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 12511300 of 1963 papers

TitleStatusHype
Green Machine Learning via Augmented Gaussian Processes and Multi-Information Source Optimization0
Grouped Gaussian Processes for Solar Power Prediction0
Group Importance Sampling for Particle Filtering and MCMC0
Guided Bayesian Optimization: Data-Efficient Controller Tuning with Digital Twin0
Hands-on Experience with Gaussian Processes (GPs): Implementing GPs in Python - I0
Harmonizable mixture kernels with variational Fourier features0
Harnessing Heterogeneity: Learning from Decomposed Feedback in Bayesian Modeling0
Heading Estimation Using Ultra-Wideband Received Signal Strength and Gaussian Processes0
Healing Gaussian Process Experts0
Intrinsic Gaussian Processes on Manifolds and Their Accelerations by Symmetry0
Heavy-Tailed Process Priors for Selective Shrinkage0
Heteroscedastic Gaussian processes for uncertainty modeling in large-scale crowdsourced traffic data0
Hi Detector, What's Wrong with that Object? Identifying Irregular Object From Images by Modelling the Detection Score Distribution0
Hierarchical Gaussian Processes with Wasserstein-2 Kernels0
Hierarchical Non-Stationary Temporal Gaussian Processes With L^1-Regularization0
Hierarchical shrinkage Gaussian processes: applications to computer code emulation and dynamical system recovery0
High-Dimensional Bernoulli Autoregressive Process with Long-Range Dependence0
High-dimensional near-optimal experiment design for drug discovery via Bayesian sparse sampling0
How to turn your camera into a perfect pinhole model0
How Wrong Am I? - Studying Adversarial Examples and their Impact on Uncertainty in Gaussian Process Machine Learning Models0
Hybrid Bayesian Neural Networks with Functional Probabilistic Layers0
Hyperboost: Hyperparameter Optimization by Gradient Boosting surrogate models0
Hyperspectral recovery from RGB images using Gaussian Processes0
Hypervolume-based Multi-objective Bayesian Optimization with Student-t Processes0
Identifying Causal Direction via Variational Bayesian Compression0
Improved active output selection strategy for noisy environments0
Improved Convergence Rates for Sparse Approximation Methods in Kernel-Based Learning0
Improved Inverse-Free Variational Bounds for Sparse Gaussian Processes0
Improve in-situ life prediction and classification performance by capturing both the present state and evolution rate of battery aging0
Improving Output Uncertainty Estimation and Generalization in Deep Learning via Neural Network Gaussian Processes0
Improving Random Forests by Smoothing0
Incorporating Side Information in Probabilistic Matrix Factorization with Gaussian Processes0
Incremental Ensemble Gaussian Processes0
Incremental Learning of Motion Primitives for Pedestrian Trajectory Prediction at Intersections0
Incremental Structure Discovery of Classification via Sequential Monte Carlo0
Index Set Fourier Series Features for Approximating Multi-dimensional Periodic Kernels0
Inducing Gaussian Process Networks0
Inducing Point Allocation for Sparse Gaussian Processes in High-Throughput Bayesian Optimisation0
Inference at the data's edge: Gaussian processes for modeling and inference under model-dependency, poor overlap, and extrapolation0
Inference for Gaussian Processes with Matern Covariogram on Compact Riemannian Manifolds0
Inference for Gaussian Processes with Matern Covariogram on Compact Riemannian Manifolds0
Inference for Large Scale Regression Models with Dependent Errors0
Inference on Causal Effects of Interventions in Time using Gaussian Processes0
Inferring Latent Velocities from Weather Radar Data using Gaussian Processes0
Inferring power system dynamics from synchrophasor data using Gaussian processes0
Infinite attention: NNGP and NTK for deep attention networks0
Infinite-channel deep stable convolutional neural networks0
Infinite-Fidelity Coregionalization for Physical Simulation0
Infinitely Wide Graph Convolutional Networks: Semi-supervised Learning via Gaussian Processes0
Infinite Mixtures of Multivariate Gaussian Processes0
Show:102550
← PrevPage 26 of 40Next →

Benchmark Results

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