Please wait...
About This Project
Women are grievously underrepresented in the mathematical sciences. Because publication of research is key to academic career advancement and because research has repeatedly uncovered gender bias penalizing women in professional circumstances, we use tools of data science to study 600 mathematical sciences journal editorial boards. We quantify gender representation on these boards and examine its association with characteristics such as impact factor, publishing house, and mathematical subfield.
Recent Lab Notes From This Project

Browse Other Projects on Experiment
Related Projects
Tornadoes, Casualties, and Climate Change
Tornadoes are violent rotating winds that kill people and destroy property. My recent work shows that tornado...
Whitebark pine ghost forests, the polar bear of the American west
Whitebark pine trees are a keystone species in alpine ecosystems across the American west. They have been...
Creating a neural network that classifies Dinoflagellate species
I think we have the technology to develop an artificial intelligence model that can differentiate between...