Advanced Business Analytics Seminar

March 27 - 29, 2018
111 S. Wacker Dr.
Chicago, IL 60606


External Forces & Industry Knowledge Results-Oriented Solutions Strategic Insight and Integration Technical Skills & Analytical Problem Solving


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This seminar has sold out.

To be placed on a waiting list for the March 27-29 seminar in Chicago, IL, please email Marni Smith in SOA Customer Service at Should spaces for the seminar become available (e.g., due to cancellations), potential registrants will be contacted in the order in which their requests were received.


Business analytics has become a major force for innovation in the insurance industry and beyond in the past decade. Inexpensive computing power, rich data sources and increasingly powerful analytical tools become more widely available each year. As a result, quantitatively skilled professionals have unprecedented opportunities to bring scientific rigor to areas of strategic importance within their organization. For actuaries in particular, the business analytics revolution affords opportunities to ground traditional actuarial work in rigorous statistical methodology and enables actuaries to enter new domains.

On March 27–29, the SOA will be offering an Advanced Business Analytics Seminar in Chicago to enable members to leverage the ongoing business analytics revolution. This interactive, hands-on seminar will impart practical working knowledge of statistical and machine learning techniques that are relevant in actuarial work. Core techniques such as regression analysis, generalized linear models, survival models, time series analysis, decision tree analysis and “unsupervised learning” techniques like principal component analysis and clustering will be covered. This course will be a blend of brief lectures complemented by stylized hands-on data analysis case studies amenable to classroom treatment.

The seminar will combine theory and practice with theoretical discussions that emphasize concepts and intuitions rather than mathematical formalism. These theoretical discussions will enable attendees to better interpret, communicate and critically examine model outputs. Practical working knowledge of data analysis methodology will be imparted through a series of data analysis case studies. Seminar participants will receive datasets and computer code to work through examples with the instructor.

Inherent to modern statistical and actuarial practice is the ability to compute with data. To that end, the medium of the seminar will be the open-source R statistical computing environment. R is widely considered the working language of modern data analysis and provides users with exceptional facilities for manipulating, graphically exploring and modeling complex datasets. Attendees will receive a self-contained introduction to R package prior to the seminar that explains how to install and begin using R. Working knowledge of R will be further cultivated during the workshop as participants analyze data in real time.

At the conclusion of this seminar, participants will be better able to:

  • Perform basic data manipulations and fit a variety of standard models in the R statistical computing environment;
  • Graphically explore data to motivate various modeling choices and graphically criticize models and motivate model improvements;
  • Interpret and critically examine standard model output;
  • Test the performance of models on holdout data; and
  • Translate a business problem into the design of a data analysis strategy.

This seminar will convey foundational information on this topic and a general understanding of statistics is the only prerequisite. Given that a working knowledge of applied data analysis in R cannot be gained in only a few days, the goal of the seminar is to convey a theoretical framework and computational toolset sufficient for participants to continue to gain expertise on the job. To create an optimum learning environment, this seminar will be limited to 35 registrants.