Predictive Modeling and Data Mining - F23

DAT 203
Closed
McMaster University Continuing Education
Hamilton, Ontario, Canada
Instructor
(13)
6
Timeline
  • September 11, 2023
    Experience start
  • September 15, 2023
    Project Scope Meeting
  • October 25, 2023
    Midway Check-in
  • December 1, 2023
    Final Presentation
  • December 4, 2023
    Experience end
Experience
2 projects wanted
Dates set by experience
Preferred companies
Anywhere
Any company type
Any industries
Categories
Machine learning Data analysis Data modelling
Skills
predictive modeling adult education computer science data analysis data mining
Learner goals and capabilities

This course is part of the Data Analytics certificate program. Students in the program are adult learners with a post-secondary degree/diploma in computer science, engineering, business, etc.

The course will introduce predictive modeling techniques as well as related statistical 

and visualization tools for data mining. The course will cover common machine learning 

techniques that are focused on predictive outcomes. Students will learn how to evaluate 

the performance of the prediction models and how to improve them through time.



Learners
Continuing Education
Any level
20 learners
Project
40 hours per learner
Learners self-assign
Teams of 3
Expected outcomes and deliverables
  • A report on students’ findings and details of the problem presented
  • Future collaboration ideas will be identified based on current project outcomes


Project timeline
  • September 11, 2023
    Experience start
  • September 15, 2023
    Project Scope Meeting
  • October 25, 2023
    Midway Check-in
  • December 1, 2023
    Final Presentation
  • December 4, 2023
    Experience end
Project Examples

The project provides an opportunity for businesses and learners to collaborate to identify and translate a real business problem into an analytics problem. 

The projects, which can be short, will allow the student to apply predictive modeling techniques as well as related statistical and visualization tools for data mining to address the sponsors business problem.  The projects should cover common machine learning techniques that are focused on predictive outcomes and evaluate the performance of the prediction models and how to improve them through time. Some examples are:

  • Application of key machine learning (ML) terminology, ML applications and distinguish from more basic analytics and big data techniques
  • Implement machine learning functions
  • Formulate and communicate (orally, written) advanced analytics concepts
  • Demonstrate ethical and professional standards related to the field of data analytics

You should submit a high-level proposal/business problem statement including relevant data sets and definitions, a list of acceptable tools (if applicable), and expected deliverables. Business datasets could be provided based on a non-disclosure agreement or in an anonymized/synthetic data format that is relevant to your organization and business problem. The  course instructors will review the documents to confirm the scope and timing of the proposed problem and its alignment with the capstone course requirements.

Analytics solution may be applicable for (however they are not limited to) the following topics:

  1. Demand for social services (healthcare, emergency services, infrastructure, etc.)
  2. Customer acquisition and retention
  3. Merchandising for trade areas (categories)
  4. Quantifying Customer Lifetime Value
  5. Determining media consumption (mass vs digital)
  6. Cross-sell and upsell opportunities
  7. Develop high propensity target markets
  8. Customer segmentation (behavioral or transactional)
  9. New Product/Product line development
  10. Market Basket Analysis to understand which items are often purchased together
  11. Ranking markets by potential revenue
  12. Consumer personification

To ensure students’ learning objectives are achieved, we recommend that the datasets are at least 20,000+ rows in size. Data need to be ‘clean’. If more than one database is provided, which must be conjoined, students will be required to integrate them. This supports the learning experience and minimizes partner data preparation.