The legal services market is commonly thought of as divided into two “hemispheres” – PeopleLaw and BigLaw.Footnote 1 These segments represent, respectively, individuals and corporate clients. The last few decades have seen an increasing concentration of resources in the legal market toward serving corporate clients, to the alleged detriment of consumer clients. At the same time, the costs of accessing legal representation exceed the financial resources of many ordinary citizens and small businesses, compromising their access to the legal system.Footnote 2
We ask: will the adoption of legal tech – new digital technologies in legal markets – lead to a leveling of the playing field between the PeopleLaw and BigLaw sectors? By “leveling,” we mean convergence of business modelsFootnote 3 in the two sectors so as to deliver a more equal opportunity to access legal services. Convergence in business models would enable legal service providers to exploit opportunities for scaling and cost reduction, and to meet more of the unmet legal needs of clients.Footnote 4 We focus, not on what legal tech in theory may be capable of doing, but on which use cases are likely to emerge in practice and take root. In order to do so, we use a causal framework that takes account of organizational complementsFootnote 5 and regulatory constraints to the adoption of emergent business models.
By leveraging the regulatory differences between the UK and the US, we aim to gauge the relative importance of regulatory shifts in meeting unmet legal needs.Footnote 6 In 2007, the UK enacted a bold set of reforms.Footnote 7 By reducing the substantive domain over which lawyers have exclusive service rights, and by permitting alternative business structures (ABS), the intent was to stimulate competition and thereby more cost-effective legal services to meet latent demand.Footnote 8 Similar proposals have long been debated in the US,Footnote 9 and some states have taken tentative first steps.Footnote 10 Our comparison of secular trends in the UK (England and Wales, strictly speaking) and the US demonstrates that regulatory reforms may be necessary but not sufficient to bring about desirable changes in meeting latent legal demand.
This chapter proceeds as follows. Section 2.1 sets the scene with an overview of the development of the PeopleLaw and BigLaw sectors in Britain and the United States in the last few decades. Section 2.2 examines the adoption of legal tech in the BigLaw sector, to identify specific use cases and complementary changes taking place (or not taking place) to adopt emergent business models. Section 2.3 conducts a similar exercise for the PeopleLaw sector. Section 2.4 then provides an explicit comparison of the two sectors to address the question of whether or not legal tech will enable a convergence in the extent to which consumer or client needs are met. Our conclusion is that while legal tech and data aggregation have enormous potential to meet unmet legal needs, different constraints continue to hold back the realization of such potential. Major barriers are human capital and data aggregation in BigLaw, and financial capital and the technological limits to automating human lawyers in PeopleLaw. We discuss some regulatory policy options that might promote greater convergence between the two sectors.
2.1 Overview of PeopleLaw and BigLaw Sectors
This section provides a macro-level overview of the state of PeopleLaw and BigLaw sectors.Footnote 11
Differences in data availability mean the contours of these sectors can be outlined in sharper focus for the US than the UK. But in both countries, there is evidence that the share of PeopleLaw activities relative to BigLaw has been in secular decline over the past few decades. The similarity in this secular trend is striking, given that reforms have been under way for over a decade in the UK, whereas they have only just begun in some US states.
In the US, lawyers have long been aware of a distinction made between the part of the legal market that provides services to sizable corporate clients and the part that does not. This divide was brought to prominence in the seminal work Chicago Lawyers: The Social Structure of the Bar.Footnote 12 The study found that Chicago lawyers in 1975 devoted 45 percent of their total effort to services for individual or small business clients, unions, environmental plaintiffs, and state administrative agencies or municipalities. The same survey repeated in 1995 showed that this PeopleLaw proportion had declined to 35 percent of lawyers’ total effort.Footnote 13
A similar story emerges from US Economic Census Data reporting spending on services provided by lawyers employed in private practice. In 2005, 39 percent of this was attributable to individual clients.Footnote 14 By 2007, the share of PeopleLaw in total revenue was 29 percent; by 2012 it had declined to 24 percent, while the share of BigLaw grew over the same period from 68 percent to 73 percent.
Henderson also highlights striking differences between the economics of PeopleLaw and BigLaw. In PeopleLaw, lawyers (typically sole practitioners) charged an average $260 per hour (data source: Clio), but billed for only 1.6 hours per day, amounting to $422 a day, or $105,000 in gross receipts over a fifty-week year. In BigLaw by contrast, Am Law 100 total gross revenue in 2012 was $71 billion, with a total lawyer headcount of 86,272. So, average gross revenue per lawyer was $822,978, while average profit per partner was $1.48 million.Footnote 15
The problem of access to justice for consumers led a handful of state bars to address this issue in recent years.Footnote 16 Regulatory reforms are intended to permit new providers including human non-lawyers and non-human non-lawyers (i.e., software) to operate in legal markets. It is too early to tell how these reforms would begin to meet the latent demand of consumers. For now, we know much more about cases of unauthorized practice of law by technology providers.Footnote 17
The UK’s legal services market, with a total turnover of £24 billion in 2017, is about a sixth (17 percent) of the size of the US market.Footnote 18 Unfortunately, UK national statistics do not shed light directly on the relative size of PeopleLaw and BigLaw sectors. Instead, we present two alternative approaches to gauging trends in two spheres of legal markets.
One approach is to break down law firm revenues into practice areas that predominantly serve individuals (B2C) and others that predominantly serve corporate clients (B2B). A recent study by KPMG reports that 60 percent of law firm turnover in England and Wales is in B2B and 20 percent in B2C.Footnote 19 This 60 percent does not take account of growth in in-house lawyers, rising from 16 percent of all solicitors in 2004 to 23 percent by 2019.Footnote 20 Because this growth is directed at corporate work, it is strongly suggestive of a corresponding decline of PeopleLaw’s relative share in the overall legal services market.
Another approach draws on UK survey evidence investigating latent consumer demand for legal services. While differences in survey methodology over time impede identifying secular trends, the data clearly suggests that the legal services market is not meeting the needs of consumers. Adults based in England and Wales were asked about the legal issues they experienced in the four years prior to the survey and the help they sought in order to resolve them. In 2019,Footnote 21 the majority of respondents’ legal needs remained unmet in all of the most commonly encountered types of legal issue, from family issues and property matters to labor and employment and personal injury.Footnote 22 While there are numerous reasons legal needs may be unmet, a significant component appears to be the perceived inaccessibility of the civil justice system.Footnote 23
Policy concern over the unmet legal needs of consumers informed a major overhaul of UK legal services regulation in 2007.Footnote 24 This permitted for the first time ownership of law firms by non-lawyers through so-called Alternative Business Structures (ABS).Footnote 25 It is striking that the UK’s PeopleLaw sector has continued to shrink relative to BigLaw, and that high levels of unmet consumer legal needs have persisted, despite these wide-ranging reforms.
To summarize, the PeopleLaw sector represents only a small fraction – estimated to be about a fifth to a quarter – of the overall legal services market in both the US and the UK. The evidence suggests that this fraction has been in secular decline in both countries for the past few decades. Moreover, UK citizens’ unmet legal needs are not adequately addressed despite the major overhaul in legal services regulation a decade ago. We now turn to consider how technology has been impacting the provision of legal services in each of the two hemispheres, BigLaw and PeopleLaw, respectively.
2.2 Digital Technology in the BigLaw Sector
This section analyzes how digital technology is influencing the work of lawyers and emergent business models adopted by law firms and other providers in the BigLaw sector. A “business model” is a focused way of understanding how client needs are met, in ways that translate into sustainable profit-making for providers.Footnote 26 We first briefly survey digital technologies being deployed in BigLaw, focusing in particular on AI, and distinguish these from earlier waves of automation. We conclude that despite the availability of new business models, significant constraints remain in the form of human capital rather than financial capital, preventing BigLaw law firms from deploying technology more effectively.
2.2.1 Technology Use Cases in BigLaw
“Legal tech” may be defined as technology that supports or enables the provision of legal services. It is a broad category, encompassing the use of interactive websites, electronic documents, and elements of artificial intelligence (AI) to automate the review and prediction from text, and automation of workflow and matter management. In the BigLaw context, users distinguish between technologies supporting the “practice of law” – that is, supporting the delivery of legal services themselves – and those supporting the “business of law” – that is, supporting the management of client relationships and the allocation of human resource internally.
In the practice of law, a core system for most law firms and corporate in-house teams is document management, which provides digital indexing for legal services work product. Closely related to this, but more varied in their implementation, are knowledge management systems, which seek to aggregate content, including prior work done by the firm, in ways that are relevant and accessible for busy professionals. Increasingly, firms and corporate in-house teams are also making use of workflow automation platforms applying what in other industries might be referred to as robotic process automation (RPA) – that is, the automation of scalable and repetitive tasks. Increasingly common too are the use of extranets or digital deal-rooms that provide secure repositories of data that are accessible by the lawyers and clients or others outside their team. In large-scale litigation, or corporate transactions, there are typically huge volumes of digital documents that are provided by outside parties and need to be reviewable by a range of personnel across organizational boundaries.Footnote 27
The deployment of AI differs from earlier generations of automation in that it requires training to parameterize a model that best classifies items of a particular category.Footnote 28 Training is done using a set of data labeled according to the variable of interest. This training requires data – the more the better – that is relevant and accurately labeled. In the litigation context, AI is now commonly used to identify potentially relevant documents in a pre-trial discovery exercise.Footnote 29 This necessitates the training of new models for each suit, based on aspects identified as “relevant” by expert human reviewers. In the transactional context, AI is increasingly deployed to review contracts. In-house teams train AI systems to review their company’s everyday or “business as usual” contracts; BigLaw firms by contrast train AI systems to do due diligence, reviewing a large corpus of an M&A target’s contracts to identify clauses that may pose problems for buyers (such as change-of-control clauses).Footnote 30 In each case, the training requires legal expertise.Footnote 31 Moreover, increasing numbers of legal practitioners are making use of AI in support of their legal research, training tools that complement the offerings of the big legal data providers.Footnote 32
In the “business of law,” technology is widely used to support accounts and time recording. BigLaw firms are beginning to deploy AI-based systems both to enhance and leverage the data from these earlier systems. An appropriately trained model can both help to fill gaps in time recordings and predict the likely time budget for new instructions. This opens up the possibility of output-based pricing, as opposed to the traditional input-based model of the billable hour. Similarly, lawyers are increasingly turning to customer relationship management (CRM) systems to support marketing and client relationships. These systems themselves increasingly make use of AI.Footnote 33
2.2.2 Augmented Lawyering and Business Models in BigLaw
Focusing on the adoption of AI, survey and interview evidence suggests that it has multiple impacts on lawyers’ work.Footnote 34 The most well-understood effect is substitution – that is, AI systems replacing humans for repetitive, scalable tasks. At the same time, lawyers’ work in giving bespoke advice is augmented by the use of AI, freeing up their capacity to deliver judgment-oriented tasks for which humans remain uniquely capable. Here, lawyers are consumers of AI systems’ outputs, which augment the quality of their advisory work. Third, the deployment of AI creates new tasks for humans, necessitating a multi-disciplinary mix of skills and expertise – not just legal but also data science, information security, process and project management, and user experience. Where lawyers work in such multi-disciplinary teams (MDTs), they are helping to produce AI-enabled legal services.
Having characterized these three distinctive ways in which AI affects lawyers’ work, we need to determine where in the BigLaw ecosystem we can observe these in practice. The “ecosystem” consists of corporate clients as the ultimate customer, serviced by law firms – the traditional “outside counsel” – and by a rapidly growing congeries of other providers including law companies and legal tech providers (see Figure 2.1). In prior work, we sought to organize these relationships by reference to business models, which clarify how value is created for clients.Footnote 35 We distinguish between a traditional “Legal Advisory” business model, which entails the provision of customized advice or analysis, a “Legal Operations” business model that enhances efficiencies in legal workflows, and a “Legal Technology” business model that focuses on the development of technological systems for legal services.Footnote 36
The Legal Advisory model focuses on work that requires skills that for the foreseeable future remain distinctively human; lawyers rely on AI predictions to augment their work. By contrast, in both the Legal Operations and Legal Technology business models, technology substitutes for humans in certain tasks. Technology in these business models also engenders new tasks, most obviously in young legal tech ventures, but also in large law firms and in-house corporate legal departments.
We characterize these business models as ideal types; in practice, experimentation in combining different business models is rife. For instance, some law firms have developed internal legal operations expertise and/or have an in-house legal tech capability either via organic growth or acquisition. In the US, Wilson Sonsini has a wholly owned subsidiary in the form of SixFifty, and in the UK, Simmons & Simmons acquired Wavelength Law, a legal tech provider. At the same time, notable law companies have used legal operations excellence as a launchpad to move into legal advisory work. Elevate has its in-house law firm, Elevate Next, and UnitedLex created a subsidiary law firm, Marshall Denning. In the meantime, law companies and legal tech providers are partnering with law firms to access premier corporate clients.Footnote 37
Combining all three business models – Legal Advisory, Legal Operations, and Legal Technology – under one roof in an integrated legal management company might be desirable from the point of view of providing a one-stop shop for corporate clients. However, such integration creates tensions in strategic focus and reputational capital. In particular, employing both lawyers-as-consumers of AI and lawyers-as-producers of AI under one roof is challenging, not least due to the need to establish career paths to integrate, or segregate, the two types of lawyers. As it stands, these career paths are yet to be clarified. And some firms are implicitly signaling which type of lawyer – lawyer-as-consumer or lawyer-as-producer of AI – they prioritize as their core human capital. Thus, human capital challenges, rather than the challenge of accessing external finance, are more central to the difficulty that law firm partnerships face in sustaining effective deployment of digital technology, including AI.Footnote 38
2.3 Digital Technology in the PeopleLaw Sector
Legal tech also has potential to unlock capacity to address consumers’ legal needs in PeopleLaw. Just as in BigLaw, technology promises to lower costs of delivery for PeopleLaw through exploiting economies of scale. However, there are differences in the way legal tech systems add value in the two contexts. For BigLaw, as we have seen, this is through a mixture of substitution by automated systems for some human tasks (lowering costs) and augmentation of high-value human work on bespoke tasks (enhancing productivity). In PeopleLaw, the tasks are in general more routine in nature, meaning there is relatively more potential for value to be created by legal tech through lower-cost substitution. As we shall see, technology adoption is as yet more limited in the PeopleLaw than the BigLaw context. We argue that this is determined by financial and technological constraints that currently limit opportunities for scaling legal tech to substitute for human lawyers.
We identify two significant constraints on the adoption of legal tech in PeopleLaw in contrast to BigLaw. First, PeopleLaw firms are generally much smaller than their BigLaw counterparts, limiting their ability to invest fixed costs necessary to deliver automation. Second, the fact that PeopleLaw clients are not usually versed in the law (unlike the in-house counsel who typically purchase BigLaw services) means that technical solutions substituting for lawyers must also perform a lay-to-legal (and vice versa) translation function. We develop these points below.
We can usefully distinguish barriers to technology adoption in PeopleLaw that stem from the demand and the supply sides of the market, respectively. The demand side, discussed in Section 2.1’s consideration of the BigLaw and PeopleLaw segments of legal services markets, is well understood. To recap, there are persistently high levels of unmet legal needs in many issue areas (see Figure 2.1), owing to individual (that is, non-corporate) consumers’ inability to identify their problems as legal in natureFootnote 39 and, for problems recognized as legal, the perceived inaccessibility of the justice system and the costs of accessing lawyers. Survey evidence suggests consumers’ budget constraints are binding.Footnote 40 Many consumers are unable to afford a lawyer to advise them whenever they have a problem at home (divorce, child custody, debt collection, etc.), at work (employment dispute), or when moving home (immigration, conveyancing, etc.). The adoption of legal tech could help resolve currently unmet legal needs by lowering the unit cost of legal service delivery, particularly in settings where such legal services can be productized.Footnote 41 In transactional contexts, this can take the form of providing standardized document templates or transaction-processing pipelines.Footnote 42 For contentious matters, this could involve technologically enabled dispute resolution mechanisms (commonly referred to as online dispute resolution, or ODR) that are quicker and simpler to execute than traditional court proceedings.Footnote 43
Despite the clear potential for technology to meet latent demand, adoption of technology by solo practitioners and small law firms – the sort that traditionally service individual clients – remains lower than in larger firms. Several recent surveys in both the UK and US have asked firms about deployment of emerging technologies (see Table 2.1), and have consistently found that small firms are less likely to have done so.Footnote 44 Why does this pattern emerge so consistently in both the UK and US, notwithstanding the considerable unmet legal needs in both countries, and the UK’s reforms designed to liberalize legal services for the benefit of consumers?
Which of the following legal technologies are you currently using, or planning to use, in your firm? N = 891 | Currently using | Planning to use | Not planning to use | |||
---|---|---|---|---|---|---|
N | Row % | N | Row % | N | Row % | |
Videconferencing with clients | 770 | 86.4 | 48 | 5.4 | 73 | 8.2 |
Model documents/templates on our website | 217 | 24.4 | 149 | 16.7 | 525 | 58.9 |
Interactive website to generate legal documents in response to client input | 88 | 9.9 | 173 | 19.4 | 630 | 70.7 |
Chatbots or virtual assistants | 55 | 6.2 | 125 | 14.0 | 711 | 79.8 |
Online portals for matter status updates | 137 | 15.4 | 189 | 21.2 | 565 | 63.4 |
E-verification/electronic signatures | 332 | 37.3 | 226 | 25.4 | 333 | 37.3 |
Storing data in the cloud | 587 | 65.9 | 102 | 11.5 | 202 | 22.6 |
Practice management software | 550 | 61.7 | 87 | 9.8 | 254 | 28.5 |
Legal research software | 449 | 50.4 | 90 | 10.1 | 352 | 39.5 |
Contract review software | 65 | 7.3 | 120 | 13.5 | 706 | 79.2 |
Blockchain/distributed ledger | 16 | 1.8 | 74 | 8.3 | 801 | 89.9 |
Data analytics with AI | 45 | 5.1 | 92 | 10.3 | 754 | 84.6 |
Two complementary factors seem relevant. The first relates to fixed costs associated with deployment of automated systems. Small firms, such as those involved in PeopleLaw, have more limited capacity to bear fixed costs than do larger firms.Footnote 46 This means that technology is likely to penetrate first into BigLaw firms. It also implies that deployment in PeopleLaw is likely to be preceded by consolidation of service providers, and that constraints on external finance are likely to be more of a barrier to legal tech deployment for PeopleLaw than BigLaw.Footnote 47
Second is the challenge of translation between how lay clients speak about their problems and the way in which the legal system frames these same issues. This translation exercise is a core part of a human lawyer’s “client skills.” Social intelligence – including the ability to empathize and communicate with a with range of backgrounds – remains particularly elusive for AI systems.Footnote 48 In the BigLaw context, the users of technical systems are typically themselves lawyers, who are able to provide such translation for their ultimate clients, and the costs of having human lawyers provide this are typically small relative to the value of the service in question. For PeopleLaw, the cost of having a human lawyer remain in the loop may be prohibitive. This suggests that at least part of the unmet legal needs may be beyond the current technical possibility frontier.
2.3.1 Use Cases in PeopleLaw
For the reasons described above, deployment of technology in the PeopleLaw context remains relatively modest. One key use case is automated document assembly – that is, the production of customized legal documentation using an automated system. In particular, it is the only technology of the ten considered in the Legal Services Board’s 2018 survey for which law firm respondents serving individuals were more likely to report adoption than those serving large businesses (25 percent v. 11 percent).Footnote 49 Transaction management tools are also increasingly widely deployed to assist in residential real estate and personal finance,Footnote 50 which have large throughputs of transactions for which individuals need legal services.
These tools are in many cases deployed in conjunction with transactional platforms that facilitate the connection of users to relevant human lawyers. They are typically fronted by a portal offering users simple Q&A on basic legal issues relating to their concerns, accompanied with document templates – perhaps automatically generated – and referrals to human lawyers as necessary. Each platform retains a network of lawyers whose work is ranked by users and to whom referrals are made.
Chatbots may seem a promising solution to the problem of engaging with lay users, but they need to be supported by systems capable of dealing with a sufficiently wide range of user inputs. Expert system approaches are constrained by the need to hard-code the relevant knowledge frameworks, creating limitations where user queries go outside this. Machine learning approaches trained on legal materials must not only be able to dispense and classify legal advice – beyond the capabilities of current systemsFootnote 51 – but also to be able to translate this into how laypersons understand legal issues. There is evidently a serious gap between ordinary parlance used by laypersons and the specialized terminology of legal discourse. This gap tests the frontier of applying natural language processing (NLP) to use laypersons’ statements or queries as data for prediction.Footnote 52 Making progress with these technological challenges will permit chatbots and virtual assistants to give wider-ranging advice to consumers.Footnote 53 This current technological bottleneck may explain the relatively low rate of use of chatbots and virtual assistants (see Table 2.1). These technological constraints limit the extent to which legal tech systems can substitute completely for human lawyers.
2.3.2 Augmented Lawyering and Business Models in PeopleLaw
Legal tech is engendering new business models in the PeopleLaw context, just as for BigLaw. The PeopleLaw ecosystem, however, is somewhat different in both the stakeholders and the emergent business models (see Figure 2.2). In the PeopleLaw ecosystem, clients are individual consumers and small businesses, rather than large businesses. Thus, all the lawyers in the ecosystem are on the supply side, offering advice directly to lay consumers. In contrast, for the BigLaw ecosystem, the demand side is driven by in-house lawyers.
In both settings we characterize a new legal tech business model, developing technological systems for legal services. The design and implementation of such systems engenders new tasks for persons with legal expertise, working together as part of multi-disciplinary teams. Lawyers working in such teams are producers of digital legal services.
The limits of existing technology to provide legal services directly to consumers mean that human lawyers remain in the loop in most PeopleLaw contexts. This means that, at present, there is less opportunity than in BigLaw for what we term the Legal Operations business model – leveraging technology to substitute for humans in the delivery of legal services.Footnote 54 Instead, much of the current deployment of legal tech in PeopleLaw has the lesser ambition of simply lowering search costs to match human lawyers to clients, just as e-Bay provides a marketplace for buyers and sellers. Thus, a legal tech firm offering such a marketplace acts as a two-sided platformFootnote 55 to lower costs of matching lawyers to consumer needs. Such platforms do not substitute for human lawyers; rather, their value lies in augmentation of human lawyers’ productivity. We characterize the provision of such platforms as a “Transactional Platform” business model.
Some providers seek to capture further economies of scale by defining consumer needs more broadly than simply “legal” needs, offering a conveniently integrated package of legal and other services. For example, Farewill offers “death” services, combining will writing and funeral services;Footnote 56 other providers may offer a service in “moving home,” combining conveyancing and mortgage brokerage, or in “injury” combining advice on personal injury law with insurance services.
The constraints we have identified mean that the full promise of legal tech to unlock value for PeopleLaw consumers has not yet been met. As of the early 2020s, legal tech is not yet capable of substituting effectively for human lawyers except in very simple tasks, such as generating standardized documents for wills or small business incorporation. The value created by legal tech in the PeopleLaw setting appears so far to be limited to augmenting human lawyers and lowering the search cost for end-users. While augmentation brings the overall costs of legal services down by increasing productivity, there is still a need for human lawyer input in many cases.Footnote 57 Paradoxically, the scope of potential gains from augmentation are likely smaller in PeopleLaw than BigLaw, because of the more routinized nature of the legal work. This helps explain the more limited deployment of legal tech in the PeopleLaw setting. In the future, if and when technology can substitute for human lawyers more comprehensively, there remains significant further scope for PeopleLaw providers to meet remaining latent demand for legal and associated services (see Figure 2.2).
2.4 Implications for Convergence: Leveling the Playing Field?
We are now in a position to return to our central question: Will the adoption of legal tech level the playing field through convergence in the PeopleLaw and BigLaw sectors’ relative capacity to meet legal needs? To do so, we employ a causal framework based on the following elements (see Figure 2.3). First, we summarize the emergent business models that are theoretically possible given the nature of legal tech and other constraints. Second, we examine factors that encourage or discourage the adoption of these business models, including regulation and access to financial capital and relevant human capital, as mediated by organizational governance of law firms and other providers. Third, to the extent that it is possible, we draw implications for the market size and industry structure (the degree of concentration or fragmentation) of PeopleLaw and BigLaw markets, and their relative capacity to meet latent demand for legal services.
2.4.1 Convergence in Meeting Client Needs?
We begin with a high-level consideration of the possibility of convergence and divergence using an economic lens. This focuses on the black boxes in Figure 2.3 imputing causal links between legal tech and data on the one hand, and market size and industry structure on the other, while assuming that latent demand is more or less fixed.
Digital technology is a double-edged sword when it comes to leveling the playing field with respect to meeting client or consumer needs. To begin, the possibility for convergence relative to the past lies in technology’s ability to reduce costs of delivery, expanding the “legal production possibility frontier” given user budget constraints.Footnote 58 The reduction in cost per unit of legal service delivery derives from both supply-side economies of scale, with technology facilitating automation (substituting human lawyers) and better workflows, and from demand-side economies of scale, the so-called network effects.
Other factors, however, suggest we may still be a long way from absolute convergence, and the two sectors may continue to diverge in meeting latent legal needs.Footnote 59 Convergence would require the demand curve to remain fixed, which may not be the case. For example, in the BigLaw context, while technology assisted review (TAR) lowers the unit cost of document review, its availability may simultaneously increase the level of effective demand (that is, the number of documents sought to be reviewed), thus raising the capacity needed to meet the overall demand. Thus, while the per-unit cost is lowered by technology, the equilibrium price might increase due to an increase in the size of the pie. (This assumes a relatively high price elasticity of demand or an outward shift in the demand curve.) This type of effect requires users to have significant financial resources, more readily available in BigLaw than in PeopleLaw.Footnote 60 In PeopleLaw, notwithstanding consumers’ meager financial resources, inability (yet) to automate interfaces with end-users due to the translation challenge (from lay language to legal framing as discussed in Section 2.3) means that unmet legal needs are likely to remain significantly high.Footnote 61 In short, this is a scenario in which PeopleLaw will be left behind in the artificial intelligence revolution, while BigLaw leapfrogs in the scale and scope of AI adoption.
Thus, predictions of progressive convergence versus continued divergence entail assuming different conditions for each side of the market. On the supply side, the case for convergence is based on technology’s capacity to reduce the cost of service delivery, but this may operate asymmetrically between the sectors – implying continued divergence – because of the uncertainty around technological capacity to translate lay language into legal framing. On the demand side, convergence would come about if latent legal demand is more or less fixed. By contrast, the divergence perspective is grounded in a view that unmet legal needs are a movable feast, with latent demand turning into effective demand not only through a change in the price but also through outward shifts in the demand curve arising from societal and commercial forces.
Below, we start by comparing emergent business models and their complements in PeopleLaw and BigLaw, to unravel some of these differing conditions.
2.4.2 Technological Possibilities, Business Models, and Data: BigLaw and PeopleLaw Compared
Our first task is to compare the technological possibility offered by legal tech and data to develop new business models in the two segments of the legal services market. In both the BigLaw and PeopleLaw sectors, the current phase of legal tech is based not only on rule-based expert systems to generate documents based on templates, but also machine learning that enables the generation of prediction. We have characterized four distinct business models (see Sections 2.2 and 2.3), which exist in both sectors but with some variations in relative importance (see Table 2.2). In particular, traditional Legal Advisory delivered by human lawyers remains significant in both sectors. However, the cost of such advice likely remains unaffordable for many PeopleLaw consumers. Legal tech solutions are now available in both sectors as inputs to Legal Advisory, augmenting the productivity of human lawyers-as-consumers of the technology. To date, however, the impact of this appears to have been more pronounced for BigLaw than PeopleLaw. The differing trajectories of the two sectors are due in part because the gains from augmentation are greater where the legal problems are more complex (typically the case in BigLaw), and in part because the delivery of these gains to end-users requires them to be able to afford the cost of the human legal adviser who intermediates them (again, more likely the case in BigLaw).
Business model | BigLaw | PeopleLaw |
---|---|---|
(1) Legal Advisory | Bespoke legal advice by lawyers for corporate clients; augmented by use of services/products from (2) and/or (3) as inputs. | Bespoke legal advice by lawyers, individual customers. Likely unaffordable for many consumers. |
(2) Legal Operations | Improve workflow of legal service delivery at law firms and corporations by automation. May use products from (3) as inputs. | [Less important, as neither consumers nor PeopleLaw providers have large organizations.] |
(3) Legal Technology | Develop software tools to automate processes and practices in BigLaw legal services. | Develop and provide tools to automate processes and practices in PeopleLaw legal services. |
(4) Transactional Platform | Lawyers-on-demand for corporate clients wanting services on a project-by-project basis. | Marketplace to lower search costs for consumers to find lawyers with relevant experience. |
What has not yet happened on a large scale is the delivery of legal tech solutions direct to end-users without human lawyer intermediation. We view this as primarily a function of technological constraints. Given this, the future application of legal tech to bypass lawyers by using chatbots and virtual assistants has high latent demand in PeopleLaw.
In making a distinction between legal advice (more bespoke) and legal services (subject to repeated and scalable delivery), the Legal Operations business model has wider application in BigLaw than in PeopleLaw. This is because large law firms and corporations in BigLaw would wish to exploit workflow efficiency and automation within their organizations, while solo practitioners and law firms in PeopleLaw have less need or opportunity due to their small scale. In other words, opportunities to seek efficiency and lower costs exist due to both supply-side and demand-side reasons, but BigLaw is in a position to benefit more from supply-side economies of scale than PeopleLaw.
With respect to demand-side economies,Footnote 62 network effects could be leveraged in both sectors by using the Transactional Platform business model. Not only do such marketplaces lower search costs, the possibilities of finding appropriate transactional partners rise exponentially with more users of the platform.
Last and not least, the central importance of training data in artificial intelligence is likely to give advantages to providers that can scale in both BigLaw and PeopleLaw.Footnote 63 First-mover advantage may accrue to data aggregators that have a head start in training their AI models using data. Both sectors face challenges in turning unstructured data into machine-readable structured data, while also developing NLP methods to analyze less structured data. However, there are granular differences in the dynamics. In PeopleLaw, data aggregation between users may be relatively straightforward in the marketplace, although this may recede with growing background constitutional data protection.Footnote 64 In BigLaw, between-user data aggregation requires careful negotiation that takes account of commercial sensitivity. For now, much of the data aggregation taking place in BigLaw is within-user – for example, for a specific corporate client, be it a bank or an insurance company.Footnote 65
Another possible route to scaling up, leading to convergence, is the emergence of providers that serve both BigLaw and PeopleLaw clients. If a machine learning algorithm can be used for contract analytics in BigLaw, why not deploy the same algorithm for tenancy agreements, employment contracts, and other documents in PeopleLaw? In reality, providers serving both market segments are not a common trend, reasons for which may include the vastly different price points to generate demand in the two market segments, and the importance of cultivating a client base as a market entry barrier.
2.4.3 Access to Finance including External Capital
We now shift our analysis to the boxes labeled “financial constraint” and “human capital constraint” in Figure 2.3 representing distinct constraints on the effective deployment of new business models that arise from organizational governance of law firms and other entities providing legal services in BigLaw and PeopleLaw. Our analysis suggests that the financial capital constraint is not an issue in BigLaw in the way that it might be in PeopleLaw, whereas the human capital constraint may be more of a problem in BigLaw than in PeopleLaw.
The inability of traditional law firm partnerships to raise external capital was considered a major challenge preventing law firms from adopting technology.Footnote 66 Our research suggests otherwise: The main challenge for law firms in the BigLaw sector is in human capital, and in recruiting and motivating non-lawyers working in multi-disciplinary teams to deploy digital technology for legal service delivery.Footnote 67 In PeopleLaw, by contrast, sole practitioners and small firms likely suffer from financial constraints, if they wish to access legal tech.
Given the absence of publicly available information on spending on digital technology by law firms and corporate legal departments, it is difficult to compare aggregate investments made in the PeopleLaw and BigLaw sectors. We focus instead on a subset of investment activity for which data are available: the amount of external funds that have been invested in legal tech start-ups. We here present insights from an analysis of legal tech start-ups for which investment data were available in the Crunchbase Pro database in January 2021.Footnote 68 In total, legal tech start-ups in the UK raised $853 million, compared to $5.98 billion by legal tech start-ups in the US.Footnote 69 This divergence between investment in UK and US lawtech start-ups tracks differences in the overall levels of venture capital investment more generally, for which the US historically greatly exceeds the UK.Footnote 70
Start-ups and their venture capital financiers tend to operate in geographically concentrated clusters, owing to the importance of regional networks and in particular the hands-on nature of the financing relationship.Footnote 71 We focus, in our analysis, on 129 legal tech start-ups with headquarters clustered in London (45), New York (37), and the San Francisco Bay Area (47).Footnote 72 By reading company descriptions in Crunchbase, LinkedIn, and company websites, we manually classified start-ups according to whether they primarily served the PeopleLaw (41) or BigLaw (61) sectors.Footnote 73 These start-ups target a wide range of legal work. In BigLaw, start-ups in all three locations were in contract analytics, knowledge management, practice management, or lawyers-on-demand marketplaces. In PeopleLaw, tech start-ups existed typically in will writing, residential conveyancing, and simplifying the process of setting up a new business for start-up founders (see Figure 2.4).Footnote 74
In terms of money raised (including angel and venture capital financing) over the lifetime of all start-ups in our sample, BigLaw has raised significantly more overall than PeopleLaw. However, this is driven entirely by London; in the two US clusters, the levels of investment in legal tech firms are approximately equal across these sectors (see Figure 2.4). Total funds raised in San Francisco exceed those raised in each of the other two clusters.Footnote 75
However, fundraising by start-ups in BigLaw captures only a portion of the total investment in technology for this sector. Not only do BigLaw start-ups attract venture capital funding, they also receive complementary investment by law firm and corporate clients to co-create new technology and share data, and the latter also make their own proprietary investments in technology. For example, according to the annual financial statement submitted to Companies House, the English magic circle firm Allen & Overy LLP invested approximately $27 million in internally generated software in 2018/19. This investment by a single large firm is equivalent to 15 percent of the total amount raised ($175 million) by BigLaw legal tech start-ups in London, as shown in Figure 2.4. While in BigLaw, the start-up fundraising figures understate the total investment in technology, in PeopleLaw there is no corresponding investment by individual consumers.
To summarize, financial capital appears not to be a binding constraint for the BigLaw sector, given that law firms organized as partnerships are able to invest more in technology than the fundraising by start-ups. In PeopleLaw, because law firms serving the sector tend to be smaller and have fewer financial resources, outside capital is plausibly more important to enable more legal tech start-ups to emerge in this market segment.
2.4.4 Access to Multidisciplinary Human Capital
We argued that an effective use of multidisciplinary teams (MDTs) in which lawyers-as-producers-of-AI work alongside non-legal professionals was essential for the effective deployment of legal tech. Here, we argue also that the problem of accessing multidisciplinary human capital to enable MDTs is more pertinent in BigLaw than in PeopleLaw.
In BigLaw, clients are large law firms as lawyer-only partnerships and corporate legal departments. Within law firms, human lawyers are required for bespoke work, and these lawyers-as-consumers-of-AI do very different work from lawyers-as-producers-of-AI working in MDTs. Other non-legal professionals are also not given opportunities for promotion to top management, making it challenging to recruit and retain the best talent in data science, management, and other disciplines.Footnote 76 Thus, there is likely to be a bifurcation in legal service delivery, between law firm partnerships whose business model (Legal Advisory) continues to center on human capital, and corporations that are aligned better to implement MDTs, pursuing Legal Tech or Legal Operations business models.Footnote 77
In PeopleLaw, the transformative impact of legal tech is likely to come about through legal tech start-ups that employ lawyers-as-producers-of-AI. There are of course law firm partnerships in the PeopleLaw sector, but the absence of career paths for multi-disciplinary non-legal professionals does not hit small law firms and sole-practice lawyers as much as large law firms, which are more prevalent in BigLaw. PeopleLaw may also be delivered by professionals other than lawyers – for example, experts in tax, insurance, real estate, and human resources.
In short, BigLaw faces a greater human capital challenge than PeopleLaw. BigLaw law firms’ challenge lies in aligning its human capital investment as a complement to their newly adopted business models other than the Legal Advisory model. PeopleLaw lawyers can also take advantage of the Transactional Platform, which enhances individual lawyers’ reputational transparency for consumers, thus reducing the significance of reputation pooling at the firm level.
2.4.5 Regulation
From the foregoing discussion, the financial constraint appeared to be more binding, and the human capital constraint less binding, in PeopleLaw than BigLaw. This suggests that the UK’s relaxation of rules that prohibited ownership of law firms by non-lawyers – which would facilitate the raising of outside capital – should have had more of an impact in the PeopleLaw than the BigLaw sector.
There are now over 1,000 licensed ABSs in the UK, as against a total population of over 10,000 law firms. For England and Wales, the Solicitors Regulation Authority (SRA) approved 1,089 ABSs by December 2020. Of these, 73 percent are limited companies, and 22 percent are limited liability partnerships.Footnote 78 About half of these ABSs have transformed from law firm partnerships,Footnote 79 and a sizable number have consequently changed the way in which they raise finance, to invest more in technology and innovation.Footnote 80 Consistently with the foregoing account, the vast majority of these law-firm-to-ABS moves have been very small firms whose clients are individuals rather than businesses.Footnote 81
This seems to suggest the UK’s regulatory reforms had an impact on the PeopleLaw sector. In particular, we might expect to observe more capital being raised by the UK than the US legal tech start-ups in our sample. Figure 2.4, however, does not support this prediction. While supply-side considerations may explain the greater levels of investment in San Francisco, this evidence does tend to suggest that the impact of the UK’s deregulation has been less than transformative. Put another way, access to financial capital may be necessary but not sufficient to transform PeopleLaw. Other regulatory reforms, not just those that aim to unlock capital flows, may be necessary – hence, UK policy initiatives such as the SRA’s Legal Access ChallengeFootnote 82 and the LawTech UK’s sandbox hosted by TechNation.Footnote 83 These sandboxes are intended to not only give providers better access to granular regulatory expertise to test new service offerings, but also to enhance legitimacy and consumer confidence in the robustness of the underlying legal tech. This is consistent with the conclusion by BartonFootnote 84 that in the US, the speed of legal tech adoption, ironically led by providers serving the poor and corporate clients, is bounded by the technological barriers rather than the regulatory barriers alone.
2.4.6 Future of Market Size and Industry Structure
Pulling these various strands together, we want to know what the likely future for PeopleLaw and BigLaw is in terms of their relative market size and industry structure. We attempt to address this question in the context of no change in current regulation, and first identify the scale-up possibilities and advantage of each identified business model. Simply put, the Legal Advisory model does not scale. By contrast, the Legal Operations and Transactional Platform models are subject to supply-side and demand-side economies respectively. Legal technology that has a platform characteristic has the potential to scale and dominate,Footnote 85 while other technologies such as software tools may remain “point solutions” that do not scale without a platform.
In BigLaw, technology solutions that are specific to the legal industry are already wired into cross-sector technology solutions – for example DocuSign with its e-signature, Salesforce, and contract analytics tools that use the Microsoft Office platform. Moreover, data providers such as Thomson Reuters and LexisNexis are vying to become technology platform leaders via the acquisition of legal tech providers. One possibility is that legal tech for BigLaw will become more and more subject to the platform logic, leading to greater market concentration of technology providers, many of which hail from outside the legal industry. If that is the case, the UK Competition and Markets Authority’s recent recommendation for a unified register of legal tech providers may be necessary but not sufficient as effective public policy.Footnote 86 At a minimum, what is a legal tech provider, as opposed to simply a tech provider, needs to be defined.Footnote 87 Also, market concentration is more likely if governments do not implement policies to restrain anti-competitive behavior of big tech companies.
In PeopleLaw, market growth (and concentration) can accelerate if two things happen: first, the growth of Transactional Platforms, and second, technological solutions to the lay-to-legal-framing translation problem. While platforms may take off to provide a launching pad for scaling up, one side of the marketplace will remain human lawyers, rather than chatbots or virtual assistants, until this translation problem is addressed and resolved by data scientists and linguists. In the meantime, blurring the boundary between BigLaw and PeopleLaw market segments would not happen for some time to come in spite of the theoretical possibility of sharing the same platform and the same algorithms across segments. The reasons stated earlier include the difficulty of aggregating across-user data, the vastly different price points to solicit demand, and client base cultivation as a market entry barrier. Moreover, convergence is more likely to come about via “trickling up” rather than “trickling down,” consistent with Christensen’s idea of disruptive innovation.Footnote 88 That is, it is more likely for legal service innovation that starts by addressing the low end of the market whose needs are currently not met by incumbents to move up the value chain, and less likely that expensive high-end solutions will be adapted for low-end markets by stripping down functionality to achieve lower costs.
2.5 Conclusion
This chapter addressed a question of central importance to public policy, namely, whether or not the adoption of legal technology will level the playing field between two hemispheres of the legal services sector – PeopleLaw and BigLaw. In the late 2010s, PeopleLaw constituted only a fifth to a quarter of the total revenues in legal services markets in the US and UK. We argue in this chapter that, in order to level the playing field and to make PeopleLaw thrive relative to BigLaw, the use of legal tech is necessary but not sufficient.
Legal tech, together with the aggregation of data, has enormous potential to transform the way legal services and legal advice are delivered in both hemispheres. Repetitive and scalable tasks can be automated, substituting technology for human lawyers and lowering unit costs. Tasks requiring extensive customization or social intelligence remain in the exclusive competence of human lawyers, but their capacity is augmented by the deployment of technology for repetitive tasks. Through these channels, technology offers the potential to lower the costs of legal service delivery and thus reach consumers and clients whose needs had gone unmet. This would most obviously play out through the adoption of new business models (such as legal operations, transactional platforms, and legal tech) that focus on capturing economies of scale. In turn, these economies of scale would drive market concentration, with emerging winners likely being those who can best combine network externalities associated with both usage and data aggregation. This is a dynamic increasingly familiar from tech firms in other sectors. The change would be most obvious in PeopleLaw, which traditionally operates at a much smaller scale, but the underlying dynamic would be similar, and the process would lead to convergence in meeting client needs, business model adoption, and market structure.
However, the reality is far more complex, because – at least for now – various constraints create obstacles to market participants’ ability to leverage technology through the adoption of new business models. In BigLaw, key barriers lie in the human capital constraints associated with mixing Legal Advisory with other business models. Legal Advisory is, by definition, focused on work that is human-centric, and so organizational and management structures that appeal to the humans with the relevant capital will be crucial for competitive advantage. However, these institutions correspondingly constrain the deployment of Legal Operations and Legal Tech business models, creating a constraint on concentration. Alongside this, users’ hesitancy about data aggregation, at least for now, constrains the extent to which legal tech platforms are able to achieve concentration.
In PeopleLaw, the process of concentration appears to be well under way, with transactional platforms and integrated service delivery offerings capturing economies of scale and scope. However, there remains a seemingly significant obstacle to meeting latent demand, through the fact that the “client-facing” aspect of service delivery still eludes complete automation. Because human lawyers have high costs, this translates into high prices that raise the bar on the extent to which demand remains latent. There is some evidence that financial constraints are also an obstacle, but this is challenged by the greater levels of legal tech investment in the US (where law firms are not permitted to raise outside equity) than in the UK (where they have been able to do so for a decade under the Alternative Business Structure model). This suggests that the stakes in the US regulatory debate may be lower than participants imagine. At the same time, these constraints are unlikely to be eased by a policy focus on price transparency and comparison shopping emphasized by the UK’s Competition and Markets Authority.Footnote 89 Legal services, however productized, are after all credence goods, and consumers and clients who purchase them must overcome information asymmetry and/or behavioral biases.