pixiedust

After tidying up your analyses with the broom package, go ahead and grab the pixiedust. Customize your table output and write it to markdown, HTML, LaTeX, or even just the console. pixiedust makes it easy to customize the appearance of your tables in all of these formats by adding any number of “sprinkles”, much in the same way you can add layers to a ggplot.

fit <- lm(mpg ~ qsec + factor(am) + wt + factor(gear), data = mtcars)
library(pixiedust)
dust(fit) %>% 
  sprinkle(col = 2:4, round = 3) %>% 
  sprinkle(col = 5, fn = quote(pvalString(value))) %>% 
  sprinkle_colnames(term = "Term", 
                    estimate = "Estimate", 
                     std.error = "SE",
                     statistic = "T-statistic", 
                     p.value = "P-value") %>%
  sprinkle_print_method("console")
#>            Term Estimate    SE T-statistic P-value
#> 1   (Intercept)    9.365 8.373       1.118    0.27
#> 2          qsec    1.245 0.383       3.252   0.003
#> 3   factor(am)1    3.151 1.941       1.624    0.12
#> 4            wt   -3.926 0.743      -5.286 < 0.001
#> 5 factor(gear)4   -0.268 1.655      -0.162    0.87
#> 6 factor(gear)5    -0.27 2.063      -0.131     0.9

Customizing with Sprinkles

Tables can be customized by row, column, or even by a single cell by adding sprinkles to the dust object. The table below shows the currently planned and implemented sprinkles. In the “implemented” column, an ‘x’ indicates a customization that has been implemented, while a blank cell suggests that the customization is planned but has not yet been implemented. In the remaining columns, an ‘x’ indicates that the sprinkle is already implemented for the output format; an ‘o’ indicates that implementation is planned but not yet completed; and a blank cell indicates that the sprinkle will not be implemented (usually because the output format doesn’t support the option).

sprinkle implemented console markdown html latex
bg x x x
bg_pattern x x x
bg_pattern_by x x x
bold x x x x x
bookdown x x
border_collapse x x x
border x x x
border_thickness x x x
border_units x x x
border_style x x x
border_color x x x
caption x x x x x
colnames x x x x x
discrete x x x
discrete_colors x x x
float x x
fn x x x x x
font_color x x x
font_family x x
font_size x x x
font_size_units x x x
gradient x x x
gradient_colors x x x
gradient_cut x x x
gradient_n x x x
gradient_na x x x
halign x x x
height x x x
height_units x x x
hhline x x
italic x x x x x
justify x x x
label x x x
longtable x x x x x
merge x x x x x
na_string x x x x x
padding x x
replace x x x x x
round x x x x x
rotate_degree x x x
sanitize x
sanitize_args x
tabcolsep x
valign x x x
width x x x
width_units x x x

A Brief Example

To demonstrate, let’s look at a simple linear model. We build the model and generate the standard summary.

fit <- lm(mpg ~ qsec + factor(am) + wt + factor(gear), data = mtcars)

summary(fit)
#> 
#> Call:
#> lm(formula = mpg ~ qsec + factor(am) + wt + factor(gear), data = mtcars)
#> 
#> Residuals:
#>     Min      1Q  Median      3Q     Max 
#> -3.5064 -1.5220 -0.7517  1.3841  4.6345 
#> 
#> Coefficients:
#>               Estimate Std. Error t value Pr(>|t|)    
#> (Intercept)     9.3650     8.3730   1.118  0.27359    
#> qsec            1.2449     0.3828   3.252  0.00317 ** 
#> factor(am)1     3.1505     1.9405   1.624  0.11654    
#> wt             -3.9263     0.7428  -5.286 1.58e-05 ***
#> factor(gear)4  -0.2682     1.6555  -0.162  0.87257    
#> factor(gear)5  -0.2697     2.0632  -0.131  0.89698    
#> ---
#> Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> 
#> Residual standard error: 2.55 on 26 degrees of freedom
#> Multiple R-squared:  0.8498, Adjusted R-squared:  0.8209 
#> F-statistic: 29.43 on 5 and 26 DF,  p-value: 6.379e-10

While the summary is informative and useful, it is full of “stats-speak” and isn’t necessarily in a format that is suitable for publication or submission to a client. The broom package provides the summary in tidy format that, serendipitously, it a lot closer to what we would want for formal reports.

library(broom)
tidy(fit)
#> # A tibble: 6 × 5
#>   term          estimate std.error statistic   p.value
#>   <chr>            <dbl>     <dbl>     <dbl>     <dbl>
#> 1 (Intercept)      9.37      8.37      1.12  0.274    
#> 2 qsec             1.24      0.383     3.25  0.00317  
#> 3 factor(am)1      3.15      1.94      1.62  0.117    
#> 4 wt              -3.93      0.743    -5.29  0.0000158
#> 5 factor(gear)4   -0.268     1.66     -0.162 0.873    
#> 6 factor(gear)5   -0.270     2.06     -0.131 0.897

It has been observed by some, however, that even this summary isn’t quite ready for publication. There are too many decimal places, the p-value employ scientific notation, and column titles like “statistic” don’t specify what type of statistic. These kinds of details aren’t the purview of broom, however, as broom is focused on tidying the results of a model for further analysis (particularly with respect to comparing slightly varying models).

The pixiedust package diverts from broom’s mission here and provides the ability to customize the broom output for presentation. The initial dust object returns a table that is similar to the broom output.

library(pixiedust)
dust(fit) %>%
  sprinkle_print_method("console")
#>            term   estimate std.error  statistic   p.value
#> 1   (Intercept)  9.3650443 8.3730161  1.1184792 0.2735903
#> 2          qsec  1.2449212 0.3828479  3.2517387 0.0031681
#> 3   factor(am)1  3.1505178 1.9405171  1.6235455 0.1165367
#> 4            wt -3.9263022 0.7427562 -5.2861251  1.58e-05
#> 5 factor(gear)4  -0.268163 1.6554617 -0.1619868 0.8725685
#> 6 factor(gear)5 -0.2697468 2.0631829  -0.130743  0.896985

Where pixiedust shows its strength is the ease of which these tables can be customized. The code below rounds the columns estimate, std.error, and statistic to three decimal places each, and then formats the p.value into a format that happens to be one that I like.

x <- dust(fit) %>% 
  sprinkle(col = 2:4, round = 3) %>% 
  sprinkle(col = 5, fn = quote(pvalString(value))) %>%
  sprinkle_print_method("console")
x
#>            term estimate std.error statistic p.value
#> 1   (Intercept)    9.365     8.373     1.118    0.27
#> 2          qsec    1.245     0.383     3.252   0.003
#> 3   factor(am)1    3.151     1.941     1.624    0.12
#> 4            wt   -3.926     0.743    -5.286 < 0.001
#> 5 factor(gear)4   -0.268     1.655    -0.162    0.87
#> 6 factor(gear)5    -0.27     2.063    -0.131     0.9

Now we’re almost there! Let’s change up the column names, and while we’re add it, let’s add some “bold” markers to the statistically significant terms in order to make them stand out some (I say “bold” because the console output doesn’t show up in bold, but with the markdown tags for bold text. In a rendered table, the text would actually be rendered in bold).

x <- x %>% 
  sprinkle(col = c("estimate", "p.value"), 
           row = c(2, 4), 
           bold = TRUE) %>% 
  sprinkle_colnames(term = "Term", 
                estimate = "Estimate", 
                std.error = "SE",
                statistic = "T-statistic", 
                p.value = "P-value") %>%
  sprinkle_print_method("console")

x
#>            Term   Estimate    SE T-statistic     P-value
#> 1   (Intercept)    9.365   8.373       1.118      0.27  
#> 2          qsec  **1.245** 0.383       3.252   **0.003**
#> 3   factor(am)1    3.151   1.941       1.624      0.12  
#> 4            wt **-3.926** 0.743      -5.286 **< 0.001**
#> 5 factor(gear)4   -0.268   1.655      -0.162      0.87  
#> 6 factor(gear)5    -0.27   2.063      -0.131       0.9

A cool, free tip!

The markdown output from pixiedust is somewhat limited due to the limitations of Rmarkdown itself. If/when more features become available for Rmarkdown output, I’ll be sure to include them. But what can you do if you really want all of the flexibility of the HTML tables but need the MS Word document?

With a little help from the Gmisc package, you can have the best of both worlds. Gmisc isn’t available on CRAN yet, but if you’re willing to install it from GitHub, you can render a docx file. Install Gmisc with

install.packages("Gmisc")

Then use in your YAML header

---
output: Gmisc::docx_document
---

When you knit your document, it knits as an HTML file, but I’ve had no problems with the rendering when I right-click the file and open with MS Word.

Read more at http://gforge.se/2014/07/fast-track-publishing-using-rmarkdown/ (but note that this blog post was written about the Grmd package before it was moved into the Gmisc package).