Algorithms and data science
The development and mathematical/statistical analysis of algorithms that extract information from high-dimensional noisy data sets, network time series, and certain computationally-hard inverse problems on large graphs. Particular areas of focus include the statistical analysis of big financial data, statistical arbitrage, market microstructure, limit order books, synthetic data generation, as well as nonlinear dimensionality reduction techniques for high-dimensional time series data. (Lead: Mihai Cucuringu)