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 601650 of 1963 papers

TitleStatusHype
Fleet Control using Coregionalized Gaussian Process Policy IterationCode0
Flexible and efficient emulation of spatial extremes processes via variational autoencodersCode0
Epistemic Uncertainty in Conformal Scores: A Unified ApproachCode0
Kernelized Capsule NetworksCode0
Finding Non-Uniform Quantization Schemes using Multi-Task Gaussian ProcessesCode0
Kernel-, mean- and noise-marginalised Gaussian processes for exoplanet transits and H_0 inferenceCode0
Adaptive Sampling to Reduce Epistemic Uncertainty Using Prediction Interval-Generation Neural NetworksCode0
Estimating Latent Demand of Shared Mobility through Censored Gaussian ProcessesCode0
Estimation of Dynamic Gaussian ProcessesCode0
Boundary Exploration for Bayesian Optimization With Unknown Physical ConstraintsCode0
Estimation of Z-Thickness and XY-Anisotropy of Electron Microscopy Images using Gaussian ProcessesCode0
Approximate Latent Force Model InferenceCode0
Evaluating the squared-exponential covariance function in Gaussian processes with integral observationsCode0
Evaluating Uncertainty in Deep Gaussian ProcessesCode0
Adversarial Robustness Guarantees for Gaussian ProcessesCode0
Latent Variable Multi-output Gaussian Processes for Hierarchical DatasetsCode0
Fixed-Mean Gaussian Processes for Post-hoc Bayesian Deep LearningCode0
Learning Constrained Dynamics with Gauss Principle adhering Gaussian ProcessesCode0
Evolving-Graph Gaussian ProcessesCode0
FRIDAY: Real-time Learning DNN-based Stable LQR controller for Nonlinear Systems under Uncertain DisturbancesCode0
Learning Gaussian Processes by Minimizing PAC-Bayesian Generalization BoundsCode0
Exact Gaussian Processes on a Million Data PointsCode0
Bayesian Modeling with Gaussian Processes using the GPstuff ToolboxCode0
Empirical analysis of representation learning and exploration in neural kernel banditsCode0
Calibrated Computation-Aware Gaussian ProcessesCode0
Learning of Weighted Multi-layer Networks via Dynamic Social Spaces, with Application to Financial Interbank TransactionsCode0
Federated Causal Inference from Observational DataCode0
Learning Scalable Deep Kernels with Recurrent StructureCode0
Few-Shot Speech Deepfake Detection Adaptation with Gaussian ProcessesCode0
Learning to Detect Sepsis with a Multitask Gaussian Process RNN ClassifierCode0
From Deep Additive Kernel Learning to Last-Layer Bayesian Neural Networks via Induced Prior ApproximationCode0
Fast Kernel Approximations for Latent Force Models and Convolved Multiple-Output Gaussian processesCode0
Bayesian Meta-Learning Through Variational Gaussian ProcessesCode0
Fast Matrix Square Roots with Applications to Gaussian Processes and Bayesian OptimizationCode0
Multi-fidelity classification using Gaussian processes: accelerating the prediction of large-scale computational modelsCode0
Dirichlet-based Gaussian Processes for Large-scale Calibrated ClassificationCode0
Chained Gaussian ProcessesCode0
Linear cost and exponentially convergent approximation of Gaussian Matérn processes on intervalsCode0
Fast Evaluation of Additive Kernels: Feature Arrangement, Fourier Methods, and Kernel DerivativesCode0
Direct loss minimization algorithms for sparse Gaussian processesCode0
Challenges in Gaussian Processes for Non Intrusive Load MonitoringCode0
MAGMA: Inference and Prediction with Multi-Task Gaussian ProcessesCode0
Adaptive RKHS Fourier Features for Compositional Gaussian Process ModelsCode0
Fast covariance parameter estimation of spatial Gaussian process models using neural networksCode0
Fast and Scalable Spike and Slab Variable Selection in High-Dimensional Gaussian ProcessesCode0
Bayesian Learning-Based Adaptive Control for Safety Critical SystemsCode0
Fast Approximate Multi-output Gaussian ProcessesCode0
How Good are Low-Rank Approximations in Gaussian Process Regression?Code0
Federated Learning for Non-factorizable Models using Deep Generative Prior ApproximationsCode0
Fully Bayesian inference for latent variable Gaussian process modelsCode0
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Benchmark Results

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