Predictions and facts: Considerations on artificial intelligence and beneficial ownership transparency reforms
Introduction
In a world where opaque predictions of computer models are increasingly used to influence decision-making, the role of registers as sources of information that is accurate and reliable becomes ever more important.
In this piece, we consider how implementers of beneficial ownership transparency (BOT) reforms could think through how artificial intelligence (AI) may impact their work in the coming years. One of the key things Open Ownership does as an organisation is help governments design and build effective beneficial ownership (BO) registers for legal vehicles. This piece therefore focuses on the potential impacts of AI on this, rather than the ways in which AI could help data users use, improve, or combine non-official data sources (e.g. leaked information). We also attempt to stay rooted in technologies that exist now rather than speculating on where technology may go.
First, we break down what people mean when they use the term AI. Then, we set out a framework that might help a registrar think through how AI technologies could impact their work, including how they might use it themselves, how they might respond to others’ use of it, and how they might shape its future use in this domain.
Summary of practical steps
If you do not have the time to read this in full (or you’re going to ask ChatGPT to summarise it for you), in short, we recommend the following steps to implementers of BOT reforms:
What we mean when we say AI
When people use the term AI, they are typically referring to one of a few different things:
This piece covers a number of these AI tools and approaches, and tries to make clear when it is referring to which.
How might AI affect beneficial ownership transparency?
To consider the potential effects that advances in these technologies might have, we recommend those implementing BO reforms to consider the following three questions:
In this piece, we will consider some potential answers to these three questions. Above all, we would encourage implementers to spend time reflecting on these questions themselves.
When addressing these questions, it is important to consider the ethical implications of AI, and how legislation and government priorities in other areas might conflict with the use of AI technologies. These could include, but are not limited to:
It is also key to remember that these technologies are still finding their place in the world. The business models underpinning the most popular products are not solid, so governments should be wary of relying too heavily on them. Pricing models may change, and the continued existence of the products themselves is not guaranteed.
Use
How could I use AI to improve my processes and decision-making towards achieving my policy goals?
While many core functions of corporate registries – e.g. collecting and storing data, and granting access within agreed regulatory frameworks – do not lend themselves naturally to algorithmic decision-making, processing large amounts of information, or producing significant amounts of text, there are some tasks that AI could potentially be a help in addressing. These include:
When considering the use of commercially available LLMs, it is important to remember that information uploaded to these (for example, internal policy documents or customer data) is by no means guaranteed to be secure. It is likely that implementers’ colleagues will want to explore the use of these tools, and it is crucial to make them aware of the risks and have clear guidelines for use in place. If registrars choose to use AI, they should consider whether this mandates transparency about how it is used under relevant principles, policies, or legislation, particularly where personal data and decision-making is concerned.
Respond
How should I respond to the ways others use (or may use) AI in ways that impact my policy goals?
There are two main groups that implementers need to keep in mind when considering this question: those making BO declarations (declarants), and those using the information submitted for various purposes (data users).
Below, we consider a few potential applications of AI in BO reforms for each user group, as well as responses implementers may adopt.
Declarants
Most countries with BO registers require legal vehicles (or agents on their behalf) to make declarations based on a domestic definition of beneficial ownership. To do so, declarants usually have to fill out an online form to a central register. The following list includes some ways that AI could be used by declarants during this process, and how agencies receiving declarations might respond:
In short, our core recommendation for registrars is to ensure that existing processes for verification and enforcement are sound, and that they have sufficient capacity to monitor trends and patterns in company activity within their jurisdiction, such that any abuse of their services is surfaced.
Data users
The other key group of stakeholders for corporate registrars is data users – those who use information about the BO of legal vehicles. The use of BO data is necessary to realise the impact of BOT reforms. Users can include financial intelligence units, procurement authorities, tax agencies, law enforcement agents, banks, journalists, and civil society, among others. These groups will also likely be looking at how to adopt AI approaches in their work, and data from BO registers will likely be inputs into these models.
Data users are likely to use AI with BO data in two ways: to improve it, if data is poor quality; or to feed it into their own algorithmic decision-making processes. Both are explained in more detail below:
How should implementers respond to the use of AI?
The role of BO registers, as we have already emphasised in this piece, is to provide accurate representations of companies’ BO networks. This responsibility becomes even more important when information is used in automated decision-making algorithms on key governance functions, including taxation, public procurement, and fighting financial crime.
While machine learning algorithms could support the improvement of poor quality data to some degree, it is better to do this at source. To this end, BO information provided to data users should:
Advances in machine learning should also lead implementers to consider some wider topics on the provision of data, for instance:
Shape
How could I shape the way AI is used in the field of BOT for the future?
The final consideration for implementers is by far the most complex. It looks at how corporate registrars could shape the way that AI is used in their policy domain by considering how it may be used in the ownership and control of legal vehicles.
To our knowledge, there is not currently any precedent of AI owning and controlling a company without human involvement, though others have considered what impacts advances in AI might have on BOT. There are interesting cases in adjacent policy areas, including a case in South Africa on the potential for an AI tool to be considered an inventor under patent law.
Beneficial ownership of legal vehicles as a concept, in its very definition, requires the beneficial owner to be a natural person. Therefore, most domestic legal definitions preclude a computer program, algorithm, or AI to qualify as a beneficial owner. However, as most legal definitions include the element of control, an increased use of AI in business operations and decision-making may impact which natural persons are reportable under domestic legal definitions. AI may be able to be in a position of effective control in legitimate companies. Advances in AI may further reinforce the importance of more robust verification of information about beneficial owners – both the identity of natural persons declared as beneficial owners and their status as beneficial owner – or other important positions within a company (e.g. directors).
Legal ownership may become a murkier area. Assets (including company shares) can be legally owned by any natural or legal person. While some jurisdictions in the United States of America have passed bills to prevent AI from acquiring legal personhood, others including Wyoming have taken steps to recognise distributed autonomous organisations (DAOs) as legal entities, conferring legal personality onto organisations that may be “algorithmically managed”. While these entities are not widely recognised in other jurisdictions, where these entities can own company shares and other assets will likely have a bearing on BOT reforms. There may be complications if different jurisdictions choose to take different approaches. For example, authorities in one jurisdiction may need to grapple with how to apply BO disclosure requirements to entities that are effectively controlled, or legally owned, by AI if this is legalised in other jurisdictions.
Allowing algorithms to spawn legal vehicles and subsequently control their activities may run counter to the objectives of many BOT reforms to date: to curb the abuse of legal vehicles and hold individuals accountable. Jurisdictions may need to ensure that legal vehicles are anchored in the real world, for instance, by requiring that directors and beneficial owners are verified and identified as humans.
Automation of company formation, while potentially beneficial in creating a more frictionless business environment, is not without the potential for abuse. Thus, regulators and policymakers must think carefully about whether to allow this or to maintain (or introduce) layers of human control and accountability.
Conclusion
Advances in AI approaches make the role of corporate registrars as holders of high-quality information on the natural persons owning and controlling companies even more important.
Many of the fundamentals of effective BOT implementation still apply – or become even more important – with advances in AI tools. These include:
Implementers should consider how they could use new technologies in their work to improve internal processes and the services they offer users, with all necessary caveats about the risks and ethical implications of using them. They should also be aware of how their key stakeholders might be feeding BO data into models of their own, and ensure their legislative framework is robust enough to ensure advances in AI do not undermine the effectiveness of reforms.
Read the full piece on the Open Ownership website here.
Open Source Intelligence, Multi-Source Intelligence Analyst, Creative Technologist, Knowledge Worker, Digital Sniper | OSINT | Community Ignitor | OSINT strategic advisor
3wThere is a lot to consider and chew on here. Thank you for always bringing the practical considerations of real-world experience to the forefront and sharing with the rest of us. This analysis and the suggestions of how to better integrate AI into important workflows without jumping the gun of giving AI autonomy to muddy the data is clarifying.