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Global Solver and Its Efficient Approximation for Variational Bayesian Low-rank Subspace Clustering

机译:变分贝叶斯低秩子空间聚类的全局解法及其有效逼近

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When a probabilistic model and its prior are given, Bayesian learning offers inference with automatic parameter tuning. However, Bayesian learning is often obstructed by computational difficulty: the rigorous Bayesian learning is intractable in many models, and its variational Bayesian (VB) approximation is prone to suffer from local minima. In this paper, we overcome this difficulty for low-rank subspace clustering (LRSC) by providing an exact global solver and its efficient approximation. LRSC extracts a low-dimensional structure of data by embedding samples into the union of low-dimensional subspaces, and its variational Bayesian variant has shown good performance. We first prove a key property that the VB-LRSC model is highly redundant. Thanks to this property, the optimization problem of VB-LRSC can be separated into small subproblems, each of which has only a small number of unknown variables. Our exact global solver relies on another key property that the stationary condition of each subproblem consists of a set of polynomial equations, which is solvable with the homotopy method. For further computational efficiency, we also propose an efficient approximate variant, of which the stationary condition can be written as a polynomial equation with a single variable. Experimental results show the usefulness of our approach.
机译:当给出概率模型及其先验时,贝叶斯学习提供了自动参数调整的推论。但是,贝叶斯学习通常会受到计算难度的阻碍:严格的贝叶斯学习在许多模型中都是难于处理的,其变分贝叶斯(VB)逼近容易遭受局部极小值的困扰。在本文中,我们通过提供精确的全局求解器及其有效逼近来克服低秩子空间聚类(LRSC)的这一难题。 LRSC通过将样本嵌入到低维子空间的并集中来提取数据的低维结构,并且其变分贝叶斯变体已显示出良好的性能。我们首先证明VB-LRSC模型具有高度冗余性的关键特性。由于具有此属性,VB-LRSC的优化问题可以分为几个小子问题,每个子问题只有少量的未知变量。我们确切的全局求解器依赖于另一个关键属性,即每个子问题的平稳条件由一组多项式方程组成,可以用同伦方法求解。为了进一步提高计算效率,我们还提出了一种有效的近似变量,该变量的平稳条件可以写为具有单个变量的多项式方程。实验结果表明了我们方法的有效性。

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