We are interested in the development of signal processing and machine learning methods that can lead to effective analysis of large-scale data, mathematical modeling, and control of complex systems. Main research topics include (but are not limited to) the following:
1. Large-scale Single Cell Sequencing Analysis
Development of algorithms to analyze large-scale single cell sequencing data.
2. Probabilistic Graphical Models and Algorithms for Computational Biology
Development of mathematical models for comparative network analysis algorithms and machine learning techniques for large-scale network analysis.
3. Biological Network Analysis
Development of algorithms for comparative analysis of large-scale biological networks such as protein-protein interaction (PPI) networks, gene regulatory networks (GRN), and co-expression networks.
4. Large-scale Data Analysis and Heterogeneous Data Integration
Development of dimensionality reduction methods and mathematical models to analyze and integrate large-scale heterogeneous data.