Tractable Approximate Gaussian Inference for Bayesian Neural Networks
About
In this paper, we propose an analytical method for performing tractable approximate Gaussian inference (TAGI) in Bayesian neural networks. The method enables the analytical Gaussian inference of the posterior mean vector and diagonal covariance matrix for weights and biases. The method proposed has a computational complexity of $\mathcal{O}(n)$ with respect to the number of parameters $n$, and the tests performed on regression and classification benchmarks confirm that, for a same network architecture, it matches the performance of existing methods relying on gradient backpropagation.
James-A. Goulet, Luong Ha Nguyen, Saeid Amiri• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Regression | Yacht | RMSE14.55 | 49 | |
| Regression | UCI ENERGY (test) | Negative Log Likelihood4.8 | 42 | |
| Regression | UCI CONCRETE (test) | Neg Log Likelihood4.95 | 37 | |
| Regression | UCI YACHT (test) | Negative Log Likelihood5.84 | 33 | |
| Regression | UCI KIN8NM (test) | NLL-0.45 | 25 | |
| Regression | UCI WINE (test) | Negative Log Likelihood5.86 | 24 | |
| Regression | UCI NAVAL (test) | Negative Log Likelihood-0.2 | 21 | |
| Regression | UCI Kin8nm OOD 3x std deviation rescale non-normalized (train) | RMSE0.25 | 8 | |
| Regression | Kin8nm | Avg NLL Relative Percentage128 | 8 | |
| Regression | UCI Yacht OOD 3x std deviation rescale non-normalized (train) | RMSE16.09 | 8 |
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