WHATSNEXT: Guidance-enriched Exploratory Data Analysis with Interactive, Low-Code Notebooks
August 18, 2023 Β· Declared Dead Β· π IEEE Symposium on Visual Languages / Human-Centric Computing Languages and Environments
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Authors
Chen Chen, Jane Hoffswell, Shunan Guo, Ryan Rossi, Yeuk-Yin Chan, Fan Du, Eunyee Koh, Zhicheng Liu
arXiv ID
2308.09802
Category
cs.HC: Human-Computer Interaction
Citations
6
Venue
IEEE Symposium on Visual Languages / Human-Centric Computing Languages and Environments
Last Checked
4 months ago
Abstract
Computational notebooks such as Jupyter are popular for exploratory data analysis and insight finding. Despite the module-based structure, notebooks visually appear as a single thread of interleaved cells containing text, code, visualizations, and tables, which can be unorganized and obscure users' data analysis workflow. Furthermore, users with limited coding expertise may struggle to quickly engage in the analysis process. In this work, we design and implement an interactive notebook framework, WHATSNEXT, with the goal of supporting low-code visual data exploration with insight-based user guidance. In particular, we (1) re-design a standard notebook cell to include a recommendation panel that suggests possible next-step exploration questions or analysis actions to take, and (2) create an interactive, dynamic tree visualization that reflects the analytic dependencies between notebook cells to make it easy for users to see the structure of the data exploration threads and trace back to previous steps.
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