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Bayesian Orthogonal Component Analysis for Sparse Representation

机译:稀疏表示的贝叶斯正交分量分析

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This paper addresses the problem of identifying a lower dimensional space where observed data can be sparsely represented. This undercomplete dictionary learning task can be formulated as a blind separation problem of sparse sources linearly mixed with an unknown orthogonal mixing matrix. This issue is formulated in a Bayesian framework. First, the unknown sparse sources are modeled as Bernoulli–Gaussian processes. To promote sparsity, a weighted mixture of an atom at zero and a Gaussian distribution is proposed as prior distribution for the unobserved sources. A noninformative prior distribution defined on an appropriate Stiefel manifold is elected for the mixing matrix. The Bayesian inference on the unknown parameters is conducted using a Markov chain Monte Carlo (MCMC) method. A partially collapsed Gibbs sampler is designed to generate samples asymptotically distributed according to the joint posterior distribution of the unknown model parameters and hyperparameters. These samples are then used to approximate the joint maximum a posteriori estimator of the sources and mixing matrix. Simulations conducted on synthetic data are reported to illustrate the performance of the method for recovering sparse representations. An application to sparse coding on undercomplete dictionary is finally investigated.
机译:本文解决了识别可稀疏表示观测数据的低维空间的问题。可以将这种不完全的字典学习任务表述为与未知的正交混合矩阵线性混合的稀疏源的盲分离问题。此问题是在贝叶斯框架中提出的。首先,将未知的稀疏源建模为伯努利-高斯过程。为了提高稀疏性,建议将零原子和高斯分布的加权混合物作为未观察源的先验分布。为混合矩阵选择在适当的Stiefel流形上定义的非信息先验分布。使用马尔可夫链蒙特卡洛(MCMC)方法对未知参数进行贝叶斯推断。设计了部分折叠的吉布斯采样器,以根据未知模型参数和超参数的联合后验分布生成渐近分布的样本。然后将这些样本用于近似源和混合矩阵的联合最大后验估计量。报告了对合成数据进行的模拟,以说明该方法用于恢复稀疏表示的性能。最后研究了在不完全字典上进行稀疏编码的应用。

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