Data & Analytics

Charging up: The Story Behind Who’s Buying Electric Vehicles

It’s not enough to just dig into the sales number of electric vehicles — It’s important to understand the consumers most interested.

Published: October 26, 2018 by Brad Smith
Four Features You Need in an Analytical Environment

Any analytical environment is only as good as the data you put into it. Check these four key features when choosing the right one for your organization.

Published: October 24, 2018 by Jesse Hoggard
Machine learning and Extreme Gradient Boosting

At Experian, for machine learning, we use Extreme Gradient Boosting (XGBoost) implementation of Gradient Boosting Machines.

Published: October 24, 2018 by Guest Contributor
A Change in Current: Electric Vehicle Market Share Small, But Growing

Electric vehicles are here to stay – and will likely gain market share as costs reduce, travel ranges increase and charging infrastructure grows.

Published: October 24, 2018 by Brad Smith
Getting Beyond the Binary to Solve the Business Problem of Big Data

You want to use big data, but how do you make your analytics truly actionable to stay ahead of the competition? Using an analytical sandbox is the answer.

Published: October 4, 2018 by Jesse Hoggard
Is Big Data a Big Problem?

There are a lot of people talking about big data who are not fully leveraging the value of their data. How do you use data to innovate and stay competitive?

Published: September 27, 2018 by Jesse Hoggard
Machine Learning for Real-World Credit Risk

Machine learning's ability to consume vast amounts of data to uncover patterns and deliver results makes it well suited for the credit risk industry

Published: September 12, 2018 by Alan Ikemura
Five Secrets to Outsourcing Data Science Successfully

Demand for data scientists is off the charts, but nationally there is a data science skills shortage. Many companies are filling this gap by outsourcing.

Published: September 5, 2018 by Guest Contributor
Q&A with AFSA on the State of Alternative Data

Experian recently interviewed Philip Bohi, Vice President for Compliance Education of AFSA, to learn more about his perspective on alternative data.

Published: July 18, 2018 by Kerry Rivera
When Enough Isn’t Enough — Resampling Techniques for Model Development

A summary of common resampling techniques that can be used to create a robust model development and validation sample.

Published: July 5, 2018 by Guest Contributor
Understanding Validation Samples Within Model Development

Model validation is essential in evaluating and verifying a model’s performance during development before finalizing design and implementation.

Published: June 18, 2018 by Guest Contributor
Let’s Talk Data. How Much Opportunity Is There for Lenders, Really?

Data is a part of a lot of conversations in both my professional and personal life. Everything around us is creating data – whether it’s usable or not is a business case for opportunity. Think about how many times a day you access the television, your phone, iPad or computer. Have a smart fridge? More data. Drive a car? More data. It’s all around us and can help us make more informed decisions. What is exciting to me are the new techniques and technologies, like machine learning, artificial intelligence and SaaS-based applications, that are becoming more accessible to lenders for use in managing their relationships with customers. This means lenders – whether a multi-national bank, online lender, regional bank or credit union – can make better use of the data they have about their customers. Let’s look at two groups – Gen-X and Millennials – who tend to be more transient than past generations. They rent not buy. They are brand loyal but will flip quickly if the experience or their expectations aren’t met. They live out their lives on social media yet know the value of their information. We’re just now starting to get to know the next generation, Gen Z. Can you imagine making individual customer decisions at a large scale on a population with so many characteristics to consider? With machine learning and new technologies available, alternative data – such as social media, visual and video data – can become an important input to knowing when, where and what financial product you offer. And make the offer quickly! This is a stark change from the days when decisions were based on binary inputs, or rather, simple yes/no answers. And it took 1-3 days (or sometimes weeks) to make an offer. More and more consumers are considering nontraditional banks because they offer the personalization and speed at which consumers have become accustomed.  We can thank the Amazons of the world for setting the bar high. The reality is - lenders must evolve their systems and processes to better utilize big data and the insights that machine learning and artificial intelligence can offer at the speed of cloud-based applications. Digitization threatens to lower profits in the finance industry unless traditional banks undertake innovation initiatives centered on better servicing the customer. In plain speak – banks need to innovate like a FinTech – simplify the products and create superior customer experiences. Machine learning and artificial intelligence can be a way to use data for making more informed decisions faster that deliver better experiences and distinguish your business from the next. Prior to Experian, I spent some time at a start-up before it was acquired by one of the large multi-national payment processors. Energizing is a word that comes to mind when I think back to those days. And it’s a feeling I have today at Experian. We’re taking innovation to heart – investing a lot in revolutionary technology and visionary people. The energy is buzzing and it’s an exciting place to be. As a former customer of 20 years turned employee, I’ve started to think Experian will transform the way we think about cool tech companies!

Published: June 15, 2018 by Robert Boxberger
Is That Consumer a Good or Bad Credit Risk?

According to our State of Alternative Credit Data research, more lenders are using alternative credit data to determine if a consumer is a good or bad risk

Published: May 25, 2018 by Guest Contributor
#ExperianVision 2018 Day 1 Recap

The first full day of Vision 2018 featured in-depth talks on alternative credit data, enhanced credit marketing, faster decisioning, fraud and identity protections and the latest in tech innovation.

Published: May 21, 2018 by Kerry Rivera
New Analysis on the State of Alternative Credit Data

In an all-new report, Experian dives into “The State of Alternative Credit Data,” providing in-depth coverage on how alternative credit data is defined, consumer personas, and how this data complements traditional credit data files.

Published: May 21, 2018 by Kerry Rivera

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