
Angelina Brilliantova
fairness
bioinformatics
signed networks
model fitting
gene regulatory networks
maximum-likelihood markov chains
stable matching
correlated preferences
mallows model
2
presentations
1
number of views
SHORT BIO
Lina Brilliantova is a 4th-year Computer Science PhD student at Rochester Institute of Technology. In the past, she worked on computational biology and social choice theory projects. For her doctoral thesis, she develops systems-level computational tools for the analysis of gene regulation using graph algorithms, Monte Carlo simulations, and machine learning.
Presentations

GRASMOS: Graph Signage Model Selection for Gene Regulatory Networks
Angelina Brilliantova and 1 other author

Fair Stable Matching Meets Correlated Preferences
Angelina Brilliantova and 1 other author