Low-rank matrix approximation is an effective tool in alleviating the memory and computational burdens of kernel methods and sampling, as the mainstream of such algorithms, has drawn considerable attention in both theory and practice. This paper presents detailed studies on the Nyström sampling scheme and in particular, an error analysis that directly relates the Nyström approximation quality with the encoding powers of the landmark points in summarizing the data. The resultant error bound suggests a simple and efficient sampling scheme, the k-means clustering algorithm, for Nyström low-rank approximation. We compare it with state-of-the-art approaches that range from greedy schemes to probabilistic sampling. Our algorithm achieves signific...
ABSTRACT. We reconsider randomized algorithms for the low-rank approximation of symmetric positive s...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
Low-rank matrix approximation is an integral component of tools such as principal component analysis...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
We investigate, theoretically and empirically, the effectiveness of kernel K-means++ samples as land...
Kernel (or similarity) matrix plays a key role in many machine learning algorithms such as kernel me...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
The CUR matrix decomposition and the Nyström approximation are two important low-rank matrix approx...
Clustering is an unsupervised data exploration scenario that is of fundamental importance to pattern...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
The Nyström method is an efficient technique for the eigenvalue decomposition of large kernel matric...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Abstract — The Nyström method is an efficient technique for the eigenvalue decomposition of large ke...
Many kernel methods suffer from high time and space complexities and are thus prohibitive in big-dat...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
ABSTRACT. We reconsider randomized algorithms for the low-rank approximation of symmetric positive s...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
Low-rank matrix approximation is an integral component of tools such as principal component analysis...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
We investigate, theoretically and empirically, the effectiveness of kernel K-means++ samples as land...
Kernel (or similarity) matrix plays a key role in many machine learning algorithms such as kernel me...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
The CUR matrix decomposition and the Nyström approximation are two important low-rank matrix approx...
Clustering is an unsupervised data exploration scenario that is of fundamental importance to pattern...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
The Nyström method is an efficient technique for the eigenvalue decomposition of large kernel matric...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Abstract — The Nyström method is an efficient technique for the eigenvalue decomposition of large ke...
Many kernel methods suffer from high time and space complexities and are thus prohibitive in big-dat...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
ABSTRACT. We reconsider randomized algorithms for the low-rank approximation of symmetric positive s...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
Low-rank matrix approximation is an integral component of tools such as principal component analysis...