论文标题
通过自适应块对角线表示的凸子空间聚类
Convex Subspace Clustering by Adaptive Block Diagonal Representation
论文作者
论文摘要
子空间聚类是一类广泛研究的聚类方法,其中光谱型方法是其重要的子类。它的关键第一步是希望学习具有块对角线结构的表示系数矩阵。为了实现这一步骤,许多方法是通过在系数矩阵上施加不同的结构先验来依次提出的。这些征收可以大致分为两类,即间接和直接。前者介绍了诸如稀疏性和较低排名的先验,以间接或隐式学习块对角线结构。但是,对于嘈杂的数据,不能保证所需的块对角线。尽管后者直接或显式强加了块对角结构,例如块对角线表示(BDR),以确保所谓的块对角线,即使数据很嘈杂,但以失去前者目标所具有的凸性的代价为代价。为了补偿其各自的缺点,在本文中,我们遵循直接线,提出自适应块对角线表示(ABDR),这些块对角表示(ABDR)明确地追求块对角线而不牺牲间接凸的凸度。具体而言,ABDR启发了凸二次的启发,ABDR强制地通过专门设计的凸正则器融合了系数矩阵的列和行,因此自然享受其优点并自适应获得块数量。最后,关于合成和真实基准测试的实验结果证明了ABDR对最新的(SOTA)的优越性。
Subspace clustering is a class of extensively studied clustering methods where the spectral-type approaches are its important subclass. Its key first step is to desire learning a representation coefficient matrix with block diagonal structure. To realize this step, many methods were successively proposed by imposing different structure priors on the coefficient matrix. These impositions can be roughly divided into two categories, i.e., indirect and direct. The former introduces the priors such as sparsity and low rankness to indirectly or implicitly learn the block diagonal structure. However, the desired block diagonalty cannot necessarily be guaranteed for noisy data. While the latter directly or explicitly imposes the block diagonal structure prior such as block diagonal representation (BDR) to ensure so-desired block diagonalty even if the data is noisy but at the expense of losing the convexity that the former's objective possesses. For compensating their respective shortcomings, in this paper, we follow the direct line to propose Adaptive Block Diagonal Representation (ABDR) which explicitly pursues block diagonalty without sacrificing the convexity of the indirect one. Specifically, inspired by Convex BiClustering, ABDR coercively fuses both columns and rows of the coefficient matrix via a specially designed convex regularizer, thus naturally enjoying their merits and adaptively obtaining the number of blocks. Finally, experimental results on synthetic and real benchmarks demonstrate the superiority of ABDR to the state-of-the-arts (SOTAs).