I am working on analysing advertising data for a digital advertising agency
using Gretl.
The context of my current problem – I am analysing several campaigns over
several months so this is panel data to find the impact of different days
of the week on advertising conversion (users seeing an ad on the internet
then clicking on that ad to then make a purchase from the website). I would
like to analyse the panel using time fixed-effects models to see how the
impact of Monday’s advertising differs to that of Tuesday’s.
My problem is that – I have several Monday, …, Sunday observations for each
campaign as the advertising campaigns run over several months as shown
below:
Date
Day of Week
Y
X1
X2
X3
Campaign 1
02/01/2012
Monday
.
.
.
.
Campaign 2
02/01/2012
Monday
.
.
.
.
Campaign 3
02/01/2012
Monday
.
.
.
.
Campaign 1
03/01/2012
Tuesday
.
.
.
.
Campaign 2
03/01/2012
Tuesday
.
.
.
.
Campaign 3
03/01/2012
Tuesday
.
.
.
.
Campaign 1
04/01/2012
Wednesday
.
.
.
.
Campaign 2
04/01/2012
Wednesday
.
.
.
.
Campaign 3
04/01/2012
Wednesday
.
.
.
.
Campaign 1
05/01/2012
Thursday
.
.
.
.
Campaign 2
05/01/2012
Thursday
.
.
.
.
Campaign 3
05/01/2012
Thursday
.
.
.
.
Campaign 1
06/01/2012
Friday
.
.
.
.
Campaign 2
06/01/2012
Friday
.
.
.
.
Campaign 3
06/01/2012
Friday
.
.
.
.
Campaign 1
07/01/2012
Saturday
.
.
.
.
Campaign 2
07/01/2012
Saturday
.
.
.
.
Campaign 3
07/01/2012
Saturday
.
.
.
.
Campaign 1
01/01/2012
Sunday
.
.
.
.
Campaign 2
01/01/2012
Sunday
.
.
.
.
Campaign 3
01/01/2012
Sunday
.
.
.
.
Campaign 1
02/01/2012
Monday
.
.
.
.
Campaign 2
02/01/2012
Monday
.
.
.
.
Campaign 3
02/01/2012
Monday
.
.
.
.
Campaign 1
03/01/2012
Tuesday
.
.
.
.
Campaign 2
03/01/2012
Tuesday
.
.
.
.
Campaign 3
03/01/2012
Tuesday
.
.
.
.
Campaign 1
04/01/2012
Wednesday
.
.
.
.
Campaign 2
04/01/2012
Wednesday
.
.
.
.
Campaign 3
04/01/2012
Wednesday
.
.
.
.
Campaign 1
04/01/2012
Thursday
.
.
.
.
Campaign 2
04/01/2012
Thursday
.
.
.
.
Campaign 3
05/01/2012
Thursday
.
.
.
.
Campaign 1
05/01/2012
Friday
.
.
.
.
Campaign 2
05/01/2012
Friday
.
.
.
.
Campaign 3
06/01/2012
Friday
.
.
.
.
Campaign 1
07/01/2012
Saturday
.
.
.
.
Campaign 2
07/01/2012
Saturday
.
.
.
.
Campaign 3
07/01/2012
Saturday
.
.
.
.
Campaign 1
08/01/2012
Sunday
.
.
.
.
Campaign 2
08/01/2012
Sunday
.
.
.
.
Campaign 3
08/01/2012
Sunday
.
.
.
.
When I put the dataset into Gretl and run a panel data regression, it does
not give me 6 (7-1) time dummy variables that are Tuesday, …, Sunday but it
gives it to me as 89 (90-1) time dummies that are 02/01/2012, …,
30/03/2012. I don’t know whether this is the case in Stata.
I really would like to know a way to get time dummies for days of the week
as opposed to the date. I want to find a way of getting these days of the
week dummies, without having to average out all the say Mondays’ Y, X1, …,
Xn over the several months to get one average Monday’s Y, X1, …, Xn. Could
a Monday index variable for all Y, X1, …, Xn for each campaign’s Mondays
which takes into account all the Mondays’ be created?