Many similarity-based clustering methods work in two separate steps including similarity matrix computation and subsequent spectral clustering. However similarity measurement is challenging because it is usually impacted by many factors, e.g., the choice of similarity metric, neighborhood size, scale of data, noise and outliers. Thus the learned similarity matrix is often not suitable, let alone optimal, for the subsequent clustering. In addition, nonlinear similarity often exists in many real world data which, however, has not been effectively considered by most existing methods. To tackle these two challenges, we propose a model to simultaneously learn cluster indicator matrix and similarity information in kernel spaces in a principled wa...
Abstract The construction process for a similarity matrix has an important impact on the performance...
The construction of a similarity matrix is one significant step for the spectral clustering algorith...
We proposed two novel clustering approaches, AFS and AFSSC, to address the problems in image cluster...
The notion of similarities between data points is central to many classification and clustering algo...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Many clustering methods partition the data groups based on the input data similarity matrix. Thus, t...
© 2018 Datasets are often collected from different resources or comprised of multiple representation...
Data similarity is a key concept in many data-driven applications. Many algorithms are sensitive to ...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
Multi-task learning has received increasing attention in the past decade. Many supervised multi-task...
Obtaining a good similarity matrix is extremely important in subspace clustering. Current state-of-t...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
We consider the problem of learning from a similarity matrix (such as spectral clustering and low-di...
Kernel alignment has recently been employed for multiple kernel clustering (MKC). However, we find t...
Abstract The construction process for a similarity matrix has an important impact on the performance...
The construction of a similarity matrix is one significant step for the spectral clustering algorith...
We proposed two novel clustering approaches, AFS and AFSSC, to address the problems in image cluster...
The notion of similarities between data points is central to many classification and clustering algo...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Many clustering methods partition the data groups based on the input data similarity matrix. Thus, t...
© 2018 Datasets are often collected from different resources or comprised of multiple representation...
Data similarity is a key concept in many data-driven applications. Many algorithms are sensitive to ...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
Multi-task learning has received increasing attention in the past decade. Many supervised multi-task...
Obtaining a good similarity matrix is extremely important in subspace clustering. Current state-of-t...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
We consider the problem of learning from a similarity matrix (such as spectral clustering and low-di...
Kernel alignment has recently been employed for multiple kernel clustering (MKC). However, we find t...
Abstract The construction process for a similarity matrix has an important impact on the performance...
The construction of a similarity matrix is one significant step for the spectral clustering algorith...
We proposed two novel clustering approaches, AFS and AFSSC, to address the problems in image cluster...