Clustering ensemble generates a consensus clustering result by integrating multiple weak base clustering results. Although it often provides more robust results compared with single clustering methods, it still suffers from the robustness problem if it does not treat the unreliability of base results carefully. Conventional clustering ensemble methods often use all data for ensemble, while ignoring the noises or outliers on the data. Although some robust clustering ensemble methods are proposed, which extract the noises on the data, they still characterize the robustness in a single level, and thus they cannot comprehensively handle the complicated robustness problem. In this paper, to address this problem, we propose a novel Tri-level Robu...
A critical problem in cluster ensemble research is how to combine multiple clustering to yield a sup...
A clustering ensemble aims to combine multiple clustering models to produce a better result than tha...
This paper examines a schema for graph-theoretic clustering using node-based resilience measures. No...
Cluster ensembles aim to generate a stable and robust consensus clustering by combining multiple dif...
Abstract Clustering ensemble (CE), renowned for its robust and potent consensus capability, has garn...
The complexity of the data type and distribution leads to the increase in uncertainty in the relatio...
Clustering ensemble has emerged as an important extension of the classical clustering problem. It pr...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
As a powerful data analysis technique, clustering plays an important role in data mining. Traditiona...
Abstract. Cluster ensembles aim to generate a stable and robust con-sensus clustering by combining m...
Clustering ensembles have emerged as a powerful method for improving both the robustness as well as ...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
Abstract. This paper is on a graph clustering scheme inspired by ensemble learning. In short, the id...
In the clustering ensemble the quality of base-clusterings influences the consensus clustering. Alth...
Abstract. Consensus clustering methodologies combine a set of parti-tions on the clustering ensemble...
A critical problem in cluster ensemble research is how to combine multiple clustering to yield a sup...
A clustering ensemble aims to combine multiple clustering models to produce a better result than tha...
This paper examines a schema for graph-theoretic clustering using node-based resilience measures. No...
Cluster ensembles aim to generate a stable and robust consensus clustering by combining multiple dif...
Abstract Clustering ensemble (CE), renowned for its robust and potent consensus capability, has garn...
The complexity of the data type and distribution leads to the increase in uncertainty in the relatio...
Clustering ensemble has emerged as an important extension of the classical clustering problem. It pr...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
As a powerful data analysis technique, clustering plays an important role in data mining. Traditiona...
Abstract. Cluster ensembles aim to generate a stable and robust con-sensus clustering by combining m...
Clustering ensembles have emerged as a powerful method for improving both the robustness as well as ...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
Abstract. This paper is on a graph clustering scheme inspired by ensemble learning. In short, the id...
In the clustering ensemble the quality of base-clusterings influences the consensus clustering. Alth...
Abstract. Consensus clustering methodologies combine a set of parti-tions on the clustering ensemble...
A critical problem in cluster ensemble research is how to combine multiple clustering to yield a sup...
A clustering ensemble aims to combine multiple clustering models to produce a better result than tha...
This paper examines a schema for graph-theoretic clustering using node-based resilience measures. No...