通过主动搜索在交互式可视化中引导数据发现

S. Monadjemi, Sunwoo Ha, Quan Nguyen, Henry Chai, R. Garnett, Alvitta Ottley
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引用次数: 1

摘要

视觉分析的最新进展使我们能够从用户交互中学习并揭示分析目标。这些创新为在数据探索过程中积极引导用户奠定了基础。随着数据集的规模和复杂性的增长,提供这样的指导将变得更加重要,这将排除详尽的调查。与此同时,机器学习社区也在努力应对不断增长的数据集的规模和复杂性,从而排除了详尽的标签。主动学习是为在训练过程中主动引导模型而开发的一大类算法。我们将考虑这些类似的研究重点的交集。首先,我们讨论了将主动学习算法的选择与手头的任务相匹配的细微差别。这对性能至关重要,我们在模拟研究中证明了这一点。然后,我们提出了一项用户研究的结果,该研究由专门为该任务设计的主动学习算法指导,用于数据发现的特定任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Guided Data Discovery in Interactive Visualizations via Active Search
Recent advances in visual analytics have enabled us to learn from user interactions and uncover analytic goals. These innovations set the foundation for actively guiding users during data exploration. Providing such guidance will become more critical as datasets grow in size and complexity, precluding exhaustive investigation. Mean-while, the machine learning community also struggles with datasets growing in size and complexity, precluding exhaustive labeling. Active learning is a broad family of algorithms developed for actively guiding models during training. We will consider the intersection of these analogous research thrusts. First, we discuss the nuances of matching the choice of an active learning algorithm to the task at hand. This is critical for performance, a fact we demonstrate in a simulation study. We then present results of a user study for the particular task of data discovery guided by an active learning algorithm specifically designed for this task.
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