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Industry: Credit Risk Management

Datasheet: Accelerate Auto Financing

DATA SHEET

Accelerate Auto Financing

Drive More Business with Provenir

Automated data aggregation and decisioning, real-time time approvals and advanced analytics – learn more about accelerating the auto lending process for a superior customer experience.

Ready to accelerate your auto financing strategy?

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Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection

Lending Affordabilit...

Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection The Nordic ...
Provenir for Onboarding

Provenir for Onboard...

Provenir for Onboarding Minimize Credit and Fraud Risk, Maximize Opportunity Discover Provenir’s single, scalable software ...
Provenir for Customer Management

Provenir for Custome...

Provenir for Customer Management Maximize Value Across the Entire Customer LIfecycle. Take your customer management ...
Provenir Takes Home Top Honors in the Global BankTech Awards, Named ‘Best Credit Risk Solution’ for Two Years Running

Provenir Takes Home ...

Provenir Takes Home Top Honors in the Global BankTech Awards, Named‘Best Credit Risk Solution’for Two ...
Embedded Lending is Inevitable: How Banks Can Compete and Win in a New Environment

Embedded Lending is ...

ON-DEMAND WEBINAR Embedded Lending is Inevitable: How Banks Can Compete and Win in a New ...
Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services

Headless Banking and...

news Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services The customer ...
Infographic: Unlocking the Embedded Finance Advantage

Infographic: Unlocki...

Infographic Unlocking the Embedded Finance Advantage How to Harness Embedded Finance for Enhanced Customer Experiences ...
Provenir for Embedded Finance

Provenir for Embedde...

Provenir for Embedded Finance Maximize Value Through Seamless Financial Services Integration Integrating financial services into ...

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Drive a Better Auto Finance Experience

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Drive a Better Auto Finance Experience

How to create a Netflix-like experience in auto lending with automated risk decisioning

In the age of instant everything, consumers expect immediate answers. Auto financing is no different. If you aren’t approving auto loans quickly, your competition may be – losing you valuable customers in the process.

Explore our auto financing eBook, where we look at the evolution of auto lending and how real-time, instant risk decisioning can make a difference in the satisfaction of your customers.

Learn:

  • How to create brand loyalty with superior, customized auto purchasing experiences
  • The way on-demand data and instant risk decisioning can power faster innovation across your business
  • How making the right credit decisions, quickly, is key to long-term growth

Download the eBook today and discover how you can drive a better consumer experience with AI-powered risk decisioning.

The Ultimate Guide to Decision Engines

What is a decision engine and how does it help your business processes?

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Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection

Lending Affordabilit...

Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection The Nordic ...
Provenir for Onboarding

Provenir for Onboard...

Provenir for Onboarding Minimize Credit and Fraud Risk, Maximize Opportunity Discover Provenir’s single, scalable software ...
Provenir for Customer Management

Provenir for Custome...

Provenir for Customer Management Maximize Value Across the Entire Customer LIfecycle. Take your customer management ...
Provenir Takes Home Top Honors in the Global BankTech Awards, Named ‘Best Credit Risk Solution’ for Two Years Running

Provenir Takes Home ...

Provenir Takes Home Top Honors in the Global BankTech Awards, Named‘Best Credit Risk Solution’for Two ...
Embedded Lending is Inevitable: How Banks Can Compete and Win in a New Environment

Embedded Lending is ...

ON-DEMAND WEBINAR Embedded Lending is Inevitable: How Banks Can Compete and Win in a New ...
Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services

Headless Banking and...

news Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services The customer ...
Infographic: Unlocking the Embedded Finance Advantage

Infographic: Unlocki...

Infographic Unlocking the Embedded Finance Advantage How to Harness Embedded Finance for Enhanced Customer Experiences ...
Provenir for Embedded Finance

Provenir for Embedde...

Provenir for Embedded Finance Maximize Value Through Seamless Financial Services Integration Integrating financial services into ...

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Women-Led Entrepreneurship in LATAM: Closing the Gap Through Smarter Credit Decisioning

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Women-Led Entrepreneurship in LATAM:
Closing the Gap Through Smarter Credit Decisioning

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Closing the gender credit accessibility gap in LATAM

It’s no secret that workplace and economic inequality between men and women still exists on a global scale. In Latin America, there is an even greater gender gap. Did you know that 54% of Latin American women must use their own savings to start a project?

  • Only 15% of women are able to start their own companies with the support of a private bank
  • Women represent 56% of informal employment  
  • Women have a “double shift”: managing both outside work and housework  

However, today technology is helping to bridge that gap and play a part in stabilizing the economic playing field for women. Get the eBook and learn how you can adapt and change for the betterment of millions of women, while generating new business opportunities.

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Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection

Lending Affordabilit...

Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection The Nordic ...
Provenir for Onboarding

Provenir for Onboard...

Provenir for Onboarding Minimize Credit and Fraud Risk, Maximize Opportunity Discover Provenir’s single, scalable software ...
Provenir for Customer Management

Provenir for Custome...

Provenir for Customer Management Maximize Value Across the Entire Customer LIfecycle. Take your customer management ...
Provenir Takes Home Top Honors in the Global BankTech Awards, Named ‘Best Credit Risk Solution’ for Two Years Running

Provenir Takes Home ...

Provenir Takes Home Top Honors in the Global BankTech Awards, Named‘Best Credit Risk Solution’for Two ...
Embedded Lending is Inevitable: How Banks Can Compete and Win in a New Environment

Embedded Lending is ...

ON-DEMAND WEBINAR Embedded Lending is Inevitable: How Banks Can Compete and Win in a New ...
Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services

Headless Banking and...

news Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services The customer ...
Infographic: Unlocking the Embedded Finance Advantage

Infographic: Unlocki...

Infographic Unlocking the Embedded Finance Advantage How to Harness Embedded Finance for Enhanced Customer Experiences ...
Provenir for Embedded Finance

Provenir for Embedde...

Provenir for Embedded Finance Maximize Value Through Seamless Financial Services Integration Integrating financial services into ...

Continue reading

Women-Led Entrepreneurship in Latam

INFOGRAPHIC

Women-Led Entrepreneurship
in Latam

How to close the gap through smarter credit decisioning

Discover how closing the economic gender gap in Latin America can increase the size of the economy by up to 22%. For more information on how to support women-led entrepreneurship and closing the gender gap, check out our latest eBook. Hear from industry experts, see real-life examples and discover how technology can be the catalyst.

Get your copy of the Women-Led Entrepreneurship in Latam eBook

Get the eBook

RESOURCE LIBRARY

Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection

Lending Affordabilit...

Lending Affordability and Regulations in the Nordics: Navigating Rising Debt and Consumer Protection The Nordic ...
Provenir for Onboarding

Provenir for Onboard...

Provenir for Onboarding Minimize Credit and Fraud Risk, Maximize Opportunity Discover Provenir’s single, scalable software ...
Provenir for Customer Management

Provenir for Custome...

Provenir for Customer Management Maximize Value Across the Entire Customer LIfecycle. Take your customer management ...
Provenir Takes Home Top Honors in the Global BankTech Awards, Named ‘Best Credit Risk Solution’ for Two Years Running

Provenir Takes Home ...

Provenir Takes Home Top Honors in the Global BankTech Awards, Named‘Best Credit Risk Solution’for Two ...
Embedded Lending is Inevitable: How Banks Can Compete and Win in a New Environment

Embedded Lending is ...

ON-DEMAND WEBINAR Embedded Lending is Inevitable: How Banks Can Compete and Win in a New ...
Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services

Headless Banking and...

news Headless Banking and BaaS: Delivering a New Era of Customer-Centric Financial Services The customer ...
Infographic: Unlocking the Embedded Finance Advantage

Infographic: Unlocki...

Infographic Unlocking the Embedded Finance Advantage How to Harness Embedded Finance for Enhanced Customer Experiences ...
Provenir for Embedded Finance

Provenir for Embedde...

Provenir for Embedded Finance Maximize Value Through Seamless Financial Services Integration Integrating financial services into ...

Continue reading

113 Million US Adults Have Non-Prime Credit Scores – What Are We Doing About It?

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113 Million US Adults Have Non-Prime Credit Scores –
What Are We Doing About It?

The World Bank estimates that two billion adults don’t have an account at a bank or other financial institution. They are the unbanked; outside the financial system. PwC puts the unmet deposit demand of the un(der)banked at $360 billion. How can forward-thinking companies help close the big gap that exists between the banked and underbanked? We sat down to ask Greg Rable, CEO of FactorTrust, which helps lenders manage the credit lifecycle of underbanked consumers.

Greg, tell us about FactorTrust. What’s the vision?

Alternative financial services has always been our business at FactorTrust but we used to focus on identity verification. We turned our expertise towards credit risk because the companies we talked to were saying, “please help us with this.” The rise in alternative credit for ‘non-prime’ borrowers has been significant and is indicative of the situation that many people from many different walks of life find themselves in – nearly 113 million US adults have non-prime credit scores, which is an astonishing number.

Alternative finance has been around for some time, but the advent of digital services caused a significant shift in the industry to online. And this created additional challenges for risk management, not only the need to return credit risk assessment results at speed – as expected from a digital channel – but also to confirm identity with the customer not present. The three big credit bureaus historically hadn’t tracked data in this area so we set out to help lenders more accurately predict consumer borrowing behaviour in the growing, often neglected, underbanked segment.

Who are the underbanked and what trends are you seeing in this market segment?

They can be anyone and everyone; people facing a range of everyday circumstances that have placed them outside regular criteria for many traditional lenders.

The thing is, there’s a lot of misinformation about the underbanked – about levels of education, employment and so on. Our data spans upwards of 22 million consumers, with around half a million added each month, so we consider ourselves well-placed to address misconceptions. To help with this we launched the FactorTrust Underbanked Index three years ago. It tells the story of the underbanked and delves into particular aspects of the market segment in more detail.

For example, the typical underbanked consumer we see is employed and has a primary banking relationship. The top three employers of these consumers are fast food restaurants, government agencies and – perhaps surprisingly – big banks.

Each person’s situation is different. Sure, some are unable to get credit because of a poor previous credit performance but there are also those who are new entrants into the credit market and simply lack a history, as well as divorcees who haven’t previously had credit in their own name. Then there are those who use alternative finance simply because they like the speed and convenience of the service.

How does FactorTrust help lenders serve the underbanked?

It’s all about data. We have a real-time database of more than 200 million loan transactions from alternative lenders which provides lenders with a holistic view of the creditworthiness of underbanked consumers and their ability to repay loans. ‘Real-time’ is important – we capture data from the time a consumer’s application reaches a lender; we also then capture it throughout the process of advancing the loan and repayments being made against that loan. That’s what generates the value, it’s unique alternative credit information – proprietary data – augmented through third-party sources to meet, for example, anti-money laundering criteria.

And what role does technology play in what you do?

An essential role. Technology is central to our entire operation. You have to remember that our ten-year-old business grew up in the online world. It’s what we know; it’s what we’ve always done. Everything is about speed and convenience. And accuracy. Our response times to lenders requesting credit score information on an applicant is around a second to a second and a half.

Integration into the systems that lenders use is essential, and that comes down to technology too. The method of integration needs to be flexible, as there’s such a range of systems in use out there, and convenient to set up. This is where strategic partnering with key solutions providers that lenders use – like Provenir – is important.

Risk analytics is so important in this industry. What trends are you seeing and what influence are they having?

I would say three things – flexibility, data, and collaboration. Flexibility, because companies are realising that the traditional ways of doing things don’t work in every situation – 113 million is a lot of unserved customers; it’s hard to think of an industry to compare that level of unmet need to. When we take alternative credit data into account we see that this population deserves credit options and that it is possible to offer them.

Data, because that’s where the value is. So much data is generated about and by individuals every day. And the right technology can capture it and work it to provide something of real value.

And collaboration because there are so many specialisms now that couldn’t have been envisaged ten, fifteen, twenty years ago. They might not exist within the four company walls of many traditional lenders but companies like FactorTrust, and like Provenir, have found their niche and become expert in what they do. Our clients and our partners, embrace the value that specialised risk analytic services bring to their brand, to their portfolio and, ultimately to their customers.


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Guest Blog: Financial Services in 2021 and Beyond

GUEST BLOG

Financial Services in 2021 and Beyond

  • Allison Van Rooijen, Vice President, Consumer Credit at Meridian Credit Union

Allison Van Rooijen, Vice President, Consumer Credit at Meridian Credit Union, shares her perspective on providing the instant digital experience customers now expect

Q: What do you see as the main drivers for channels to achieve this digitization of the banks?

There is the obvious profitability and cost containment exercise, but we’ve seen the rapid consumer adoption of not just digital transactions but also digital experiences. Things we thought we never could/would do online are being accepted rapidly by consumers, conducting transactions in a non-face- to-face way.

As a result, there is a new expectation and a perhaps comparison mindset in the consumer’s eyes. Why can’t I do this online? Why can’t I sign that form electronically instead of going to a branch? If I can buy a car online, groceries online, why can’t I do XYZ in the financial services space.

There is no excuse now – you can do anything online if you find a way to adapt your business model to it. Consumers will find a way to seek out those opportunities and not necessarily wait for us to make those changes. The industry is already moving this way perhaps in bits and pieces and balancing profitability and automation opportunities but not at the pace consumers are willing to adopt. The bar is now higher. The user group or pool of prospects that were willing to transact digitally before has exponentially expanded. The speed at which they transact is even faster – they are used to same day/next day Amazon delivery so expect credit decisions instantly – why should I have to wait. As a consumer, I would start comparing you outside of the financial services space and the digital experiences to other consumer companies. It becomes more transactional and then transactional becomes experiential. We must focus on improving that experience. There can be no excuse. This is the new normal. Lenders who embrace this opportunity to challenge every bit of every process and embrace the momentum at which this challenge is facing us will flourish. It’s hard but it is happening. Now is the time to embrace that digital transformation – adapt or die.

Q: When you’re looking at how do we continue to evolve at the rate at which consumers and customers want us to, do we build, buy, partner? How do we stay on course with this?

There absolutely is a place for each one of these models. It comes back to taking a step back and determining where do you want to own the experience and where are you comfortable partnering with someone who may be working with your competitors and the bureaus. Sourcing data is one perspective. Where do you want to differentiate that experience and using that in the evaluation to build, buy or partner?

The other side is looking at your company culture and capabilities. Is this something that is core to who you are? Do you have the people who can drive you forward enough, especially with this entrepreneurial lens? Can they challenge the status quo enough and do you have the time to give them to really think outside the box of perhaps what you need for this transformation?

Also, it’s important to spend time with your fintech partners to understand the roadmap for their solution. Are they going to take you as one client and build it to five to six other clients? Spend time to understand the companies you are partnering with and what their vision is. Do our visions align? You need to have those tough conversations upfront.

Then focus on governance program or regulatory perspective. Are we seeing the same thing when it comes to principles-based regulations? Are we interpreting them the same way? Do my regulatory requirements get satisfied by the practices of that partner? When you take a step back and look at full end to end spectrum, being strategic about where to partner, where to build and where to buy, can lead to great partnerships to accelerate that journey but you need to spend that extra time up front to understand where you are and where you want to be.

Q: When Meridian is looking its approach and the role you can play in advancing all this forward as a credit union, what is your perspective?

We’ve taken a step back and looked at whole end to end consumer lending journey from prospect shopping to loan servicing and recovery. It is a lot of take in because there are so many large components of it. Like many lenders, we have legacy pieces and bolt-ons. We had to look at where do we want to be, how can we start fresh and how big is that. When talking about architecture, it becomes a much broad conversation than just system architecture. It has really proven to us that the data team, the analytics team and the users of that data at every component of the organization – if they are going to use that data to drive models, AI, ML, they are just as invested a stakeholder in the end-to-end design as the treasury group that is going to use that data in managing the portfolio, in the credit risk group. It really doesn’t become a discussion between credit, sales and the architecture group – it becomes a fully integrated approach to architecting what the new end to end system is to ensure it is robust and scalable.

I know I speak for my partners in IT – if every time I come to them every time and say I have this great API – you just need to plug it in and it should be easy. Yes, the integration is easy but what do you do with that data? How does it sit in your data lake? Where does it integrate into your models? What is the governance of that data? Having all those stakeholders integrated that whole end to end process has been to key to our success in reimagining that process.

In Closing

Fantastic time to be in lending. We’re on the brink of some pretty exciting transformation. No two deals are the same. No two borrowers are the same. Coming out of this pandemic, we have consumer adoption of digital at an all time high. We have great tools. We have a fintech sector that is thriving with innovation. Grab your running shoes because it is moving fast.

Excerpted from “Financial Services in 2021 and Beyond” webinar hosted by Kathy Stares, Executive Vice President, Americas, Provenir.


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Operationalizing Risk Models

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Operationalizing Risk Models

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Struggling with Operationalizing Your R, Python, Excel and SAS Models?

Companies invest lots of time and money developing risk models to figure out which customers are the best bets for loans and credit. Operationalizing these models, developed in tools like Excel, SAS, Python and R, in risk decisioning processes often turns out to be really hard.

It’s much more efficient to use a risk decisioning solution like Provenir Risk Analytics and Decisioning Platform, which:

  • Is model-agnostic.
  • Will extend the value of your investment in industry-standard modeling tools.
  • Will ensure that automated risk decisioning processes developed in Provenir are always using the most accurate and up-to-date risk models.

This entire process takes just a few minutes, which means you not only gain an effective way to maximize the value of your models, but can also instantly adapt risk decisioning processes whenever a model changes — saving you both time and money.

Interested in learning how easy it really is to operationalize risk models with Provenir? Fill out the form to see exactly how the process works.

“Provenir gives us the capability we need to test and operationalize our advanced analytical models so we can make strategic changes quickly”

John Bartley, Team Lead Data Scientist, UK


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Elevate: On Driving Innovation in Credit-Scoring through Advanced Analytics

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Elevate:
On Driving Innovation in Credit-Scoring through Advanced Analytics

Elevate Credit, an alternative credit provider that lends to customers currently underserved by mainstream finances, requires a robust data science team and industry-leading technology stack to originate more than $4.9 billion in credit to more than 1.8 million non-prime customers in the UK and US1. The company is outspoken on its dedication to advanced analytical techniques as a means to comply with regulatory responsibilities and to benefit its growing customer base.

Because Elevate sets itself apart with its data driven approach—it’s not uncommon for Elevate to use thousands of different facts in the process of underwriting a new customer—we knew we had to speak with one of the forward-thinking data scientists in Elevate’s Risk Management department. John Bartley has over ten years of experience in financial services and recently oversaw an effort to transition Elevate’s UK’s credit risk models from SAS to R. You will definitely hear more about that in this interview.

Adi: John, thank you for taking the time to speak with us about Elevate’s impressive data science initiatives. Can you give us an overview of your recent work with Elevate?

John: Thank you, Adi. Absolutely. Of course, we’re excited about the recently launched Elevate Labs at our Advanced Analytics Center in San Diego, California. Elevate has always been committed to innovating the world of data science in credit risk, so this facility is just the next step in that constant evolution. It is a pleasure to work with the high caliber talent we’re able to attract because of that commitment.

On the day-to-day, we’re focused on continually improving our analytical models to serve the non-prime market in the US and high-cost short-term credit market in the UK. For example, we have observed huge uplift in one of our acquisition Channels in the UK as a result of improvements in our modeling. The better that our models are able to explain and predict consumer behaviour, the more of the alternative credit market we’re able to address.

A: What types of data is Elevate using in its underwriting process?

J: Our risk analytics stack utilizes a terabyte-scale Hadoop infrastructure composed of thousands of elements, customer records, and other wide-ranging data inputs including credit bureau data, web behavioral and performance data, bank transaction data and other non-traditional data. All of this works to give us a holistic view of the customer and helps us accurately assign risk to those applications.

Advanced machine learning techniques let us consider these factors in the development of algorithms which better predict behaviour and customer vulnerability. Actually, we recently moved to R because of the range of modeling techniques R is able to support. Using appropriate modeling techniques has allowed us to significantly simplify our underwriting and lead to more accurate predictions of likely loan performance.

Also read: What is credit underwriting?

A: What prompted the adoption of R?

Before moving to R, we used SAS to develop pretty sophisticated credit risk models. SAS has traditionally been the software of choice for many statisticians and credit risk professionals working in the banking and financial services sector and although SAS is good for many applications in this sector, we find that it is far less flexible when compared to an open source programming language like R.

To provide an example, a far more complex credit risk strategy (e.g. population segmentation) was required to get our historic linear model’s to provide the necessary lift to adequately underwrite a population. This is because many consumers in the high-cost short-term credit market have complex and varied credit histories. At Elevate, our goal is to provide our customers with a comparable experience to prime lending. In order to do this, we need to use tools (such as R) that allow us to build more complex models to adequately understand the complex financial histories of our consumers.

R has a number of packages for powerful machine learning algorithms such as RandomForest and XGBoost. While SAS does support some of these modeling techniques we have found it is far quicker to build, and implement some of the newer techniques using R. In my experience, R also provides better support for multi-threading which often helps us to train our models in far shorter periods of time. In addition, the range of algorithms SAS has developed which utilize their high performance technology is limited in comparison to the options I have when considering a modeling challenge using R.

And, of course, you know we deploy our models through your platform. Provenir gives us the capability we need to test and operationalize our advanced analytical models so we can make strategic changes quickly. So, we felt comfortable making big modeling changes from that perspective.

A: Moving away from linear models, what techniques are you currently focusing on?

Linear models have been used extensively in credit risk because they are relatively simple to construct and easy to understand. However, given the limitations of some credit risk models that we discussed and the complexity of our datasets, we now utilize a combination of both linear and nonlinear modeling techniques.

A: Are you interested in throwing your experience into the linear vs. nonlinear discussion?

Sure. In a situation where there is a simple linear relationship between predictors and outcomes, linear models work very well. However, linear models have many limitations because they often struggle with complexity and nonlinear relationships.

A linear model may look like this:

linear model | Provenir

Image source:
https://upload.wikimedia.org/wikipedia/commons/thumb/3/3a/Linear_regression.svg/2000px-Linear_regression.svg.png

tree-based model | Provenir

The correlation between the predicted and actual outcome of a tree-based model on a complex non-linear dataset may look something like this.

By contrast, a tree-based model does a much better job at approximating the complexity of the dataset.

Tree-based models afford many advantages. For example, tree-based models are quite good at mapping non-linear relationships which simply can’t be modeled by linear regression. Tree-based models are typically highly-accurate, very stable but can be more difficult to explain.

(To note: It is important to consider that tree-based models contain built-in segmentation when using boosting and bagging techniques.)

With complex data sources where different segments may exhibit very different behaviour (holding everything else constant), a tree-based model is often better at predicting an outcome. Utilizing tree-based models in conjunction with including more characteristics has helped us to significantly improve our customer underwriting.

A: Wow. So, you’ve presumably improved the accuracy of your models, how has that impacted the business strategy challenges you mentioned?

Using a combination of both linear and nonlinear modeling techniques gives us the flexibility to significantly simplify our business strategy. For example, with our new machine learning models, we only need to have a handful of strategies in place. We get a simplified strategy and model that is more adept at explaining different types of people some of which we weren’t able to underwrite before.

A: Have you seen an uplift in approval rates since you deployed this new R model in production?

Although it is still too early to tell, initial results indicate that our new model is performing significantly better than the prior model. We’ve seen an increase in our approval rates and as our recently underwritten vintages continue to develop over, we continue to dial up performance. Obviously that has significant implications for our customers. At Elevate, we feel strongly about helping our customers find financial relief and as we improve our modeling, we improve our ability to serve a population which is underserved by mainstream finance.

A: Changing direction a little bit, I have one last question before you go. You have an impressive history in data sciences and financial services. What are your thoughts on the future of data science in this industry?

Much has changed in analysis and data science in the last 10 years. Statisticians and data scientists have always worked to predict the probability of default, but the techniques that statisticians and data scientists use have evolved significantly.

Ten years ago, for example, nonlinear models were challenging because many organizations didn’t have the computational power or technical skills in place to effectively use these advanced techniques. Fast forward ten years and that has completely changed. This movement toward nonlinear models provides better accuracy while empowering a simplified risk strategy.

That’s where the future begins. Now that the industry has begun to accept more complex modeling techniques it is in a better position to accept non-conventional data sources.

Currently, most organizations have both summaries and tradeline variables from Bureaus. Many in the industry are very reliant on summary variables, though there is a trend toward using tradeline variables. That’s where the next big change is: It’s not just around modeling techniques, but around data sources. I believe we will see the need to bring in different and more granular data sources.

As capacity expands, there will be more emphasis placed on non-traditional variables, which is something we already do at Elevate. Organizations will want to be able to analyze things such as an individuals’ bank transactions, especially for thin bureau file applications, to allow them to decision an application with varying data sources.

A: John, thank you for taking the time to share your expertise today. Looking forward to speaking again soon.

J: Cheers!

The Essential Guide to Credit Underwriting

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Machine Learning Credit Risk Models are More Accessible Than You Thought

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Machine Learning Credit Risk Models
are More Accessible Than You Thought

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Deploy Machine Learning in Your Financial Institution Rapidly

Why read the whitepaper?

This 7 page whitepaper examines the implications of machine learning in risk analytics and decisioning — how advancements in Machine Learning-as-a-service bring the technology within reach without the investment often required to hire an expert.

You will learn:

  1. How simply we conducted our own experiment to analyze demographic data for a credit decision.
  2. What analysts and influencers are expecting out of machine learning for lenders.
  3. The opportunities that the as-a-service model provides.


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Unleash the Power of Risk Analytics Within Your Salesforce Environment

ON-DEMAND WEBINAR

Unleash the Power of Risk Analytics
Within Your Salesforce Environment

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In this 30-minute, on-demand webinar you will learn how you can use Salesforce in your risk strategy. It shows you just how east it is to leverage the customer management power of Salesforce while gaining speed and agility in your decisioning workflows.

This live discussion demonstrates how you can:

  • Automate complex analytics and decisioning processes from your Salesforce environment.
  • Pair sophisticated intelligence and risk analytics with Salesforce for simply predictive cross-sell and upsell campaigns.
  • Integrate various structured and unstructured data sources with your Salesforce environment to create a powerful risk strategy ecosystem.
  • Keep a single set of integrated data across systems to avoid duplication or compliance concerns and to capitalize on real-time risk processes.


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