Welcome to RumorMill
A directory and implementation of SOTA bias detection research papers, all in one place.
Last updated
A directory and implementation of SOTA bias detection research papers, all in one place.
Last updated
RumorMill is an open-source collection of resources, such as:
Research papers
Blogs and videos
Datasets and models
Ethos: Bias-detection research should be accessible to users and developers of all levels.
Here are a few tools we built for using state-of-the-art models in practice, something for everyone :).
Our Chrome extension, , is a showcase of SOTA models. Anyone can run a bias analysis pipeline/dashboard on their webpage, no code required.
It was created to open-the-door for new people to bias detection technology, by demonstrating it's strengths and weaknesses. The tasks it's intended to preform are:
Try this interactive demo for a quick look:
(sentence -> biased/fair).
(sentence -> gender bias, racial bias, ...).
of generalizations, unfairness, and stereotypes.
Walk through and run all the pipelines in this
If you're interested in contributing to the open-source tool-kit, check out our and join our .
TextAnalyzer
Docs
MultimodalAnalyzer
Docs
Binary Classification API
Types-of-bias Classification API
GUS-Net (Token Classification) API
Recent Papers
Papers to cite ;)
Binary Classification
Classifying text sequences as "Biased" or "Fair."
Multi-Class Classification
Classifying text sequences into more specific classes.
Named-Entity Recognition
Classifying tokens (words) that contain bias.
Multimodal Classification
Classifying image and text pairs for bias.
Discord
Ask questions or share a project.