Bayesian Learning and Neural Networks (jupyter book sources)
-
Updated
Apr 18, 2023 - Jupyter Notebook
Bayesian Learning and Neural Networks (jupyter book sources)
A quick reference for how to run many models in R.
This repository contains the collection of Cognitive Science computation modeling projects made for the DTU Human-Centered AI course 02458: Cognitive Modeling
Crema: Credal Models Algorithms
Visual Search Model: A Bayesian model for visual search on natural scenes.
Electoral forecasting dashboards
Bayesian MLM approach to sentiment analysis of r/wallstreetbets and Robinhood usage
This repository is a collection of publications related to probabilistic programming languages, probabilistic modelling, inference and criticism of probabilistic models.
Does the mind have statistical models? Even if it does, are these models Bayesian? We explore these questions as a part of my Masters capstone project guided by Prof. Glenn Shafer
Tutorials for the synthetic control method for causal inference using PyMC
Learning hyperparameters in Bayesian models by matching moments of prior predictive distributions.
Using Bayesian Modelling to predict Premier League football match wins. See Medium blog post.
This repository contains the code for the paper "Improving the Performance of Robust Control through Event-Triggered Learning".
RMarkdown source for the "Introduction to Statistics and Data Science Using R" textbook
NeuroBio 316QC: Probabilistic models for neural data: from single neurons to population dynamics
bayesian | hierarchical-models
This repository contains the deception-game experiment. This game was created as a replication of the first experiment from the original study by Ransom et. al. 2019.
This repository includes the code for the paper "Detection of Prostate Cancer with Multi-Parametric MRI Utilizing the Anatomic Structure of the Prostate".
Jupyter notebooks for probabilistic modelling of vibrational spectroscopic datasets
Phenocam forecasting challenge done as part of the NEFI short course in 2020 https://ecoforecast.org/nefi2022/
Add a description, image, and links to the bayesian-models topic page so that developers can more easily learn about it.
To associate your repository with the bayesian-models topic, visit your repo's landing page and select "manage topics."