Buyer Power In The Big Data And Algorithm Driven World: The Uber & Lyft Example

Research output: Contribution to journalArticle

Abstract

For competition lawyers, Uber is an interesting subject to study. Not only does Uber change the dynamics of the transportation market but it also raises interesting competition law questions. Last year for example, a class action suit against Uber in New York raised the question whether Uber is possibly arranging a hub and spoke cartel amongst the drivers by coordinating their selling prices. 2017 has continued to be litigious and interesting.

One of these new class action lawsuits might also raise thought-provoking antitrust issues related to big data and buyer power. Uber, the maverick firm that revolutionized passenger transportation services across the world has been now sued over its alleged use of its “Hell” software before the U.S. District Court for the Northern District of California filed on April 24th, 2017. The suit alleges a breach of privacy laws due to interception of private communications and unfair competition.

This software apparently allowed Uber to track Lyft drivers, its main competitor, create fake Lyft accounts, determine which drivers drove for both companies, and “execut[e] a plan meant to entice double-appers to drive exclusively for them”.

In this paper we explore such behaviour from a different perspective, the antitrust one. The focus of this paper is on exploring relevant behavior from a buyer power-oriented focusing on reverse rebates and overbuying, while not engaging in a concrete analysis of Uber’s conduct. This analysis provides us with the opportunity to re-explore traditional antitrust concepts, anchored on the purchasing of raw material, in the data and algorithm driven world, in particular, how companies can use big data in anticompetitive strategies, such as granting supra-competitive bonuses, overbuying, and raising rival’s costs through overbuying input

Details

Authors
Organisations
External organisations
  • University of Bergen
Research areas and keywords

Subject classification (UKÄ) – MANDATORY

  • Law (excluding Law and Society)
  • Law

Keywords

  • Antitrust, Competition law, Big data, Buyer power, Predation, Reverse rebates, Uber, Private law
Original languageEnglish
Pages (from-to)31-36
JournalCPI Antitrust Chronicle
Publication statusPublished - 2017
Publication categoryResearch
Peer-reviewedYes