Hi, I need your help to change the values in one data frame based on the other one. For example, there are data frame A and B. A has more species than B, but with the same samples. Now I want to change the value in data frame A to: 1) "No" for the species(values) that are not in data frame B or are na in data frame B for each sample; 2) "Yes" for the species that are not "NA" in data frame B.

The real data has many species.

Data frame A

       species1 species2    species3    species4    species5    species6
sample1 0.5       0.3          0          0.5          0           0.5
sample2 0.6       0.5          0          0.5          0.5         0
sample3 0.7       0.7          0          0            0           0
sample4 0.8       0.9          0.5        0.5          0           0
sample5 0.9       1.1          0.5        0.3          0           0.5

Data frame B

        species2    species5    species3
sample1   NA          0.3         NA
sample2   NA          0.5         NA
sample3   0.7         NA          0.2
sample4   0.8         0.9         0.5
sample5   NA          NA          0.5

The expected result likes below:

       species1 species2    species3    species4    species5    species6
sample1 No        No          No           No          Yes         No
sample2 No        No          No           No          Yes         No
sample3 No        Yes         Yes          No          No          No
sample4 No        Yes         Yes          No          Yes         No
sample5 No        No          Yes          No          No          No

Thank you very much.

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  • I still don't get why Species 3 is yes yes yes, are you matching values or some other criteria? Given only two values exist in both data sets, shouldn't there be two yes values? – NelsonGon Jul 6 '19 at 13:49
  • The question has been updated. Thank you. – Bio_farmer Jul 6 '19 at 18:36

With dplyr, base and purrr:

rep_at <- setdiff(names(df1),names(df2))
df1 %>% 
  mutate_at(vars(rep_at),function(x) x="No") -> df1
replacements <- as.data.frame(purrr::map(df2,function(y) 
    ifelse(is.na(y), "no","yes")),
 df1[,match(names(replacements),names(df1))] <- replacements


    species1 species2 species3 species4 species5 species6
1       No       no       no       No      yes       No
2       No       no       no       No      yes       No
3       No      yes      yes       No       no       No
4       No      yes      yes       No      yes       No
5       No       no      yes       No       no       No
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  • 1
    Thank you very much. However, may I ask why the row names changed to the number after the step of mutate_at? – Bio_farmer Jul 6 '19 at 18:35
  • Been several hours, don't remember them changing. Could you please elaborate how they changed? – NelsonGon Jul 6 '19 at 18:36
  • @Bio_farmer You mean sample1,sample2,etc? – NelsonGon Jul 6 '19 at 18:39
  • Currently can't access my PC. You can solve that by setting the result bask to [] as shown here: stackoverflow.com/questions/40968821/… – NelsonGon Jul 6 '19 at 18:48
  • 1
    Thank you very much. All the errors have been solved. The names of the two data set are not totally consistent. Thank you again. – Bio_farmer Jul 6 '19 at 22:22

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