This paper provides a comprehensive error analysis of learning with vector-valued random features (RF). The theory is developed for RF ridge regression in a fully general infinite-dimensional input-output setting, but nonetheless applies to and improves existing finite-dimensional analyses. In contrast to comparable work in the literature, the approach proposed here relies on a direct analysis of the underlying risk functional and completely avoids the explicit RF ridge regression solution formula in terms of random matrices. This removes the need for concentration results in random matrix theory or their generalizations to random operators. The main results established in this paper include strong consistency of vector-valued RF estimators...
We consider the exploration-exploitation dilemma in finite-horizon reinforcement learning (RL). When...
We prove a non-asymptotic distribution-independent lower bound for the expected mean squared general...
International audienceThis article characterizes the exact asymptotics of random Fourier feature (RF...
In this note, we provide an elementary analysis of the prediction error of ridge regression with ran...
We study the generalization properties of ridge regression with random features in the statistical l...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
We consider the problem of approximating the regression function from noisy vector-valued data by an...
Data, defined as facts and statistics collected together for analysis is at the core of every infere...
Recent theoretical studies illustrated that kernel ridgeless regression can guarantee good generaliz...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
In this note, we provide an elementary analysis of the prediction error of ridge regression with ran...
We prove a non-asymptotic distribution-independent lower bound for the expected mean squared general...
We prove a universality theorem for learning with random features. Our result shows that, in terms o...
We consider the exploration-exploitation dilemma in finite-horizon reinforcement learning (RL). When...
We prove a non-asymptotic distribution-independent lower bound for the expected mean squared general...
International audienceThis article characterizes the exact asymptotics of random Fourier feature (RF...
In this note, we provide an elementary analysis of the prediction error of ridge regression with ran...
We study the generalization properties of ridge regression with random features in the statistical l...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
We consider the problem of approximating the regression function from noisy vector-valued data by an...
Data, defined as facts and statistics collected together for analysis is at the core of every infere...
Recent theoretical studies illustrated that kernel ridgeless regression can guarantee good generaliz...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
In this note, we provide an elementary analysis of the prediction error of ridge regression with ran...
We prove a non-asymptotic distribution-independent lower bound for the expected mean squared general...
We prove a universality theorem for learning with random features. Our result shows that, in terms o...
We consider the exploration-exploitation dilemma in finite-horizon reinforcement learning (RL). When...
We prove a non-asymptotic distribution-independent lower bound for the expected mean squared general...
International audienceThis article characterizes the exact asymptotics of random Fourier feature (RF...