Statistics 101: Model Building Methods - Forward, Backward, Stepwise, and Subsets
In this Statistics 101 video, we look at an overview of four common techniques used when building basic regression models: Forward, Backward, Stepwise, and Best Subsets Regression. The video is purely conceptual, no math, no software, or anything numerical. We will get to that. For now I just want you to get a solid understanding of the big picture before we get into the weeds and specifics of each method. Enjoy!
My playlist table of contents can be found here: https://www.bcfoltz.com/blog/stats-101/
For more info on XLSTAT: https://www.xlstat.com/en/
You can also find Video Companion Guide PDFs here: https://www.bcfoltz.com/blog/
Happy learning!
#statistics #machinelearning #datascience
Видео Statistics 101: Model Building Methods - Forward, Backward, Stepwise, and Subsets канала Brandon Foltz
My playlist table of contents can be found here: https://www.bcfoltz.com/blog/stats-101/
For more info on XLSTAT: https://www.xlstat.com/en/
You can also find Video Companion Guide PDFs here: https://www.bcfoltz.com/blog/
Happy learning!
#statistics #machinelearning #datascience
Видео Statistics 101: Model Building Methods - Forward, Backward, Stepwise, and Subsets канала Brandon Foltz
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