KG4Vis: A knowledge graph-based approach for visualization recommendation
Visualization recommendation or automatic visualization generation can significantly lower the barriers for general users to rapidly create effective data visualizations, especially for those users without a background in data visualizations. However, existing rule-based approaches require tedious m...
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sg-smu-ink.sis_research-77722023-07-19T07:33:37Z KG4Vis: A knowledge graph-based approach for visualization recommendation LI, Haotian WANG, Yong ZHANG, Songheng SONG, Yangqiu QU, Huamin. Visualization recommendation or automatic visualization generation can significantly lower the barriers for general users to rapidly create effective data visualizations, especially for those users without a background in data visualizations. However, existing rule-based approaches require tedious manual specifications of visualization rules by visualization experts. Other machine learning-based approaches often work like black-box and are difficult to understand why a specific visualization is recommended, limiting the wider adoption of these approaches. This paper fills the gap by presenting KG4Vis, a knowledge graph (KG)-based approach for visualization recommendation. It does not require manual specifications of visualization rules and can also guarantee good explainability. Specifically, we propose a framework for building knowledge graphs, consisting of three types of entities (i.e., data features, data columns and visualization design choices) and the relations between them, to model the mapping rules between data and effective visualizations. A TransE-based embedding technique is employed to learn the embeddings of both entities and relations of the knowledge graph from existing dataset-visualization pairs. Such embeddings intrinsically model the desirable visualization rules. Then, given a new dataset, effective visualizations can be inferred from the knowledge graph with semantically meaningful rules. We conducted extensive evaluations to assess the proposed approach, including quantitative comparisons, case studies and expert interviews. The results demonstrate the effectiveness of our approach. 2022-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6769 info:doi/10.1109/TVCG.2021.3114863 https://ink.library.smu.edu.sg/context/sis_research/article/7772/viewcontent/21_TVCG_KG4VIS.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 Data visualization Visualization recommendation Knowledge graph Databases and Information Systems Graphics and Human Computer Interfaces |
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Data visualization Visualization recommendation Knowledge graph Databases and Information Systems Graphics and Human Computer Interfaces LI, Haotian WANG, Yong ZHANG, Songheng SONG, Yangqiu QU, Huamin. KG4Vis: A knowledge graph-based approach for visualization recommendation |
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Visualization recommendation or automatic visualization generation can significantly lower the barriers for general users to rapidly create effective data visualizations, especially for those users without a background in data visualizations. However, existing rule-based approaches require tedious manual specifications of visualization rules by visualization experts. Other machine learning-based approaches often work like black-box and are difficult to understand why a specific visualization is recommended, limiting the wider adoption of these approaches. This paper fills the gap by presenting KG4Vis, a knowledge graph (KG)-based approach for visualization recommendation. It does not require manual specifications of visualization rules and can also guarantee good explainability. Specifically, we propose a framework for building knowledge graphs, consisting of three types of entities (i.e., data features, data columns and visualization design choices) and the relations between them, to model the mapping rules between data and effective visualizations. A TransE-based embedding technique is employed to learn the embeddings of both entities and relations of the knowledge graph from existing dataset-visualization pairs. Such embeddings intrinsically model the desirable visualization rules. Then, given a new dataset, effective visualizations can be inferred from the knowledge graph with semantically meaningful rules. We conducted extensive evaluations to assess the proposed approach, including quantitative comparisons, case studies and expert interviews. The results demonstrate the effectiveness of our approach. |
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text |
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LI, Haotian WANG, Yong ZHANG, Songheng SONG, Yangqiu QU, Huamin. |
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LI, Haotian WANG, Yong ZHANG, Songheng SONG, Yangqiu QU, Huamin. |
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LI, Haotian |
title |
KG4Vis: A knowledge graph-based approach for visualization recommendation |
title_short |
KG4Vis: A knowledge graph-based approach for visualization recommendation |
title_full |
KG4Vis: A knowledge graph-based approach for visualization recommendation |
title_fullStr |
KG4Vis: A knowledge graph-based approach for visualization recommendation |
title_full_unstemmed |
KG4Vis: A knowledge graph-based approach for visualization recommendation |
title_sort |
kg4vis: a knowledge graph-based approach for visualization recommendation |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2022 |
url |
https://ink.library.smu.edu.sg/sis_research/6769 https://ink.library.smu.edu.sg/context/sis_research/article/7772/viewcontent/21_TVCG_KG4VIS.pdf |
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