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 15761600 of 1963 papers

TitleStatusHype
Deconditional Downscaling with Gaussian ProcessesCode0
Probabilistic Attention based on Gaussian Processes for Deep Multiple Instance LearningCode0
Stream-level flow matching with Gaussian processesCode0
Fully Bayesian inference for latent variable Gaussian process modelsCode0
Time-Conditioned Generative Modeling of Object-Centric Representations for Video Decomposition and PredictionCode0
A Markov Reward Process-Based Approach to Spatial InterpolationCode0
Functional Bayesian Tucker Decomposition for Continuous-indexed Tensor DataCode0
Structural Kernel Search via Bayesian Optimization and Symbolical Optimal TransportCode0
Decomposing Gaussians with Unknown CovarianceCode0
Black-box Coreset Variational InferenceCode0
Functional Regularisation for Continual Learning with Gaussian ProcessesCode0
Functional Variational Bayesian Neural NetworksCode0
Function-Space Distributions over KernelsCode0
Function-space Parameterization of Neural Networks for Sequential LearningCode0
Meta-Learning Acquisition Functions for Transfer Learning in Bayesian OptimizationCode0
Decentralized Online Ensembles of Gaussian Processes for Multi-Agent SystemsCode0
Semi-parametric γ-ray modeling with Gaussian processes and variational inferenceCode0
Dealing with Integer-valued Variables in Bayesian Optimization with Gaussian ProcessesCode0
Probabilistic Metamodels for an Efficient Characterization of Complex Driving ScenariosCode0
Efficiently Computable Safety Bounds for Gaussian Processes in Active LearningCode0
Efficient Large-scale Nonstationary Spatial Covariance Function Estimation Using Convolutional Neural NetworksCode0
Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data by Minimizing Predictive VarianceCode0
Avoiding pathologies in very deep networksCode0
Dealing with Categorical and Integer-valued Variables in Bayesian Optimization with Gaussian ProcessesCode0
Time Series Prediction for Graphs in Kernel and Dissimilarity SpacesCode0
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Benchmark Results

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