Episode 14: What are Predictive Models?

In this episode, co-hosts Ron Landis and Jennifer Miller deconstruct building predictive models and specifically, utilizing forecasting in organizational context. 

In this podcast episode, we had conversations around these predictive model questions:  

  • What are different types of data analytics?

  • What are some of the decisions to consider when building predictive models?

  • What are some contexts in which predictive models can be used in organizations?

  • What are some of the data analytic requirements needed to utilize forecasting in organizational contexts?

  • What are some clear steps that HR professionals can take to use predictive models?

Link to Measurement Podcast Episode

2 Key Takeaways on Building Predictive Models  

  • In general, we can think about three broad categories of data analytics: descriptive, inferential, and predictive.

  • Ron and Jennifer provide a framework of how to build predictive models. First, all the relevant variables and relations among those variables need to be in the model. Second, the model needs to have data divided into a training set and test set to determine how well the model predicts the data. Third, they discuss how the model can be used in organizational contexts.

Related Links  

Previous
Previous

Episode 15: Analytics in Practice: How to Utilize Data Analytics for Performance Assessment 

Next
Next

Episode 13: What is Natural Language Processing?