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arxiv: 2606.04176 · v1 · pith:Q6Z6FNNWnew · submitted 2026-06-02 · 💻 cs.LG · math.ST· stat.ML· stat.TH

Low-rank Distributional Matrix Completion

classification 💻 cs.LG math.STstat.MLstat.TH
keywords distributionalmatrixcompletionentrieslow-rankembeddingsestimatorintroduce
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We study a distributional generalization of the matrix completion problem in which each entry of the target matrix is a probability distribution rather than a scalar. In this setting, only a subset of matrix entries is observed, and even for observed entries, the underlying distributions are not directly accessible; instead, we observe finitely many samples drawn from them. To represent distributional entries, we employ kernel mean embeddings and introduce a notion of Tucker rank for distribution-valued matrices to capture their low-rank structure. The infinite-dimensional nature of kernel embeddings poses significant methodological challenges. To address this, we introduce functional unfolding operators that link the proposed distributional low-rank structure to the classical Tucker rank for finite-dimensional tensors. Based on this framework, we propose a novel estimator for distributional matrix completion. We establish non-asymptotic error bounds that characterize the statistical performance of the estimator. Extensive experiments on synthetic data and a real-world application demonstrate the effectiveness of the proposed method.

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