ReorderBench : A Benchmark for Matrix Reordering
 Jiangning Zhu -
 Zheng Wang -
 Zhiyang Shen -
 Lai Wei -
 Fengyuan Tian -
 Mengchen Liu -
 Shixia Liu -

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 DOI: 10.1109/TVCG.2025.3560345
Room: Hall E2
Keywords
Visualization, Measurement, Benchmark testing, Heuristic algorithms, Approximation algorithms, Stars, Symmetric matrices, Indexes, Deep learning, Training
Abstract
Matrix reordering permutes the rows and columns of a matrix to reveal meaningful visual patterns, such as blocks that represent clusters. A comprehensive collection of matrices, along with a scoring method for measuring the quality of visual patterns in these matrices, contributes to building a benchmark. This benchmark is essential for selecting or designing suitable reordering algorithms for revealing specific patterns. In this paper, we build a matrix-reordering benchmark, ReorderBench, with the goal of evaluating and improving matrix-reordering techniques. This is achieved by generating a large set of representative and diverse matrices and scoring these matrices with a convolution- and entropy-based method. Our benchmark contains 2,835,000 binary matrices and 5,670,000 continuous matrices, each generated to exhibit one of four visual patterns: block, off-diagonal block, star, or band, along with 450 real-world matrices featuring hybrid visual patterns. We demonstrate the usefulness of ReorderBench through three main applications in matrix reordering: 1) evaluating different reordering algorithms, 2) creating a unified scoring model to measure the visual patterns in any matrix, and 3) developing a deep learning model for matrix reordering.