分析时间事件序列中的时间属性

J. Magallanes, Lindsey van Gemeren, Steven Wood, M. Villa-Uriol
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引用次数: 2

摘要

事件数据存在于各种领域,如电子健康记录、日常生活活动和网络点击流记录。当前的事件数据可视化方法侧重于发现序列模式,但在研究事件序列中的时间属性时存在局限性。在研究患者流分析中的等待时间或访问长度时,时间属性尤为重要。我们提出了一种可视化分析方法,可以识别事件序列中持续时间和发生时间方面的趋势和异常值。所提出的方法使用单个顺序和时间模式概述来呈现事件数据。用户驱动的多事件对齐,序列相似性排序和事件的新颖视觉编码允许跨序列和序列内的时间趋势的比较。建议的可视化允许推导使用传统可视化无法获得的结果。所提出的方法已应用于谢菲尔德教学医院NHS基金会信托提供的真实世界数据集,得出了四类结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Time Attributes in Temporal Event Sequences
Event data is present in a variety of domains such as electronic health records, daily living activities and web clickstream records. Current visualization methods to explore event data focus on discovering sequential patterns but present limitations when studying time attributes in event sequences. Time attributes are especially important when studying waiting times or lengths of visit in patient flow analysis. We propose a visual analytics methodology that allows the identification of trends and outliers in respect of duration and time of occurrence in event sequences. The proposed method presents event data using a single Sequential and Time Patterns overview. User-driven alignment by multiple events, sorting by sequence similarity and a novel visual encoding of events allows the comparison of time trends across and within sequences. The proposed visualization allows the derivation of findings that otherwise could not be obtained using traditional visualizations. The proposed methodology has been applied to a real-world dataset provided by Sheffield Teaching Hospitals NHS Foundation Trust, for which four classes of conclusions were derived.
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