# How to interpret results of Linear Regression after log-transforming the target variable?

I built Liear Regression model in Python and I had target variable for example Sales: 10, 9, 8. I decided to log my target variable: `df["Sales"] = np.log(df["Sales"])`so I have after that values np 3, 2, 1.

My question is how can I interpretate results of this model being aware that my target was log ? Because currently I have interpretation for example: If there is night sales decrease average by 1.333 nevertheless it is probably bad interpretation because without log of target I will have result in definitely higher quantification like If there is night sales decrease average by for example 2 589.

So how can I interpretate results of Linear Regression after log of target ? Because after log target has really low values ?

• I don't see a programming issue here, so SO is probably not the best place to ask this. You might want to have a look at an introductory econometrics book to see in what cases log transformation makes sense and how to interpret it. Mar 14, 2021 at 10:49
• I’m voting to close this question because it is not about programming as defined in the help center but about ML theory and/or methodology - please see the intro and NOTE in the `machine-learning` tag info. Mar 14, 2021 at 14:13

On average, a marginal change in `X_i` will cause a change of `100 * B_i` percent.
Do note that if you transformed any of your independent variables, the interpretation will change too. For example, if you changed `X_i` to `np.log(df['X_i`])`, then you would interpret `B_i` as a log-log transformation.