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Bibliographic Details
Main Authors: Watanabe, Chihiro, Suzuki, Taiji
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2103.14203
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author Watanabe, Chihiro
Suzuki, Taiji
author_facet Watanabe, Chihiro
Suzuki, Taiji
contents Matrix reordering is a task to permute the rows and columns of a given observed matrix such that the resulting reordered matrix shows meaningful or interpretable structural patterns. Most existing matrix reordering techniques share the common processes of extracting some feature representations from an observed matrix in a predefined manner, and applying matrix reordering based on it. However, in some practical cases, we do not always have prior knowledge about the structural pattern of an observed matrix. To address this problem, we propose a new matrix reordering method, called deep two-way matrix reordering (DeepTMR), using a neural network model. The trained network can automatically extract nonlinear row/column features from an observed matrix, which can then be used for matrix reordering. Moreover, the proposed DeepTMR provides the denoised mean matrix of a given observed matrix as an output of the trained network. This denoised mean matrix can be used to visualize the global structure of the reordered observed matrix. We demonstrate the effectiveness of the proposed DeepTMR by applying it to both synthetic and practical datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2103_14203
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Deep Two-Way Matrix Reordering for Relational Data Analysis
Watanabe, Chihiro
Suzuki, Taiji
Machine Learning
Matrix reordering is a task to permute the rows and columns of a given observed matrix such that the resulting reordered matrix shows meaningful or interpretable structural patterns. Most existing matrix reordering techniques share the common processes of extracting some feature representations from an observed matrix in a predefined manner, and applying matrix reordering based on it. However, in some practical cases, we do not always have prior knowledge about the structural pattern of an observed matrix. To address this problem, we propose a new matrix reordering method, called deep two-way matrix reordering (DeepTMR), using a neural network model. The trained network can automatically extract nonlinear row/column features from an observed matrix, which can then be used for matrix reordering. Moreover, the proposed DeepTMR provides the denoised mean matrix of a given observed matrix as an output of the trained network. This denoised mean matrix can be used to visualize the global structure of the reordered observed matrix. We demonstrate the effectiveness of the proposed DeepTMR by applying it to both synthetic and practical datasets.
title Deep Two-Way Matrix Reordering for Relational Data Analysis
topic Machine Learning
url https://arxiv.org/abs/2103.14203