Gaggle:模型空间导航的可视化分析

Subhajit Das, Dylan Cashman, Remco Chang, A. Endert
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引用次数: 3

摘要

最近的视觉分析系统利用多个机器学习模型来更好地拟合数据,而不是传统的单一、预定义的模型系统。然而,虽然多模型可视化分析系统可能是有效的,但它们增加的复杂性带来了可用性问题,因为用户需要与多个模型的参数进行交互。此外,各种模型算法和相关超参数的出现创造了一个详尽的模型空间来对模型进行采样。这使得导航该模型空间以为数据和任务找到正确的模型变得复杂。在本文中,我们提出了Gaggle,一个多模型视觉分析系统,使用户能够交互式地导航模型空间。Gaggle进一步将用户交互转化为推理,通过自动从高维模型空间中找到支持各种用户任务的最佳模型,简化了使用多个模型的工作。通过定性用户研究,我们展示了我们的方法如何帮助用户为分类和排序任务找到最佳模型。研究结果证实,Gaggle直观且易于使用,支持交互式模型空间导航,并在此处粘贴相应的版权声明。ACM现在支持三种不同的版权声明:•ACM版权:ACM拥有作品的版权。这是历史的方法。•许可:作者保留版权,但ACM获得独家出版许可。•开放获取:作者希望为作品的开放获取付费。额外费用必须支付给ACM。这个文本字段足够大,可以容纳适当的释放语句
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Gaggle: Visual Analytics for Model Space Navigation
Recent visual analytics systems make use of multiple machine learning models to better fit the data as opposed to traditional single, pre-defined model systems. However, while multi-model visual analytic systems can be effective, their added complexity poses usability concerns, as users are required to interact with the parameters of multiple models. Further, the advent of various model algorithms and associated hyperparameters creates an exhaustive model space to sample models from. This poses complexity to navigate this model space to find the right model for the data and the task. In this paper, we present Gaggle, a multi-model visual analytic system that enables users to interactively navigate the model space. Further translating user interactions into inferences, Gaggle simplifies working with multiple models by automatically finding the best model from the high-dimensional model space to support various user tasks. Through a qualitative user study, we show how our approach helps users to find a best model for a classification and ranking task. The study results confirm that Gaggle is intuitive and easy to use, supporting interactive model space navigation and auPaste the appropriate copyright statement here. ACM now supports three different copyright statements: • ACM copyright: ACM holds the copyright on the work. This is the historical approach. • License: The author(s) retain copyright, but ACM receives an exclusive publication license. • Open Access: The author(s) wish to pay for the work to be open access. The additional fee must be paid to ACM. This text field is large enough to hold the appropriate release statement assuming it is
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