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多元时间序列预处理中的交互式视觉分析指南。

Guidance for Interactive Visual Analysis in Multivariate Time Series Preprocessing.

作者信息

Valdivia Flor de Luz Palomino, Baca Herwin Alayn Huillcen

机构信息

Faculty of Engineering, Academic Department of Engineering and Information Technology, Jose Maria Arguedas National University, Andahuaylas 03701, Peru.

出版信息

Sensors (Basel). 2025 Sep 9;25(18):5617. doi: 10.3390/s25185617.

DOI:10.3390/s25185617
PMID:41012856
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12473156/
Abstract

Multivariate time series analysis presents significant challenges due to its dynamism, heterogeneity, and scalability. Given this, preprocessing is considered a crucial step to ensure analytical quality. However, this phase falls solely on the user without system support, resulting in wasted time, subjective decision-making, and cognitive overload, and is prone to errors that affect the quality of the results. This situation reflects the lack of interactive visual analysis approaches that effectively integrate preprocessing with guidance mechanisms. The main objective of this work was to design and develop a guidance system for interactive visual analysis in multivariate time series preprocessing, allowing users to understand, evaluate, and adapt their decisions in this critical phase of the analytical workflow. To this end, we propose a new guide-based approach that incorporates recommendations, explainability, and interactive visualization. This approach is embodied in the GUIAVisWeb tool, which organizes a workflow through tasks, subtasks, and preprocessing algorithms; recommends appropriate components through consensus validation and predictive evaluation; and explains the justification for each recommendation through visual representations. The proposal was evaluated in two dimensions: (i) quality of the guidance, with an average score of 6.19 on the Likert scale (1-7), and (ii) explainability of the algorithm recommendations, with an average score of 5.56 on the Likert scale (1-6). In addition, a case study was developed with air quality data that demonstrated the functionality of the tool and its ability to support more informed, transparent, and effective preprocessing decisions.

摘要

多变量时间序列分析因其动态性、异质性和可扩展性而面临重大挑战。鉴于此,预处理被视为确保分析质量的关键步骤。然而,这一阶段完全依赖用户,缺乏系统支持,导致时间浪费、主观决策和认知过载,并且容易出现影响结果质量的错误。这种情况反映出缺乏能够有效将预处理与指导机制相结合的交互式视觉分析方法。这项工作的主要目标是设计并开发一个用于多变量时间序列预处理交互式视觉分析的指导系统,使用户能够在分析工作流程的这一关键阶段理解、评估并调整他们的决策。为此,我们提出一种新的基于指导的方法,该方法融合了建议、可解释性和交互式可视化。这种方法体现在GUIAVisWeb工具中,该工具通过任务、子任务和预处理算法组织工作流程;通过共识验证和预测评估推荐合适的组件;并通过视觉表示解释每条建议的依据。该提议从两个维度进行了评估:(i)指导质量,在李克特量表(1 - 7)上的平均得分为6.19;(ii)算法建议的可解释性,在李克特量表(1 - 6)上的平均得分为5.56。此外,利用空气质量数据开展了一个案例研究,展示了该工具的功能及其支持更明智、透明和有效预处理决策的能力。

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