Lu Jianglin, Lai Zhihui, Wang Hailing, Chen Yudong, Zhou Jie, Shen Linlin
IEEE Trans Neural Netw Learn Syst. 2022 Jan;33(1):185-199. doi: 10.1109/TNNLS.2020.3027602. Epub 2022 Jan 5.
Sparse discriminative projection learning has attracted much attention due to its good performance in recognition tasks. In this article, a framework called generalized embedding regression (GER) is proposed, which can simultaneously perform low-dimensional embedding and sparse projection learning in a joint objective function with a generalized orthogonal constraint. Moreover, the label information is integrated into the model to preserve the global structure of data, and a rank constraint is imposed on the regression matrix to explore the underlying correlation structure of classes. Theoretical analysis shows that GER can obtain the same or approximate solution as some related methods with special settings. By utilizing this framework as a general platform, we design a novel supervised feature extraction approach called jointly sparse embedding regression (JSER). In JSER, we construct an intrinsic graph to characterize the intraclass similarity and a penalty graph to indicate the interclass separability. Then, the penalty graph Laplacian is used as the constraint matrix in the generalized orthogonal constraint to deal with interclass marginal points. Moreover, the L -norm is imposed on the regression terms for robustness to outliers and data's variations and the regularization term for jointly sparse projection learning, leading to interesting semantic interpretability. An effective iterative algorithm is elaborately designed to solve the optimization problem of JSER. Theoretically, we prove that the subproblem of JSER is essentially an unbalanced Procrustes problem and can be solved iteratively. The convergence of the designed algorithm is also proved. Experimental results on six well-known data sets indicate the competitive performance and latent properties of JSER.
稀疏判别投影学习因其在识别任务中的良好性能而备受关注。本文提出了一种名为广义嵌入回归(GER)的框架,它可以在具有广义正交约束的联合目标函数中同时进行低维嵌入和稀疏投影学习。此外,将标签信息集成到模型中以保留数据的全局结构,并对回归矩阵施加秩约束以探索类别的潜在相关结构。理论分析表明,GER在特殊设置下可以获得与一些相关方法相同或近似的解。通过将此框架用作通用平台,我们设计了一种名为联合稀疏嵌入回归(JSER)的新型监督特征提取方法。在JSER中,我们构建一个内在图来表征类内相似性,并构建一个惩罚图来指示类间可分性。然后,将惩罚图拉普拉斯算子用作广义正交约束中的约束矩阵来处理类间边缘点。此外,对回归项施加L -范数以提高对异常值和数据变化的鲁棒性,并施加正则化项用于联合稀疏投影学习,从而产生有趣的语义可解释性。精心设计了一种有效的迭代算法来解决JSER的优化问题。从理论上讲,我们证明了JSER的子问题本质上是一个不平衡的Procrustes问题,可以通过迭代求解。还证明了所设计算法的收敛性。在六个著名数据集上的实验结果表明了JSER的竞争性能和潜在特性。