Real data often appear in the form of multiple incomplete views. Incomplete multi-view clustering is an effective method to integrate these incomplete views. Previous methods only learn the consistent information between different views and ignore the unique information of each view, which limits their clustering performance and generalizations. To overcome this limitation, we propose a novel View Variation and View Heredity approach (V3H). Inspired by the variation and the heredity in genetics, V3H first decomposes each subspace into a variation matrix for the corresponding view and a heredity matrix for all the views to represent the unique information and the consistent information respectively. Then, by aligning different views based on their cluster indicator matrices, V3H integrates the unique information from different views to improve the clustering performance. Finally, with the help of the adjustable low-rank representation based on the heredity matrix, V3H recovers the underlying true data structure to reduce the influence of the large incompleteness. More importantly, V3H presents possibly the first work to introduce genetics to clustering algorithms for learning simultaneously the consistent information and the unique information from incomplete multi-view data. Extensive experimental results on fifteen benchmark datasets validate its superiority over other state-of-the-arts.
翻译:真实数据往往以多重不完整观点的形式出现。 不完整的多视图分组是整合这些不完整观点的有效方法。 以往的方法只是学习不同观点之间的一致信息,而忽略每种观点的独特信息,从而限制其分组性能和概括性。 为了克服这一限制,我们提议了一种新颖的视图变异和外观性(V3H)方法。 由于遗传学的变化和异端性,V3H首先将每个子空间分解为相应观点的变异矩阵和异端矩阵,供所有观点分别代表独特信息和一致信息的异端矩阵。 然后,V3H根据组合指标矩阵调整不同观点,整合不同观点的独特信息,以改进分组性绩效。最后,在基于遗传学矩阵的可调整的低级别代表制(V3H)的帮助下,V3H恢复了基本的真实数据结构,以减少大不完全性的影响。 更重要的是, V3H可能首次介绍遗传学矩阵,以同时学习一致信息以及不完整的多视角优势数据的独特信息。