Output kernel learning techniques allow to simultaneously learn a vector-valued function and a positive semidefinite matrix which describes the relationships between the outputs. In this paper, we introduce a new formulation that imposes a low-rank constraint on the output kernel and operates directly on a factor of the kernel matrix. First, we investigate the connection between output kernel learning and a regularization problem for an architecture with two layers. Then, we show that a variety of methods such as nuclear norm regularized regression, reduced-rank regression, principal component analysis, and low rank matrix approximation can be seen as special cases of the output kernel learning framework. Finally, we introduce a block coord...
Link prediction is addressed as an output kernel learning task through semi-supervised Output Kernel...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
<p>This paper examines a matrix-regularized multiple kernel learning (MKL) technique based on a noti...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
We propose a method to learn simultaneously a vector-valued function and a kernel between its compon...
We propose a method to learn simultaneously a vector-valued function and a kernel between its compon...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
We present a novel approach to learn a kernel-based regression function. It is based on the use of c...
Link prediction is addressed as an output kernel learning task through semi-supervised Output Kernel...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
<p>This paper examines a matrix-regularized multiple kernel learning (MKL) technique based on a noti...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
Output kernel learning techniques allow to simultaneously learn a vector-valued function and a posit...
We propose a method to learn simultaneously a vector-valued function and a kernel between its compon...
We propose a method to learn simultaneously a vector-valued function and a kernel between its compon...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
In this paper, we introduce a novel approach, called Input Output Kernel Regression (IOKR), for lear...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
We present a novel approach to learn a kernel-based regression function. It is based on the use of c...
Link prediction is addressed as an output kernel learning task through semi-supervised Output Kernel...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
<p>This paper examines a matrix-regularized multiple kernel learning (MKL) technique based on a noti...