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4 Stan. Computational Antitrust 1 (2024)

handle is hein.journals/stfdcmp4 and id is 1 raw text is: ARTICLE
Overcoming the Current Knowledge Gap of
Algorithmic Collusion and the Role of
Computational Antitrust
Renato Nazzini* and James Henderson**
Abstract. Digital markets are evolving rapidly, and pricing algorithms are becoming
prevalent. While they provide many benefits, there is a real threat of new harms and
new   challenges for antitrust authorities. Computational modelling     has
demonstrated these risks by showing that in many instances self-learning pricing
algorithms lead to collusive outcomes. However, so far there has been woefully little
empirical research into the dynamics of pricing algorithms. To provide context for
this threat, we first review the usage and types of algorithmic pricing systems and
critically examine the established taxonomy of algorithm-based collusion scenarios.
We then describe how cartel screening techniques can be applied to algorithmic
systems and the consequential logistical challenges and uncertainties. We propose
action points needed to fil the knowledge gap.
* Professor of Law, Dickson Poon School of Law, King's College London.
** PhD, Barrister, Research Assistant, Dickson Poon School of Law, King's College London.

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