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STATISTICA Data Miner Predictive Modeling Solutions for the Insurance Industry
Life, Disability, Automotive, Health, Property and Casualty, etc.
Companies in the insurance industry are using
STATISTICA Data Miner to be more effective and competitive in the
utilization of historical data, using the latest predictive modeling and data mining approaches to recognize patterns
within terabytes of data.
STATISTICA Data Miner allows companies to predict trends in customers' behaviors and responses,
claims, and losses.
Major successes and savings have been achieved by companies using
STATISTICA Data Miner for predictive
modeling for
rate making,
fraud detection, and
customer segmentation.
Read more details about these solutions:
Areas of Application
Rate making
STATISTICA Data Miner identifies the most important root causes in the frequency and magnitude of historical losses.
Predictive Models relating these primary factors to the frequency and magnitude of losses are then used to update rate
tables accordingly, making the insurers more accurate and competitive in their policy rates when compared to more
traditional rate making approaches. In the past, General Linear Models were the industry standard approach. Now,
more effective prediction of losses is achieved through the use of predictive modeling techniques such as recursive
partitioning (i.e., "tree methods").
Customer segmentation
STATISTICA Data Miner's Clustering module may be used for customer segmentation, by grouping the entire
customer base into clusters, identified on the basis of various demographic and behavioral factors. These clusters can
then be used for a variety of predictive modeling applications to determine the efficacy of the clusters in predicting
outcomes of interest.
Fraud detection
Claims fraud is a significant and costly concern, costing insurance companies several billion dollars annually. Losses
due to fraud have increased dramatically in the past ten years. Despite actions by insurance companies, a large
amount of fraud remains undetected.
STATISTICA Data Miner helps the insurance company anticipate and quickly detect fraud and take immediate action to
minimize costs. Through the use of sophisticated data mining tools, millions of claims can be searched to spot
patterns and detect even subtle variations in billing practices, by analyzing above normal payoffs along different factors
like geographical region, agent, and insured party.
Specifically for health insurance, STATISTICA Data Miner's
Associations Rules .
may be used to analyze claim forms. Using the Associations Rule module, the
payer will be able to find relationships among medical procedures performed
together, patterns in diagnoses and procedures across providers, etc.
You know there are fraudulent claims. Let's find them know.
Claims analysis
STATISTICA Data Miner helps users understand subtle business trends in claims, which would have been otherwise
difficult to spot.
STATISTICA Generalized Linear Models has the Tweedie distribution. This distribution is a flexible predictive
modeling option. It can include exact zero and continuous data.
STATISTICA Data Miner, Fraud Detection White Paper
Predict which customers will buy new policies
STATISTICA Data Miner provides the insurance firm with reporting, tracking, and analysis tools to identify trends.
Sequential pattern mining functions are powerful and can detect sets of customers associated with frequent buying
patterns to inform future sales and marketing campaigns and tactics.