74

I would like to fit a model for each hour(the factor variable) using dplyr, I'm getting an error, and i'm not quite sure what's wrong.

df.h <- data.frame( 
  hour     = factor(rep(1:24, each = 21)),
  price    = runif(504, min = -10, max = 125),
  wind     = runif(504, min = 0, max = 2500),
  temp     = runif(504, min = - 10, max = 25)  
)

df.h <- tbl_df(df.h)
df.h <- group_by(df.h, hour)

group_size(df.h) # checks out, 21 obs. for each factor variable

# different attempts:
reg.models <- do(df.h, formula = price ~ wind + temp)

reg.models <- do(df.h, .f = lm(price ~ wind + temp, data = df.h))

I've tried various variations, but I can't get it to work.

2
  • 2
    One coment. Why you want to do regression in groups? Maybe better approach would be using mixed model with random effect for this group variable?
    – Maciej
    Mar 28, 2014 at 13:37
  • 1
    The main reason is that the data is affected by at at least 3 seasonalities: hourly, weekly and a monthly effect, so to get rid of some of the varians i've split it up in 24 models. It forecasts pretty well - with very simple models, but could you link to a page with more information on what you mean and why?
    – Thorst
    Mar 31, 2014 at 8:41

8 Answers 8

94

The easiest way to do this, circa May 2015 is to use broom. broom contains three functions that deal with complex returned objects from statistical operations by groups: tidy (which deals with coefficient vectors from statistical operations by groups), glance (which deals with summary statistics from statistical operations by groups), and augment (which deals with observation level results from statistical operations by groups).

Here is a demonstration of its use to extract the various results of linear regression by groups into tidy data_frames.

  1. tidy:

    library(dplyr)
    library(broom)
    
    df.h = data.frame( 
      hour     = factor(rep(1:24, each = 21)),
      price    = runif(504, min = -10, max = 125),
      wind     = runif(504, min = 0, max = 2500),
      temp     = runif(504, min = - 10, max = 25)  
    )
    
    dfHour = df.h %>% group_by(hour) %>%
      do(fitHour = lm(price ~ wind + temp, data = .))
    
    # get the coefficients by group in a tidy data_frame
    dfHourCoef = tidy(dfHour, fitHour)
    dfHourCoef
    

    which gives,

        Source: local data frame [72 x 6]
        Groups: hour
    
    hour        term     estimate   std.error  statistic     p.value
    1     1 (Intercept) 53.336069324 21.33190104  2.5002961 0.022294293
    2     1        wind -0.008475175  0.01338668 -0.6331053 0.534626575
    3     1        temp  1.180019541  0.79178607  1.4903262 0.153453756
    4     2 (Intercept) 77.737788772 23.52048754  3.3051096 0.003936651
    5     2        wind -0.008437212  0.01432521 -0.5889765 0.563196358
    6     2        temp -0.731265113  1.00109489 -0.7304653 0.474506855
    7     3 (Intercept) 38.292039924 17.55361626  2.1814331 0.042655670
    8     3        wind  0.005422492  0.01407478  0.3852630 0.704557388
    9     3        temp  0.426765270  0.83672863  0.5100402 0.616220435
    10    4 (Intercept) 30.603119492 21.05059583  1.4537888 0.163219027
    ..  ...         ...          ...         ...        ...         ...
    
  2. augment:

     # get the predictions by group in a tidy data_frame
    dfHourPred = augment(dfHour, fitHour)
    dfHourPred
    

    which gives,

    Source: local data frame [504 x 11]
    Groups: hour
    
    hour       price      wind      temp  .fitted  .se.fit     .resid       .hat   .sigma      .cooksd .std.resid
    1     1  83.8414055   67.3780 -6.199231 45.44982 22.42649  38.391590 0.27955950 42.24400 0.1470891067  1.0663820
    2     1   0.3061628 2073.7540 15.134085 53.61916 14.10041 -53.312993 0.11051343 41.43590 0.0735584714 -1.3327207
    3     1  80.3790032  520.5949 24.711938 78.08451 20.03558   2.294497 0.22312869 43.64059 0.0003606305  0.0613746
    4     1 121.9023855 1618.0864 12.382588 54.23420 10.31293  67.668187 0.05911743 40.23212 0.0566557575  1.6447224
    5     1  -0.4039594 1542.8150 -5.544927 33.71732 14.53349 -34.121278 0.11740628 42.74697 0.0325125137 -0.8562896
    6     1  29.8269832  396.6951  6.134694 57.21307 16.04995 -27.386085 0.14318542 43.05124 0.0271028701 -0.6975290
    7     1  -7.1865483 2009.9552 -5.657871 29.62495 16.93769 -36.811497 0.15946292 42.54487 0.0566686969 -0.9466312
    8     1  -7.8548693 2447.7092 22.043029 58.60251 19.94686 -66.457379 0.22115706 39.63999 0.2983443034 -1.7753911
    9     1  94.8736726 1525.3144 24.484066 69.30044 15.93352  25.573234 0.14111563 43.12898 0.0231796755  0.6505701
    10    1  54.4643001 2473.2234 -7.656520 23.34022 21.83043  31.124076 0.26489650 42.74790 0.0879837510  0.8558507
    ..  ...         ...       ...       ...      ...      ...        ...        ...      ...          ...        ...
    
  3. glance:

    # get the summary statistics by group in a tidy data_frame
    dfHourSumm = glance(dfHour, fitHour)
    dfHourSumm
    

    which gives,

    Source: local data frame [24 x 12]
    Groups: hour
    
    hour  r.squared adj.r.squared    sigma statistic    p.value df    logLik      AIC      BIC deviance df.residual
    1     1 0.12364561    0.02627290 42.41546 1.2698179 0.30487225  3 -106.8769 221.7538 225.9319 32383.29          18
    2     2 0.03506944   -0.07214506 36.79189 0.3270961 0.72521125  3 -103.8900 215.7799 219.9580 24365.58          18
    3     3 0.02805424   -0.07993974 39.33621 0.2597760 0.77406651  3 -105.2942 218.5884 222.7665 27852.07          18
    4     4 0.17640603    0.08489559 41.37115 1.9277147 0.17434859  3 -106.3534 220.7068 224.8849 30808.30          18
    5     5 0.12575453    0.02861615 42.27865 1.2945915 0.29833246  3 -106.8091 221.6181 225.7962 32174.72          18
    6     6 0.08114417   -0.02095092 35.80062 0.7947901 0.46690268  3 -103.3164 214.6328 218.8109 23070.31          18
    7     7 0.21339168    0.12599076 32.77309 2.4415266 0.11529934  3 -101.4609 210.9218 215.0999 19333.36          18
    8     8 0.21655629    0.12950699 40.92788 2.4877430 0.11119114  3 -106.1272 220.2543 224.4324 30151.65          18
    9     9 0.23388711    0.14876346 35.48431 2.7476160 0.09091487  3 -103.1300 214.2601 218.4381 22664.45          18
    10   10 0.18326177    0.09251307 40.77241 2.0194425 0.16171339  3 -106.0472 220.0945 224.2726 29923.01          18
    ..  ...        ...           ...      ...       ...        ... ..       ...      ...      ...      ...         ...
    
11
  • 1
    In R 3.2.0 with dplyr 0.4.1 and broom 0.3.6, dfHourCoef = tidy(dfHour, fitHour) gives me: Error in summary.lm(x) : length of 'dimnames' [1] not equal to array extent May 4, 2015 at 15:17
  • 1
    @azvoleff Not reproducible with [1] broom_0.3.6 dplyr_0.4.1 & R 3.2.0. May 4, 2015 at 15:43
  • 1
    Hmm... not reproducible here now either. Must have been an interaction with another package I had loaded - maybe something was masked. May 4, 2015 at 18:19
  • Is there a reason why do these calls work if dfHourSumm is a data table, but not if it is a data frame?
    – fredtal
    Feb 18, 2016 at 5:03
  • 2
    This is currently not reproducible. Getting the following errors: Error in var(if (is.vector(x) || is.factor(x)) x else as.double(x), na.rm = na.rm) : Calling var(x) on a factor x is defunct. Use something like 'all(duplicated(x)[-1L])' to test for a constant vector., Error in augment.data.frame(dfHour, fitHour) : augment's first argument should be a model, not a data.frame and Error: There is no glance method for tibbles. Did you mean dplyr::glimpse()?. Running R 4.0.2 on Linux with broom_0.7.0 and dplyr_1.0.1.
    – loki
    Sep 7, 2020 at 7:42
32

In dplyr 0.4, you can do:

df.h %>% do(model = lm(price ~ wind + temp, data = .))
1
  • The documentation says: "dplyr::do() is superseded as of dplyr 1.0.0". What is the appropriate approach now? May 2 at 1:57
24

As of mid 2020 (and updated to fit dplyr 1.0+ as of 2022-04), tchakravarty's answer will fail. In order to circumvent the new approach of broom and dpylr seem to interact, the following combination of broom::tidy, broom::augment and broom::glance can be used. We just have to use them in conjunvtion with nest_by() and summarize() (previously inside do() and later unnest() the tibble).

library(dplyr)
library(broom)
library(tidyr)

set.seed(42)
df.h = data.frame( 
  hour     = factor(rep(1:24, each = 21)),
  price    = runif(504, min = -10, max = 125),
  wind     = runif(504, min = 0, max = 2500),
  temp     = runif(504, min = - 10, max = 25)  
)

df.h %>%
  nest_by(hour) %>%
  mutate(mod = list(lm(price ~ wind + temp, data = data))) %>%
  summarize(tidy(mod))
# # A tibble: 72 × 6
# # Groups:   hour [24]
#    hour  term        estimate std.error statistic   p.value
#    <fct> <chr>          <dbl>     <dbl>     <dbl>     <dbl>
# 1  1     (Intercept) 87.4       15.8        5.55  0.0000289
# 2  1     wind        -0.0129     0.0120    -1.08  0.296    
# 3  1     temp         0.588      0.849      0.693 0.497    
# 4  2     (Intercept) 92.3       21.6        4.27  0.000466 
# 5  2     wind        -0.0227     0.0134    -1.69  0.107    
# 6  2     temp        -0.216      0.841     -0.257 0.800    
# 7  3     (Intercept) 61.1       18.6        3.29  0.00409  
# 8  3     wind         0.00471    0.0128     0.367 0.718    
# 9  3     temp         0.425      0.964      0.442 0.664    
# 10 4     (Intercept) 31.6       15.3        2.07  0.0529   

df.h %>% 
  nest_by(hour) %>%
  mutate(mod = list(lm(price ~ wind + temp, data = data))) %>% 
  summarize(augment(mod))
# # A tibble: 504 × 10
# # Groups:   hour [24]
#    hour   price  wind   temp .fitted .resid   .hat .sigma  .cooksd .std.resid
#    <fct>  <dbl> <dbl>  <dbl>   <dbl>  <dbl>  <dbl>  <dbl>    <dbl>      <dbl>
#  1 1     113.    288. -1.75     82.7  30.8  0.123    37.8 0.0359       0.877 
#  2 1     117.   2234. 18.4      69.5  47.0  0.201    36.4 0.165        1.40  
#  3 1      28.6  1438.  4.75     71.7 -43.1  0.0539   37.1 0.0265      -1.18  
#  4 1     102.    366.  9.77     88.5  13.7  0.151    38.4 0.00926      0.395 
#  5 1      76.6  2257. -4.69     55.6  21.0  0.245    38.2 0.0448       0.644 
#  6 1      60.1   633. -3.18     77.4 -17.3  0.0876   38.4 0.00749     -0.484 
#  7 1      89.4   376. -4.16     80.1   9.31 0.119    38.5 0.00314      0.264 
#  8 1       8.18 1921. 19.2      74.0 -65.9  0.173    34.4 0.261       -1.93  
#  9 1      78.7   575. -6.11     76.4   2.26 0.111    38.6 0.000170     0.0640
# 10 1      85.2   763. -0.618    77.2   7.94 0.0679   38.6 0.00117      0.219 
# # … with 494 more rows

df.h %>% 
  nest_by(hour) %>%
  mutate(mod = list(lm(price ~ wind + temp, data = data))) %>% 
  summarize(glance(mod))
# # A tibble: 24 × 13
# # Groups:   hour [24]
#    hour  r.squared adj.r.squared sigma statistic p.value    df logLik   AIC
#    <fct>     <dbl>         <dbl> <dbl>     <dbl>   <dbl> <dbl>  <dbl> <dbl>
#  1 1        0.0679       -0.0357  37.5     0.655   0.531     2  -104.  217.
#  2 2        0.139         0.0431  42.7     1.45    0.261     2  -107.  222.
#  3 3        0.0142       -0.0953  43.1     0.130   0.879     2  -107.  222.
#  4 4        0.0737       -0.0293  36.7     0.716   0.502     2  -104.  216.
#  5 5        0.213         0.126   37.8     2.44    0.115     2  -104.  217.
#  6 6        0.0813       -0.0208  33.5     0.796   0.466     2  -102.  212.
#  7 7        0.0607       -0.0437  40.7     0.582   0.569     2  -106.  220.
#  8 8        0.153         0.0592  36.3     1.63    0.224     2  -104.  215.
#  9 9        0.166         0.0736  36.5     1.79    0.195     2  -104.  216.
# 10 10       0.110         0.0108  40.0     1.11    0.351     2  -106.  219.
# # … with 14 more rows, and 4 more variables: BIC <dbl>, deviance <dbl>,
# #   df.residual <int>, nobs <int>

Credits to Bob Muenchen's Blog for inspiration on that.

4
  • 2
    Thank you so much, I just revived an old project and couldn't figured out what was going wrong! Note that your solution still fails in my R environment unless I load the library(tidyr) package as well. I tried editing your answer, but the review queue is full at the moment...
    – Gregor
    Mar 4 at 10:51
  • @Gregor thanks for the hint. I added the missing line.
    – loki
    Mar 4 at 14:20
  • The documentation says: "dplyr::do() is superseded as of dplyr 1.0.0". May 2 at 1:58
  • 1
    Thanks @climatestudent for the hint. I updated my answer to match v1.0.0
    – loki
    May 2 at 7:23
10

from the documentation for do:

.f: a function to apply to each piece. The first unnamed argument supplied to .f will be a data frame.

So:

reg.models <- do(df.h, 
                 .f=function(data){
                     lm(price ~ wind + temp, data=data)
                 })

Probably useful to also save which hour the model was fitted for:

reg.models <- do(df.h, 
                 .f=function(data){
                     m <- lm(price ~ wind + temp, data=data)
                     m$hour <- unique(data$hour)
                     m
                 })
8

I think you can use dplyr in more proper way where you don't need to define function as in @fabians anwser.

results<-df.h %.% 
group_by(hour) %.% 
do(failwith(NULL, lm), formula = price ~ wind + temp)

or

results<-do(group_by(tbl_df(df.h), hour),
failwith(NULL, lm), formula = price ~ wind + temp)

EDIT: Of course it also works without failwith

results<-df.h %.% 
    group_by(hour) %.% 
    do(lm, formula = price ~ wind + temp)


results<-do(group_by(tbl_df(df.h), hour),
lm, formula = price ~ wind + temp)
5
  • .. but i was faster ;)
    – fabians
    Mar 28, 2014 at 13:28
  • Quick follow up - when you access the model with results[[1]] the data is from "subs", so Call.f(formula = ..1, data = subs) what does this mean? I'm having trouble using the models for forecasting.
    – Thorst
    Mar 28, 2014 at 13:48
  • As I understand this is dplyr way to write calls for grouped operations (such as lm). Maybe you could change results[[1]]$call to get what you want ?
    – Maciej
    Mar 28, 2014 at 13:59
  • 1
    By the way, if you want to predict on a model object split in this way, look at this question stackoverflow.com/questions/24356683/… Jul 16, 2014 at 21:02
  • 3
    This now throws an error for me: Error: Arguments to do() must either be all named or all unnamed. Hadley's answer works for me so I'm guessing that this answer worked on a previous version of dplyr but may need updating?
    – Sam Firke
    Jun 1, 2015 at 17:48
8

I believe there's a more compact answer than loki's answer, which abandons the since replaced/superseded do():

library(dplyr)
library(broom)
library(tidyr)

h.lm <- df.h %>%
      nest_by(hour) %>%
      mutate(fitHour = list(lm(price ~ wind + temp, data = data))) %>%
      summarise(tidy_out = list(tidy(fitHour)),
                glance_out = list(glance(fitHour)),
                augment_out = list(augment(fitHour))) %>%
      ungroup()

h.lm
# # A tibble: 24 x 4
#    hour  tidy_out         glance_out        augment_out
#    <fct> <list>           <list>            <list>
#  1 1     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  2 2     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  3 3     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  4 4     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  5 5     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  6 6     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  7 7     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  8 8     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
#  9 9     <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
# 10 10    <tibble [3 × 5]> <tibble [1 × 12]> <tibble [21 × 9]>
# # … with 14 more rows

similar to their answer, in order to access, simply unnest whichever component is desired:

unnest(select(h.lm, hour, tidy_out))
# # A tibble: 72 x 6
#    hour  term        estimate std.error statistic p.value
#    <fct> <chr>          <dbl>     <dbl>     <dbl>   <dbl>
#  1 1     (Intercept) 63.2       20.9        3.02  0.00728
#  2 1     wind        -0.00237    0.0139    -0.171 0.866
#  3 1     temp        -0.266      0.950     -0.280 0.783
#  4 2     (Intercept) 65.1       23.0        2.83  0.0111
#  5 2     wind         0.00691    0.0129     0.535 0.599
#  6 2     temp        -0.448      0.877     -0.510 0.616
#  7 3     (Intercept) 65.2       17.8        3.67  0.00175
#  8 3     wind         0.00515    0.0112     0.458 0.652
#  9 3     temp        -1.87       0.695     -2.69  0.0148
# 10 4     (Intercept) 49.7       17.6        2.83  0.0111
# # … with 62 more rows
5

As of dplyr 1.0.0, group_split gives a handy shortcut for this action:

library(dplyr)
library(broom)
library(purrr)
df.h <- data.frame( 
  hour     = factor(rep(1:24, each = 21)),
  price    = runif(504, min = -10, max = 125),
  wind     = runif(504, min = 0, max = 2500),
  temp     = runif(504, min = - 10, max = 25)  
)

df.g <- group_split(df.h, hour)
map_dfr(df.g, function(x) tidy(lm(price ~ wind + temp, data=x)))
#> # A tibble: 72 x 5
#>    term        estimate std.error statistic p.value
#>    <chr>          <dbl>     <dbl>     <dbl>   <dbl>
#>  1 (Intercept) -10.4      20.3       -0.512 0.615  
#>  2 wind          0.0377    0.0117     3.23  0.00467
#>  3 temp          1.34      0.890      1.50  0.150  
#>  4 (Intercept)  34.6      18.6        1.86  0.0799 
#>  5 wind          0.0214    0.0125     1.71  0.104  
#>  6 temp          0.332     0.865      0.384 0.706  
#>  7 (Intercept)  42.5      15.3        2.79  0.0122 
#>  8 wind          0.0103    0.0116     0.888 0.386  
#>  9 temp         -0.542     0.736     -0.736 0.471  
#> 10 (Intercept)  64.1      18.8        3.41  0.00312
#> # … with 62 more rows

Created on 2021-03-04 by the reprex package (v1.0.0)

1

A few revisions of the tidyverse late the do() operator is superseded and we can fit one model per group with one line of code less.

library("broom")
library("tidyverse")

df.h <- data.frame(
  hour     = factor(rep(1:24, each = 21)),
  price    = runif(504, min = -10, max = 125),
  wind     = runif(504, min = 0, max = 2500),
  temp     = runif(504, min = -10, max = 25)
)

df.h %>%
  group_by(hour) %>%
  group_modify(
    # Use `tidy`, `glance` or `augment` to extract different information from the fitted models.
    ~ tidy(lm(price ~ wind + temp, data = .))
  )
#> # A tibble: 72 × 6
#> # Groups:   hour [24]
#>    hour  term        estimate std.error statistic  p.value
#>    <fct> <chr>          <dbl>     <dbl>     <dbl>    <dbl>
#>  1 1     (Intercept) 73.9      16.3         4.52  0.000266
#>  2 1     wind        -0.0256    0.0119     -2.15  0.0456  
#>  3 1     temp         1.72      0.861       2.00  0.0604  
#>  4 2     (Intercept) 81.5      18.4         4.42  0.000331
#>  5 2     wind        -0.0111    0.00973    -1.14  0.270   
#>  6 2     temp        -1.60      0.763      -2.09  0.0506  
#>  7 3     (Intercept) 59.9      16.1         3.73  0.00154 
#>  8 3     wind         0.00358   0.0102      0.349 0.731   
#>  9 3     temp        -1.82      0.664      -2.74  0.0134  
#> 10 4     (Intercept) 49.6      18.5         2.69  0.0151  
#> # … with 62 more rows

Created on 2022-04-20 by the reprex package (v2.0.1)

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