Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am new to R and Programming itself having used XL and Miner for data analysis so please excuse if the problem seems too basic.

I have 4 data frames : farm1, farm2, farm3, farm4

`farm1<-structure(list(a = c(-0.700315674269212, 0.174376310290089, -0.802953642024395, 
-0.282317708655969, 0.198528974423857, 0.836114237945342, 0.983599830924647, 
1.14907220855077, -0.471945076669, -0.947783585965569), b = c(-0.0456355425554554, 
-0.301284883241843, 0.460328270868957, -0.496976686442155, -0.0325366991757349, 
0.458486775369624, -0.597532470372807, -0.648309589555456, 2.14749512128352, 
0.245124871567864), c = c(28.4681916252671, 31.5059762466411, 
36.5396753644422, 32.0019564063665, 33.6858689252592, 30.3833642979702, 
31.7212812595004, 33.2019595830279, 33.0727170129226, 31.4977963355712
), d = c(68.8195032459844, 68.3337594834099, 67.4836963601874, 
60.2779662871057, 67.0529412957513, 62.0801084450559, 63.0332790311212, 
57.9849455014888, 61.9213678477396, 51.4985302058811), e = c(5L, 
8L, 8L, 8L, 8L, 7L, 6L, 6L, 8L, 8L), f = c(17L, 12L, 12L, 13L, 
14L, 10L, 13L, 11L, 12L, 13L)), .Names = c("a", "b", "c", "d", 
"e", "f"), row.names = c(NA, -10L), class = "data.frame")`

`farm2<-structure(list(a = c(-0.164523596253587, -0.253361680136508, 
0.696963375404737, 0.556663198673657, -0.68875569454952, -0.70749515696212, 
0.36458196213683, 0.768532924515416, -0.112346212150228, 0.881107726454215
), b = c(-0.568668732818502, -0.135178615123832, 1.1780869965732, 
-1.52356680042976, 0.593946187628422, 0.332950371213518, 1.06309983727636, 
-0.304183923634301, 0.370018809916288, 0.267098790772231), c = c(33.1943176411012, 
30.1639208202477, 33.0233590742733, 28.6119107117576, 36.2990711051031, 
37.9411996955176, 30.8983355706005, 28.8675961210504, 33.7091588823272, 
31.5948361883575), d = c(78.4097065630287, 63.764559983601, 68.1384361747047, 
64.168012952684, 59.5403607467056, 65.1327537970861, 53.1702482266538, 
72.7933291693773, 64.9195200292714, 77.0356700221729), e = c(7L, 
8L, 9L, 9L, 7L, 8L, 9L, 7L, 10L, 7L), f = c(11L, 12L, 13L, 12L, 
12L, 14L, 12L, 15L, 13L, 14L)), .Names = c("a", "b", "c", "d", 
"e", "f"), row.names = c(NA, -10L), class = "data.frame")`

`farm3<-structure(list(a = c(-0.54252003099165, 1.20786780598317, 1.16040261569495, 
0.700213649514998, 1.58683345454085, 0.558486425565304, -1.27659220845804, 
-0.573265414236886, -1.22461261489836, -0.473400636439312), b = c(0.0601604404345152, 
-0.588894486259664, 0.531496192632572, -1.51839408178679, 0.306557860789766, 
-1.53644982353759, -0.300976126836611, -0.528279904445006, -0.652094780680999, 
-0.0568967778473925), c = c(30.1388999683276, 32.1263476194327, 
29.2672350543427, 32.4740863172122, 30.0362460682435, 37.3018618081179, 
34.1501224280516, 34.7305226884857, 33.152556073479, 37.0465282415583
), d = c(60.1855812763061, 61.2301316178366, 72.59369343125, 
60.0958218801378, 62.7557155383882, 61.6431524233481, 62.080042788709, 
62.3253201821406, 66.965129987607, 62.9360171063824), e = c(9L, 
8L, 6L, 9L, 8L, 9L, 8L, 9L, 8L, 6L), f = c(10L, 9L, 12L, 11L, 
12L, 15L, 14L, 12L, 13L, 9L)), .Names = c("a", "b", "c", "d", 
"e", "f"), row.names = c(NA, -10L), class = "data.frame")`

`farm4<-structure(list(a = c(-1.91435942568001, 1.17658331201856, -1.664972436212, 
-0.463530401472386, -1.11592010504285, -0.750819001193448, 2.08716654562835, 
0.0173956196932517, -1.28630053043433, -1.64060553441858), b = c(-1.23132342155804, 
0.983895570053379, 0.219924803660651, -1.46725002909224, 0.521022742648139, 
-0.158754604716016, 1.4645873119698, -0.766081999604665, -0.430211753928547, 
-0.926109497377437), c = c(33.350561303818, 31.9443205018561, 
31.0457948763685, 29.2119135576389, 27.5376190695755, 28.774423110153, 
35.0000864111417, 30.1361999156095, 27.8467194578465, 37.6078718672707
), d = c(66.5506022642347, 62.5681173945218, 70.3508982922541, 
69.3185359082496, 60.2845417106131, 77.2366147872428, 62.4698378191539, 
55.4530320987231, 63.1336023882747, 65.2452300353941), e = c(5L, 
9L, 8L, 8L, 8L, 9L, 8L, 9L, 9L, 7L), f = c(12L, 15L, 10L, 12L, 
7L, 13L, 10L, 15L, 9L, 12L)), .Names = c("a", "b", "c", "d", 
"e", "f"), row.names = c(NA, -10L), class = "data.frame")`

All of them are similar in structure. I am trying to run correlation exercises and facing the following problems: 1) Run correlation within each data frame between variables ‘a’ ‘b’, ‘c’, ‘d’, e’, 'f'

2) Run the above exercise across 4 data frames (comparing variables a, b, c, d, e,f within each data frame) and display the result in a table for farm1, farm2, farm3 and farm4. Instead of running the same commands 4 times, can I specify the function and apply it at once on all 4 data frames?

Each data frame relates to a unique farm and cannot be merged.

I referred the following posts and picked up a few things but unable to exactly address my problem.
http://stackoverflow.com/search?q=data+frame+correlation, Calculate correlation for more than two variables?, Calculate Correlations of Pairs of Columns in a Data Frame in R, Calculate correlation by aggregating columns of data frame, Pairwise Correlation Table

share|improve this question
    
a) cor(farm1[c('a', 'b; , 'c' , 'd')], use=”everything”) should work. Or cor(farm1$a,farm1[c( 'b; , 'c' , 'd')] just for correlations with a –  user20650 Mar 11 at 21:31
    
@user20650 cor(farm1[c(farm1$Dew, farm1$Temp, farm1$Hum)], use="everything") Error in [.default(farm1, c(farm1$Dew, farm1$Temp, farm1$Hum)) : only 0's may be mixed with negative subscripts –  vagabond Mar 11 at 21:35
1  
Either cor(farm1[c('Dew', 'Temp', 'Hum')], use="everything")or cor(cbind(farm1$Dew, farm1$Temp, farm1$Hum) use="everything") –  user20650 Mar 11 at 21:37
    
@user20650 yes, that answers the first part. instead of using corr.test , I can cbind . Now to apply this to all the data frames at once- I'll try writing a function. –  vagabond Mar 11 at 21:40
1  
agstudy gives a good answer below –  user20650 Mar 11 at 21:42

1 Answer 1

Very hard to give you a good answer without a reproducible example.

  1. Use mget to group your frames in the same list. The list is suitable for xxapply function. ia musing lapply here.
  2. cor can be applied to a matrix. You subset you data frame by column and create a matrix. This expects that you have numeric observations, otherwise you should filer using as.numeric

Applying this , we can this one liner code:

cols <- letters[6] ## a,b,...f
lapply(mget(ls(pattern='farm')),
     function(x)cor(as.matrix(x[,cols])))
share|improve this answer
    
I'll edit the question and add a reproducible example. apologies! –  vagabond Mar 11 at 21:41
    
ok, i've added representative sample dataframe dputted structures and removed part of question answered by @user20650 –  vagabond Mar 12 at 4:52

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.