论文标题

DeepClue:通过多层合奏在深神经网络中通过多层合奏增强图像聚类

DeepCluE: Enhanced Image Clustering via Multi-layer Ensembles in Deep Neural Networks

论文作者

Huang, Dong, Chen, Ding-Hua, Chen, Xiangji, Wang, Chang-Dong, Lai, Jian-Huang

论文摘要

最近,深层聚类已成为复杂数据聚类的有前途的技术。尽管取得了很大的进步,但以前的深层聚类主要是通过仅利用单层表示,例如,通过在最后一个完全连接的层上进行K-Means聚类或将某些聚类损失与特定层相关联,从而忽略了为增强多层代表性的共同利用的可能性来增强型号的表演,从而构建或学习最终聚类。鉴于此,本文通过合奏(深clue)方法提出了深层聚类,该方法通过利用深神经网络中多层的力量来弥合深度聚类和集体聚类之间的差距。特别是,我们利用体重共享的卷积神经网络作为骨干,通过实例级对比度学习(通过实例投影仪)和群集级的对比度学习(通过群集投影仪)以不受欢迎的方式进行了训练。此后,从训练有素的网络中提取了多层特征表示形式,并在其上进一步进行了集合聚类过程。具体而言,通过高效的簇从多层表示生成了一组多元化的基础聚类。然后,通过利用基于熵的标准来自动估计多个基本聚类中簇的可靠性,该标准将基于熵的基础群集重新构建为加权群集的双分部分图。通过通过转移切割对此两分的图进行分区,可以获得最终共识聚类。六个图像数据集的实验结果证实了DeepClue比最新的深群集方法的优势。

Deep clustering has recently emerged as a promising technique for complex data clustering. Despite the considerable progress, previous deep clustering works mostly build or learn the final clustering by only utilizing a single layer of representation, e.g., by performing the K-means clustering on the last fully-connected layer or by associating some clustering loss to a specific layer, which neglect the possibilities of jointly leveraging multi-layer representations for enhancing the deep clustering performance. In view of this, this paper presents a Deep Clustering via Ensembles (DeepCluE) approach, which bridges the gap between deep clustering and ensemble clustering by harnessing the power of multiple layers in deep neural networks. In particular, we utilize a weight-sharing convolutional neural network as the backbone, which is trained with both the instance-level contrastive learning (via an instance projector) and the cluster-level contrastive learning (via a cluster projector) in an unsupervised manner. Thereafter, multiple layers of feature representations are extracted from the trained network, upon which the ensemble clustering process is further conducted. Specifically, a set of diversified base clusterings are generated from the multi-layer representations via a highly efficient clusterer. Then the reliability of clusters in multiple base clusterings is automatically estimated by exploiting an entropy-based criterion, based on which the set of base clusterings are re-formulated into a weighted-cluster bipartite graph. By partitioning this bipartite graph via transfer cut, the final consensus clustering can be obtained. Experimental results on six image datasets confirm the advantages of DeepCluE over the state-of-the-art deep clustering approaches.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源