# Fitting several regression models with dplyr

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.

• 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? Mar 28, 2014 at 13:37
• 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? Mar 31, 2014 at 8:41

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_frame`s.

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
..  ...        ...           ...      ...       ...        ... ..       ...      ...      ...      ...         ...
``````
• 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
• @azvoleff Not reproducible with `[1] broom_0.3.6 dplyr_0.4.1 ` & R 3.2.0. May 4, 2015 at 15:43
• 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? Feb 18, 2016 at 5:03
• 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

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.

• 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... Mar 4, 2022 at 10:51
• @Gregor thanks for the hint. I added the missing line.
– loki
Mar 4, 2022 at 14:20
• The documentation says: "dplyr::do() is superseded as of dplyr 1.0.0". May 2, 2022 at 1:58
• Thanks @climatestudent for the hint. I updated my answer to match v1.0.0
– loki
May 2, 2022 at 7:23
• @Gregor I advise to always load the `tidyverse` metapackage: `library(tidyverse)`. Unless you are working on a 20 year old computer, the memory hit for loading all of the contained libraries is no problem at all. Oct 20, 2022 at 23:38

In dplyr 0.4, you can do:

``````df.h %>% do(model = lm(price ~ wind + temp, data = .))
``````
• The documentation says: "dplyr::do() is superseded as of dplyr 1.0.0". What is the appropriate approach now? May 2, 2022 at 1:57
• see `group_map`, `group_modify` and `group_walk` Jul 5, 2022 at 19:24

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
})
``````

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
``````

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)
``````
• .. but i was faster ;) 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. 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 ? Mar 28, 2014 at 13:59
• 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
• 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? Jun 1, 2015 at 17:48

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)

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

``````library(dplyr)
#> Warning: package 'dplyr' was built under R version 4.2.3
#>
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#>
#>     filter, lag
#> The following objects are masked from 'package:base':
#>
#>     intersect, setdiff, setequal, union
library(broom)
#> Warning: package 'broom' was built under R version 4.2.2
library(purrr)
#> Warning: package 'purrr' was built under R version 4.2.2
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)) |>
mutate(hour = x\$hour[[1]])
})
#> # A tibble: 72 × 6
#>    term          estimate std.error statistic  p.value hour
#>    <chr>            <dbl>     <dbl>     <dbl>    <dbl> <fct>
#>  1 (Intercept) 115.         25.4       4.53   0.000260 1
#>  2 wind         -0.00627     0.0129   -0.487  0.632    1
#>  3 temp         -2.57        1.26     -2.04   0.0568   1
#>  4 (Intercept)  71.0        16.6       4.28   0.000455 2
#>  5 wind          0.00262     0.0112    0.233  0.818    2
#>  6 temp         -0.824       0.834    -0.989  0.336    2
#>  7 (Intercept)  39.3        22.5       1.74   0.0984   3
#>  8 wind          0.000342    0.0137    0.0250 0.980    3
#>  9 temp         -0.248       0.964    -0.257  0.800    3
#> 10 (Intercept)  56.1        21.6       2.59   0.0184   4
#> # ℹ 62 more rows
``````

Created on 2023-05-15 with reprex v2.0.2

• The code works fine but one problem is that we are losing the group column making interpretation difficult. May 13 at 5:18
• Edited per your comment. May 15 at 12:58