# What is the tidy equivalent of using `sweep` across rows?

Say I have a set of columns, named `Intercept`, `1`, `2`, `3` in my example, and a set of coefficients, named `c0` through `c3`.

``````xs<-seq(.1,1,.1)
X <- cbind(Intercept=1, "1"=xs, "2"=xs^2, "3"=xs^3)
coefs <- c(c0=10, c1=2, c2=.5, c3=-1)
``````

I want to multiply each column of X by the the corresponding coefficient.

``````sweep(
X,     # x: the data array
2,     # MARGIN: 2, to sweep across rows
coefs, # STATS: just the array of coefficients
`*`)   # FUN: the function to use is multiplication
``````

This gives what I want.

But if I had my data as a tibble (`tidyX <- as_tibble(X)`), what is the tidy way of doing this?

``````tidyX %>% ... ?
``````

It seems simple, and I imagine it involves `dplyr::rowwise()`, perhaps, but I don't see the idiomatic way of doing this.

Ah, just as soon as I finally post, I found an answer.

``````tidyX %>%
rowwise() %>%
mutate(across() * coefs)
``````

I still find this syntax nonintuitive, but that does just what I'm looking for.

If the column names are the same, we may loop `across` the columns of 'tidyX' and use the column name (`cur_column()`) to extract the corresponding column of 'coefs'. But, here the column name is different, so use `match` to get the column index, extract (`[[`) the column/element (if it is a named vector) from 'coefs' and multiply

``````library(dplyr)
tidyX %>%
mutate(across(everything(),
~ .x * coefs[[match(cur_column(), names(tidyX))]]))
``````

Or an easier option is `map2` (from `purrr`) to loop over the corresponding columns of both datasets and multiply. If we want the output as a `tibble/data.frame`, use `_dfc`

``````library(purrr)
map2_df(tidyX, coefs, `*`)
# A tibble: 10 × 4
Intercept   `1`   `2`    `3`
<dbl> <dbl> <dbl>  <dbl>
1        10   0.2 0.005 -0.001
2        10   0.4 0.02  -0.008
3        10   0.6 0.045 -0.027
4        10   0.8 0.08  -0.064
5        10   1   0.125 -0.125
6        10   1.2 0.18  -0.216
7        10   1.4 0.245 -0.343
8        10   1.6 0.32  -0.512
9        10   1.8 0.405 -0.729
10        10   2   0.5   -1
``````
• oh, that's quite nice, I often forget about purrr. Jan 25 at 15:35

Here is an alternative way using pivoting:

``````library(dplyr)
library(tidyr)

coefs <- c(c0=10, c1=2, c2=.5, c3=-1)

X %>%
as_tibble() %>%
mutate(row = row_number()) %>%
pivot_longer(
-row
) %>%
mutate(value = value*coefs) %>%
pivot_wider(
names_from = name,
values_from = value
) %>%
select(-row)
``````
``````   Intercept   `1`   `2`    `3`
<dbl> <dbl> <dbl>  <dbl>
1        10   0.2 0.005 -0.001
2        10   0.4 0.02  -0.008
3        10   0.6 0.045 -0.027
4        10   0.8 0.08  -0.064
5        10   1   0.125 -0.125
6        10   1.2 0.18  -0.216
7        10   1.4 0.245 -0.343
8        10   1.6 0.32  -0.512
9        10   1.8 0.405 -0.729
10        10   2   0.5   -1
``````
• thanks for this alternative. I still find the pivoting method intuitive, but was looking for something simpler, so I'll accept my own answer on this one. Jan 25 at 15:32