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I have the percent coverage of n different vegetation types for 7 different individuals. I want to test for differences in the proportion of each vegetation type across individuals. i.e. is the vegetation composition different for each individual animal.

My data are here:

Data <- structure(list(IndID = structure(1:7, .Label = c("P06", "P07", 
"P08", "P09", "P10", "P12", "P13"), class = "factor"), Veg_V5 = c(0.045766316507, 
0.047303689688, 0.056893590139, 0.084802462906, 0.014449872446, 
0.09738444453, 0.064187261724), Veg_V9 = c(0.027242512682, 0.01079714987, 
0.012227657897, 0.026879196141, 0.021744009456, 0.029065982461, 
0.024820709696), Veg_V10 = c(0.002943062934, 0, 0, 0.001453619133, 
0.008588378756, 0.002336001225, 0.002511397265), Veg_V22 = c(0.003658113678, 
0.045570323716, 0.014352618087, 0.016906270086, 2.6184082e-05, 
0.006985026615, 0.020037857581), Veg_V30 = c(0.044989888016, 
0.157895085047, 0.098651407329, 0.049046292964, 0.016522155474, 
0.023712327193, 0.033410648111), Veg_V36 = c(0.301082396555, 
0.168989950447, 0.237744931683, 0.183522585412, 0.549495395342, 
0.162585685291, 0.113300807806), Veg_V38 = c(0.001445445925, 
0.02179277676, 0.008123926425, 0.003347045588, 0.000179547988, 
0.00297935894, 0.005683969181), Veg_V42 = c(0.063734651727, 0.127944902779, 
0.157800483468, 0.088456921086, 0.042171333667, 0.09721594608, 
0.20011730518), Veg_V46 = c(0.145959349519, 0.007588438052, 0.014483143897, 
0.171957277954, 0.06263606371, 0.186129514035, 0.120301794236
), Veg_V48 = c(0.110133159021, 0.020085874391, 0.064156046217, 
0.083554457713, 0.157755350904, 0.090943208364, 0.045370444427
), Veg_V50 = c(0.001423963713, 5.2927205e-05, 0.000297598847, 
0.000977251683, 0.001642115973, 0.003239765634, 0.000373243755
), Veg_V58 = c(0.016387858254, 0, 0.000125304778, 0.007978368047, 
0.020808863686, 0.014659365067, 0.009144471993), Veg_V62 = c(0.008344304605, 
0.018028329287, 0.016555893762, 0.039039847447, 0.001369053408, 
0.040562172098, 0.074840704897), Veg_V71 = c(0.002301665485, 
0.003784295175, 0.004443098578, 0.002252495537, 0.000834150027, 
0.001799869797, 0.000538537418), Veg_V79 = c(0.006720863217, 
0.003810758778, 0.003988868759, 0.008653984679, 0.000796744196, 
0.023176195765, 0.013575408569), Veg_V82 = c(0.035850741597, 
0.004082010705, 0.008061274036, 0.026926321733, 0.016492230809, 
0.030038678053, 0.021861419926), Veg_V86 = c(0.000564675266, 
0.004366494433, 0.003498091713, 0.000838080086, 0, 9.9567265e-05, 
0.00046922072), Veg_V114 = c(0.065990283903, 0.009679062659, 
0.014723311388, 0.065269827484, 0.015530900957, 0.05101673496, 
0.04312031779), Veg_V118 = c(0.003670389227, 0, 0, 0.000790739684, 
0.0007518572, 0.002083253552, 0.002596710123)), .Names = c("IndID", 
"Veg_V5", "Veg_V9", "Veg_V10", "Veg_V22", "Veg_V30", "Veg_V36", 
"Veg_V38", "Veg_V42", "Veg_V46", "Veg_V48", "Veg_V50", "Veg_V58", 
"Veg_V62", "Veg_V71", "Veg_V79", "Veg_V82", "Veg_V86", "Veg_V114", 
"Veg_V118"), class = "data.frame", row.names = c(NA, -7L))

A look like this:

  IndID     Veg_V5     Veg_V9     Veg_V10      Veg_V22    Veg_V30   Veg_V36
1   P06 0.04576632 0.02724251 0.002943063 3.658114e-03 0.04498989 0.3010824
2   P07 0.04730369 0.01079715 0.000000000 4.557032e-02 0.15789509 0.1689900
3   P08 0.05689359 0.01222766 0.000000000 1.435262e-02 0.09865141 0.2377449
4   P09 0.08480246 0.02687920 0.001453619 1.690627e-02 0.04904629 0.1835226
5   P10 0.01444987 0.02174401 0.008588379 2.618408e-05 0.01652216 0.5494954
6   P12 0.09738444 0.02906598 0.002336001 6.985027e-03 0.02371233 0.1625857
      Veg_V38    Veg_V42     Veg_V46    Veg_V48      Veg_V50      Veg_V58
1 0.001445446 0.06373465 0.145959350 0.11013316 0.0014239637 0.0163878583
2 0.021792777 0.12794490 0.007588438 0.02008587 0.0000529272 0.0000000000
3 0.008123926 0.15780048 0.014483144 0.06415605 0.0002975988 0.0001253048
4 0.003347046 0.08845692 0.171957278 0.08355446 0.0009772517 0.0079783680
5 0.000179548 0.04217133 0.062636064 0.15775535 0.0016421160 0.0208088637
6 0.002979359 0.09721595 0.186129514 0.09094321 0.0032397656 0.0146593651
      Veg_V62     Veg_V71      Veg_V79     Veg_V82      Veg_V86    Veg_V114
1 0.008344305 0.002301665 0.0067208632 0.035850742 5.646753e-04 0.065990284
2 0.018028329 0.003784295 0.0038107588 0.004082011 4.366494e-03 0.009679063
3 0.016555894 0.004443099 0.0039888688 0.008061274 3.498092e-03 0.014723311
4 0.039039847 0.002252496 0.0086539847 0.026926322 8.380801e-04 0.065269827
5 0.001369053 0.000834150 0.0007967442 0.016492231 0.000000e+00 0.015530901
6 0.040562172 0.001799870 0.0231761958 0.030038678 9.956727e-05 0.051016735
      Veg_V118
1 0.0036703892
2 0.0000000000
3 0.0000000000
4 0.0007907397
5 0.0007518572
6 0.0020832536

Because I want to test for differences in veg type as a function of individual, I do not think the simple code below is correct.

chisq.test(Data[,c(2:20)])

Any thoughts or suggestions would be greatly appreciated. Also, as this post has stats themes rather the solely tech, I was not sure if I should post here orthe Exchange.

EDIT: Change Data Format

using the melt() function I can restructure the data to this:

library(reshape) test <- melt(Data,id.vars=c(1), measure.vars=c(2:20)) test <- test[,c(2,3)]

> head(test)
  variable      value
1   Veg_V5 0.04576632
2   Veg_V5 0.04730369
3   Veg_V5 0.05689359
4   Veg_V5 0.08480246
5   Veg_V5 0.01444987
6   Veg_V5 0.09738444

Now with IndID excluded, can I test for differences in the test$value for each level of the test$variable? I am interested in variation within the factor level not across, so a chi-sq test seems more appropriate that ANOVA.

test$variable is a factor with 19 levels each of which has 7 observations.

Now, with multiple observations for each factor level, how can I test for differences with in each factor?

Thanks

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1 Answer 1

up vote 1 down vote accepted

In this case, chisq.test() considers Data to be a contingency table so you are not answering the question you are interested in.

From what I understand of your question, you are comparing one measurement from an individual to another measurement from another individual. The problem is that for each individual you only have one measurement and therefore you have no way to estimate the variance of the estimated proportion. I would recommend you consider what your hypothesis is and find the best test that fits it given your limited data.

share|improve this answer
    
I am trying to test if there are differences in the proportions within each column. I.e. within column 2 (Veg_V5) are the six proportions different? However, as you say, this might not be possible given the limited data. –  B. Davis Feb 4 '14 at 20:28
2  
Unfortunately, that is not possible without multiple observations per subject. –  Christopher Louden Feb 4 '14 at 20:29
    
If you are still watching this post, I have changed my data structure and my question to address your comments. –  B. Davis Feb 4 '14 at 21:36
1  
You still have the problem of only one observation per subject. If you have multiple measurements for each IndID for each level of variable, you could make inferences about within factor level differences. –  Christopher Louden Feb 4 '14 at 21:40
    
Sorry I was not more clear. I have changed my edits to exclude IndID. I am no longer interested IndID. I am simply trying to test for differences in test$value for each level of test$variable. Thanks for your continued help! –  B. Davis Feb 4 '14 at 21:49

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