论文标题
通过一致性和不一致的联合建模进行多视图图形学习
Multi-view Graph Learning by Joint Modeling of Consistency and Inconsistency
论文作者
论文摘要
Graph Learning已成为一种有前途的技术,用于多视图聚类,其能力从多个视图中学习统一和健壮的图形。但是,现有的图形学习方法主要集中在多视图一致性问题上,但经常忽略了多个视图的不一致性,这使它们容易受到可能的低质量或嘈杂数据集的影响。为了克服这一限制,我们提出了一个新的多视图图形学习框架,该框架首次在统一的目标函数中同时且明确地对多视图的一致性和多视图不一致进行建模,通过该函数,通过该函数,通过该函数,通过该函数,每个单个视图图的一致和不一致的部分以及一致的统一图以及一致的部分融合了一致的部分,可以融合均可学习的部分。尽管优化目标函数是NP-HARD,但我们设计了一种高效的优化算法,该算法能够在统一图中的边缘数量中获得具有线性时间复杂性的近似解。此外,我们的多视图图学习方法可以应用于相似性图和异异图图,这在我们的框架中导致了两个基于图融合的变体。十二个多视图数据集的实验证明了该方法的鲁棒性和效率。
Graph learning has emerged as a promising technique for multi-view clustering with its ability to learn a unified and robust graph from multiple views. However, existing graph learning methods mostly focus on the multi-view consistency issue, yet often neglect the inconsistency across multiple views, which makes them vulnerable to possibly low-quality or noisy datasets. To overcome this limitation, we propose a new multi-view graph learning framework, which for the first time simultaneously and explicitly models multi-view consistency and multi-view inconsistency in a unified objective function, through which the consistent and inconsistent parts of each single-view graph as well as the unified graph that fuses the consistent parts can be iteratively learned. Though optimizing the objective function is NP-hard, we design a highly efficient optimization algorithm which is able to obtain an approximate solution with linear time complexity in the number of edges in the unified graph. Furthermore, our multi-view graph learning approach can be applied to both similarity graphs and dissimilarity graphs, which lead to two graph fusion-based variants in our framework. Experiments on twelve multi-view datasets have demonstrated the robustness and efficiency of the proposed approach.