9

R is new for me and i'm working with a (private)dataset.

I have the following problem, i have a lot of time series:

2015-04-27  12:29:48
2015-04-27  12:31:48
2015-04-27  12:34:50
2015-04-27  12:50:43
2015-04-27  12:53:55
2015-04-28  00:00:00
2015-04-28  00:00:10

All the timeseries have a value:

Datetime                   value
2015-04-27  12:29:48       0.0 
2015-04-27  12:31:48       0.0
2015-04-27  12:34:50       1.1
2015-04-27  12:50:43      45.0 
2015-04-27  12:53:55       0.0
2015-04-28  00:00:00       1.0
2015-04-28  00:00:10       2.0

I want to skip all the hours and minutes, and sum it all together like this:

Datetime      value
2015-04-27    46.1
2015-04-28     3.0

The first thing i did was transform the column datetime:

energy$datetime <- as.POSIXlt(energy$datetime)  

I tried several stuff with the summarize function:

df %>% group_by(energy$datetime) %>% summarize (energy$newname(energy$value))

But that isn't working.

I also read competitive stuff on the internet (e.g.: http://r.789695.n4.nabble.com/How-to-sum-and-group-data-by-DATE-in-data-frame-td903708.html) but it doesn't make sense to me (yep, i'm a noob).

Hopefully someone could help me!

11

Use as.Date() then aggregate().

energy$Date <- as.Date(energy$Datetime)
aggregate(energy$value, by=list(energy$Date), sum)

EDIT

Emma made a good point about column names. You can preserve column names in aggregate by using the following instead.

aggregate(energy["value"], by=energy["Date"], sum)
  • It is sometimes very helpful to name your column names. aggr_energy <-aggregate(energy$value, by=list(energy$Date), sum) colnames(aggr_energy) <- c('date', 'medium', 'pageviews') – Emma Oct 22 '17 at 5:59
  • 1
    @Emma Or even more simply, aggregate(energy["value"], by=energy["Date"], sum), should preserve the column names. – JMT2080AD Oct 23 '17 at 16:07
2

using data.table

Test$Datetime <- as.Date(Test$Datetime)
DT<- data.table(Test )
DT[,sum(value),by = Datetime]

     Datetime   V1
1: 2015-04-27 46.1
2: 2015-04-28  3.0
2

Using the tidyverse, specifically lubridate and dplyr:

library(lubridate)
library(tidyverse)

set.seed(10)
df <- tibble(Datetime = sample(seq(as.POSIXct("2015-04-27"), as.POSIXct("2015-04-29"), by = "min"), 10),
            value = sample(1:100, 10)) %>%
  arrange(Datetime)

df
#> # A tibble: 10 x 2
#>    Datetime            value
#>    <dttm>              <int>
#>  1 2015-04-27 04:04:00    35
#>  2 2015-04-27 10:48:00    41
#>  3 2015-04-27 13:02:00    25
#>  4 2015-04-27 13:09:00     5
#>  5 2015-04-27 14:43:00    57
#>  6 2015-04-27 20:29:00    12
#>  7 2015-04-27 20:34:00    77
#>  8 2015-04-28 00:22:00    66
#>  9 2015-04-28 05:29:00    37
#> 10 2015-04-28 09:14:00    58

df %>%
  mutate(date_col = date(Datetime)) %>%
  group_by(date_col) %>%
  summarize(value = sum(value))
#> # A tibble: 2 x 2
#>   date_col   value
#>   <date>     <int>
#> 1 2015-04-27   252
#> 2 2015-04-28   161

Created on 2018-08-01 by the reprex package (v0.2.0).

0

you are on the right path - try : summarise(newVal = sum(energy$value) ) for your summarise call.
df<- energy %>% group_by(datetime) %>% summarise(sum =sum(value)) )

  • When i run: df %>% group_by(energy$datetime) %>% summarize(newval =sum(energy$value)) I get an Error: Error in UseMethod("group_by_") : no applicable method for 'group_by_' applied to an object of class "function" – user5947793 Jun 1 '16 at 18:15
  • 1
    You have copied the code incorrectly. See my comment to your question. df here stands for dataframe. Is your dataframe called df? That is, is your data stored in an object called df? It looks like your data is stored in an object called energy, so use energy instead of df. – coffeinjunky Jun 1 '16 at 18:30
  • Hi - group_by() from the dplyr lib works like this: group_by(data, var,...). If you use the %>% command you put your data out front like this - data %>% group_by(variableInData). Assign this to another variable: dfGroup <- energy %>% group_by(datetime) %>% summarise(value) You do have to fix the datetime first as you did in your previous code. Cheers! Notice the <- Operator – Phil Jun 1 '16 at 18:33

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy