I have a following dataframe in r

   name    date         month    year     hours
   SSI     01-01-2016   01       2016      2000
   SSI     02-01-2016   01       2016      1900
   SSI     03-01-2016   01       2016      2038
   SSI     04-01-2016   01       2016      2041
   SSII    01-01-2016   01       2016      2000
   SSII    02-01-2016   01       2016      2100
   SSII    03-01-2016   01       2016      2105
   SSII    04-01-2016   01       2016      2203

I want to calculate lag of hours for every name group by month and year.Which I can do it with following code

  df1 <- df %>% 
    group_by(name,year,month) %>% 
    mutate(running_hrs = hours- lag(hours)) %>% 
    as.data.frame()

What I want is where running_hrs is greater than 24 or less than 0,I want to cap those values with mean of that month. I am doing following.

  new_df <- df%>% 
    group_by(name,year,month) %>% 
    mutate(running_hrs = hours- lag(hours)) %>% 
    mutate(running_hrs_new = ifelse(running_hrs > 24 | running_hrs < 0,mean(running_hrs),running_hrs)) %>% 
    as.data.frame()

   name    date         month   year    hours   running_hrs running_hrs_new
   SSI     01-01-2016   01      2016    2000        NA         
   SSI     02-01-2016   01      2016    1900       -100            (3/4)
   SSI     03-01-2016   01      2016    2038        138            (3/4)
   SSI     04-01-2016   01      2016    2041        3                3   
   SSII    01-01-2016   01      2016    2000        NA           
   SSII    02-01-2016   01      2016    2100        100            (10/4) 
   SSII    03-01-2016   01      2016    2105        5                5   
   SSII    04-01-2016   01      2016    2110        5                5

Values should be replaced by mean of running hours less than 24 and greater than or equal to zero. I think we can use conditional mean

up vote 1 down vote accepted

Hope this helps!

library(dplyr)
library(tidyr)

new_df <- df%>% 
  group_by(name,year,month) %>% 
  mutate(running_hrs = hours- lag(hours)) %>% 
  mutate(valid_running_hrs= ifelse(running_hrs < 24 & running_hrs > 0,running_hrs,0)) %>%
  replace_na(list(valid_running_hrs=0)) %>%
  group_by(name,year,month) %>%
  mutate(running_hrs_new = ifelse(running_hrs > 24 | running_hrs < 0, mean(valid_running_hrs), running_hrs)) %>%
  as.data.frame()

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.