AdaVis: Adaptive and explainable visualization recommendation for tabular data
Automated visualization recommendation facilitates the rapid creation of effective visualizations, which is especially beneficial for users with limited time and limited knowledge of data visualization. There is an increasing trend in leveraging machine learning (ML) techniques to achieve an end-to-...
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sg-smu-ink.sis_research-96182024-01-25T08:20:29Z AdaVis: Adaptive and explainable visualization recommendation for tabular data ZHANG, Songheng WANG, Yong LI, Haotian QU, Huamin Automated visualization recommendation facilitates the rapid creation of effective visualizations, which is especially beneficial for users with limited time and limited knowledge of data visualization. There is an increasing trend in leveraging machine learning (ML) techniques to achieve an end-to-end visualization recommendation. However, existing ML-based approaches implicitly assume that there is only one appropriate visualization for a specific dataset, which is often not true for real applications. Also, they often work like a black box, and are difficult for users to understand the reasons for recommending specific visualizations. To fill the research gap, we propose AdaVis, an adaptive and explainable approach to recommend one or multiple appropriate visualizations for a tabular dataset. It leverages a box embedding-based knowledge graph to well model the possible one-to-many mapping relations among different entities (i.e., data features, dataset columns, datasets, and visualization choices). The embeddings of the entities and relations can be learned from dataset-visualization pairs. Also, AdaVis incorporates the attention mechanism into the inference framework. Attention can indicate the relative importance of data features for a dataset and provide fine-grained explainability. Our extensive evaluations through quantitative metric evaluations, case studies, and user interviews demonstrate the effectiveness of AdaVis. 2023-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8615 info:doi/10.1109/TVCG.2023.3316469 https://ink.library.smu.edu.sg/context/sis_research/article/9618/viewcontent/AdaVis_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Adaptation models Data visualization Feature extraction Knowledge Graphs Logical Reasoning Magnetic heads Visualization Recommendation Graphics and Human Computer Interfaces Numerical Analysis and Scientific Computing |
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Adaptation models Data visualization Feature extraction Knowledge Graphs Logical Reasoning Magnetic heads Visualization Recommendation Graphics and Human Computer Interfaces Numerical Analysis and Scientific Computing ZHANG, Songheng WANG, Yong LI, Haotian QU, Huamin AdaVis: Adaptive and explainable visualization recommendation for tabular data |
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Automated visualization recommendation facilitates the rapid creation of effective visualizations, which is especially beneficial for users with limited time and limited knowledge of data visualization. There is an increasing trend in leveraging machine learning (ML) techniques to achieve an end-to-end visualization recommendation. However, existing ML-based approaches implicitly assume that there is only one appropriate visualization for a specific dataset, which is often not true for real applications. Also, they often work like a black box, and are difficult for users to understand the reasons for recommending specific visualizations. To fill the research gap, we propose AdaVis, an adaptive and explainable approach to recommend one or multiple appropriate visualizations for a tabular dataset. It leverages a box embedding-based knowledge graph to well model the possible one-to-many mapping relations among different entities (i.e., data features, dataset columns, datasets, and visualization choices). The embeddings of the entities and relations can be learned from dataset-visualization pairs. Also, AdaVis incorporates the attention mechanism into the inference framework. Attention can indicate the relative importance of data features for a dataset and provide fine-grained explainability. Our extensive evaluations through quantitative metric evaluations, case studies, and user interviews demonstrate the effectiveness of AdaVis. |
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ZHANG, Songheng WANG, Yong LI, Haotian QU, Huamin |
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ZHANG, Songheng WANG, Yong LI, Haotian QU, Huamin |
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ZHANG, Songheng |
title |
AdaVis: Adaptive and explainable visualization recommendation for tabular data |
title_short |
AdaVis: Adaptive and explainable visualization recommendation for tabular data |
title_full |
AdaVis: Adaptive and explainable visualization recommendation for tabular data |
title_fullStr |
AdaVis: Adaptive and explainable visualization recommendation for tabular data |
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AdaVis: Adaptive and explainable visualization recommendation for tabular data |
title_sort |
adavis: adaptive and explainable visualization recommendation for tabular data |
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Institutional Knowledge at Singapore Management University |
publishDate |
2023 |
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https://ink.library.smu.edu.sg/sis_research/8615 https://ink.library.smu.edu.sg/context/sis_research/article/9618/viewcontent/AdaVis_av.pdf |
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