A School for All Seasons on Trustworthy Machine Learning
-
Updated
Jun 30, 2021
A School for All Seasons on Trustworthy Machine Learning
Implementation of different algorithms to infer comprehensible explanations from the outcome of an unsupervised outlier detection algorithm
Trustworthy AI/ML course by Professor Birhanu Eshete, University of Michigan, Dearborn.
Empowering Rational Discourse and Decision-Making: The Idea Stock Exchange is a groundbreaking platform designed to revolutionize how we engage in political and societal debates. At its core, this project harnesses the power of collective intelligence, utilizing a structured framework for automated conflict resolution and cost-benefit analysis.
Explaining Bayesian Knowledge Tracing using American Sign Language
Visualizing the Knowledge Components and Areas of Bayesian Knowledge Tracing
BKT Explainable Game Made in Unity
BKT parameter visualization with hot air balloons
The study investigates the representation of age, race, and gender in DALL-E 3 by OpenAI and Flux by Black Forest Labs
Add a description, image, and links to the algorithmic-transparency topic page so that developers can more easily learn about it.
To associate your repository with the algorithmic-transparency topic, visit your repo's landing page and select "manage topics."