DeepCluE: Enhanced Image Clustering via Multi-layer Ensembles in Deep
Neural Networks
- URL: http://arxiv.org/abs/2206.00359v2
- Date: Sun, 17 Sep 2023 15:30:14 GMT
- Title: DeepCluE: Enhanced Image Clustering via Multi-layer Ensembles in Deep
Neural Networks
- Authors: Dong Huang, Ding-Hua Chen, Xiangji Chen, Chang-Dong Wang, Jian-Huang
Lai
- Abstract summary: This paper presents a Deep Clustering via Ensembles (DeepCluE) approach.
It bridges the gap between deep clustering and ensemble clustering by harnessing the power of multiple layers in deep neural networks.
Experimental results on six image datasets confirm the advantages of DeepCluE over the state-of-the-art deep clustering approaches.
- Score: 53.88811980967342
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
Related papers
- Reinforcement Graph Clustering with Unknown Cluster Number [91.4861135742095]
We propose a new deep graph clustering method termed Reinforcement Graph Clustering.
In our proposed method, cluster number determination and unsupervised representation learning are unified into a uniform framework.
In order to conduct feedback actions, the clustering-oriented reward function is proposed to enhance the cohesion of the same clusters and separate the different clusters.
arXiv Detail & Related papers (2023-08-13T18:12:28Z) - Deep Temporal Contrastive Clustering [21.660509622172274]
This paper presents a deep temporal contrastive clustering approach.
It incorporates the contrastive learning paradigm into the deep time series clustering research.
Experiments on a variety of time series datasets demonstrate the superiority of our approach over the state-of-the-art.
arXiv Detail & Related papers (2022-12-29T16:43:34Z) - Deep Clustering: A Comprehensive Survey [53.387957674512585]
Clustering analysis plays an indispensable role in machine learning and data mining.
Deep clustering, which can learn clustering-friendly representations using deep neural networks, has been broadly applied in a wide range of clustering tasks.
Existing surveys for deep clustering mainly focus on the single-view fields and the network architectures, ignoring the complex application scenarios of clustering.
arXiv Detail & Related papers (2022-10-09T02:31:32Z) - Deep Image Clustering with Contrastive Learning and Multi-scale Graph
Convolutional Networks [58.868899595936476]
This paper presents a new deep clustering approach termed image clustering with contrastive learning and multi-scale graph convolutional networks (IcicleGCN)
Experiments on multiple image datasets demonstrate the superior clustering performance of IcicleGCN over the state-of-the-art.
arXiv Detail & Related papers (2022-07-14T19:16:56Z) - Learning Statistical Representation with Joint Deep Embedded Clustering [2.1267423178232407]
StatDEC is an unsupervised framework for joint statistical representation learning and clustering.
Our experiments show that using these representations, one can considerably improve results on imbalanced image clustering across a variety of image datasets.
arXiv Detail & Related papers (2021-09-11T09:26:52Z) - Attention-driven Graph Clustering Network [49.040136530379094]
We propose a novel deep clustering method named Attention-driven Graph Clustering Network (AGCN)
AGCN exploits a heterogeneous-wise fusion module to dynamically fuse the node attribute feature and the topological graph feature.
AGCN can jointly perform feature learning and cluster assignment in an unsupervised fashion.
arXiv Detail & Related papers (2021-08-12T02:30:38Z) - Scalable Hierarchical Agglomerative Clustering [65.66407726145619]
Existing scalable hierarchical clustering methods sacrifice quality for speed.
We present a scalable, agglomerative method for hierarchical clustering that does not sacrifice quality and scales to billions of data points.
arXiv Detail & Related papers (2020-10-22T15:58:35Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.