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3 Ways Insurers Can Win with Predictive Analytics

Implementation of predictive modeling is on a slow but steady climb in insurance. Here's some tips for getting the most out of your initiatives.

Implementation of predictive analytics capabilities has been on a steady rise in the insurance industry. There are implications for all lines of business in terms of how the technology can improve processes. But leveraging predictive modeling effectively means more than just implementing technology. Industry players share these tips for unlocking value from these efforts:

1. Bring in people who understand the readouts

Universal American, the health insurer who spoke to I&T yesterday about beating fraud with predictive analytics, completely remade its SIU in anticipation of the new approach. That didn't mean just bringing in technology folks, according to SIU manager James Cooper. Universal American brought in subject matter experts who could identify potential malfeasance in the data.

"We went from not a very sophisticated SIU to a full-blown unit that has nurses and coders and claims handlers," Cooper says. "Before it was just two handlers that were chasing down claims on a spreadsheet. We went from the stone ages to high tech in the matter of a year."

2. Impart the need for speed to IT

Models have traditionally taken a long time for IT organizations to create and deploy, according to Russ Schreiber, insurance industry principal for FICO, which partnered with Universal American on its predictive modeling initiative.

"The first challenge that we've seen is that a lot of carriers have all sorts of models, but they can't get them into a decision stream," Schreiber says. "The tech is solved, but the challenge is as much around culture. Once it's done, you shouldn't have to wait a year for it."

The velocity of "big data" demands a quicker turnaround as well, Schreiber adds.

"There's an awareness at the organizations that they've got this data and this knowledge," he explains. "And, it's much more readily available. It's much less this IT extraction initiative to get this data to the modeling teams. So people know they can get the data."

[See also: CIGNA's Mark Boxer opines on the potential for big data in insurance]

3. Don't discount public data

Towers Watson's recently released predictive modeling benchmarking study revealed that smaller insurers "face growing competitive pressure from large, resource-rich insurers" due to a perceived lack of data resources. But the consultancy says there are ways that companies of that size can "fast follow," including access to competitor filing materials.

FICO's Schreiber goes a step further, saying that no data set is complete without data from outside the organization.

"The ability to access the data has moved so far so fast, and it's internal as well as external sources," he says.

Nathan Golia is senior editor of Insurance & Technology. He joined the publication in 2010 as associate editor and covers all aspects of the nexus between insurance and information technology, including mobility, distribution, core systems, customer interaction, and risk ... View Full Bio

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Tony Kontzer
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Tony Kontzer,
User Rank: Apprentice
2/7/2013 | 8:06:04 AM
re: 3 Ways Insurers Can Win with Predictive Analytics
I think that points 1 and 3 here are especially applicable across industries when it comes to deriving value from predictive analytics. Without subject matter experts who know what to glean from the data, there is now way realize the full potential of any efforts at predictive modeling. And with most companies now realizing that making decisions based on their own relatively puny and limited data sets is to leave the universe of available data on the sidelines, public data sources clearly must play an ever-growing role.

Tony Kontzer
InformationWeek Contributor
Nathan Golia
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Nathan Golia,
User Rank: Author
2/4/2013 | 3:42:19 PM
re: 3 Ways Insurers Can Win with Predictive Analytics
Good point, Murali. I just finished a call with an insurer executive talking about analytics and one of the points that stood out to me was that analytic insights must be credible and unbiased to get buy-in from the entire enterprise.
MuraliDhanavelu
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MuraliDhanavelu,
User Rank: Apprentice
2/4/2013 | 7:34:18 AM
re: 3 Ways Insurers Can Win with Predictive Analytics
As long as biz-ásees true value from-ápredictive analytics(PA) from the biz context, demand for PA-áwill grow.Both IT and Biz will have to work very closely in order to-ástay in the game well ahead of the competitors and gain more wallet share.
Medicalquack
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Medicalquack,
User Rank: Apprentice
2/1/2013 | 9:27:37 PM
re: 3 Ways Insurers Can Win with Predictive Analytics
FICO and their predictive analytics for medication compliance is the biggest rip around wiht trying to turn linear data into non linear relationships.-á It is so obvious that the average consumer sees it and the problem is-á querying credible and not credible data and they don't even give the sources out.-á If you have not watched the documentary, Quants, the Alchemists of Wall Street then you will understand how the models get built wiht a bit of fiction and some old time quants have some great advice.-á Mike Orsinki, who built the mortgage software that all used in the scam has a great line in there, "you can do anything with software"...but it is good and relative.-á You have been Algo Duped with formulas created only for making money negligent of accuracy and ethics.-á I keep that video visible on every page of my blog to help educate consumers and there's 4 others on there that are good too to include a former quant who worked at DE Shaw. I used to program and I know crappy and mis matched data when I see it with no value.-á I told that to a journalist at Proto magazine years ago from UMASS and we are in the thick of it now.-á

http://ducknetweb.blogspot.hk/...

Here's my opinion on FICO and the medication behavior analytics...it's a rip and a lot of fiction and huge marketing efforts to try to convince phara and insurance companies it has value.-á They are bad enough on their own and I would think they have enough sense not to bite on this themselves...they just got into revenue accounting...watch the news about all the flawed software to show more frequently..just as I said it would 3 years ago.

http://ducknetweb.blogspot.com...

Here's my in depth opinion of the FCIO medication scam of matching data that is not relational.

http://ducknetweb.blogspot.com...
AnthODonnell
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AnthODonnell,
User Rank: Apprentice
2/1/2013 | 12:18:17 AM
re: 3 Ways Insurers Can Win with Predictive Analytics
"We went from the stone ages to high tech in the matter of a year." This statement is probably fairly representative of how the "shoe leather" school of fraud investigation has finally seen the value of taking full advantage of the technological side of fraud detection.-á
KBurger
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KBurger,
User Rank: Author
1/31/2013 | 9:19:33 PM
re: 3 Ways Insurers Can Win with Predictive Analytics
Regarding #2/Need for Speed -- do you think this is why we're starting to hear about "big data in the cloud" -- that is, it's not just changing the IT org's orientation/processes to do these things more rapidly; it requires an infrastructure that enables speed, responsiveness, flexibility, "just in time"
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