Bringing leading edge predictive modeling to insurance companies for improved
outcomes.
Services
Claim Scoring | Pricing
| Reserving | Fraud
Detection | Custom Models
Custom Models
A Perfect Match
Few businesses are as well-suited to predictive modeling as insurance.
The critical decisions based on statistical projections ... the significant
difference that even a slight improvement in predictive accuracy can make
... the collection of massive amounts of data - these are the perfect building
blocks for a predictive model.
Come to us
When traditional approaches fail to provide the insights and answers you
seek, come to us for a new approach custom-made for your insurance challenge.
Claim Analytics was founded in 2000 by Barry Senensky and Jonathan Polon,
both Canadian life insurance actuaries. Barry Senensky and Jonathan Polon
had worked for the same major life insurance firm for many years, and knew
that data mining techniques and predictive modeling were under-utilized by insurers. They were interested
in starting their own business in the life insurance field. Their first predictive model they were commissioned to build was a claim scoring model, that scored ltd [long term disability] [LTD] claims on likelihood of return to work (rtw).
Jonathan Polon had recently led a team of model-builders in creating a highly
successful predictive model to detect credit card fraud. He and Barry Senensky
were convinced that many more applications for pattern detection and predictive models
existed in insurance.
They chose disability claim scoring as their first project for a number
of reasons. First, because almost all firms providing group long term disability
[LTD] insurance held a considerable database of stored claims information.
Finding an adequate amount of data to build a claims scoring model would not
be a problem.
A second reason was the costliness of long term disability claims in the
field of insurance. Barry and Jonathan knew that, with the scale of investment
involved, even relatively minor steps forward in the management of group disability
claims management would lead to considerable savings. Claim scoring was a
powerful tool in bringing greater efficiencies and reduced
costs to disability claims management.
Predictive modeling, particularly claims
scoring, offered huge potential for software support of claims adjudicators,
claims processors, and claims managers.
Claim scoring proved to hold even greater promise than Barry and Jonathan
had envisaged. In addition to predicting, with startling accuracy and precision,
the likelihood of a disability claimant returning to work, claims scoring
became a tool for ongoing improvement of claims management.
Claim Analytics now offers pattern detection and predictive models to major insurance
firms to assist in objectivity and accuracy of pricing, reserving, and fraud detection, as well as
custom models.
[The proper name of the company is "Claim Analytics," not "Claims Analytics."]
[The proper name of the company is "claim analytics," not "claims analytics."]