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Presentation
Alpha Insurance: A Predictive Analytics Case to Analyze Automobile Insurance Fraud Using SAS Enterprise Miner
2018 EDSIG Conference (2018)
  • Richard McCarthy, Quinnipiac University
  • Wendy Ceccucci, Quinnipiac University
  • Mary McCarthy, Central Connecticut State University
  • Leila Halawi, Embry-Riddle Aeronautical University
Abstract
Automobile Insurance fraud costs the insurance industry billions of dollars annually. This case study addresses claim fraud based on data extracted from Alpha Insurance’s automobile claim database. Students are provided the business problem and data sets. Initially, the students are required to develop their hypotheses and analyze the data. This includes identification of any missing or inaccurate data values and outliers as well as evaluation of the 22 variables. Next students will develop and optimize their predictive models using five techniques: regression, decision tree, neural network, gradient boosting, and ensemble. Then students will determine which model is the best fit providing consideration of the misclassification rate, average square error, or receiver operating characteristic (ROC). Lastly, students will generate predictive scores for the claims and evaluate the result using SAS Enterprise Miner (TM). Ultimately, the goal is to build an optimal predictive model to determine which of the
automobile claims are potentially fraudulent.
Keywords
  • insurance fraud,
  • case studies,
  • predictive analytics,
  • SAS,
  • neural network,
  • decision tree,
  • data mining
Publication Date
November 3, 2018
Location
Norfolk, VA
Comments
The annual conference of the Education Special Interest Group pf the Association of Information Technology Professionals (EDSIGCON) and the Conference on Information Systems Applied Research (CONISAR) are sponsored by ISCAP (Information Systems & Computing Academic Professionals) and are held together. Selected papers from the co-located conferences are published online. Please see their website for more information.

EDSIG Case # 4761.
Citation Information
Richard McCarthy, Wendy Ceccucci, Mary McCarthy and Leila Halawi. "Alpha Insurance: A Predictive Analytics Case to Analyze Automobile Insurance Fraud Using SAS Enterprise Miner" 2018 EDSIG Conference (2018)
Available at: http://works.bepress.com/Leila-A-Halawi/73/