This is different from the marked duplicate because I have to dynamically merge the column values removing NA, while merging

I can't use datatxt1 or datatxt2 as merging columns since (as I outline below) df1 and df2 come in from a function that may or may not contain those columns. The data sample below is a sample of what the data could be, not a finality. This is the issue with answers below

Original Question

How do I get any join or merge command to a(if a column exists in two sets: combine columns overriding NA if a value exists in either vector but merging equal values in each vector, b(exists in one set: keep the column as is including NA in the output, or c(doesn't exist in either set: not include in the output. I have one consistent column every time in both sets to index and merge on (ID_2 in the data examples).

Basically I need to merge on ID_2 two sets accounting for the possibility of combining columns, and those needing to be combined before the merge.

Say I Have Data Like This:

 df1 <- data.frame(
        ID_2=c("5", "9", "20", "6", "8"),
        datatxt1=c("data1","data2","data3","data4","data5"),
        datatxt2=c("text1","text2","text3","text4","text5"),
        datan= c(1,2,3,4,5),
        stringsAsFactors = FALSE
                       )

df2 <- data.frame(
        ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
        datatxt1=c(rep("NA",20), rep("data2",20), rep("data4",20)),
        datatxt2=c(rep("text1",20), rep("text2",20), rep("text4",20)),
        adddatan= c(rep(500,20),rep(400,20),rep(300,20)),
        stringsAsFactors = FALSE
                       )         

What is the JOIN or MERGE command that will give me data like this?

df.desired <- data.frame(
                ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
                datatxt1=c(rep("data1",20), rep("data2",20), rep("data4",20)),
                datatxt2=c(rep("text1",20), rep("text2",20), rep("text4",20)),
                datan=c(rep(1,20), rep(2,20), rep(4,20)),
                adddatan= c(rep(500,20),rep(400,20),rep(300,20)),
                stringsAsFactors = FALSE
                   )  

Reasoning:

1.In a larger function I have a data frame being loaded within the function. I won't always have datapoints within common columns (so I can't merge on them), but I'd like to keep them if I have them in both but correct them based on the lookup, and keep one column name with the data together while merging on a separate common column.

UPDATE

Additional data examples where I also need it to work at the request of clarification. I also need it to work where datatxt1 is the complete column, both are incomplete, one column is missing, or both are missing

##Supplemental Example 1

df3 <- data.frame(
  ID_2=c("5", "9", "20", "6", "8"),
  datatxt1=c("data1","data2","data3","data4","data5"),
  datatxt2=c("text1","text2","text3","text4","text5"),
  datan= c(1,2,3,4,5),
  adddatan= c(NA,200,100,300,500),
  stringsAsFactors = FALSE
)


df4 <- data.frame(
  ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
  datatxt1=c(rep("data1",20), rep("data2",20), rep("data4",20)),
  datatxt2=c(rep("text1",20), rep(NA,20), rep("text4",20)),
  adddatan= c(rep(500,20),rep(NA,20),rep(300,20)),
  stringsAsFactors = FALSE
)         



df.desired34 <- data.frame(
  ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
  datatxt1=c(rep("data1",20), rep("data2",20), rep("data4",20)),
  datatxt2=c(rep("text1",20), rep("text2",20), rep("text4",20)),
  datan=c(rep(1,20), rep(2,20), rep(4,20)),
  adddatan= c(rep(500,20),rep(200,20),rep(300,20)),
  stringsAsFactors = FALSE
)  

###Supplemental Example 2


df5 <- data.frame(
  ID_2=c("5", "9", "20", "6", "8"),
  datatxt1=c("data1","data2","data3","data4","data5"),
  datan= c(1,2,3,4,5),
  adddatan= c(100,200,300,NA,500),
  stringsAsFactors = FALSE
)


df6 <- data.frame(
  ID_2=c(rep("20",20),rep( "6",20), rep("8",20)),
  datatxt2=c(rep("text3",20), rep(NA,20), rep("text5",20)),
  adddatan= c(rep(300,20),rep(NA,20),rep(500,20)),
  stringsAsFactors = FALSE
)         



df.desired56 <- data.frame(
  ID_2=c(rep("20",20),rep( "6",20), rep("8",20)),
  datatxt1=c(rep("data3",20), rep("data4",20), rep("data5",20)),
  datatxt2=c(rep("text3",20), rep(NA,20), rep("text5",20)),
  datan=c(rep(3,20), rep(4,20), rep(5,20)),
  adddatan= c(rep(300,20),rep(NA,20),rep(500,20)),
  stringsAsFactors = FALSE
) 

##Supplemental Example 3

df7 <- data.frame(
  ID_2=c("5", "9", "20", "6", "8"),
  datatxt1=c("data1","data2","data3",NA,"data5"),
  datan= c(1,2,3,4,5),
  adddatan= c(100,200,300,400,500),
  stringsAsFactors = FALSE
)


df8 <- data.frame(
  ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
  datatxt1=c(rep("data1",20), rep("data2",20), rep(NA,20)),
  adddatan= c(rep(100,20),rep(200,20),rep(400,20)),
  stringsAsFactors = FALSE
)         



df.desired78 <- data.frame(
  ID_2=c(rep("5",20),rep( "9",20), rep("6",20)),
  datatxt1=c(rep("data1",20), rep("data2",20), rep(NA,20)),
  datan=c(rep(1,20), rep(2,20), rep(4,20)),
  adddatan= c(rep(100,20),rep(200,20),rep(400,20)),
  stringsAsFactors = FALSE
)  
  • Are you trying to join on datatxt1 without adding the rest of the non-common columns in the end results? – tigerloveslobsters Mar 9 at 1:36
  • 1
    May be you are looking for semi_join – akrun Mar 9 at 1:57
  • A dplyr::left_join will by default act on as many columns as the datasets have in common, if you don't specify using by =. If each set has ID_2, datatxt1 and datatxt2, it will join on those. If one set has datatxt2 missing, it will join on the two common columns. So it sounds like what you want happens by default anyway? – neilfws Mar 9 at 3:40
  • @neilfws, yes, but if there is a column like datatxt1 that is half incomplete it'll try to merge on that and it'll end up incomplete on the merge, but I also don't know for sure that datatxt1 even exists, so completing the case is an interesting problem prior to merging – Neal Barsch Mar 9 at 3:42

It looks like you are looking for a dynamic join, if you are trying to determine whether to join on datatxt1 or datatxt2, below should be a minimal example I can think of to do it.

library(sqldf)

if (sum(is.na(df2$datatxt1)) > sum(is.na(df2$datatxt2))) {
  desire <- sqldf("select a.*,b.adddatan from df1 a join df2 b on a.id_2=b.id_2 and a.datatxt2=b.datatxt2")
} else {
  desire <- sqldf("select a.*,b.adddatan from df1 a join df2 b on 
a.id_2=b.id_2 and a.datatxt1=b.datatxt1")
}
  • Thanks for this, but this is the same issue as the above answer. I don't know that datatxt2 will be complete and datatxt1 will be the column that needs fixing of NA values via df1. It could be the other way around, or I could have neither column, thus I can't merge on those columns – Neal Barsch Mar 9 at 3:28
  • np. Don't know if the updated helps. – tigerloveslobsters Mar 9 at 3:41

I don't quite understand your expected output. For example, what's the logic behind the rows with ID_2 == 20 in df.desired? The other column values do not seem to match any entries in df1. Could you please double-check that your expected output is correct.

That aside, this almost reproduces your expected outcome:

library(tidyverse);
df <- df2 %>%
    left_join(df1, by = c("ID_2", "datatxt2")) %>%
    select(ID_2, datatxt1.y, datatxt2, datan, adddatan) %>%
    rename(datatxt1 = datatxt1.y)

Explanation: Do a left_join of df2 and df1, then select and rename columns to be consistent with your expected outcome. Note that datatxt1 = datatxt1.y replaces datatxt1 entries from df2 with entries from df1.


Update

Merge only on ID_2, and then fill datatxt2 conditional on whether datatxt2 is not NA in df1 or df2.

df <- df2 %>%
    left_join(df1, by = c("ID_2")) %>%
    mutate(datatxt2 = ifelse(is.na(datatxt2.x), datatxt2.y, datatxt2.x)) %>%
    select(ID_2, datatxt1.y, datatxt2, datan, adddatan) %>%
    rename(datatxt1 = datatxt1.y);

df is identical to df.desired.

  • Sorry, that's a typo, ID was supposed to be consistent and wasn't with the 20, maybe more clear with the edit. – Neal Barsch Mar 9 at 3:18
  • @NealBarsch So my solution does in fact reproduce your expected output, or am I missing something? df is the same as df.desired after your edit. – Maurits Evers Mar 9 at 3:19
  • while it does in the exact example above, it doesn't quite for what I'm looking for. One problem I have is I don't know the complete cases, so I don't know that datatxt2 is complete while datatxt1 is not, so I can't know ahead of time that I should merge with datatxt2 as one of the merge columns – Neal Barsch Mar 9 at 3:23
  • 1
    @NealBarsch I don't understand. It's difficult to help if the sample data you provide is not representative of your actual problem. Based on your sample data as it is, a simple left_join reproduces your expected output. Can you please edit your question to give representative and minimal sample data, otherwise this will turn into guess work. – Maurits Evers Mar 9 at 3:27
  • It is representative, I just can't use datatxt1 or datatxt2 as a merge column as your function does because the merging df's (represented by df1 and df2) come in from a function with differing columns. There could be one or both of datatxt1 and datatxt2 or both could be missing, thus I can't merge with them and can only merge on ID which I know will be consistent – Neal Barsch Mar 9 at 3:29

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