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TDWI Chicago Update

At TDWI, we have been working hard to navigate this ever-changing landscape in the face of COVID-19, and we want to assure you that the health and well-being of our employees, customers, and vendor partners is our top priority. Therefore, due to the growing concern around the coronavirus (COVID-19), and in alignment with the guidelines laid out by the CDC and WHO, we have decided to merge this year’s TDWI Chicago Conference (May 10-15) with TDWI Orlando 2020 (November 8-13), where it can be a successful experience for everyone. The Chicago 2020 agenda will be replicated at TDWI Orlando 2020.

Our registration team will be in contact with individual registrants and sponsors directly.

Course Description

M6P Predictive Modeling with Ensembles: Advanced Techniques for Deeper Insights

May 11, 2020

1:45 pm - 5:00 pm

Duration: Half Day Course

Level: Intermediate to Advanced

Prerequisite: None

Keith McCormick

Senior Consultant and Trainer

The Modeling Agency

Ensembling is one of the hottest techniques in today’s predictive analytics competitions. Every single recent winner of Kaggle.com and KDD competitions used an ensemble technique, including famous algorithms such as XGBoost, Random Forest, and "Deep Stacking".

Are these competition victories paving the way for widespread organizational implementation of these techniques? Yes, but not entirely. We will walk through an effective and practical approach to ensembling most applicable to organizational problems, attainable by analytic practitioners and adoptable by leadership.

This course will provide a detailed overview of ensemble models, their origin, and why they are so effective. We will explain the building blocks of virtually all ensembles techniques: bagging, boosting, and stacking.

While not a prerequisite, attending the "Decision Trees in Machine Learning" course provides a great foundation of machine learning and supervised learning techniques prior to this session.

You Will Learn

  • What are ensemble models and what are their advantages?
  • Why are ensembles in the news?
  • Three influential ensembling approaches and three famous algorithms
  • The core elements of ensembles and their application – bagging, boosting, and stacking
  • How to apply “meta-modeling” to real-world problems
  • The pros and cons of complex "black box" techniques in solving business problems
  • The challenge of applying competition strategies to organizational problems
  • Case Study: Using an ensemble to address systematically missing data

Geared To

  • Analytics practitioners
  • Data scientists
  • IT professionals
  • Technology planners
  • Consultants
  • Business analysts
  • Analytics project leaders