Actuarial Outpost
 
Go Back   Actuarial Outpost > Actuarial Discussion Forum > Property - Casualty / General Insurance
FlashChat Actuarial Discussion Preliminary Exams CAS/SOA Exams Cyberchat Around the World Suggestions

ACTUARIAL SALARY SURVEYS - From Entry to Fellow

Reply
 
Thread Tools Display Modes
  #1  
Old 06-18-2012, 01:45 PM
llcooljabe's Avatar
llcooljabe llcooljabe is offline
Member
CAS
 
Join Date: Aug 2002
Favorite beer: Rickard's Red
Posts: 14,458
Default Predictive modeling revolutionizes insurance

http://www.insurancejournal.com/news.../18/251957.htm

I love reading the comments on these type of articles. What amazes me, though, is that these comments are from insurance professionals! Only two so far. I'm tempted to go in and troll them...

Quote:
The use of predictive modeling has forever changed the way insurance policies are priced. The revolutionary tool allows insurers to design ever-more-sophisticated models that tap ever-more-detailed data sets to refine precisely how much each customer should be charged.

Casualty actuaries got an overview of how far the revolution has come and how it will continue to change insurance pricing at the session “The Revolution and Evolution of Predictive Modeling” presented at the Casualty Actuarial Society Spring Meeting, in Phoenix recently.

Claudine Modlin, a senior consultant at Towers Watson, laid out how far predictive analytics has advanced insurance pricing in the past decade.

Steven Armstrong, a fellow of the Casualty Actuarial Society, laid out a variety of ways those same tools and skills could improve insurance operations beyond the pricing function.

At the end of the 20th century, Modlin said, insurers were still bound to mainframe computers and highly aggregated data sets. Rating plans were less sophisticated and it was easy for a company to understand its competitors’ plans. And the rating plans were finalized based on the collective judgment of underwriters and actuaries, with little data-driven guidance in how and where to deviate from the expected costs.

Today, insurers use a variety of predictive analytic tools to hunt through gigabytes of data to find variables – sometimes non-intuitive ones – that hold clues to a customer’s riskiness and purchasing behavior. Generalized linear models (GLMs) have become the global industry standard for pricing segmentation. This is due in large part to the multivariate framework, the multiplicative nature of rating plans, and the high degree of transparency in the results.

“As an industry, we have really learned a lot,” Modlin said. “We have advanced our toolkit.”

The use of insurance credit scores was one of the great new loss predictors over the last two decades and the ongoing search for the next great loss predictor has increasingly become the norm. As insurers follow the information revolution, they are improving the quality and accessibility of their internal data, investigating third party data sources, and investing more computing power to harness the information. This has led some companies to investigate thousands of predictors – including such things as what other policies an insured has, whether they pay their bills on time, and various characteristics of the area in which the risk is located. Interpreting a large list of related variables requires more refined methods.

Modelers employ a variety of techniques to cull the list of potential predictors. The process of variable reduction involves a lot of business judgment but is frequently supplemented with data mining techniques such as principle components analysis or classification and regression trees.

“Within the GLM exercise, modelers use a blend of statistical diagnostics, practical tests and our business acumen to select predictive factors,” Modlin said.

Companies looking to refine their GLMs further pay significant attention to identifying interaction variables and to mining GLM residuals in order to improve the pricing of certain high dimension variables (e.g., territory and vehicle groups).

And in auto insurance, the revolution is moving even further, as insurers start to use telematics – gathering information about a customer’s driving behavior from a device attached to the vehicle.

Information will flow in, virtually moment by moment, Modlin said. “Do you slam on the brakes? Do you peel around corners?”

As much of the industry has refined its approach to estimating loss costs, the use of science to understand customer demand lags behind. GLMs are a suitable technique for this as well. The challenge here is to capture customer attributes as well as price-related information (e.g., quote offered at new business or price change offered at renewal) that will provide useful insights into customer elasticity.

The next evolutionary stage for pricing sophistication is for companies to learn to integrate their cost estimates with knowledge of customer behavior. This can involve scenario testing possible rate changes and measuring the effect on key performance indicators, taking the effect of customer behavior into account. Scenario testing in its ultimate form involves price optimization techniques that systematically integrate cost and demand in order to indicate an optimal set of prices that meets or exceeds corporate objectives for profitable growth while staying within company constraints.

But use of predictive models doesn’t have to end with ratemaking, said Armstrong in his presentation. The models can help other aspects of the insurance organization. And as they do, actuaries can follow them, helping explain how the models work and what potential they contain.
“You have this pricing tool kit,” he said. “I want you to think beyond pricing” and help solve business problems.

For example, predictive models could likely help underwriters work more efficiently. Right now, underwriting tends to follow rules with limited flexibility. For auto insurance, for example, young drivers receiving good student discounts have to regularly turn in copies of their grades. Predictive modeling could show, perhaps, that some types of students don’t need to perpetually update, while others would.

Models could also help underwriters in other lines, Armstrong said – helping determine which workers compensation risks should be tapped for a premium audit.

Predictive modeling could also help marketing by researching what mix of social media grows the customer base or what brand attributes drive new business. The concept isn’t new to marketers, but the actuarial skill set can enhance understanding of the work.

And claims departments ‘swim’ in a vast, vast pool of data, Armstrong said, that only awaits discovery – claims diaries, records on attorney involvement, and information on service providers and adjusters. Predictive models could answer questions such as:
  • If a damaged auto gets to the body shop a day sooner, will it affect claim severity?
  • What sorts of claims are driving costs higher?
  • What sorts of claims should be reported to the special investigations unit for potential fraud?
  • Can one pick out potential fraudsters during the underwriting process?
The models could also assist sales departments (What’s the best spot to start a new agency?), human resources (How long is a new employee likely to remain with the company?) or expense management (What underwriting reports are cost-effective?).

The list of areas where actuaries could help insurers quantify and understand their operations seems limitless, Armstrong said.
“Wherever there is data, there is opportunity,” Armstrong said.

The Casualty Actuarial Society has 5,700 members who are experts in property/casualty insurance, reinsurance, finance, risk management, and enterprise risk management.
__________________
www.GoodNewsNow.info
Propoganda
Reply With Quote
  #2  
Old 06-18-2012, 09:38 PM
Bobby's Avatar
Bobby Bobby is offline
Member
CAS
 
Join Date: Sep 2008
Location: Chicago, IL
Posts: 2,688
Default

Holy crap... I can't believe the people commenting actually work in the insurance industry. I'd expect those kind of comments from Yahoo! but not an insurance journal.
Reply With Quote
  #3  
Old 06-18-2012, 10:17 PM
DoubleJ DoubleJ is offline
Member
 
Join Date: Jul 2011
Favorite beer: 3 Floyds Dark Lord
Posts: 37
Default

Wow...
__________________
1P 2F 3F 3L 4C VEEs OC1 OC2 5 6 7 8 9
Reply With Quote
  #4  
Old 06-19-2012, 08:30 AM
tude tude is offline
Member
CAS
 
Join Date: Dec 2011
Location: Oz
Posts: 2,065
Default

There are actually some good comments in there. Click "more".
Reply With Quote
  #5  
Old 06-19-2012, 08:40 AM
MountainHawk's Avatar
MountainHawk MountainHawk is offline
Member
CAS AAA
 
Join Date: Dec 2001
Location: Salem, MA
Studying for Nothing!!!!
College: Lehigh University Alum
Favorite beer: Yuengling
Posts: 55,705
Default

Quote:
Originally Posted by Bobby View Post
Holy crap... I can't believe the people commenting actually work in the insurance industry. I'd expect those kind of comments from Yahoo! but not an insurance journal.
Damnit guys, we forgot to account for catastrophes not picking out the bad credit cars in the model. Better redo it all.
__________________


"I am a most unhappy man. I have unwittingly ruined my country. A great industrial nation is now controlled by its system of credit. We are no longer a government by free opinion, no longer a government by conviction and the vote of the majority, but a government by the opinion and duress of a small group of dominant men." -- Woodrow Wilson

It doesn't matter who you vote for, the government always gets in. -- Elizabeth May

???? Jan 20: Freedom for the Bill of Rights

1 2
Reply With Quote
  #6  
Old 06-19-2012, 08:47 AM
crabber's Avatar
crabber crabber is offline
Member
 
Join Date: Nov 2008
Posts: 5,802
Default

Quote:
Originally Posted by Bobby View Post
Holy crap... I can't believe the people commenting actually work in the insurance industry. I'd expect those kind of comments from Yahoo! but not an insurance journal.
Those actually aren't all that bad. You should see the comments in the healthcare reform-related articles.
Reply With Quote
  #7  
Old 06-19-2012, 09:58 AM
llcooljabe's Avatar
llcooljabe llcooljabe is offline
Member
CAS
 
Join Date: Aug 2002
Favorite beer: Rickard's Red
Posts: 14,458
Default

__________________
www.GoodNewsNow.info
Propoganda
Reply With Quote
  #8  
Old 06-19-2012, 03:25 PM
Ron Weasley's Avatar
Ron Weasley Ron Weasley is offline
Member
CAS AAA
 
Join Date: Oct 2001
Studying for naught.
Favorite beer: Butterbeer
Posts: 5,280
Default

Meh, the quality of article I expect from the Insurance Journal is on a par with the scrolling headlines on Yahoo.
Reply With Quote
  #9  
Old 06-19-2012, 03:32 PM
M^3 M^3 is offline
Member
CAS
 
Join Date: Jun 2010
Posts: 409
Default

Quote:
Originally Posted by Ron Weasley View Post
Meh, the quality of article I expect from the Insurance Journal is on a par with the scrolling headlines on Yahoo.
Well the article is from the CAS.
Reply With Quote
  #10  
Old 06-19-2012, 03:36 PM
Ron Weasley's Avatar
Ron Weasley Ron Weasley is offline
Member
CAS AAA
 
Join Date: Oct 2001
Studying for naught.
Favorite beer: Butterbeer
Posts: 5,280
Default

Quote:
Originally Posted by M^3 View Post
Well the article is from the CAS.
Huh? It had quotes from the CAS Spring Meeting, but I didn't see CAS in the by line.

Of course, as a CAS member, I liked the little plug at the end:
Quote:
The Casualty Actuarial Society has 5,700 members who are experts in property/casualty insurance, reinsurance, finance, risk management, and enterprise risk management.
Reply With Quote
Reply

Thread Tools
Display Modes

Posting Rules
You may not post new threads
You may not post replies
You may not post attachments
You may not edit your posts

BB code is On
Smilies are On
[IMG] code is On
HTML code is Off


All times are GMT -4. The time now is 03:28 PM.


Powered by vBulletin®
Copyright ©2000 - 2013, Jelsoft Enterprises Ltd.
*PLEASE NOTE: Posts are not checked for accuracy, and do not
represent the views of the Actuarial Outpost or its sponsors.
Page generated in 0.43291 seconds with 7 queries