We present a general framework to learn functions in tensor product reproducing kernel Hilbert spaces (TP-RKHSs). The methodology is based on a novel representer theorem suitable for existing as well as new spectral penalties for tensors. When the functions in the TP-RKHS are defined on the Cartesian product of finite discrete sets, in particular, our main problem formulation admits as a special case existing tensor completion problems. Other special cases include transfer learning with multimodal side information and multilinear multitask learning. For the latter case, our kernel-based view is instrumental to derive nonlinear extensions of existing model classes. We give a novel algorithm and show in experiments the usefulness of the propo...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
Abstract—This paper presents a wide framework for non-linear online supervised learning tasks in the...
AbstractThe regularity of functions from reproducing kernel Hilbert spaces (RKHSs) is studied in the...
Many real world datasets occur or can be arranged into multi-modal structures. With such datasets, t...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
International audiencePositive definite operator-valued kernels generalize the well-known notion of ...
Incorporating invariance information is important for many learning problems. To exploit invariances...
Incorporating invariance information is important for many learning problems. To exploit invariances...
Positive definite operator-valued kernels generalize the well-known notion of reproducing kernels, a...
We study a multitask learning problem in which each task is parametrized by a weight vector and inde...
We study a multitask learning problem in which each task is parametrized by a weight vector and inde...
Given a finite or countably infinite family of Hilbert spaces \((H_j)_{j\in N} \), we study the Hilb...
Given a finite or countably infinite family of Hilbert spaces \((H_j)_{j\in N} \), we study the Hilb...
Abstract. While tensor factorizations have become increasingly popu-lar for learning on various form...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
Abstract—This paper presents a wide framework for non-linear online supervised learning tasks in the...
AbstractThe regularity of functions from reproducing kernel Hilbert spaces (RKHSs) is studied in the...
Many real world datasets occur or can be arranged into multi-modal structures. With such datasets, t...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
International audiencePositive definite operator-valued kernels generalize the well-known notion of ...
Incorporating invariance information is important for many learning problems. To exploit invariances...
Incorporating invariance information is important for many learning problems. To exploit invariances...
Positive definite operator-valued kernels generalize the well-known notion of reproducing kernels, a...
We study a multitask learning problem in which each task is parametrized by a weight vector and inde...
We study a multitask learning problem in which each task is parametrized by a weight vector and inde...
Given a finite or countably infinite family of Hilbert spaces \((H_j)_{j\in N} \), we study the Hilb...
Given a finite or countably infinite family of Hilbert spaces \((H_j)_{j\in N} \), we study the Hilb...
Abstract. While tensor factorizations have become increasingly popu-lar for learning on various form...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
Abstract—This paper presents a wide framework for non-linear online supervised learning tasks in the...
AbstractThe regularity of functions from reproducing kernel Hilbert spaces (RKHSs) is studied in the...