- This event has passed.
Working with decision trees in SPSS Statistics training webinar
26 February 2019 @ 2:30 pm - 4:00 pm
£75Working with decision trees in SPSS Statistics training webinar
Decision trees are used extensively and widely within many predictive analytics applications. In this 90 minute training session you will learn how decision trees can be used to build profiles of customers or employees as well as generate predictive models.
The training session will cover:
- The uses and advantages of decision trees
- Introduction to Chi-Square and the CHAID technique
- Interpreting decision trees
- Adjusting the algorithm to improve results
- Applying predictive models with decision trees
After the session you’ll get a training pack including all the example data files and session outputs so that you can continue to study in your own time. You’ll also have access to a recording of the webinar which you can watch again as many times as you like.
Who should attend?
- Students and academics who need to use decision trees in their research
- Researchers and analysts who are interested in building predictive models using decision trees
- Business analysts and strategists making operational decisions based on data from within the organisation who want to ensure they’re making the right decisions
- Anyone who is using SPSS Statistics and wants to understand how to build decision trees in the software
What happens after I book?
Once we have received payment from you, we will send you a personalised link that will enable you to log into the webinar on the day of the training session.
About the trainer
[su_row][su_column size=”4/5″ center=”no” class=””]
Jarlath Quinn
A veteran of the Predictive Analytics industry, Jarlath Quinn has worked for SAS, IBM and SPSS delivering predictive analytics solutions for major telecommunications, financial services, utilities, retail and government organisations. He is one of the most experienced and well-regarded trainers in the analytics space.[/su_column] [su_column size=”1/5″ center=”no” class=””][/su_column][/su_row]