Working Paper

How Communication Makes the Difference between a Cartel and Tacit Collusion: A Machine Learning Approach

Maximilian Andres, Lisa Bruttel, Jana Friedrichsen
CESifo, Munich, 2022

CESifo Working Paper No. 10024

This paper sheds new light on the role of communication for cartel formation. Using machine learning to evaluate free-form chat communication among firms in a laboratory experiment, we identify typical communication patterns for both explicit cartel formation and indirect attempts to collude tacitly. We document that firms are less likely to communicate explicitly about price fixing and more likely to use indirect messages when sanctioning institutions are present. This effect of sanctions on communication reinforces the direct cartel-deterring effect of sanctions as collusion is more difficult to reach and sustain without an explicit agreement. Indirect messages have no, or even a negative, effect on prices.

CESifo Category
Industrial Organisation
Behavioural Economics
Keywords: cartel, collusion, communication, machine learning, experiment
JEL Classification: C920, D430, L410