Just a note to those using the native pipe. In lm() it will not work using data = . . There are several solution a) data = data b) pick(x_var), or c) switch to %>%. I like the pick(x_var) option. There is a fourth option just put the model name into predict().
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Greg,
Thanks. Great stuff.
Now the question what to do if all but one of conditions for a linear model are met. That is the teaching moment.
Nice content.... performance package can also achieve the same with ease.
Thanks a lot Greg. I love your videos and reels. Can you exlpain bit about Logistic regression?
Sure thing! - Will make some videos about that soon
Just a note to those using the native pipe. In lm() it will not work using data = . . There are several solution a) data = data b) pick(x_var), or c) switch to %>%. I like the pick(x_var) option. There is a fourth option just put the model name into predict().
Thank you for all this, But I can't see the PDF or any document to download, even after subscribing
Get my FREE cheat sheets for R programming and statistics (including transcripts of these lessons) here: www.learnmore365.com/pages/membership-r-programming-data-visualization-and-research-methods
Helpful! Thank you
Glad it was helpful!
As usual: Very nice vid. Thanks A LOT.
So nice of you
Thank you, very helpful!
Glad it was helpful!
Introduction to Periodic chemistry
First!
great tutorial
Thanks!