Topic Brief: This video follows from where we left off in Part 3 of the Logistic Regression series, but the ideas are more general, so I decided ... In this video we will look at how we can diagnose our generalized linear model fit using
Deviance Residuals -
This video follows from where we left off in Part 3 of the Logistic Regression series, but the ideas are more general, so I decided ... In this video we will look at how we can diagnose our generalized linear model fit using Why isn't it a great idea to use residual sum of squares to assess logistical models?
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- This video follows from where we left off in Part 3 of the Logistic Regression series, but the ideas are more general, so I decided ...
- In this video we will look at how we can diagnose our generalized linear model fit using
- Why isn't it a great idea to use residual sum of squares to assess logistical models?
- A residual is the vertical distance between a data point and the regression line.
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