With the advancement of the data acquisition techniques, multi-view learning has become a hot topic. Some multi-view learning methods assume that the multi-view data is complete, which means that all instances are present, but this too ideal. Certain tensor-based methods for handing incomplete multi-view data have emerged and have achieved better result. However, there are still some problems, such as use of traditional tensor norm which makes the computation high and is not able to handle out-of-sample. To solve these two problems, we proposed a new incomplete multi view learning method. A new tensor norm is defined to implement graph tensor data recover. The recovered graphs are then regularized to a consistent low-dimensional representation of the samples. In addition, adaptive weights are equipped to each view to adjust the importance of different views. Compared with the existing methods, our method nor only explores the consistency among views, but also obtains the low-dimensional representation of the new samples by using the learned projection matrix. An efficient algorithm based on inexact augmented Lagrange multiplier (ALM) method are designed to solve the model and convergence is proved. Experimental results on four datasets show the effectiveness of our method.
翻译:随着数据获取技术的进步,多视图学习已成为一个热门话题。一些多视图学习方法假定多视图数据是完整的,这意味着所有情况都存在,但这太理想了。某些提供不完全多视图数据的基于压力的方法已经出现,并取得了更好的结果。然而,仍然有一些问题,例如使用传统的高压规范使计算方法高,无法处理外抽样。为了解决这两个问题,我们建议了一种新的不完全的多视图学习方法。定义了一种新的高频标准,以实施图示强数据的恢复。随后,回收的图表被正规化为一贯的低维代表样本。此外,适应性权重也为每一种观点调整不同观点的重要性提供了设备。与现有方法相比,我们的方法或只是探索不同观点的一致性,而且还通过学习的预测矩阵获得了新样本的低维代表性。基于不切实际增强拉格兰特乘数(ALM)方法的高效算法是为了解决模型和趋同而设计的。此外,实验性加权结果也证明了我们四个数据集方法的有效性。