A general, {\em rectangular} kernel matrix may be defined as $K_{ij} = \kappa(x_i,y_j)$ where $\kappa(x,y)$ is a kernel function and where $X=\{x_i\}_{i=1}^m$ and $Y=\{y_i\}_{i=1}^n$ are two sets of points. In this paper, we seek a low-rank approximation to a kernel matrix where the sets of points $X$ and $Y$ are large and are not well-separated (e.g., the points in $X$ and $Y$ may be ``intermingled''). Such rectangular kernel matrices may arise, for example, in Gaussian process regression where $X$ corresponds to the training data and $Y$ corresponds to the test data. In this case, the points are often high-dimensional. Since the point sets are large, we must exploit the fact that the matrix arises from a kernel function, and avoid forming...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2007.Includes bibliogr...
Low-rank approximation plays an important role in many areas of science and engineering such as sign...
A problem for many kernel-based methods is that the amount of computation required to find the solu...
International audienceWe consider supervised learning problems within the positive-definite kernel f...
Fitting data by a bounded complexity linear model is equivalent to low-rank approximation of a matri...
Training Support Vector Machines (regression and/or classification) involves solving a simply constr...
Many kernel matrices from differential equations or data science applications possess low or approxi...
We study the frequent problem of approximating a target matrix with a matrix of lower rank. We provi...
The problem of extracting low dimensional structure from high dimensional data arises in many applic...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
Kernel methods provide a principled way for general data representations. Multiple kernel learning a...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2007.Includes bibliogr...
Low-rank approximation plays an important role in many areas of science and engineering such as sign...
A problem for many kernel-based methods is that the amount of computation required to find the solu...
International audienceWe consider supervised learning problems within the positive-definite kernel f...
Fitting data by a bounded complexity linear model is equivalent to low-rank approximation of a matri...
Training Support Vector Machines (regression and/or classification) involves solving a simply constr...
Many kernel matrices from differential equations or data science applications possess low or approxi...
We study the frequent problem of approximating a target matrix with a matrix of lower rank. We provi...
The problem of extracting low dimensional structure from high dimensional data arises in many applic...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
Kernel methods provide a principled way for general data representations. Multiple kernel learning a...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2007.Includes bibliogr...
Low-rank approximation plays an important role in many areas of science and engineering such as sign...
A problem for many kernel-based methods is that the amount of computation required to find the solu...