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Incomplete Multiview Clustering via Late Fusion

机译:通过后期融合实现不完整的多视图聚类

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摘要

In real-world applications of multiview clustering, some views may be incomplete due to noise, sensor failure, etc. Most existing studies in the field of incomplete multiview clustering have focused on early fusion strategies, for example, learning subspace from multiple views. However, these studies overlook the fact that clustering results with the visible instances in each view could be reliable under the random missing assumption; accordingly, it seems that learning a final clustering decision via late fusion of the clustering results from incomplete views would be more natural. To this end, we propose a late fusion method for incomplete multiview clustering. More specifically, the proposed method performs kernel k-means clustering on the visible instances in each view and then performs a late fusion of the clustering results from different views. In the late fusion step of the proposed method, we encode each view's clustering result as a zero-one matrix, of which each row serves as a compressed representation of the corresponding instance. We then design an alternate updating algorithm to learn a unified clustering decision that can best group the visible compressed representations in each view according to the k-means clustering objective. We compare the proposed method with several commonly used imputation methods and a representative early fusion method on six benchmark datasets. The superior clustering performance observed validates the effectiveness of the proposed method.
机译:在多视图聚类的实际应用中,由于噪声,传感器故障等原因,某些视图可能不完整。不完整多视图聚类领域中的大多数现有研究都集中在早期融合策略上,例如,从多个视图中学习子空间。但是,这些研究忽略了以下事实:在随机缺失假设下,每个视图中可见实例的聚类结果可能是可靠的;因此,似乎似乎很自然,通过从不完整的视角对聚类结果进行后期融合来学习最终的聚类决策。为此,我们提出了一种用于不完整多视图聚类的后期融合方法。更具体地说,所提出的方法对每个视图中的可见实例执行内核k均值聚类,然后对来自不同视图的聚类结果进行后期融合。在提出的方法的后期融合步骤中,我们将每个视图的聚类结果编码为零一矩阵,其中每一行充当对应实例的压缩表示。然后,我们设计一种替代更新算法,以学习统一的聚类决策,该决策可以根据k均值聚类目标最佳地对每个视图中的可见压缩表示进行分组。我们将提出的方法与几种常用的插补方法和具有代表性的早期融合方法进行了六个基准数据集的比较。观察到的优异的聚类性能验证了所提出方法的有效性。

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