How Big Data can save the insurance world

‘Big Data‘ refers to the emergence of extremely large data sets marked by the ‘three Vs’: velocity, variety and volume. This is inextricably linked to analytics programs, and is already used in many industries to analyze behavior as well as to make predictions, for instance in stock markets and consumer decisions.

Insurers can profit from this trend, too – by feeding a large number of real-life data into an analytical model, IT departments could more accurately segment customers, give early warnings on defaulting or fraudulent behavior, or determine the likelihood of accidents and disasters in any given circumstance.

However, turning Big Data to your advantage requires meeting crucial milestones. This includes making sure the data you feed into a system is correct and doesn’t contradict itself, as well as installing the right solution to start refining and patterning the data. Luckily for you, we at Oxygen can help insurers succeed at this daunting task and can let you gain a crucial, and soon necessary, edge over your competitors. Curious? Why don’t you drop by or get in touch?

Other news

Mar

31

2022

The making of our corporate movies

Who else than our own people can tell you the story of Oxygen? Because we all work with great passion and enthousiasm and really believe that we can transform the insurance sector, together. Our employees are our best ambassadors, because they speak from the heart and honestly. Big thank you to all of them!

Oct

7

2022

Oxygen Broker Services

Today we were at the Dag van de Makelaar, organised by FVF to promote our Broker Services.

Feb

18

2020

Embedded insurance in P2P business platforms – THE TIME IS NOW

The commodification of fast Internet and smartphones have made a whole new host of consumer-to-consumer or peer-to-peer (P2P) finance products possible. Insurance and insurtech are not remaining behind. The sharing economy has both opened up new avenues for insurance products and has resulted in new niches that actually demand these kinds of products.