WM Market Reports
Leveraging AI for Lead Generation and Management

This is chapter two of a research report issued by this publication with EY and Finantix, entitled Applying Artificial Intelligence in Wealth Management: Compelling Use Cases Across the Client Life Cycle.
Tom Burroughes, Group Editor at WealthBriefing, explores how
AI technologies can help wealth managers ensure they always have
a full pipeline of future business and that they engage with
those prospects as effectively as possible. (To
view the full report, and see the link to register for the copy,
click here.)
In today’s ever more hotly-contested market, private client
advisors know only too well how important it is to have a full
pipeline of future clients to expand business and replace
customers who move away. And they need to know that once they’ve
figured out who potential new clients might be, they also need
toolsets made available by AI and other technologies to reach out
to such people as precisely and persuasively as possible.
AI can help managers connect with new clients by finding out
where they are, alerting practitioners to liquidity events and
who stands to benefit from them by highlighting Initial Public
Offerings, trade sales, share options being exercised,
significant bequests and even legally-mandated financial
pay-outs. The science of sifting liquidity events is developing
and has moved fastest where publicly-listed firms are concerned,
but there are also developments on the private side of the
street.
Discovering leads about new clients, and managing the initial
approach and the onboarding process, can entail a number of
challenges, however, including where foreign language and other
potential barriers to understanding arise. Once the potential new
client is discovered, and then approached, there is also the need
to get an early and accurate read on that individual’s needs and
position. Any data analysis that can make it easier to gauge the
full balance sheet of a client – the liabilities side as well as
assets – is clearly going to be a huge competitive advantage for
wealth managers.
Finding and keeping clients
As Alessandro Tonchia, Co-Founder of Finantix, describes, AI
technologies can provide elegant solutions to many prospecting
challenges, helping the early part of the client discovery
process to proceed along very efficient lines.
“The sequence is that you find a potential lead – someone who
owns a fast-growing company, for example – and you derive a
client profile to assess if it fits your qualification criteria,”
he said. “Then the technology can score which of your bankers is
most attuned to that profile, as they speak the same language,
are the same age, share interests or because they already have
many similar clients in that field.”
To further foster a connection, Tonchia explained that an
institution can then scrutinise a source such as LinkedIn to see
if the relationship manager is already tangentially connected to
the target, and work out if some existing clients sit on the same
company boards as them. AI can even help produce the right
message and the appropriate language to reach out to a target in,
he said.
As the information pool deepens, AI and machine learning
techniques can massively boost client acquisition, client
retention and sales, confirmed Phil Tattersall, Director in EY’s
Wealth & Asset Management Data and Analytics advisory
practice.
“Alternative data sources – such as social media, mainstream news
and relevant publications - can be powerfully leveraged and
analysed to generate new insights for prospecting and compiling
prospect profiles,” he said.
Similarly, clients can be segmented and analysed for retention
risk (for example by correlating transaction and channel data
with market events to reveal a client’s true risk tolerance) and
the relevant corrective actions initiated.
Working out early in a conversation how easy or hard it will be
to retain a client’s business in certain conditions is surely
extremely useful for a firm that wants to know how consistent its
revenue from certain areas of business is likely to be.
The fine detail that AI can unearth about clients can empower
advisors, giving them an edge in making pitches to new prospects.
Private banks are certainly on board with the use of AI in the
way they understand and support clients throughout the
relationship and don’t see it as taking the human out of the
equation, but rather as augmentation for people skills.
“Elements of AI and robo-advice can be combined with the wealth
of data that is available to help us understand clients’ risk
profiles, to build our investment themes and to enable our
front-office teams to become even more proactive managers on
their behalf,” said Jack Oliver, Head of Digital at HSBC Global
Private Banking.
Senior managers at Royal Bank of Canada’s wealth management
operation in the UK, for example, have stressed to the writers of
this report how full use of modern data technology, aided by AI,
has helped furnish RMs with a depth and breadth of information
that increases their chances of a successful “pitch”, increasing
success rates and boosting advisor productivity in this
regard.
Chris Burke, Vice-President, Digital Solutions and Sales
Enablement at RBC Wealth Management explained: “Natural Language
Processing [NLP] is helping banks to gather heretofore
inaccessible insights and relationships extracted from new and
significant sources of structured and unstructured client data.
There is a growing quantity of information being created about,
or on behalf of, clients daily through their engagement with
digital and social platforms that allow us to understand the
client more broadly, including family and business
relationships.
“We don’t see all of that information always. Even though it is
freely shared, we are limited in our ability to make the time
necessary to find, retrieve, read and process it. This new
insight allows us to understand their financial goals more
clearly in order to offer more timely and relevant solutions. It
also allows us to more quickly find unexpected relationships
between world events and our clients, allowing us to be more
proactive in our advice-based conversations.”
Looking for “diamonds in the rough”
David Teten, Managing Partner of HOF Capital, thinks this
“finding diamonds in the rough” aspect of AI is highly
significant. “AI can help mine public data sources to find out,
for example, the value of the client’s home or homes, or the
value of the company that they have sold,” he said. “AI is
helpful in deciding who I should solicit, how I should reach out
to them, what language I should use and in preparing the sales
collateral that will resonate most with them.”
As Teten observes, AI can prove invaluable in providing “ways in”
with prospective clients, helping advisors precisely tailor
conversations to build affinities and trust, and so improve their
chances of winning a new client.
One application he highlights is how AI can perform scenario
analyses enabling an advisor to quickly be able to examine the
implications of scenarios – like geopolitical shocks – that might
be on a prospective client’s minds.
An even more granular tool he has invested in helps support the
sales process by refining - in real time - the “script” the sales
person uses to optimise the conversation. “You still have a human
carrying out the calls, but they do a better job as they are
supported by an electronic ‘coach’,” he said. “You still need the
credibility of a human for sales, but the technology helps them
effect far greater sales success.”
Peter J Scott, an expert author on AI’s potential, also notes
that with so much information available in publicly accessible
ways, AI has a particular potency. He observed: "The parallel
might be with Google and reference librarians: in a few seconds I
can get out of Google what I couldn’t get out of a reference
librarian 30 years ago,” he said. “I still really like our
librarians; they are friendly and human and they understand me
personally, but there are a relatively small number of things I
would approach them for compared with what I ask Google now.”
“We will see a lot of things move in that direction. It is only a
question of when, not if.”
Surmounting the language barrier
This is a cosmopolitan industry, and facility with foreign
languages and sensitivity to cultural differences is clearly
crucial for those firms wishing to deliver profitable business.
With modern technology moving into areas such as language
translation, the potential here in the lead generation and
management side looks very interesting indeed.
In the earliest stage of contacting a client, figuring out his or
her native language (and which they prefer) is vital, and AI has
a part to play here, Tonchia explained: “The issue of
ascertaining which language the client speaks is not trivial. A
prospect could have a Russian name, own a Russian company and
therefore be mentioned in the Russian press, but at the same time
they might live in the US and not speak Russian, or at least not
by preference.
“Rather than acting blind and hoping a prospective client speaks
a particular language, with AI you will be able to attune your
strategy to their evidenced preferences.
“With AI technology ‘reading’ all available data sources you can
find out things that help foster relationships you never normally
could, like a prospect speaking three languages. Then, with AI
analytics you can discover what the most popular languages are,
mapping your current and target client base to discover that
perhaps you need to hire more Russian-speaking advisors.”
As our expert panel highlight, the full gamut of assistance AI
can offer on the prospecting front ranges far beyond the obvious.
And, while landing new business is still a uniquely human talent,
surely few relationship managers will choose to shun the
additional support AI can provide – particularly when the
pressure on them to gather new assets just keeps ratcheting
up.