I have two systems:

> dput(system.1)
structure(list(`Id - System 2` = c(91L, 93L, 912323L, 6L, 9874L, 
875342L, 875342L, 875342L, 124523L, 91L), `Value - System 2` = c("12.342.314,00", 
"123.476,00", "762.341,00", "978.543,00", "100.000,00", "100.100,00", 
"20.120.310,00", "13", "15", "12.341.235,00")), .Names = c("Id - System 2", 
"Value - System 2"), row.names = c(NA, -10L), class = c("data.table", 
"data.frame"), .internal.selfref = <pointer: 0x0000000000110788>)
> dput(system.2)
structure(list(`Id - System 1` = c(12345L, 124523L, 875342L, 
9874L, 45L), `Value - System 1` = c("10,00", "12,00", "100.000,00", 
"20,00", "9.872.341,00")), .Names = c("Id - System 1", "Value - System 1"
), row.names = c(NA, -5L), class = c("data.table", "data.frame"
), .internal.selfref = <pointer: 0x0000000000110788>)

Basically I want to merge the ID and the value(which can be in a 10-20% range) of system 1 to system 2.

I tried a basic merge, merge(system.2, system.1, by.x="Id - System 1", by.y="Id - System 2"). However, that only matches one column at a time.

I guess the best result would be to have a table, which looks like that:

enter image description here

Any recommendation how this could be achieved with R?

I really appreciate your reply!

Update

This is my code so far:

df12 <- merge(sys1, sys2, by='ID')

subset(df12, abs(df12$Value.x-df12$Value.y)/df12$Value.y < 0.1)
  • 2
    Do it in two steps: merge and then take a subset of the result based on when the two values are close to each other. – joran Jan 26 '15 at 16:51
  • 1
    @joran Thx for your reply! Would you be so kind to show me how this would look like in code? – Anna.Klee Jan 26 '15 at 16:52
  • 1
    I started to, but it was a hassle dealing with your data.table's awkward column names and the < in data.table's dput output, and then your "values" are actually stored as character values, and I"m not going to go through the trouble of converting them for you. – joran Jan 26 '15 at 16:59
  • 1
    yes, the format you've given is not convenient, but something along the lines of df12 <- merge(s2, s1, by='id') and then subset(df12, abs(v2-v1)/v1 < 0.1) should give you those that have an id in both systems, and v2 (of system2) is within 10% of the v1 value. Along with gsubbing your data to remove the thousands separator, you'll need to check which system is the baseline for calculating the percentages. Also you may need to play around with merge's all parameters to reflect the screenshow where you keep record 91 but not 45. – Gavin Kelly Jan 26 '15 at 17:10
  • @GavinKelly Thx! Please have a look at my update! When merging the two datasets I all data rows that do not match are removed. Is there an option to keep them and to set the part where these rows do not match null or empty string? – Anna.Klee Jan 26 '15 at 19:40

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.