2024年8月11日
As the use of Artificial Intelligence (AI) rapidly increases, it has brought unprecedented innovation and efficiency across various sectors. Competition regulators face a real challenge of ensuring that there are sufficient protections in place to guard against unintended potentially anti-competitive market effects. As AI continues to evolve, regulators and legal professionals are grappling with its implications on fair competition, market dominance, and consumer welfare.
The purpose of competition law is to maintain market competition by preventing anti-competitive behaviour and to promote consumer welfare, innovation, and a level playing field for businesses. In the EU and UK, the primary legal frameworks in the EU and UK are:
There is a delicate balance between encouraging innovation and maintaining fair competition. As was found to be the case with the rapid expansion of big tech in the last few years, existing competition enforcement powers may not be sufficient to protect competition and markets from the impact of transformative technology. Here, we explore how to navigate an AI future, based on lessons from the past.
A pricing algorithm is a set of computer rules and processes designed to optimise the price for a product or service. These algorithms analyse various factors such as market conditions, competitor prices, demand fluctuations, and customer behaviour to automatically adjust prices. The use of such algorithms is not illegal; however there has been a concern that they may facilitate both explicit and tacit collusion between competitors in breach of competition law.
In 2016, the UK's Competition and Markets Authority (CMA) found that two online poster sellers agreed that they would not undercut each other’s prices for licensed sport and entertainment posters and frames that were sold on Amazon’s UK website (Case 50223: Online sales of posters and frames. Trod Ltd v GB Eye Ltd [2016]). The agreement was implemented using automated repricing software which the parties each configured to give effect to the agreement.
The software enabled sellers to compete with other online sellers by automatically adjusting the prices of their products in response to the live prices of competitors’ products. The adjustments were based on the settings determined by each seller and once in place, the software worked to adjust the seller's prices automatically (every 15 minutes) in response to competitors' pricing. The software allowed certain competitors to be excluded from the algorithms if they were added to the ‘ignore list’. The two sellers in this case had added each other to the ignore list, which ensured that they would never undercut each other in line with their agreement.
While the parties to this case did not themselves actively monitor the pricing on Amazon, they enabled their software to limit price competition and form the basis of an illegal pricing cartel. This was a novel basis for a Chapter 1 decision at that time, and only came to light as a result of one of the parties "blowing the whistle".
For its own part, the Court of Justice of the European Union (CJEU) ruled in 2016 on a preliminary reference from Lithuania, in relation to an alleged concerted practice in the packaged tours sales market (Case C-74/14 UAB Eturas and Others v Lietuvos Respublikos konkurencijos taryba). The conduct took place within the E-turas system in Lithuania, an online computer reservation system for the search and booking of package tours, which sent messages to travel agents through the online system confirming its pricing algorithm would cap discounts at 3%. Any discounts above that would automatically be reduced in line with the policy. The CJEU confirmed that this was a breach of competition law. The decision deals at length with the burden of proof and what agents should have done to distance themselves but what is relevant here is that, through a platform acting without human input and used by all travel agents, a breach of the law was found.
Regulators have expressed concern that the use of pricing algorithms could lead to tacit collusion between entities (CMA94, 8 October 2018: Pricing Algorithms: Economic working paper on the use of algorithms to facilitate collusion and personalised pricing). An increased use of pricing algorithms will result in faster pricing shifts, increased market transparency, and a perfect storm for collusion:
With the above in mind, the use of algorithms to help execute a cartel’s work is in effect the same as a cartel executed by individuals: technology facilitates anticompetitive behaviour that humans would otherwise have carried out. In the words of the European Commissioner for Competition Margrethe Vestager: "companies can’t escape responsibility by hiding behind a computer program…what businesses can – and must – do is to ensure antitrust compliance by design".
As noted above "autonomous algorithms" are sophisticated and self-learn software to anticipate market events, potentially leading to "algorithmic collusion". Unlike traditional collusion, where businesses explicitly agree to fix prices, algorithmic collusion can occur independently through AI systems. These systems can analyse market conditions and adjust prices in real-time, potentially leading to collusion without any direct human intervention. It is very difficult to detect and prove algorithmic collusion, and traditional investigative tools might be inadequate, necessitating advanced monitoring technologies and new legal frameworks that can address the subtleties of AI-driven collusion. Regulators are actively researching and developing strategies to identify and mitigate the risks:
AI relies heavily on data, making it a critical asset for businesses. Companies with access to vast amounts of data can develop superior AI capabilities, potentially leading to market dominance. This data-driven advantage can create significant barriers to entry for smaller competitors and startups, reducing market competition. Regulators have already taken steps to address data dominance. For instance, in the Google Shopping case, the European Commission fined Google for abusing its dominant position by using software favouring its own shopping service over competitors. In the UK, the CMA accepted commitments from Amazon where it was alleged, amongst other things, that the entity's algorithms were self-preferencing.
AI systems can inadvertently or deliberately engage in discriminatory practices, affecting consumers and competitors. For example, personalised pricing algorithms can lead to price discrimination, where different consumers are charged varying prices for the same product based on their personal data and purchasing behaviour (it is worth noting that in 2012 and 2017, the UK regulator found no evidence of pricing being different or personalised for different consumers, although there were examples of different consumers being shown different search results on retail websites, including different numbers of results or a different order of results). Similarly, AI-driven ad placements or search engine rankings can unfairly favour certain businesses.
AI also complicates the landscape of mergers and acquisitions (M&A). Traditional M&A assessments may not fully capture the competitive impact of AI technologies. When companies with significant AI capabilities or large datasets merge, the potential for increased market concentration and reduced innovation is significant.
The rapid pace of AI development poses a challenge for the relatively slower-moving regulatory frameworks. There is a need for adaptive and forward-thinking regulatory approaches to keep pace with technological advancements. This includes continuous monitoring of AI developments and proactive engagement with technology experts and industry stakeholders. To address the dynamic nature of AI, regulators are exploring the adoption of principle-based regulatory frameworks, which should allow for quick adjustments in response to new AI capabilities and market behaviours.
They are also trying to better understand the technology. Many authorities are recruiting data computer specialist or doing studies in the area (such as the CMA initial review of foundation models).
The European Union (EU) and UK have already launched several initiatives to address the intersection of AI and competition law:
AI is undeniably transforming the economic landscape, offering significant benefits but also posing complex challenges for competition law. Regulators are addressing these challenges, developing new regulatory tools and frameworks to ensure that AI-driven markets remain competitive and fair. As AI continues to evolve, it is clear that regulators have learned from their past mistakes and adopting a proactive approach in adapting competition law will be crucial in navigating the future. By fostering innovation while safeguarding consumer welfare and market fairness, competition regulators will ensure the responsible and competitive deployment of AI technologies.
Our competition team is assisting clients in competition issues in this new area. If you would like to discuss it please contact Paolo Palmigiano or Louisa Penny.