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Bayesian Inference

Bayesian Inference is a methodology that employs Bayes Rule to estimate parameters (and their full posterior).

Papers

Showing 14411450 of 2226 papers

TitleStatusHype
The k-tied Normal Distribution: A Compact Parameterization of Gaussian Mean Field Posteriors in Bayesian Neural Networks0
Value of Information Analysis via Active Learning and Knowledge Sharing in Error-Controlled Adaptive Kriging0
How Good is the Bayes Posterior in Deep Neural Networks Really?0
Macroscopic Traffic Flow Modeling with Physics Regularized Gaussian Process: A New Insight into Machine Learning Applications0
Automated quantification of myocardial tissue characteristics from native T1 mapping using neural networks with Bayesian inference for uncertainty-based quality-control0
Transport Gaussian Processes for Regression0
The Case for Bayesian Deep Learning0
Bayesian Reasoning with Trained Neural Networks0
Heterogeneous Learning from Demonstration0
The Reciprocal Bayesian LASSOCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1F-SWAAccuracy83.61Unverified
2F-SWAGAccuracy80.93Unverified