Gopikrishna Rathinavel

Gopikrishna Rathinavel was a master’s degree student in the Department of Computer Science. He was advised by Naren Ramakrishnan.


Anika Tabassum

Anika Tabassum was a Ph.D. student in the Department of Computer Science. Her advisor was B. Aditya Prakash.
Tabassum was also a NSF Research Trainee in the UrbComp program.
Her research interest is broadly on data mining, graph networks, and time series. Currently, Tabassum is focusing on critical infrastructure networks to simulate and identify vulnerabilities in the network. She works in identifying and simulating different phases of power outages during a disaster like a hurricane.

Info Integration & Informatics

The long-term goal of this research is to understand, manage efficiently, and utilize dynamical mechanisms like propagation on large networks, occurring across natural, social, and technological systems. Understanding such processes enables us to manipulate them for our benefit. Propagation and networks have numerous applications in areas as diverse as public health and epidemiology, systems biology, cyber security, viral marketing and social media—hence progress in this domain promises scientific, commercial and social benefits. The research aims to develop extensible, data-driven frameworks for propagation-related problems getting more implementable and generalizable tools. Investigations will lead to novel mining and learning problems and scalable techniques which can be applied to massive datasets, helping make more informed choices for future.

Most current work in propagation mining assumes the existence of well-calibrated models. Performing model calibration is typically very expensive, and not robust. Indeed, in many situations it is not clear which parameterized model should be calibrated. However there is an increasing availability of surveillance data like online media and medical health records. The approach in this research is unique in the sense that the aim is to directly use surveillance data and formulate optimization problems based on the data and network together. The proposed problems include inventing data-driven immunization policies for diseases like influenza, automatically finding missing infections/activations in cascade datasets, and automatically learning graph summaries based on distributed feature representations of propagation data as well as the network. This goal is to develop a flexible and expressive framework for all these problems. In addition, the developed algorithms will be applied to various domains, leveraging multiple collaborations.

Educational activities are also closely integrated with this research agenda, including integrating research with education through courses, tutorials, and other university programs.


Debanjan Datta

Debanjan Datta was a Ph.D. student in the Department of Computer Science.  He was advised by Naren Ramakrishnan.

Datta’s research area is data mining and machine learning. His areas of interest are algorithms on text and numerical data.


Venkata Pavan Kumar Bellam

Venkata Pavan Kumar Bellam was a master’s student in the Department of Electrical and Computer Engineering.  He was advised by Jia-Bin Huang.


Li Tian

Li Tian was a master’s student in the Department of Electrical and Computer Engineering.  He was advised by Lynn Abbott.


Stephen H. Bach


Bijaya Adhikari

Bijaya Adhikari was a Ph.D. student in the Department of Computer Science. His advisor was B. Aditya Prakash.

Adhikari’s core research focuses on graph mining and topics relating to social network analysis, such as community detection, immunization, influence maximization, and information. His interests also lie in machine learning, theoretical computer science, and algorithms.


Yao Zhang

Yao Zhang was a Ph.D. student in the Department of Computer Science.  His advisor was  B. Aditya Prakash.  His research interests are in data mining and social network analysis with emphasis on understanding and managing information diffusion in networks.

Currently, he is focusing on topics that include controlling world-of-mouth adoption-style propagation on large networks; summarizing graphs with respect to social influence; and detecting communities based on information cascades.


Zhiqian Chen

Zhiqian Chen was a Ph.D. student in the Department of Computer Science.  His advisor was Chang-Tien Lu.  

Chen worked at the Spatial Data Management Lab and his research interests include data mining, deep learning, and artificial intelligence.