We formulate ensemble clustering as a regularization problem over nuclear norm and cluster-wise group norm, and present an efficient optimization algorithm, which we call Robust Convex Ensemble Clustering (RCEC). A key feature of RCEC allows to remove anomalous cluster assignments obtained from component clustering methods by using the group-norm regularization. Moreover, the proposed method is convex and can find the globally optimal solution. We first showed that using synthetic data experiments, RCEC could learn stable cluster assignments from the input matrix including anomalous clusters. We then showed that RCEC outperformed state-of-the-art ensemble clustering methods by using real-world data sets.Peer reviewe
We present a new clustering algorithm by proposing a convex relaxation of hierarchical clustering, w...
Clustering is an important ingredient of unsupervised learning; classical clustering methods include...
This paper proposes an exceptionally simple algorithm, called forward-stagewise clustering, for conv...
Abstract—Data clustering is an important task and has found applications in numerous real-world prob...
k-means clustering is a popular approach to clustering. It is easy to implement and intuitive but ha...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Abstract. Cluster ensembles aim to generate a stable and robust con-sensus clustering by combining m...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
We suggest using the max-norm as a convex surrogate constraint for clustering. We show how this yiel...
The problem of finding clusters in a graph arises in several applications such as social networks, d...
Clustering based ensemble classifiers have seen a lot of focus recently because of their ability to ...
Clustering ensemble has emerged as an important extension of the classical clustering problem. It pr...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
Cluster ensembles aim to generate a stable and robust consensus clustering by combining multiple dif...
Chebyshev-inequality-based convex relaxations of Chance-Constrained Programs (CCPs) are shown to be ...
We present a new clustering algorithm by proposing a convex relaxation of hierarchical clustering, w...
Clustering is an important ingredient of unsupervised learning; classical clustering methods include...
This paper proposes an exceptionally simple algorithm, called forward-stagewise clustering, for conv...
Abstract—Data clustering is an important task and has found applications in numerous real-world prob...
k-means clustering is a popular approach to clustering. It is easy to implement and intuitive but ha...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Abstract. Cluster ensembles aim to generate a stable and robust con-sensus clustering by combining m...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
We suggest using the max-norm as a convex surrogate constraint for clustering. We show how this yiel...
The problem of finding clusters in a graph arises in several applications such as social networks, d...
Clustering based ensemble classifiers have seen a lot of focus recently because of their ability to ...
Clustering ensemble has emerged as an important extension of the classical clustering problem. It pr...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
Cluster ensembles aim to generate a stable and robust consensus clustering by combining multiple dif...
Chebyshev-inequality-based convex relaxations of Chance-Constrained Programs (CCPs) are shown to be ...
We present a new clustering algorithm by proposing a convex relaxation of hierarchical clustering, w...
Clustering is an important ingredient of unsupervised learning; classical clustering methods include...
This paper proposes an exceptionally simple algorithm, called forward-stagewise clustering, for conv...