Marketing
Marketing decisions span areas of consumer behavior, strategy, product/service innovation, pricing, branding, and communications.
Faculty research and study at the Tepper School address key issues in all of those areas and additionally covers consumer preference modeling, big data, game theory, and behavioral decision-making.
Marketing in the Classroom
Digital Marketing and Social Media Strategy MBA Course
Param Vir Singh, Carnegie Bosch Professor of Business Technologies and Marketing
Consumer Behavior Undergraduate Business Course
Christopher Y. Olivola, Associate Professor of Marketing
Marketing Ph.D. Candidates

Serim Hwang

Jinwoo Kim
Faculty Research Highlights
Christopher Y. Olivola, Associate Professor of Marketing
This research investigates the psychological factors that shape, and often skew, the way people perceive and respond to deadly events, such as the Covid-19 pandemic. Understanding these psychological factors will help policymakers recognize, and ultimately guard against, biases that hinder the deployment of important life-saving policies.
Jeff Galak, Associate Professor of Marketing
In a recent paper with former doctoral student, Julian Givi, Jeff shows that gift givers should rethink when they give gifts. Whereas most gifts are given on special occasions like birthdays and holidays, to maximize the happiness of gift recipients, with the lowest cost to the gift giver, it turns out gifts on a "random Tuesday" are actually much more advantageous.
Joy Lu, Assistant Professor of Marketing
Online educational platforms such as Coursera and Khan Academy increasingly allow learners to progress at their own pace within opt-in and on-demand structures. We build a model that captures how the motivation to consume course content varies over time, and demonstrate how different “learning styles” relate to important downstream outcomes such as final performance and enrollment in additional courses.
Param Vir Singh, Carnegie Bosch Professor of Business Technologies and Marketing
I study algorithmic bias, transparency and interpretability from an economic perspective and investigate the impact of artificial intelligence based solutions in mitigating social inequality. My goal is to develop economic aware machine learning algorithms. In related space, I have quantified the economic value of unstructured data (including text and images) combining deep learning and econometric methods in a number of settings.
Tim Derdenger, Associate Professor of Marketing and Strategy
We develop a new approach to model, identify and estimate a dynamic discrete demand model for durable goods with continuous unobserved consumer heterogeneity and unobserved product characteristics using group level market share data. The implementation of our new estimator involves two steps employing nonlinear least squares (NLS) in the first step and two stage least squares (2SLS) in the second. Applying our new method, we separately identify the prestige and informational effects associated with a celebrity endorsement using data from professional golfers such as Tiger Woods, and sales data on golf equipment (drivers).
Tim Derdenger, Associate Professor of Marketing and Strategy
Marketing Faculty in the News

featuring Kannan Srinivasan, H.J. Heinz II Professor of Management, Marketing and Business Technologies

, featuring Joy Lu, Assistant Professor of Marketing.

featuring Jeff Galak, Associate Professor of Marketing.

, featuring Tim Derdenger, Associate Professor of Marketing and Strategy

featuring Christopher Y. Olivola, Associate Professor of Marketing

, featuring Param Vir Singh, Carnegie Bosch Professor of Business Technologies and Marketing