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RankAxis: Towards a Systematic Combination of Projection and Ranking in Multi-Attribute Data Exploration

Authors :
Liu, Qiangqiang
Ren, Yukun
Zhu, Zhihua
Li, Dai
Ma, Xiaojuan
Li, Quan
Publication Year :
2022

Abstract

Projection and ranking are frequently used analysis techniques in multi-attribute data exploration. Both families of techniques help analysts with tasks such as identifying similarities between observations and determining ordered subgroups, and have shown good performances in multi-attribute data exploration. However, they often exhibit problems such as distorted projection layouts, obscure semantic interpretations, and non-intuitive effects produced by selecting a subset of (weighted) attributes. Moreover, few studies have attempted to combine projection and ranking into the same exploration space to complement each other's strengths and weaknesses. For this reason, we propose RankAxis, a visual analytics system that systematically combines projection and ranking to facilitate the mutual interpretation of these two techniques and jointly support multi-attribute data exploration. A real-world case study, expert feedback, and a user study demonstrate the efficacy of RankAxis.<br />Comment: IEEE Transactions on Visualization and Computer Graphics (Proc. IEEE VIS 2022)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.01493
Document Type :
Working Paper