Neural networks are a prevalent and effective machine learning component, and their application is leading to significant scientific progress in many domains. As the field of neural network systems is fast growing, it is important to understand how advances are communicated. Diagrams are key to this, appearing in almost all papers describing novel systems. This paper reports on a study into the use of neural network system diagrams, through interviews, card sorting, and qualitative feedback structured around ecologically-derived examples. We find high diversity of usage, perception and preference in both creation and interpretation of diagrams, examining this in the context of existing design, information visualisation, and user experience guidelines. This interview study is used to derive a framework for improving existing diagrams. This framework is evaluated through a mixed-methods experimental study, and a ``corpus-based'' approach examining properties of published diagrams linking the framework to citations. The studies suggest that the framework captures aspects relating to communicative efficacy of scholarly NN diagrams, and provides simple steps for their implementation.
翻译:神经网络是一个普遍和有效的机器学习组成部分,其应用正在许多领域带来显著的科学进步。随着神经网络系统领域正在迅速发展,了解如何传播进步是很重要的。图表是这方面的关键,几乎所有描述新系统的文件都提供了图表。本文报告了关于使用神经网络系统图的研究,通过访谈、卡片分类和围绕生态学实例的定性反馈,我们发现在创建和解释图表方面使用、感知和偏好的多样性很高,在现有的设计、信息可视化和用户经验准则的背景下对此加以审查。这项访谈研究被用来为改进现有图表制定框架。通过混合方法的实验研究以及“基于肉体”的方法来评估这一框架,审查将框架与引用联系起来的已公布的图表的特性。研究表明,该框架收集了与学术NN图表的交流效率有关的方方面,并提供了实施这些图的简单步骤。