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Visualization Recommendation Through Visual Relation Learning and Visual Preference Learning

conference contribution
posted on 2024-11-03, 15:19 authored by Daomin JiDaomin Ji, Hui Luo, Zhifeng Bao
Visualization recommendation (VisRec) is to automatically generate the most relevant visualization for a table of interest to a user. In this paper, we present a novel machine learning-based VisRec method, VisFormer, which solves VisRec in three stages: 1) Table representation learning, which is to learn accurate column-level representations for a table. To achieve it, we resort to Transformer, a powerful language model that can learn accurate word embeddings by modeling context. Specifically, we propose a hierarchical Transformer-based architecture to learn expressive column representations by capturing two types of context, intra-column context and cross-column context; 2) Visual Relation Learning, which is to capture column relations. To achieve it, we regard each visualization as a relation tuple with a special relation, visual relation, between the columns. Then for each visual relation, we use a neural network to evaluate the corresponding visualizations; 3) Visual Preference Learning, which is to extract visual preference features that can affect users’ decision from a visualization. To achieve so, we use a Convolution Neural Network to extract such features and explore how to use them to refine the recommendation results. We conduct experiments to compare with three state-of-the-art ML-based methods on a large real-world dataset, Plotly community feed. The experimental results show that compared with the most competitive baseline, the relative improvements of VisFormer on Recall@1, Recall@2, and Recall@3 are 8.8%, 20.6%, and 21.0%, respectively.

Funding

Advancing Analytical Query Processing with Urban Trajectory Data

Australian Research Council

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History

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  1. 1.
    DOI - Is published in 10.1109/ICDE55515.2023.00145
  2. 2.
    ISBN - Is published in 9798350322286 (urn:isbn:9798350322286)

Start page

1860

End page

1873

Total pages

14

Outlet

Proceedings of the 39th IEEE International Conference on Data Engineering (ICDE 2023)

Name of conference

ICDE 2023

Publisher

IEEE

Place published

United States

Start date

2023-04-03

End date

2023-04-07

Language

English

Copyright

© 2023 IEEE

Former Identifier

2006128544

Esploro creation date

2024-03-15

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