IEEE Trans Neural Netw Learn Syst. 2015 Oct;26(10):2261-74. doi: 10.1109/TNNLS.2014.2376936. Epub 2015 Jan 15.
Graph Laplacian has been widely exploited in traditional graph-based semisupervised learning (SSL) algorithms to regulate the labels of examples that vary smoothly on the graph. Although it achieves a promising performance in both transductive and inductive learning, it is not effective for handling ambiguous examples (shown in Fig. 1). This paper introduces deformed graph Laplacian (DGL) and presents label prediction via DGL (LPDGL) for SSL. The local smoothness term used in LPDGL, which regularizes examples and their neighbors locally, is able to improve classification accuracy by properly dealing with ambiguous examples. Theoretical studies reveal that LPDGL obtains the globally optimal decision function, and the free parameters are easy to tune. The generalization bound is derived based on the robustness analysis. Experiments on a variety of real-world data sets demonstrate that LPDGL achieves top-level performance on both transductive and inductive settings by comparing it with popular SSL algorithms, such as harmonic functions, AnchorGraph regularization, linear neighborhood propagation, Laplacian regularized least square, and Laplacian support vector machine.
图拉普拉斯在传统的基于图的半监督学习(SSL)算法中被广泛应用于调节在图上平滑变化的样本的标签。尽管它在传导和归纳学习中都取得了很好的效果,但它对于处理模糊样本(如图 1 所示)并不有效。本文引入了变形图拉普拉斯(DGL),并提出了通过 DGL 进行标签预测(LPDGL)的 SSL 方法。LPDGL 中使用的局部平滑项,对样本及其邻居进行局部正则化,能够通过正确处理模糊样本来提高分类准确性。理论研究表明,LPDGL 获得了全局最优决策函数,并且自由参数易于调整。基于稳健性分析推导出了泛化界。在各种真实数据集上的实验表明,与流行的 SSL 算法(如调和函数、AnchorGraph 正则化、线性邻域传播、拉普拉斯正则化最小二乘和拉普拉斯支持向量机)相比,LPDGL 在传导和归纳设置下都能达到顶级性能。