Multiple kernel clustering (MKC) is committed to achieving optimal information fusion from a set of base kernels. Constructing precise and local kernel matrices is proved to be of vital significance in applications since the unreliable distant-distance similarity estimation would degrade clustering per-formance. Although existing localized MKC algorithms exhibit improved performance compared to globally-designed competi-tors, most of them widely adopt KNN mechanism to localize kernel matrix by accounting for {\tau} -nearest neighbors. However, such a coarse manner follows an unreasonable strategy that the ranking importance of different neighbors is equal, which is impractical in applications. To alleviate such problems, this paper proposes...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Multiple kernel clustering aims to seek an appropriate combination of base kernels to mine inherent ...
Multiple kernel methods less consider the intrinsic manifold structure of multiple kernel data and e...
Kernel alignment has recently been employed for multiple kernel clustering (MKC). However, we find t...
Kernel k-means (KKM) and spectral clustering (SC) are two basic methods used for multiple kernel clu...
Multiple kernel $k$-means (MKKM) aims to improve clustering performance by learning an optimal kerne...
Current multiple kernel clustering algorithms compute a partition with the consensus kernel or graph...
Abstract Multiple kernel subspace clustering (MKSC) has attracted intensive attention since its powe...
Abstract The recently proposed multiple kernel k-means with incomplete kernels (MKKM-IK) optimally ...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
© 2018 Datasets are often collected from different resources or comprised of multiple representation...
Multiple kernel k-means (MKKM) clustering aims to optimally combine a group of pre-specified kernels...
Abstract Next-generation wireless networks are witnessing an increasing number of clustering applic...
Abstract Multiple kernel clustering (MKC) optimally utilizes a group of pre-specified base kernels ...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Multiple kernel clustering aims to seek an appropriate combination of base kernels to mine inherent ...
Multiple kernel methods less consider the intrinsic manifold structure of multiple kernel data and e...
Kernel alignment has recently been employed for multiple kernel clustering (MKC). However, we find t...
Kernel k-means (KKM) and spectral clustering (SC) are two basic methods used for multiple kernel clu...
Multiple kernel $k$-means (MKKM) aims to improve clustering performance by learning an optimal kerne...
Current multiple kernel clustering algorithms compute a partition with the consensus kernel or graph...
Abstract Multiple kernel subspace clustering (MKSC) has attracted intensive attention since its powe...
Abstract The recently proposed multiple kernel k-means with incomplete kernels (MKKM-IK) optimally ...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
© 2018 Datasets are often collected from different resources or comprised of multiple representation...
Multiple kernel k-means (MKKM) clustering aims to optimally combine a group of pre-specified kernels...
Abstract Next-generation wireless networks are witnessing an increasing number of clustering applic...
Abstract Multiple kernel clustering (MKC) optimally utilizes a group of pre-specified base kernels ...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Multiple kernel clustering aims to seek an appropriate combination of base kernels to mine inherent ...