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学习线性回归的非负稀疏图。

Learning a Nonnegative Sparse Graph for Linear Regression.

出版信息

IEEE Trans Image Process. 2015 Sep;24(9):2760-71. doi: 10.1109/TIP.2015.2425545.

Abstract

Previous graph-based semisupervised learning (G-SSL) methods have the following drawbacks: 1) they usually predefine the graph structure and then use it to perform label prediction, which cannot guarantee an overall optimum and 2) they only focus on the label prediction or the graph structure construction but are not competent in handling new samples. To this end, a novel nonnegative sparse graph (NNSG) learning method was first proposed. Then, both the label prediction and projection learning were integrated into linear regression. Finally, the linear regression and graph structure learning were unified within the same framework to overcome these two drawbacks. Therefore, a novel method, named learning a NNSG for linear regression was presented, in which the linear regression and graph learning were simultaneously performed to guarantee an overall optimum. In the learning process, the label information can be accurately propagated via the graph structure so that the linear regression can learn a discriminative projection to better fit sample labels and accurately classify new samples. An effective algorithm was designed to solve the corresponding optimization problem with fast convergence. Furthermore, NNSG provides a unified perceptiveness for a number of graph-based learning methods and linear regression methods. The experimental results showed that NNSG can obtain very high classification accuracy and greatly outperforms conventional G-SSL methods, especially some conventional graph construction methods.

摘要

先前的基于图的半监督学习(G-SSL)方法存在以下缺点:1)它们通常预先定义图结构,然后使用它来进行标签预测,这不能保证整体最优;2)它们只关注标签预测或图结构构建,但不擅长处理新样本。为此,我们首先提出了一种新颖的非负稀疏图(NNSG)学习方法。然后,将标签预测和投影学习集成到线性回归中。最后,在线性回归和图结构学习之间建立了统一的框架,以克服这两个缺点。因此,提出了一种名为学习用于线性回归的 NNSG 的新方法,其中同时执行线性回归和图学习,以保证整体最优。在学习过程中,标签信息可以通过图结构准确地传播,从而使线性回归能够学习到有区别的投影,以更好地拟合样本标签并准确地对新样本进行分类。设计了一种有效的算法来解决具有快速收敛性的相应优化问题。此外,NNSG 为许多基于图的学习方法和线性回归方法提供了统一的感知。实验结果表明,NNSG 可以获得非常高的分类精度,并大大优于传统的 G-SSL 方法,尤其是一些传统的图构建方法。

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