In most practical applications, it's common to utilize multiple features from different views to represent one object. Among these works, multi-view subspace-based clustering has gained extensive attention from many researchers, which aims to provide clustering solutions to multi-view data. However, most existing methods fail to take full use of the locality geometric structure and similarity relationship among samples under the multi-view scenario. To solve these issues, we propose a novel multi-view learning method with locality relationship constraint to explore the problem of multi-view clustering, called Locality Relationship Constrained Multi-view Clustering Framework (LRC-MCF). LRC-MCF aims to explore the diversity, geometric, consensus and complementary information among different views, by capturing the locality relationship information and the common similarity relationships among multiple views. Moreover, LRC-MCF takes sufficient consideration to weights of different views in finding the common-view locality structure and straightforwardly produce the final clusters. To effectually reduce the redundancy of the learned representations, the low-rank constraint on the common similarity matrix is considered additionally. To solve the minimization problem of LRC-MCF, an Alternating Direction Minimization (ADM) method is provided to iteratively calculate all variables LRC-MCF. Extensive experimental results on seven benchmark multi-view datasets validate the effectiveness of the LRC-MCF method.
翻译:在大多数实际应用中,通常使用不同观点的多重特征来代表一个对象。在这些作品中,多视角次空间集群得到了许多研究人员的广泛关注,目的是为多视角数据提供分组解决办法;然而,大多数现有方法未能充分利用多视角设想下的地点几何结构和样本之间的相似关系。为了解决这些问题,我们提议一种具有地域关系制约的新多视角学习方法,以探讨多视角集群问题,称为“地方关系聚合多视角组合框架”。 LRC-MCF旨在探索不同观点之间的多样性、几何、共识和互补信息,方法是通过收集地域关系信息和多种观点之间的共同相似关系关系。此外,LRC-MCF充分考虑到不同观点在寻找共同视角结构时的权重,直接产生最后的集群。为了有效减少所了解的表述的冗余,还审议了对共同相似的组合框架的低级别制约。为了解决LRC-MCF的最小化问题,一种对多种观点之间的共同观点的共识和互补关系关系。此外,LRC-RC-RC-F的模型化模型化的模型化为模型化。