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The Evolution of Regression Modeling NOW ON-DEMAND!

Instructor: Dan Steinberg, CEO and Founder

Class Description: Regression is one of the most popular modeling methods, but the classical approach has significant problems. This webinar series addresses these problems. Are you working with larger datasets? Is your data challenging? Does your data include missing values, nonlinear relationships, local patterns and interactions? This webinar series is for you! We will cover improvements to conventional and logistic regression, and will include a discussion of classical, regularized, and nonlinear regression, as well as modern ensemble and data mining approaches. This series will be of  value to any classically trained statistician or modeler.

Part 1: Regression methods discusseddescribe the image

  •     Classical Regression
  •     Logistic Regression
  •     Regularized Regression: GPS Generalized Path Seeker
  •     Nonlinear Regression: MARS Regression Splines

Part 2: Hands-on demonstration of concepts discussed in Part 1

  •     Step-by-step demonstration
  •     Datasets and software available for download
  •     Instructions for reproducing demo at your leisure
  •     For the dedicated student: apply these methods to your own data (optional)

Part 3: Regression methods discussed
*Part 1 is a recommended pre-requisite

  •     Nonlinear Ensemble Approaches: TreeNet Gradient Boosting; Random Forests; Gradient Boosting incorporating RF
  •     Ensemble Post-Processing: ISLE; RuleLearner

Part 4: Hands-on demonstration of concepts discussed in part 3

  •     Step-by-step demonstration
  •     Datasets and software available for download
  •     Instructions for reproducing demo at your leisure
  •     For the dedicated student: apply these methods to your own data (optional)