DeepVA:通过语义交互和深度学习连接认知和计算

Yail Bian, John E. Wenskovitch, Chris North
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引用次数: 10

摘要

本文研究了深度学习(DL)表示与传统工程特征相比如何支持视觉分析中的语义交互(SI)。基于数据特征,SI试图通过用户与数据项的交互来模拟用户的认知推理。我们假设深度学习表示包含有意义的高级抽象,可以更好地捕获用户的高级认知意图。为了弥合视觉分析中认知和计算之间的差距,我们提出了DeepVA(深度视觉分析),它使用高级深度学习表示来进行语义交互,而不是低级手工制作的数据特征。为了评估DeepVA并将其与具有较低级特征的SI模型进行比较,我们设计并实现了一个系统,该系统扩展了具有三个不同抽象级别特征的传统SI管道。为了测试任务抽象和特征抽象之间的关系,我们在三个不同的任务抽象层次上执行视觉概念学习任务,使用与三个不同特征抽象层次的语义交互。DeepVA有效地加速了数据的认知理解和计算建模之间的交互收敛,特别是在高度抽象的任务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepVA: Bridging Cognition and Computation through Semantic Interaction and Deep Learning
This paper examines how deep learning (DL) representations, in contrast to traditional engineered features, can support semantic interaction (SI) in visual analytics. SI attempts to model user’s cognitive reasoning via their interaction with data items, based on the data features. We hypothesize that DL representations contain meaningful high-level abstractions that can better capture users’ high-level cognitive intent. To bridge the gap between cognition and computation in visual analytics, we propose DeepVA (Deep Visual Analytics), which uses high-level deep learning representations for semantic interaction instead of low-level hand-crafted data features. To evaluate DeepVA and compare to SI models with lower-level features, we design and implement a system that extends a traditional SI pipeline with features at three different levels of abstraction. To test the relationship between task abstraction and feature abstraction in SI, we perform visual concept learning tasks at three different task abstraction levels, using semantic interaction with three different feature abstraction levels. DeepVA effectively hastened interactive convergence between cognitive understanding and computational modeling of the data, especially in high abstraction tasks.
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