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 191200 of 1963 papers

TitleStatusHype
Dense Gaussian Processes for Few-Shot SegmentationCode1
PriorCVAE: scalable MCMC parameter inference with Bayesian deep generative modellingCode1
Probabilistic Numeric Convolutional Neural NetworksCode1
A tutorial on learning from preferences and choices with Gaussian ProcessesCode1
Positional Encoder Graph Neural Networks for Geographic DataCode1
Random Forests for dependent dataCode1
Recyclable Gaussian ProcessesCode1
A unified framework for closed-form nonparametric regression, classification, preference and mixed problems with Skew Gaussian ProcessesCode1
Scalable Exact Inference in Multi-Output Gaussian ProcessesCode1
Analytical results for uncertainty propagation through trained machine learning regression models0
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Benchmark Results

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