5

My df is like this

  df <- data.frame(t1 = c(10, 20, 30, 1, 0), t2 = c(30, 0, 40, 0, 0), t3 = c(10, 0, 3, 10, 0))

what I want to do is to find the min in the df row but not 0 I do

df<- df%>% rowwise() %>%
  do({
    th <- c(.$t1, .$t2, .$t3,)


    data.frame(., t_s_last = min(th[th > 0))
  })

but it works but not for the rows that contain sth more than 0. how to make this returning 0 if there are just 0 in the row (row 5)?

  • Are you values are always integers >= 0 ? – David Arenburg Aug 31 '15 at 17:26
4

We can use apply with an if/else condition

 apply(df, 1, function(x) if(all(x==0)) 0 else min(x[x> 0]))

Or another option is rowMins from library(matrixStats). We replace the '0' values in the dataset with NA, use rowMins with na.rm=TRUE, and replace the 'Inf' values with 0.

 library(matrixStats)
 is.na(df) <- df==0
 v1 <- rowMins(as.matrix(df), na.rm=TRUE)
 v1[is.infinite(v1)] <- 0
 v1
 #[1] 10 20  3  1  0

We can also use the if/else within the do

library(dplyr)
df %>%
    rowwise() %>%
    do({th <- unlist(.[.>0])
       data.frame(., t_s_last = if(all(th==0)) 0 else min(th))})
#  t1 t2 t3 t_s_last
#1 10 30 10       10
#2 20  0  0       20
#3 30 40  3        3
#4  1  0 10        1
#5  0  0  0        0
| improve this answer | |
  • Thanks a lot. I like dplyr so I will mark this answer – Mateusz1981 Aug 31 '15 at 11:28
  • @Mateusz1981 No problem. Glad to help you. – akrun Aug 31 '15 at 11:29
4

I'm guessing that because you are looking for values above zero, all your values are >=0 and integers. Thus, we could play around with log transformation in order to convert all the zeroes to Inf and thus being always the largest. This will help us avoid running by row operations, rather vectorize using the minus of the max.col function

df[cbind(1:nrow(df), max.col(-abs(log(df))))]
## [1] 10 20  3  1  0
| improve this answer | |
  • taking absolute value of the log will screw up the ordering - compare abs(log(0.2)) vs abs(log(1.2)) – eddi Aug 31 '15 at 15:22
  • @eddi that only true for non-integer values. I've edited the answer – David Arenburg Aug 31 '15 at 16:39
  • Doesn't have to be integers, just need to have no numbers between 0 and 1. Maybe you can fix with smth like log(df) + 1000 - I think that covers the smallest numbers R can represent. – eddi Aug 31 '15 at 18:17
  • Yeah I know that, but restricting to x in (0 | >=1) seems awkward to me. I'm guessing OP has integers >= 0 (I'e asked him). If not, I'll probably delete as this is getting ridiculously specific – David Arenburg Aug 31 '15 at 18:22
0

Here is another approach that uses dplyr and tidyr. A bit longer than answer from @akrun. But possibly more readable without the use of do:

library(dplyr)
library(tidyr)

df %>%
  mutate(id = row_number()) %>%
  gather(time, value, t1:t3) %>%
  group_by(id) %>%
  mutate(ts = ifelse(all(value == 0), 0, min(value[value != 0])))  %>%
  spread(time, value)
| improve this answer | |

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