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事件序列数据的可视化因果分析。

Visual Causality Analysis of Event Sequence Data.

出版信息

IEEE Trans Vis Comput Graph. 2021 Feb;27(2):1343-1352. doi: 10.1109/TVCG.2020.3030465. Epub 2021 Jan 28.

Abstract

Causality is crucial to understanding the mechanisms behind complex systems and making decisions that lead to intended outcomes. Event sequence data is widely collected from many real-world processes, such as electronic health records, web clickstreams, and financial transactions, which transmit a great deal of information reflecting the causal relations among event types. Unfortunately, recovering causalities from observational event sequences is challenging, as the heterogeneous and high-dimensional event variables are often connected to rather complex underlying event excitation mechanisms that are hard to infer from limited observations. Many existing automated causal analysis techniques suffer from poor explainability and fail to include an adequate amount of human knowledge. In this paper, we introduce a visual analytics method for recovering causalities in event sequence data. We extend the Granger causality analysis algorithm on Hawkes processes to incorporate user feedback into causal model refinement. The visualization system includes an interactive causal analysis framework that supports bottom-up causal exploration, iterative causal verification and refinement, and causal comparison through a set of novel visualizations and interactions. We report two forms of evaluation: a quantitative evaluation of the model improvements resulting from the user-feedback mechanism, and a qualitative evaluation through case studies in different application domains to demonstrate the usefulness of the system.

摘要

因果关系对于理解复杂系统的机制以及做出导致预期结果的决策至关重要。事件序列数据广泛地从许多真实世界的过程中收集,例如电子健康记录、网页点击流和金融交易,这些过程传输了大量反映事件类型之间因果关系的信息。不幸的是,从观察到的事件序列中恢复因果关系具有挑战性,因为异构和高维的事件变量通常与相当复杂的底层事件激励机制相关联,而从有限的观察中很难推断出这些机制。许多现有的自动化因果分析技术存在可解释性差的问题,并且未能包含足够数量的人类知识。在本文中,我们介绍了一种用于从事件序列数据中恢复因果关系的可视分析方法。我们将 Hawkes 过程上的 Granger 因果分析算法扩展到因果模型细化中,纳入用户反馈。可视化系统包括一个交互因果分析框架,支持自底向上的因果探索、迭代因果验证和细化,以及通过一组新的可视化和交互来进行因果比较。我们报告了两种形式的评估:一种是对用户反馈机制导致的模型改进的定量评估,另一种是通过不同应用领域的案例研究进行的定性评估,以展示系统的有用性。

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