Odds ratios are the bane of many data analysts. Interpreting them can be like learning a whole new language. This teleseminar will go over an example to show how to interpret the odds ratios in binary logistic regression. You will learn:

  • how probability and odds both measure the same thing on different scales
  • the meaning of odds
  • how to interpret an odds ratio for continuous and categorical predictors in logistic regression

Date: April 4, 2012

Time: 1pm Eastern Time (12pm Central, 11am Mountain, 10am Pacific)

Where: Anywhere you have a fast internet connection

Length of Program: An Hour

Cost: Always FREE

Space is limited.

How do I sign up? Complete the form below to register. Call details will be sent to you via email. The call will be recorded, so if you miss it, you can still listen in, but you have to register.

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