Probabilistic Machine Learning for Finance and Investing: A Primer to Generative AI with Python
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Updated
Jan 15, 2024 - Jupyter Notebook
Probabilistic Machine Learning for Finance and Investing: A Primer to Generative AI with Python
Code for the paper "Getting a CLUE: A Method for Explaining Uncertainty Estimates"
Machine learning models for estimating aleatoric and epistemic uncertainty with evidential and ensemble methods.
NOMU: Neural Optimization-based Model Uncertainty
This repository contains a demontstration of how to build, train and evaluate a neural network capable of measuring epistemic uncertainty as proposed by the authors of Evidential Deep Learning to Quantify Classification Uncertainty
Uncertainty quantification and out-of-distribution detection using surjective normalizing flows
Work as part of ANL summer 2020 research on uncertainity quanitification methods in graph neural networks
Energy production forecasting ⚡ with PoC of Bayesian Neural Network 🎲
the prior distribution for probabilistic numerical methods
Code for the ICASSP'19 submission "Modelling Sample Informativeness for Deep Affective Computing".
Generalized Automatic Pipeline for inspecting and fixing uncertainties in your data
Original implementation of the EMD (empirical model discrepancy) model comparison criterion
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