Matrix Reordering for Noisy Disordered Matrices: Optimality and Computationally Efficient Algorithms

IEEE TRANSACTIONS ON INFORMATION THEORY(2024)

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摘要
Motivated by applications in single-cell biology and metagenomics, we investigate the problem of matrix reordering based on a noisy disordered monotone Toeplitz matrix model. We establish the fundamental statistical limit for this problem in a decision-theoretic framework and demonstrate that a constrained least squares estimator achieves the optimal rate. However, due to its computational complexity, we analyze a popular polynomial-time algorithm, spectral seriation, and show that it is suboptimal. To address this, we propose a novel polynomial-time adaptive sorting algorithm with guaranteed performance improvement. Simulations and analyses of two real single-cell RNA sequencing datasets demonstrate the superiority of our algorithm over existing methods.
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关键词
Symmetric matrices,Noise measurement,Genomics,Bioinformatics,Sorting,Data models,Analytical models,Ranking (statistics),statistical learning,minimax techniques
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