Attached is some R code:

```
temp_df <- data.frame(c("A","A","A","G","G","Z","Z"),
c("B","D","E","R","S","Y","U"),
c(1.5,1.1,0.8,0.2,0.8,0.9,0.1),
c(0.8,0.4,1.5,1.2,1.2,0.2,0.3),
c(2.7,2.7,2.7,2.4,2.4,0.5,0.5),
c("YES","NO","NO","NO","NO","YES","YES"))
colnames(temp_df) <- c("PERSON_1","PERSON_2","VALUE_1",
"VALUE_2","TOTAL_2","DECISION_2")
```

What I am trying to do is create a new column called "NEW_DECISION_1" based on the following rules:

For the people in column 1 ("PERSON_1"), if the value of the corresponding values in column 5 ("TOTAL_2") is greater than or equal to 2.0 and there is a least one "YES" in the corresponding values in column 6 ("DECISION_2"), then the value for the "NEW_DECISION_1" column will be "YES", and if these criteria are not satisfied, then they will get a "NO" value.

So for the A person in column 1, since the values in column 5 is 2.7 and there is at least one "YES" in the corresponding values in column 6 then the value in the new column will be "YES".

For the G person in column 1, since the values in column 5 is 2.4 but since there are no "YES" values in the corresponding values in column 6, the value in the new column will be "NO".

For the Z person in column 1, since the values in column 5 is 1.0 and there is at least one "YES" in the corresponding values in column 6, the value in the new column will be "NO". So the new table will be:

```
temp_df$NEW_DECISION_1 <- c("YES","YES","YES","NO","NO","NO","NO")
temp_df
```

I am thinking of some sort of aggregation rule but I am not sure what function to use to search for "least one "YES"".

If you need any more information or clarification, please let me know.