Posted by Social Science Research Network
Algorithmic Pricing Agents and Tacit Collusion: A Technological Perspective
By Ashwin Ittoo & Nicolas Petit (University of Liege)
Abstract: Amongst the wealth of concerns raised by Artificial Intelligence (“AI”), one is the risk that the deployment of algorithmic pricing agents on markets will increase occurrences of tacit collusion by orders of magnitude, and well beyond the oligopoly setting where such markets failures have been traditionally observed. This concern has already generated policy interest, and regulatory options are now commonly discussed at academic, commercial and official conferences. At the same time, however, we remain in lack of understanding of whether current AI technology holds the capabilities that entitle algorithmic pricing agents to autonomously enter into tacitly collusive strategies without human intervention. In this paper, we look at three plain-vanilla Reinforcement Learning (“RL”) technologies, and attempt to understand whether their introduction at scale on markets can lead to tacit collusion. While we do not deny the fact that smart pricing agents can enter into tacit collusion and that regulators may be right to be vigilant, we find that there are several technological challenges in the general realm of RL that mitigate this risk.
Our paper proceeds in five steps. We first discuss the algorithmic tacit collusion conjecture (I). We then provide a non technical overview of reinforcement learning technologies (II). We then move on to discuss how naïve single agent Q-learning (III) and multi-agent Q-learning (IV) interact as market players. We close with a discussion of how technological challenges fragilize the algorithmic tacit collusion conjecture (V).
Featured News
Judge Appoints Law Firms to Lead Consumer Antitrust Litigation Against Apple
Dec 22, 2024 by
CPI
Epic Health Systems Seeks Dismissal of Antitrust Suit Filed by Particle Health
Dec 22, 2024 by
CPI
Qualcomm Secures Partial Victory in Licensing Dispute with Arm, Jury Splits on Key Issues
Dec 22, 2024 by
CPI
Google Proposes Revised Revenue-Sharing Limits Amid Antitrust Battle
Dec 22, 2024 by
CPI
Japan’s Antitrust Authority Expected to Sanction Google Over Monopoly Practices
Dec 22, 2024 by
CPI
Antitrust Mix by CPI
Antitrust Chronicle® – CRESSE Insights
Dec 19, 2024 by
CPI
Effective Interoperability in Mobile Ecosystems: EU Competition Law Versus Regulation
Dec 19, 2024 by
Giuseppe Colangelo
The Use of Empirical Evidence in Antitrust: Trends, Challenges, and a Path Forward
Dec 19, 2024 by
Eliana Garces
Some Empirical Evidence on the Role of Presumptions and Evidentiary Standards on Antitrust (Under)Enforcement: Is the EC’s New Communication on Art.102 in the Right Direction?
Dec 19, 2024 by
Yannis Katsoulacos
The EC’s Draft Guidelines on the Application of Article 102 TFEU: An Economic Perspective
Dec 19, 2024 by
Benoit Durand