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Visual Data Analysis with Task-Based Recommendations

Leixian Shen, Enya Shen, Zhiwei Tai, Yihao Xu, Jiaxiang Dong, Jianmin Wang

2022Data Science and Engineering18 citationsDOIOpen Access PDF

Abstract

General visualization recommendation systems typically make design decisions for the dataset automatically. However, most of them can only prune meaningless visualizations but fail to recommend targeted results. This paper contributes TaskVis, a task-oriented visualization recommendation system that allows users to select their tasks precisely on the interface. We first summarize a task base with 18 classical analytic tasks by a survey both in academia and industry. On this basis, we maintain a rule base, which extends empirical wisdom with our targeted modeling of the analytic tasks. Then, our rule-based approach enumerates all the candidate visualizations through answer set programming. After that, the generated charts can be ranked by four ranking schemes. Furthermore, we introduce a task-based combination recommendation strategy, leveraging a set of visualizations to give a brief view of the dataset collaboratively. Finally, we evaluate TaskVis through a series of use cases and a user study.

Topics & Concepts

Computer scienceVisualizationRanking (information retrieval)Task (project management)Set (abstract data type)Base (topology)Data visualizationInterface (matter)Data miningHuman–computer interactionInformation visualizationVisual analyticsInformation retrievalMachine learningData scienceProgramming languageMathematical analysisManagementMathematicsBubbleEconomicsMaximum bubble pressure methodParallel computingData Visualization and AnalyticsVideo Analysis and SummarizationAdvanced Text Analysis Techniques
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