Extract monthly stock return data out of a table

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I have this 251x5 table with monthly stock return data over a 10 year time frame for a high number of stocks (ID). (see attachement)
My goal is to create 41 different "Reporting datasets" each depicting an 11 month time frame. I would expect to get 41 tables in the same format as my original table. For more detailed description, look at the notes below.
Note: The actual table of data contains a lot more lines than this short demo table.
%% Form 12-1 month Reporting datasets
% Out of the monthly returns I want to create 41 groups of 11-months-Reporting datasets
% I want to create a new Reporting dataset every 3 months (quaterly)
% R1 09/01 to 09/11 [year / month]
% R2 09/04 to 10/02
% R3 09/07 to 10/05
% ...
% R41 19/1 to 19/11
  1 Commento
Fabian Niederreiter
Fabian Niederreiter il 22 Mar 2021
Just want to let everybody know, that the approach proposed by star Strider is working perfectly.

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Star Strider
Star Strider il 21 Mar 2021
The data do not go all the way to 2019, instead stopping at 2017 1.
Also, if I understand corrctly what you want to do, there are 81, not 41, tables in the result.
Try this:
D = load('210320_ShortData_C.mat');
G = D.G;
First15Rows = G(1:15,:);
Last15Rows = G(end-14:end,:);
start = 1:3:size(G,1)-10;
finish = start+10;
for k = 1:numel(start)
DS{k} = G(start(k):finish(k),:);
end
with:
DS_01 = DS{1}
DS_02 = DS{2}
DS_80 = DS{end-1}
DS_81 = DS{end}
producing:
DS_01 =
11×5 table
ID year month date monthlyRET
_____ ____ _____ __________ __________
10001 2009 1 20091 0.043223
10001 2009 2 20092 0.064757
10001 2009 3 20093 -0.069798
10001 2009 4 20094 0.052383
10001 2009 5 20095 0.004916
10001 2009 6 20096 0.02546
10001 2009 7 20097 -0.043847
10001 2009 8 20098 0.057805
10001 2009 9 20099 0.015785
10001 2009 10 2.0091e+05 0.042746
10001 2009 11 2.0091e+05 0.007961
DS_02 =
11×5 table
ID year month date monthlyRET
_____ ____ _____ __________ __________
10001 2009 4 20094 0.052383
10001 2009 5 20095 0.004916
10001 2009 6 20096 0.02546
10001 2009 7 20097 -0.043847
10001 2009 8 20098 0.057805
10001 2009 9 20099 0.015785
10001 2009 10 2.0091e+05 0.042746
10001 2009 11 2.0091e+05 0.007961
10001 2009 12 2.0091e+05 0.16691
10001 2010 1 20101 -0.016774
10001 2010 2 20102 0.000271
DS_80 =
11×5 table
ID year month date monthlyRET
_____ ____ _____ __________ __________
10025 2015 12 2.0151e+05 -0.16054
10025 2016 1 20161 0.1172
10025 2016 2 20162 -0.063814
10025 2016 3 20163 -0.16176
10025 2016 4 20164 -0.059612
10025 2016 5 20165 -0.022708
10025 2016 6 20166 0.30606
10025 2016 7 20167 0.012423
10025 2016 8 20168 0.39732
10025 2016 9 20169 -0.010573
10025 2016 10 2.0161e+05 0.004453
DS_81 =
11×5 table
ID year month date monthlyRET
_____ ____ _____ __________ __________
10025 2016 3 20163 -0.16176
10025 2016 4 20164 -0.059612
10025 2016 5 20165 -0.022708
10025 2016 6 20166 0.30606
10025 2016 7 20167 0.012423
10025 2016 8 20168 0.39732
10025 2016 9 20169 -0.010573
10025 2016 10 2.0161e+05 0.004453
10025 2016 11 2.0161e+05 0.074598
10025 2016 12 2.0161e+05 -0.01457
10025 2017 1 20171 -0.050697
Those appear to me to be what you requested.
.
  21 Commenti
Fabian Niederreiter
Fabian Niederreiter il 6 Apr 2021
You are right that things got a little messy right there.
Thats why I posted a new and easier to understand question in this new thread:
Happy to hear your thoughts right there :)

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