Tatsiana Levina

Associate Professor at Smith School of Business

Schools

  • Smith School of Business

Links

Biography

Smith School of Business

Tanya Levin is an Associate Professor of Management Science.

Her current research focuses on algorithmic learning methods in revenue management and dynamic pricing based on earlier work with online learning algorithms for stock market portfolio rebalancing.

Tanya has authored or co-authored papers in Operations Research and Operations Research Letters, presented numerous national and international conference papers, and published a book chapter on "Online methods for portfolio selection".

Tanya received her PhD in Management from Rutgers University, NJ, USA in 2004. She also holds an MBA from Rutgers University.

Companies

  • Associate Professor Smith School of Business at Queen's University (2011)
  • Associate Professor Queen's School of Business (2011)
  • assistant professor Queen's School of Business (2003)

Read about executive education

Other experts

Magaly Sanchez R

Biography Dr. Sanchez- R  is a Senior Researcher and Scholar at the Office of Population Research at Princeton University after being a Professor at the Instituto de Urbanismo in the Universidad Central de Venezuela . Her work in Latin America has been characterizes by the study of the Urban are...

Jim Eckler

Biography Jim Eckler is a well-known leader in business operations, executive education and consulting in Canada and internationally. He has served some of the largest organizations in more than 10 industry verticals virtually encompassing the full breadth of the economy. Jim is a graduate in mat...

Joseph Valacich

Degrees Ph.D., University of Arizona, 1989 MBA, University of Montana, 1983 BS in Computer Science, University of Montana, 1982 Areas of Expertise Cyber security Deception and fraud detection Human-computer interaction Technology-mediated group decision-making Electronic commerce Courses M...

Looking for an expert?

Contact us and we'll find the best option for you.

Something went wrong. We're trying to fix this error.