Being able to identify which of many loans have been made to the same person or company is also important for banks to manage their risk exposure. The problem is not unique to banks, as a wide range of companies can benefit from better understanding their exposure to individual suppliers or customers. Defining a customer with data But to know your customers, you must first define what exactly constitutes a customer. âWe took a very methodical view,â says Hirschhorn. âWe went through the enterprise and asked, âWhat is a customer?ââ Initially, there were differences between divisions about the number of fields and type of data needed to define a customer, but they ended up agreeing on a common policy. Recognizing that divisions already had their own spending priorities, the bank set aside a central budget that each division could draw on to hire developers to ensure they all had the resources to implement this customer master. The message was, âYou hire the developers and we will pay for them to get on with it,â Hirschhorn says. With the work of harmonizing customer definitions out of the way, the bank could focus on eliminating duplicates. If it has a hundred records for a John Doe, for example, then it needs to figure out, based on tax ID numbers, addresses, and other data, which of those relate to the same person and how many different John Does there really are. BNY Mellon wasnât starting from scratch. âWe actually had built some pretty sophisticated software ourselves to disambiguate our own customer database,â he says. There was some automation around the process, but the software still required manual intervention to resolve some cases, and the bank needed something better. Improving the in-house solution would have been time consuming, he says. âIt wasn't a core capability, and we found smarter people in the market.â Among those people were the team at Quantexa, a British software developer that uses machine learning and multiple public data sources to enhance the entity resolution process. The vendor delivered an initial proof of concept to BNY Mellon just before Hirschhorn joined, so one of his first steps was to move on to a month-long proof of value, providing the vendor with an existing dataset to see how its performance compared with that of the in-house tool. The result was a greater number of records flagged as potentially relating to the same people â and a higher proportion of them resolved automatically. âThereâs a level of confidence when you do correlations like this, and we were looking for high confidence because we wanted to drive automation of certain things,â he says. After taking some time to set up the infrastructure and sort out the data workflow for a full deployment, BNY Mellon then moved on to a full implementation, which involved staff from the software developer and three groups at the bank: the technology team, the data subject matter experts, and the KYC center of excellence. âTheyâre the ones with the opportunity to make sure we do this well from a regulatory perspective,â he says. Quantexaâs software platform doesnât just do entity resolution: It can also map networks of connections in the data â who trades with whom, who shares an address, and so on. The challenge, for now, may be in knowing when to stop. âYou correlate customer records with external data sources, and then you say, letâs correlate that with our own activity, and letâs add transaction monitoring and sanctions,â he says. âWeâre now doing a proof of concept to add more datasets to the complex, as once you start getting the value of correlating these data sets, you think of more outcomes that can be driven. I just want to throw every use case in.â Investing in technology suppliers BNY Mellon isnât just a customer of Quantexa, itâs also one of its investors. It first took a stake in September 2021, after working with the company for a year. âWe wanted to have input in how products developed, and we wanted to be on the advisory board,â says Hirschhorn. The investment in Quantexa isnât an isolated phenomenon. Among the bankâs other technology suppliers it has invested in are specialist portfolio management tools Optimal Asset Management, BondIT, and Conquest Planning; low-code application development platform Genesis Global; and, in April 2023, IT asset management platform Entrio. The roles of customer and investor donât always go together, though. âWe donât think this strategy is applicable to every new technology company we use,â he says. While some companies may buy a stake in a key supplier to stop competitors taking advantage of it, thatâs not BNYâs goal with its investment in Quantexaâs entity resolution technology, Hirschhorn says. âThis isnât proprietary; we need everybody to be great at this,â he says. âPeople are getting more sophisticated in how they perpetrate financial crimes. Keeping pace, and helping the industry keep pace, is really important to the health of the financial markets.â So when Quantexa sought new investment in April 2023, BNY Mellon was there againâthis time joined by two other banks: ABN AMRO and HSBC. |