data flow within LSTM cells. In an empirical study, we assessed 37 subjects in a between-subjects design to investigate the learning outcomes and cognitive load of exploRNN compared to a classic text-based learning environment. While learners in the text group are ahead in superficial knowledge acquisition, exploRNN is particularly helpful for deeper understanding of the learning content. In addition, the complex content in exploRNN is perceived as significantly easier and causes less extraneous load than in the text group. The study shows that for difficult learning material such as recurrent networks, where deep understanding is important, interactive visualizations such as exploRNN can be helpful.

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