SOTAVerified

Gaussian Processes

Gaussian Processes is a powerful framework for several machine learning tasks such as regression, classification and inference. Given a finite set of input output training data that is generated out of a fixed (but possibly unknown) function, the framework models the unknown function as a stochastic process such that the training outputs are a finite number of jointly Gaussian random variables, whose properties can then be used to infer the statistics (the mean and variance) of the function at test values of input.

Source: Sequential Randomized Matrix Factorization for Gaussian Processes: Efficient Predictions and Hyper-parameter Optimization

Papers

Showing 601610 of 1963 papers

TitleStatusHype
Fully Bayesian inference for latent variable Gaussian process modelsCode0
Multi-output Gaussian processes for inverse uncertainty quantification in neutron noise analysis0
Learning safety in model-based Reinforcement Learning using MPC and Gaussian ProcessesCode1
Fast and robust Bayesian Inference using Gaussian Processes with GPryCode1
Benefits of Monotonicity in Safe Exploration with Gaussian ProcessesCode0
Isotropic Gaussian Processes on Finite Spaces of GraphsCode0
Fantasizing with Dual GPs in Bayesian Optimization and Active Learning0
Monte Carlo Tree Descent for Black-Box Optimization0
Deep Gaussian Process-based Multi-fidelity Bayesian Optimization for Simulated Chemical ReactorsCode1
Data-driven Output Regulation via Gaussian Processes and Luenberger Internal Models0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ICKy, periodicRoot mean square error (RMSE)0.03Unverified