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Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring Agenda: 1) About Gjensidige Forsikring 2) The Business Problem at Gjensidige Skade 3) The Data warehouse for Non-Life Insurance 4) The use of SAS Enterprise Miner on the problem 4.1) Sampling 4.2) Exploring 4.3) Model 4.4) Modify 4.5) Assessment 5) Conclusion SEUGI 1998 Prague Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring 1) About Gjensidige Forsikring * Founded by Ole J. Broch (the meter) in 1847 * Norwegian Mutual consisting of Gjensidige Skadeforsikring (1922) Gjensidige Livsforsikring (1847) and Gjensidige Bank(1993). * Total Assets ca. 20 Bill DEM. * ca. 4500 employees. * Market share in Non Life : 29.0 percent. * Market share in Life : 17.7 percent. * Market share in Bank : 2.3 percent. * Gjensidige covers both The Commercial and The Private Market. * Gjensidige has six regions with full business responsibility. In addition, the decentralised organisation consists of 38 mutual fire companies and regional units. These undertake fire insurance for own account and represent Gjensidige for all other insurance lines. Most also represent Gjensidige Bank. Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring 2) The Business Problem at Gjensidige Skade * The motor insurance portfolio holds 38.2 percent of the total premium income. * Claims ratio for Non Life in 1997 : 84,7 Cost ratio for Non Life in 1997 : 25,8 This yields a combined ratio of 110,5. Due to financial incomeā¦still good results... * In 1996 Gjensidige had a net increase of almost 16000 private cars. * Gjensidige`s agreement with the Norwegian Automobile Association has undoubtedly contributed to this growth. * The last year Gjensidige has seen an increase in the frequency and in the claim amounts. Is this a general trend or are there some other explanations ? SEUGI 1998 Prague Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring 3) The Data warehouse for Non-Life Insurance * End-user interface * User defined and controlled * Produced for user access and analysis * Flexible * Can be distributed * Data Warehouse * Modelled and normalised * Often centralised * Controlled by IS Department * Historical data * Business operational systems * Different platforms * Existing platforms and new ones * Continuously updated Data Mining as a tool for customer selection Business information warehouse Derived data = User BIWs User defined DM tables Reconciled data Real-time data = Business data warehouse = Operational systems Repository Metadata Data warehouse Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring 4) The use of Enterprise Miner on the problem * Constructing a data mining table : * Draw randomly 50,000 customers from the private market. * Exclude customers with more than 3 vehicles. * Create one record pr vehicle. For every vehicle * Compute Earned Premium for 1997 * Policy information : * geographical data * bonus arrangement * mileage * sex and age of the policy holder * policy status * inception date Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring * agreement information * make of car * In case of loss : * Compute Aggregated Amount of Loss for 1997 * Driver data. (Sex, age, etc.) * Number of losses * For every vehicle we define the variable NP which represents net profit and is given by NP = Earned Premium for 1997 - Aggregated Amount of Loss for 1997 * We want to * study the behaviour of NP * learn about its distribution * assess its most important explanatory variables Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring SEUGI 1998 Prague Data mining as a tool for customer selection Nils F. Haavardsson & André Hønsvall Gjensidige Forsikring 5) Conclusion * SAS Enterprise Miner enables advanced statistical analysis. * The analyst must use the tool critically : * Make a point of method understanding and thorough interpretations of results. * Check carefully whether the various model assumptions are realistic and valid. * SAS Insight is a powerful tool, useful in the exploring phase. * Data organising is crucial. * Some models are vulnerable to changes in the original data set. SEUGI 1998 Prague