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Open up a whole new world of growth with APIs

APIs--Application Programming Interfaces--are the hidden backbone of our modern world which allow software programs to communicate with one another.

Published: September 7, 2017 by Guest Contributor
The State of Student Loan Debt in 2017

In Experian’s latest State of Student Lending report, we dive into how the $1.4 trillion in student loan debt for Americans is impacting all generations in regards to credit scores, debt load and delinquencies.

Published: August 23, 2017 by Kerry Rivera
How lenders can win with a data-driven credit marketing strategy

Many institutions take a “leap of faith” when it comes to developing prospecting strategies as it pertains to credit marketing. How can a data-driven approach help?

Published: August 1, 2017 by Kyle Matthies
Using trended data for deeper lending

Historical data that illustrates lower credit card use and increases in payments is key to finding consumers whose credit trajectory is improving.

Published: July 25, 2017 by Denise McKendall
Understanding your consumer data reporting requirements

Mandatory updates to data reporting and collections procedures have been announced and implemented. Have you made the required changes?

Published: July 6, 2017 by Shelly Shakespeare
Financial Health Trends in America

Financial health means more than just having a great credit score or money in a savings account.

Published: June 27, 2017 by Guest Contributor
First wave of Gen Z entering credit ranks

The first wave of Gen Z are coming onto the credit file. Here is a first look at how they are behaving, and what this means for businesses and finance companies.

Published: June 23, 2017 by Kerry Rivera
Real-time credit decisions: Putting big data to work

Call it big data, smart data or evidence-based decision-making. It’s not just the latest fad, it’s the future of how business will be guided and grow.

Published: June 20, 2017 by Guest Contributor
New CFPB study highlights need for more inclusive credit data

New CFPB study demonstrates the importance of moving forward with inclusion of new sources of high-quality financial data — like on-time payment data from rent, utility and telecommunications providers — into a consumer’s credit file.

Published: June 13, 2017 by Guest Contributor
The State of Credit Unions in 2017

Experian took a deep dive into the data and performance surrounding the credit union universe in their first-ever “State of Credit Unions” report, featuring insights utilizing data from both 2015 and 2017.

Published: June 8, 2017 by Kerry Rivera
Time to upgrade your credit score solution

Later this year, FICO will retire its Score V1, making it mandatory for those lenders still using the old software to find another solution.

Published: May 30, 2017 by Guest Contributor
Summer Spending: Credit is king for vacationers

Weekend getaways, beach vacations and summer camp are all part of the beauty of summer. But they can come with a hefty price tag, and many consumers delay payment by placing summer fun costs on a credit card. In a recent study by Experian and Edelman Berland, travelers rely heavily on credit for vacation purchases and unexpected costs, and many charge more than half of their vacation this summer. A whopping 86 percent spent money on a summer vacation in 2016—an average of $2,275 per person with $1,308 of that amount on credit card spending. And 35 percent of those surveyed had not saved in advance. Even consumers who budgeted for vacation typically accrue unexpected costs. Sixty-one percent of those who set a budget ended up spending more than they planned. Accumulated debt doesn’t bode well for consumers. In the first quarter of 2016, consumers had an average of $3,910 in credit card debt, according to Experian data. That's $44 less than in the fourth quarter of 2015, but up $142 year over year. Overspending on vacation puts consumers in a more hazardous position to rack up debt during the holiday season and carry even higher balances into 2017 and beyond. Many consumers who are overspending consolidate summer debt, and proactive lenders can take advantage of that activity by making timely offers to consumers in need. At the same time, reactive lenders may feel the pain as balances transfer out of their portfolio. By identifying consumers who are likely to engage in card-to-card balance transfers, lenders can prepare for these consumer bankcard trends. Insights can then be used to acquire new customers and balances through prescreen campaigns, while protecting existing balances before they can transfer out of an existing loan portfolio. Lenders can also use tools to estimate a consumer’s spend on all general purpose credit and charge cards over the past year, and then target high-spending consumers with customized offers. With Memorial Day and the end-of-the-school-year fast approaching, card balances are likely already on the rise. Now is the time for lenders to prepare.  

Published: May 23, 2017 by Guest Contributor
The intel you need on people-based marketing

There are about as many definitions for people-based marketing as there are companies using the term. Each company seems to skew the definition to fit their particular service offering. The distinctions are vast, and especially for financial services companies running regulated campaigns, they can be incredibly important. At Experian, we define people-based marketing in its purest form: targeting at the individual level across channels. This is a practice we’re very familiar with in offline marketing, having honed arguably one of the most accurate views of U.S. consumers over the past three decades. And now we’re taking those tried and true principals and applying them to digital channels. It’s not as easy as it sounds. The challenge with people-based marketing  With direct mail, people-based marketing was easy. Jane Doe lives at 123 Main St. If I want to reach her, I can simply send her a direct mail piece at that address. To help, I can utilize any number of services, including the National Change of Address database, to know where to reach her if she ever moves. People-based marketing through digital channels is exponentially more difficult. While direct mail has one signal with which you use to identify a consumer (the address), digital channels offer countless signals. And not all of those signals can be used, either individually or in conjunction with other signals, to reliably tie a consumer to a persistent offline ID. A prime example of this is cookies. The problem with cookies A cookie, in and of itself, isn’t the problem. The problem is the linkage. How was a cookie associated with the person to whom the ad is being served? As marketers, we need to make sure that we are reaching the right people with the right ad … and more importantly not reaching those people who have opted out. This is especially true in the world of regulated data, where you need to know who you are targeting. And cookie-based linkage is controlled by a handful of companies, many of which are walled gardens who don’t share how they link offline people to online cookies and don’t collect this information directly. They rely on other third-party websites to gather PII, and connect it to their cookies. In some cases, the data is very accurate (especially with transaction data). In some cases, it is not (think websites that collect PII when giving surveys, offering coupons, etc.). In short, in order for you to use cookie-based targeting accurately, you need to have insight into the source of the base linkage data that was used to connect the offline consumer record to the online cookie. This same concept applies to all forms of digital linkage that drive people-based marketing. Why does people-based marketing matter in digital credit marketing?  With campaigns that utilize non-regulated data, such as “Invitation to Apply” campaigns that are driven from demographic and psychographic data, the consequences of not reaching the consumer you meant to target are negligible. But with campaigns that utilize regulated data, you must ensure you’re targeting the exact consumer you meant to reach. More importantly, you must make sure you’re not targeting an ad to a consumer who had previously opted out of receiving offers driven with regulated data (prescreen offers, for example). Even if you’ve already delivered a direct mail piece with the same offer, this doesn’t negate your responsibility to reach only approved consumers who have not opted out. --- Bottom line, the world of 1:1 marketing is growing more sophisticated, and that’s a good thing. Marketers just need to understand that while regulated data can be powerful, they must also take great responsibility when handling it. The data exists to deliver firm offers of credit to your very specific target in all-new mediums. People-based marketing has its place, and it can now be done in a compliant, digitally-savvy way – in the financial services space, nonetheless.   Register for our webinar on Credit Marketing Strategies to Drive Today's Digital Consumer.

Published: May 18, 2017 by Guest Contributor
#ExperianVision 2017: Final Recap

The final day of Vision 2017 brought a seasoned group of speakers to discuss a wide range of topics. In just a few short hours, attendees dove into a first look at Gen Z and their use of credit, ecommerce fraud, the latest in retail, the state of small business and leadership. Move over Millennials – Gen Z is coming of credit age Experian Analytics leaders Kelley Motley and Natasha Madan gave audience members an exclusive look at how the first wave of Gen Z is handling and managing credit. Granted most of this generation is still under the age of 18, so the analysis focused on those between the ages of 18 to 20. Yes, Millennials are still the dominant generation in the credit world today, standing strong at 61 million individuals. But it’s important to note Gen Z is sized at 86 million, so as they age, they’ll be the largest generation yet. A few stats to note about those Gen Z individuals managing credit today: Their average debt is $12,679, compared to younger Millennials (21 to 27) who have $65,473 in debt and older Millennials (28 to 34) who sport $121,460. Given their young age, most of Gen Z is considered thin-file (less than 5 tradelines) Average Gen Z income is $33,000, and average debt-to-income is low at 5.7%. New bankcard balances are averaging around $1,574. As they age, acquire mortgages and vehicles, their debt and tradelines will grow. In the meantime, the speakers provided audience members a few tips. Message with authenticity. Think long-term with this group. Maintain their technological expectations. Build trust and provide financial education. State of business credit and more on the economy Moody’s Cris deRitis reiterated the U.S. economy is looking good. He quoted unemployment at 4.5%, stating “full employment is here.” Since the recession, he said we’ve added 15 million jobs, noting we lost 8 million during the recession. The great news is that the U.S. continues to add about 200,000 jobs a month, and that job growth is broad-based. Small business loans are up 10% year-to-date vs. last year. While there has been a tremendous amount of buzz around small business, he adds that most job creation has come from mid0size business (50 to 499 employees). The case for layered fraud systems Experian speaker John Sarreal shared a case study that revealed by layering on fraud products and orchestrating collaboration, a business can go from a string 75% fraud detection rate to almost 90%. Additionally, he commented that Experian is working to leverage dark web data to mine for breached identity data. More connections for financial services companies to make with mobile and social Facebook speaker Olivia Basu reinforced the need for all companies to be thinking about mobile. “Mobile is not about to happen,” she said. “Mobile is now. Mobile is everything. You look at the first half of 2017 and we’re seeing 40% of all purchases are happening on mobile devices.” Her challenge to financial services companies is to make marketing personal again, and of course leverage the right channels. Experian Sr. Director of Credit Marketing Scott Gordon commented on Experian’s ability to reach consumers accurately – whether that be through direct or digital delivery channels. A great deal of focus has been around person-based marketing vs. leveraging the cookie. -- The Vision conference was capped off with a keynote speech from legendary quarterback and Super Bowl MVP Tom Brady. He chatted about the details of this past season, and specifically the comeback Super Bowl win in February 2017. He additionally talked about leadership and what that means to creating a winning team and organization. -- Multiple keynote speeches, 65 breakout sessions, and hours of networking designed to help all attendees ready themselves for growing profits and customers, step up to digital, regulatory and fraud challenges, and capture the latest data insights. Learn more about Experian’s annual Vision conference.  

Published: May 10, 2017 by Kerry Rivera
Bringing machine learning to data analytics

Risk analysts are insatiable consumers of big data who require better intelligence to develop market insights, evaluate risk and confirm business strategies. While every credit decision, risk assessment model or marketing forecast improves when it is based on better, faster and more current data, leveraging large data sets can be challenging and unproductive. That’s why Experian added a new functionality to its Analytical Sandbox, giving clients the flexibility they need to analyze big data efficiently. Experian’s Analytical Sandbox now utilizes H2O –an open source machine learning and deep learning platform that can model and predict with high accuracy billions of rows of high-dimensional data from multiple sources in various formats. Through machine learning and advanced predictive modeling, the platform enables Experian to better provide on-demand data insights that empowers analysts with high-quality intelligence to inform regional trends, provide consumer transactional insight or expose marketing opportunities. As a hosted service, Sandbox is offered as a plug-and-play, meaning no internal development is required. Clients can instantly access the data through a secure Web interface on their desktop, giving users access to powerful artificial and business intelligence tools from their own familiar applications. No special training is required. “AI monetizes data,” said SriSatish Ambati, CEO of H2O.ai. “Our partnership with Experian democratizes and delivers AI to the wider community of financial and risk analysts. Experian's analytics sandbox can now model and predict with high accuracy billions of rows of high-dimensional data in mere seconds.” Through H2O and the Experian Sandbox, machine learning and predictive analytics are giving risk managers from financial institutions of all sizes the ability to incorporate machine learning models into their own big data processing systems.

Published: May 9, 2017 by Gregory Wright

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