TaskFinder: A Semantics-Based Methodology for Visualization Task Recommendation

Analytics Pub Date : 2024-07-04 DOI:10.3390/analytics3030015
Darius Coelho, Bhavya Ghai, Arjun Krishna, Maria C. Velez-Rojas, Steve Greenspan, Serge Mankovski, Klaus Mueller
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Abstract

Data visualization has entered the mainstream, and numerous visualization recommender systems have been proposed to assist visualization novices, as well as busy professionals, in selecting the most appropriate type of chart for their data. Given a dataset and a set of user-defined analytical tasks, these systems can make recommendations based on expert coded visualization design principles or empirical models. However, the need to identify the pertinent analytical tasks beforehand still exists and often requires domain expertise. In this work, we aim to automate this step with TaskFinder, a prototype system that leverages the information available in textual documents to understand domain-specific relations between attributes and tasks. TaskFinder employs word vectors as well as a custom dependency parser along with an expert-defined list of task keywords to extract and rank associations between tasks and attributes. It pairs these associations with a statistical analysis of the dataset to filter out tasks irrelevant given the data. TaskFinder ultimately produces a ranked list of attribute–task pairs. We show that the number of domain articles needed to converge to a recommendation consensus is bounded for our approach. We demonstrate our TaskFinder over multiple domains with varying article types and quantities.
任务搜索器:基于语义的可视化任务推荐方法
数据可视化已成为主流,人们提出了许多可视化推荐系统,以帮助可视化新手和繁忙的专业人士为其数据选择最合适的图表类型。给定一个数据集和一组用户定义的分析任务,这些系统就能根据专家编码的可视化设计原则或经验模型提出建议。然而,事先确定相关分析任务的需求依然存在,而且往往需要领域专业知识。在这项工作中,我们的目标是利用 TaskFinder 自动完成这一步骤,该原型系统可利用文本文档中的可用信息来理解属性与任务之间的特定领域关系。TaskFinder 采用单词向量、自定义依赖性解析器以及专家定义的任务关键词列表来提取任务和属性之间的关联并对其进行排序。它将这些关联与数据集的统计分析相结合,以过滤与数据无关的任务。TaskFinder 最终会生成属性-任务对的排序列表。我们的研究表明,对于我们的方法来说,达成推荐共识所需的领域文章数量是有界限的。我们在文章类型和数量各不相同的多个领域中演示了我们的 TaskFinder。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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