InsigHTable: Insight-driven Hierarchical Table Visualization with Reinforcement Learning
Guozheng Li, Peng He, Xinyu Wang, Runfei Li, Chi Harold Liu, Chuangxin, Ou, Dong He, Guoren Wang

TL;DR
InsigHTable is a system that uses deep reinforcement learning to assist users in efficiently constructing hierarchical table visualizations that reveal complex data insights, reducing cognitive load and improving understanding.
Contribution
The paper introduces InsigHTable, a novel insight-driven hierarchical table visualization system that employs deep reinforcement learning with auxiliary rewards for better visualization construction.
Findings
InsigHTable effectively helps users uncover data insights.
The reinforcement learning framework improves visualization decision-making.
User studies demonstrate increased efficiency in visualization creation.
Abstract
Embedding visual representations within original hierarchical tables can mitigate additional cognitive load stemming from the division of users' attention. The created hierarchical table visualizations can help users understand and explore complex data with multi-level attributes. However, because of many options available for transforming hierarchical tables and selecting subsets for embedding, the design space of hierarchical table visualizations becomes vast, and the construction process turns out to be tedious, hindering users from constructing hierarchical table visualizations with many data insights efficiently. We propose InsigHTable, a mixed-initiative and insight-driven hierarchical table transformation and visualization system. We first define data insights within hierarchical tables, which consider the hierarchical structure in the table headers. Since hierarchical table…
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Taxonomy
TopicsData Visualization and Analytics · Time Series Analysis and Forecasting · Video Analysis and Summarization
