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Erschienen in: Journal of Visualization 2/2022

13.10.2021 | Regular Paper

Visual analytics of genealogy with attribute-enhanced topological clustering

verfasst von: Ling Sun, Xiang Zhang, Xiaan Pan, Yuhua Liu, Wanghao Yu, Ting Xu, Fang Liu, Weifeng Chen, Yigang Wang, Weihua Su, Zhiguang Zhou

Erschienen in: Journal of Visualization | Ausgabe 2/2022

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Abstract

Clustering is able to present a brief illustration for families of interest and patterns of significance within large-scale genealogical datasets. In the traditional clustering methods, topological features are mostly taken for summarizing and organizing family trees. However, plentiful attributes are ignored which are also important to enhance the understanding and interpretation of genealogical clustering features. Thus, it is a crucial task to combine structures and attributes into a clustering model for exploring genealogy datasets. In this paper, we propose an attribute-enhanced topological clustering method for exploring genealogy datasets based on partial least squares (PLS). Firstly, a graphlet kernel method is utilized to measure the structure difference between family trees. Then, we leverage PLS to combine the learned vectors and multiple attributes, and a joint dimensionality reduction method is applied to project the high-dimensional vectors into a two-dimensional space in which a distance-based clustering method is employed to aggregate the similar family trees taking both the topological structures and attribute features into consideration. Further, we implement a visual analysis system with multi-view collaboration, including glyph, family tree view and parallel coordinate view, to represent, evaluate and explore the clustering features. Case studies and quantitative comparisons based on real-world genealogy datasets have demonstrated the effectiveness of our method in genealogical clustering and exploration.

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Metadaten
Titel
Visual analytics of genealogy with attribute-enhanced topological clustering
verfasst von
Ling Sun
Xiang Zhang
Xiaan Pan
Yuhua Liu
Wanghao Yu
Ting Xu
Fang Liu
Weifeng Chen
Yigang Wang
Weihua Su
Zhiguang Zhou
Publikationsdatum
13.10.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Journal of Visualization / Ausgabe 2/2022
Print ISSN: 1343-8875
Elektronische ISSN: 1875-8975
DOI
https://doi.org/10.1007/s12650-021-00802-x

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