基于自动秩确定的贝叶斯非负张量补全

IF 13.7
Zecan Yang;Laurence T. Yang;Huaimin Wang;Honglu Zhao;Debin Liu
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引用次数: 0

摘要

不完全张量的非负CANDECOMP/PARAFAC (CP)分解是一种寻找有意义且物理上可解释的潜在因子矩阵以实现非负张量补全的强大技术。然而,大多数现有的非负CP模型依赖于手动预定义的张量秩,这引入了不确定性,导致模型过拟合或欠拟合。尽管在概率框架中存在CP模型可以更好地估计排名,但它们缺乏从不完整数据中学习非负面因素的能力。此外,现有的方法往往侧重于点估计,而忽略了不确定性的估计。为了在统一的框架内解决这些问题,我们提出了一种具有自动秩确定的非负张量补全的全贝叶斯处理方法。利用贝叶斯框架和层次稀疏诱导先验,该模型可以提供非负潜在因素的不确定性估计,并有效地从不完全张量中获得低秩结构。此外,该模型还可以减轻参数选择和过拟合的问题。对于模型学习,我们开发了两种用于后验估计的全贝叶斯推理方法,并提出了一种混合计算策略,该策略显著降低了大规模数据的时间开销。对合成数据的大量仿真表明,该模型可以高精度地恢复缺失数据,并能从不完全张量中自动估计CP秩。此外,实际应用的结果表明,我们的模型在图像和视频绘制方面优于最先进的方法。代码可在https://github.com/zecanyang/BNTC上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Nonnegative Tensor Completion With Automatic Rank Determination
Nonnegative CANDECOMP/PARAFAC (CP) factorization of incomplete tensors is a powerful technique for finding meaningful and physically interpretable latent factor matrices to achieve nonnegative tensor completion. However, most existing nonnegative CP models rely on manually predefined tensor ranks, which introduces uncertainty and leads the models to overfit or underfit. Although the presence of CP models within the probabilistic framework can estimate rank better, they lack the ability to learn nonnegative factors from incomplete data. In addition, existing approaches tend to focus on point estimation and ignore estimating uncertainty. To address these issues within a unified framework, we propose a fully Bayesian treatment of nonnegative tensor completion with automatic rank determination. Benefitting from the Bayesian framework and the hierarchical sparsity-inducing priors, the model can provide uncertainty estimates of nonnegative latent factors and effectively obtain low-rank structures from incomplete tensors. Additionally, the proposed model can mitigate problems of parameter selection and overfitting. For model learning, we develop two fully Bayesian inference methods for posterior estimation and propose a hybrid computing strategy that reduces the time overhead for large-scale data significantly. Extensive simulations on synthetic data demonstrate that our model can recover missing data with high precision and automatically estimate CP rank from incomplete tensors. Moreover, results from real-world applications demonstrate that our model is superior to state-of-the-art methods in image and video inpainting. The code is available at https://github.com/zecanyang/BNTC.
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