How can I do nonlinear regression analysis on linear data? In that case should I still be looking for outliers, calculate slope and intercept and confidence intervals like in simple linear regression analysis?
What you can do is that use can use higher order terms of the
independent variables, like squares or cubes, and the do a multiple
llinear regression analysis. You don't have to do the calculation
manually, there are softwares like R and Python for that.
Yes, in that case too you should still be looking for outliers,
calculate slope and intercept and confidence intervals like in
simple linear regression analysis
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How can I do nonlinear regression analysis on linear data? In that case should I still...
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Simple Linear regression
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