ARViz: Interactive Visualization of Association Rules for RDF Data Exploration

Aline Menin, L. Cadorel, A. Tettamanzi, A. Giboin, Fabien L. Gandon, M. Winckler
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引用次数: 4

Abstract

Association rule mining often leads the analyst into a rough rummaging process to identify rules that are relevant to understand specific problems. We propose a visualization interface to assist the rule selection process and evaluate it on an RDF knowledge graph derived from the COVID-19 Open Research Dataset. The user interface supports data exploration with focus on the overview of rules through a scatter plot, subsets of rules through a chord diagram chart, and itemsets through an association graph which is dynamically created by entering an item of interest (i.e. a named entity). Further, the analyst can interactively recover a list of publications containing the named entities involved in a particular rule. Among the original aspects of our approach, we highlight the representation of attributes describing measures of interest (i.e. confidence and interestingness), a visual indication of existence (or not) of symmetry in association rules, the exploration of subsets of rules according to clusters of publications and named entities, and an interactive prompting that aims at expanding the discovery of named entities within selected association rules. We assess our approach through a semi-structured interview involving experts in the domains of data mining and biomedicine, whose feedback could assist the refinement of the visual and interaction tools.
用于RDF数据探索的关联规则的交互式可视化
关联规则挖掘通常会使分析人员进入一个粗略的搜索过程,以识别与理解特定问题相关的规则。我们提出了一个可视化界面来帮助规则选择过程,并在来自COVID-19开放研究数据集的RDF知识图上对其进行评估。用户界面支持数据探索,通过散点图关注规则概述,通过弦图关注规则子集,通过关联图关注项集,关联图通过输入感兴趣的项(即命名实体)动态创建。此外,分析人员可以交互式地恢复包含特定规则中涉及的命名实体的发布列表。在我们方法的原始方面中,我们强调了描述兴趣度量(即置信度和兴趣度)的属性的表示,关联规则中存在(或不存在)对称性的视觉指示,根据出版物和命名实体的集群探索规则子集,以及旨在扩大在所选关联规则中发现命名实体的交互式提示。我们通过与数据挖掘和生物医学领域的专家进行半结构化访谈来评估我们的方法,他们的反馈可以帮助改进可视化和交互工具。
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