通过结构化导航的时间序列预测的可视化探索

Xiaoyi Wang, K. Hornbæk
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引用次数: 2

摘要

评估时间序列的预测能力涉及对多个图表的观察,这些图表代表了模型精度的不同方面。然而,用户观察到的图表顺序是不可控的,用户很难发现图表之间的关系。因此,我们提出了一种构建导航结构的方法,该结构基于图表的语法和语义来显示这些关系。该结构的摘录用作上下文菜单,允许用户浏览一系列图表,并以结构化的方式探索它们之间的关系。通过定性研究对系统进行了评价,结果表明我们的方法帮助用户探索图表之间的联系,增强了对时间序列预测性能的理解。
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Visual Exploration of Time-Series Forecasts Through Structured Navigation
Evaluating the forecasting ability of time-series involves observations of multiple charts representing different aspects of model accuracy. However, the sequence of the charts observed by users is not controlled and it is difficult for users to discover relations among charts. Therefore, we propose a method for constructing a navigation structure that shows these relations based on the syntax and semantics of the charts. An excerpt from the structure is used as a context menu that allows users to navigate through a series of charts and explore their relations in a structured way. A qualitative study is conducted to evaluate the system and the results show that our approach helps users explore the connections among charts and enhances the understanding of time-series forecasting performance.
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