Data-Driven Computational Brand Perception

We introduce a novel approach to predicting and mapping brand trait perceptions using Big Data mined from the Internet combined with machine learning techniques. We show this approach allows us to predict how entire product categories and individual brands are perceived along various trait dimensions by consumers.



Citation:

Sudeep Bhatia and Christopher Olivola (2018) ,"Data-Driven Computational Brand Perception", in NA - Advances in Consumer Research Volume 46, eds. Andrew Gershoff, Robert Kozinets, and Tiffany White, Duluth, MN : Association for Consumer Research, Pages: 204-208.

Authors

Sudeep Bhatia, University of Pennsylvania, USA
Christopher Olivola, Carnegie Mellon University, USA



Volume

NA - Advances in Consumer Research Volume 46 | 2018



Share Proceeding

Featured papers

See More

Featured

I1. Blaming Him or Them? A Study on Attribution Behavior

Chun Zhang, University of Dayton
Michel Laroche, Concordia University, Canada
Yaoqi Li, Sun Yat-Sen University, China

Read More

Featured

Narrative Transportation and Cognitive Responses: The Other Side of the Story

Rebecca Krause, Northwestern University, USA
Derek Rucker, Northwestern University, USA

Read More

Featured

Rejecting Moralized Products: Moral Identity as a Predictor of Reactance to “Vegetarian” and “Sustainable” Labels

Rishad Habib, University of British Columbia, Canada
Yann Cornil, University of British Columbia, Canada
Karl Aquino, University of British Columbia, Canada

Read More

Engage with Us

Becoming an Association for Consumer Research member is simple. Membership in ACR is relatively inexpensive, but brings significant benefits to its members.