首页> 外文期刊>Neurocomputing >Dual regularized multi-view non-negative matrix factorization for clustering
【24h】

Dual regularized multi-view non-negative matrix factorization for clustering

机译:用于聚类的双正则化多视图非负矩阵分解

获取原文
获取原文并翻译 | 示例

摘要

Many real-world datasets are described by multiple modalities or views, which can provide compatible and complementary information to each other. Synthesizing multi-view features for data representation can lead to more comprehensive data description, which may further allow us to find more effective solutions for multi-view data clustering. In this paper, a novel algorithm, called Dual-regularized Multi-view Non-negative Matrix Factorization (DMvNMF), is developed for multi-view data clustering, which is able to preserve the geometric structures of multi-view data in both the data space and the feature space. A parameter-free strategy is developed for constructing the data graph in the multi-view context. Firstly, the affinity graph is learned for each view adaptively by using the self-expressiveness property and the principle of sparsity, i.e., reconstructing each data instance by using a few most similar instances. Secondly, these affinity graphs for different views are linearly combined to generate the global data graph, where the combination weights (importance weights) are learned automatically and the views with better explanations for data reconstruction can get larger importance weights. The feature graph for each view is also constructed in a similar way and it is treated as the affinity graph. For model optimization, an iterative updating scheme is developed to support our DMvNMF algorithm and its convergence proof is also provided. Our experimental results on three real-world datasets have demonstrated the effectiveness of our DMvNMF algorithm for multi-view data clustering and it can significantly outperform other baseline methods. (C) 2017 Published by Elsevier B.V.
机译:许多现实世界的数据集通过多种方式或视图进行描述,它们可以相互提供兼容和互补的信息。合成用于数据表示的多视图特征可以导致更全面的数据描述,这可能进一步使我们能够找到用于多视图数据聚类的更有效的解决方案。本文针对多视图数据聚类开发了一种新颖的算法,称为双正则化多视图非负矩阵分解(DMvNMF),该算法能够在两个数据中保留多视图数据的几何结构。空间和要素空间。开发了一种无参数策略,用于在多视图上下文中构造数据图。首先,通过使用自表达属性和稀疏性原理为每个视图自适应地学习亲和图,即通过使用一些最相似的实例来重建每个数据实例。其次,将这些用于不同视图的亲和图进行线性组合以生成全局数据图,在该全局数据图中,将自动学习组合权重(重要性权重),并且对数据重构有更好解释的视图将获得更大的重要性权重。每个视图的特征图也以类似的方式构造,并将其视为亲和度图。对于模型优化,开发了一种迭代更新方案来支持我们的DMvNMF算法,并且还提供了其收敛证明。我们在三个真实数据集上的实验结果证明了DMvNMF算法在多视图数据聚类中的有效性,并且可以大大优于其他基准方法。 (C)2017由Elsevier B.V.发布

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号