Many common machine learning methods such as Support Vector Machines or Gaussian process inference make use of positive definite kernels, reproducing kernel Hilbert spaces, Gaussian processes, and regularization operators. In this work these objects are presented in a general, unifying framework, and interrelations are highlighted. With this in mind we then show how linear stochastic differential equation models can be incorporated naturally into the kernel framework. And vice versa, many kernel machines can be interpreted in terms of differential equations. We focus especially on ordinary differential equations, also known as dynamical systems, and it is shown that standard kernel inference algorithms are equivalent to Kalman filter method...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Linear systems occur throughout engineering and the sciences, most notably as differential equations...
Incorporation of the available prior knowledge into to learning framework can play an important role...
Many common machine learning methods such as Support Vector Machines or Gaussian process inference m...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
Most of the currently used techniques for linear system identification are based on classical estima...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
International audienceIt is often said that control and estimation problems are in duality. Recently...
Kernel machines traditionally arise from an elegant formulation based on measuring the smoothness of...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel methods are among the most popular techniques in machine learning. From a frequentist/discrim...
We propose a family of kernels based on the Binet-Cauchy theorem, and its extension to Fredholm oper...
We propose a new data-driven approach for learning the fundamental solutions (Green's functions) of ...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Linear systems occur throughout engineering and the sciences, most notably as differential equations...
Incorporation of the available prior knowledge into to learning framework can play an important role...
Many common machine learning methods such as Support Vector Machines or Gaussian process inference m...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
Most of the currently used techniques for linear system identification are based on classical estima...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
International audienceIt is often said that control and estimation problems are in duality. Recently...
Kernel machines traditionally arise from an elegant formulation based on measuring the smoothness of...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel methods are among the most popular techniques in machine learning. From a frequentist/discrim...
We propose a family of kernels based on the Binet-Cauchy theorem, and its extension to Fredholm oper...
We propose a new data-driven approach for learning the fundamental solutions (Green's functions) of ...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Linear systems occur throughout engineering and the sciences, most notably as differential equations...
Incorporation of the available prior knowledge into to learning framework can play an important role...