Interpreting the Summary table from OLS Statsmodels | Linear Regression
In this video, we will go over the regression result displayed by the statsmodels API, OLS function. We will go over R squared, Adjusted R-squared, F-statistic & T-test of the feature values. Link to the notebook : https://github.com/bhattbhavesh91/lin... If you do have any questions with what we covered in this video then feel free to ask in the comment section below & I'll do my best to answer those. If you enjoy these tutorials & would like to support them then the easiest way is to simply like the video & give it a thumbs up & also it's a huge help to share these videos with anyone who you think would find them useful. Please consider clicking the SUBSCRIBE button to be notified for future videos & thank you all for watching the video. You can find me on: Blog - http://bhattbhavesh91.github.io Twitter - / _bhaveshbhatt GitHub - https://github.com/bhattbhavesh91 Medium - / bhattbhavesh91 #LinearRegression #statsmodels #interpretation

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