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To put it lightly, AI, machine learning, generative AI, and language learning models (LLM) have caused a storm in the business market – including in insurance. It’s left insurers grappling with some pretty big questions:
They’re good questions to be asking. True innovation, especially with AI, isn’t just about trends; it’s also about creating value and enhancing humanity. Let’s navigate the noise and pinpoint the real story of AI in insurance today.
Just how is generative AI making waves in risk assessment? Here are four examples:
To hear about more real-life use cases of generative AI in insurance, check out our LinkedIn Live Replay: Looking Through the Hyperbole of Generative AI.
AI and generative AI can help insurers out a lot in the underwriting process. The “simple” automations it can take care of are really powerful in and of themselves, but the generative powers of AI really shine here.
These are three ways AI can impact an insurer’s underwriting practices:
A major leakage area for a lot of insurers, many claims departments are open to smart innovations that will help them cut costs and keep more of their revenue. Right now, smart insurers are using the technology to help them:
Fraud is one of the costliest expenses in insurance (the FBI estimates the cost at over $40 billion per year in the US), and it dings the insurer’s profits as well as costing individuals and families more in increased premiums to cover the risk of fraudulent claims.
Pair with it the fact that fraudsters are getting more clever, especially with the help of AI, and you’ve got a massive gap that needs to be covered. Fortunately, AI can lend a serious helping hand, in a number of ways:
Fraud detection and elimination is one of our favorite topics at EIS. Check out our LinkedIn Live discussion where we go over practical use cases of generative AI, including fraud detection.
In every sector of insurance, customers are expecting more and more personalization… from product packages and pricing to customer service interactions. It’s nearly impossible to provide all of this if done manually, and old school if-this-then-that personalization rules are easy for customers to see through and are starting to feel more and more out of date.
Generative AI is revolutionizing this corner of insurance by providing a few things:
The beauty of machine learning is that it’s an AI function that can identify patterns far beyond what a human might notice, even in the most comprehensive data reports and dashboards.
Beyond just identifying underlying patterns and trends, generative AI also enables insurers to generate hypotheses about their causes, leading to stronger decision making. What’s even cooler, though, is if your team is having a hard time coming up with a solution, generative AI can use the data and the patterns it’s mined to suggest some for you.
For example, as consumers, we already know how companies like Netflix and Amazon use our behavior and consumption data to make suggestions based on our preferences, solving their need to get certain products in front of certain customers, without having individuals get lost in content or products that aren’t a good fit. This helps increase their customer retention and revenue per customer.
Likewise, in-person retailers will use generative AI to extract info on customer behavior, that helps them better-allocate resources and improve supply chain management.
Even though generative AI has only recently taken the world by storm, it is something that’s been on the radar of ambitious, market-leading insurers for a while. Here are three concrete ways some of today’s top insurers are already using generative AI in their business:
Needless to say, there’s a reason generative AI is front and center in the zeitgeist right now, and we’re excited about it. We believe that, if properly enabled and used correctly, generative AI could be a tool that ultimately decides which insurers will be the winners in the future, and which ones will be left behind.
To learn more about what leading insurers are thinking about in this space, check out our LinkedIn Live: Looking Through the Hyperbole of Generative AI.
And if you’d like to know more about how the EIS Suite enables a future-proof technology setup, check out our website to learn more.
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