1 Goals for Lab 02

  • Review dplyr functions learned in last lab and DataCamp course
  • Practice using dplyr functions to get to know a new dataset
  • Map global plot aesthetics to variables in ggplot2
  • Create facetted plots with ggplot2

2 Inspiration + data

We’ll use data from the Museum of Modern Art (MoMA)

3 Packages needed

library(here) # to set file path if working from local file
library(tidyverse) # readr, ggplot2, dplyr

4 Read in the data

Note! This is not the original data- I did a lot of cleaning and decision-making in the pre-processing. The below contains only paintings and drawings in the MoMA collection.

Use this code chunk to read in the data available at http://bit.ly/cs631-moma:

library(readr)
moma <- read_csv("http://bit.ly/cs631-moma")

I called my cleaned data artworks-cleaned.csv, and stored it in a folder called data. You can use this code if you want to read in the local CSV file.

library(here)
library(readr)
library(dplyr)
moma <- read_csv("http://bit.ly/cs631-moma")

5 Know your data

Challenge #1:

Try to answer all of these questions using dplyr. Answers are below but try them on your own first!

  1. How many paintings (rows) are in moma? How many variables (columns) are in moma?
  2. What is the first painting acquired by MoMA? Which year? Which artist? What title?
  3. What is the oldest painting in the collection? Which year? Which artist? What title?
  4. How many distinct artists are there?
  5. Which artist has the most paintings in the collection? How many paintings are by this artist?
  6. How many paintings by male vs female artists?

If you want more:

  1. How many artists of each gender are there?
  2. In what year were the most paintings acquired? Created?
  3. In what year was the first painting by a (solo) female artist acquired? When was that painting created? Which artist? What title?

5.1 How many paintings?

  • How many rows/observations are in moma?
  • How many variables are in moma?

Hint: These questions can be answered using the dplyr function glimpse.

library(dplyr)
moma
# A tibble: 2,253 x 23
   title artist artist_bio artist_birth_ye… artist_death_ye… num_artists
   <chr> <chr>  <chr>                 <dbl>            <dbl>       <dbl>
 1 Rope… Joan … (Spanish,…             1893             1983           1
 2 Fire… Paul … (German, …             1879             1940           1
 3 Port… Paul … (German, …             1879             1940           1
 4 Guit… Pablo… (Spanish,…             1881             1973           1
 5 Gran… Arthu… (American…             1880             1946           1
 6 "\"M… Franc… (French, …             1879             1953           1
 7 Unti… Blink… (German, …             1943             1977           1
 8 Dayl… Pierr… (French, …             1880             1950           1
 9 The … Paul … (French, …             1839             1906           1
10 Synt… Enric… (Italian,…             1894             1956           1
# … with 2,243 more rows, and 17 more variables: n_female_artists <dbl>,
#   n_male_artists <dbl>, artist_gender <chr>, year_acquired <dbl>,
#   year_created <dbl>, circumference_cm <lgl>, depth_cm <dbl>,
#   diameter_cm <lgl>, height_cm <dbl>, length_cm <lgl>, width_cm <dbl>,
#   seat_height_cm <lgl>, purchase <lgl>, gift <lgl>, exchange <lgl>,
#   classification <chr>, department <chr>
glimpse(moma)
Observations: 2,253
Variables: 23
$ title             <chr> "Rope and People, I", "Fire in the Evening", "…
$ artist            <chr> "Joan Miró", "Paul Klee", "Paul Klee", "Pablo …
$ artist_bio        <chr> "(Spanish, 1893–1983)", "(German, born Switzer…
$ artist_birth_year <dbl> 1893, 1879, 1879, 1881, 1880, 1879, 1943, 1880…
$ artist_death_year <dbl> 1983, 1940, 1940, 1973, 1946, 1953, 1977, 1950…
$ num_artists       <dbl> 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1…
$ n_female_artists  <dbl> 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0…
$ n_male_artists    <dbl> 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1…
$ artist_gender     <chr> "Male", "Male", "Male", "Male", "Male", "Male"…
$ year_acquired     <dbl> 1936, 1970, 1966, 1955, 1939, 1968, 1997, 1931…
$ year_created      <dbl> 1935, 1929, 1927, 1919, 1925, 1919, 1970, 1929…
$ circumference_cm  <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA…
$ depth_cm          <dbl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA…
$ diameter_cm       <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA…
$ height_cm         <dbl> 104.8, 33.8, 60.3, 215.9, 50.8, 129.2, 200.0, …
$ length_cm         <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA…
$ width_cm          <dbl> 74.6, 33.3, 36.8, 78.7, 54.0, 89.9, 200.0, 38.…
$ seat_height_cm    <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA…
$ purchase          <lgl> FALSE, FALSE, FALSE, FALSE, FALSE, FALSE, FALS…
$ gift              <lgl> TRUE, FALSE, FALSE, TRUE, TRUE, FALSE, TRUE, T…
$ exchange          <lgl> FALSE, FALSE, FALSE, FALSE, TRUE, FALSE, FALSE…
$ classification    <chr> "Painting", "Painting", "Painting", "Painting"…
$ department        <chr> "Painting & Sculpture", "Painting & Sculpture"…

There are 2253 paintings in moma.

5.2 What is the first painting acquired?

  • What is the first painting acquired by MoMA (since they started tracking)?
  • What year was it acquired?
  • Which artist?
  • What title?

Hint: These questions can be answered by combining two dplyr functions: select and arrange.

moma %>% 
  select(artist, title, year_acquired) %>% 
  arrange(year_acquired)
# A tibble: 2,253 x 3
   artist          title                                      year_acquired
   <chr>           <chr>                                              <dbl>
 1 Edward Hopper   House by the Railroad                               1930
 2 Bernard Karfiol Seated Nude                                         1930
 3 Pierre Roy      Daylight Savings Time                               1931
 4 Preston Dickin… Plums on a Plate                                    1931
 5 Otto Dix        Dr. Mayer-Hermann                                   1932
 6 Paul Cézanne    The Bather                                          1934
 7 Paul Cézanne    Pines and Rocks (Fontainebleau?)                    1934
 8 Paul Cézanne    Still Life with Ginger Jar, Sugar Bowl, a…          1934
 9 Paul Cézanne    Still Life with Apples                              1934
10 Arthur B. Davi… Italian Landscape                                   1934
# … with 2,243 more rows

5.3 What is the oldest painting in the MoMA collection?

  • What is the oldest painting in the MoMA collection historically (since they started tracking)?
  • What year was it created?
  • Which artist?
  • What title?

Hint: These questions can be answered by combining two dplyr functions: select and arrange.

moma %>% 
  select(artist, title, year_created) %>% 
  arrange(year_created)
# A tibble: 2,253 x 3
   artist       title                                    year_created
   <chr>        <chr>                                           <dbl>
 1 Odilon Redon Landscape at Daybreak                            1872
 2 Odilon Redon Apache (Man on Horseback)                        1875
 3 Odilon Redon Apache (Man on Horseback II)                     1875
 4 Odilon Redon Fishing Boat                                     1875
 5 Odilon Redon Rocky Peak                                       1875
 6 Odilon Redon The Rocky Slope                                  1875
 7 Odilon Redon Landscape with Rocks, near Royan                 1875
 8 Paul Cézanne Still Life with Fruit Dish                       1879
 9 Paul Cézanne L'Estaque                                        1879
10 Claude Monet On the Cliff at Pourville, Clear Weather         1882
# … with 2,243 more rows

To do inline comments, I could say that the oldest painting is Landscape at Daybreak, painted by Odilon Redon in 1872.

5.4 How many artists?

  • How many distinct artists are there?

Hint: Try dplyr::distinct.

moma %>% 
  distinct(artist)
# A tibble: 989 x 1
   artist           
   <chr>            
 1 Joan Miró        
 2 Paul Klee        
 3 Pablo Picasso    
 4 Arthur Dove      
 5 Francis Picabia  
 6 Blinky Palermo   
 7 Pierre Roy       
 8 Paul Cézanne     
 9 Enrico Prampolini
10 Jankel Adler     
# … with 979 more rows

You could add a tally() too to get just the number of rows. You can also then use pull() to get that single number out of the tibble:

num_artists <- moma %>% 
  distinct(artist) %>% 
  tally() %>% 
  pull()
num_artists
[1] 989

Then I can refer to this number in inline comments like: there are 989 total.

5.5 Which artist has the most paintings?

  • Which artist has the most paintings ever owned by moma?
  • How many paintings in the MoMA collection by that artist?

Hint: Try dplyr::count. Use ?count to figure out how to sort the output.

moma %>% 
  count(artist, sort = TRUE)
# A tibble: 989 x 2
   artist               n
   <chr>            <int>
 1 Pablo Picasso       55
 2 Henri Matisse       32
 3 On Kawara           32
 4 Jacob Lawrence      30
 5 Batiste Madalena    25
 6 Jean Dubuffet       25
 7 Odilon Redon        25
 8 Ben Vautier         24
 9 Frank Stella        23
10 Philip Guston       23
# … with 979 more rows

In the ?count documentation, it says: “count and tally are designed so that you can call them repeatedly, each time rolling up a level of detail.” Try running count() again (leave parentheses empty) on your last code chunk.

moma %>% 
  count(artist, sort = TRUE) %>% 
  count()
# A tibble: 1 x 1
      n
  <int>
1   989

5.6 How many paintings by male vs female artists?

moma %>% 
  count(artist_gender)
# A tibble: 3 x 2
  artist_gender     n
  <chr>         <int>
1 <NA>             10
2 Female          252
3 Male           1991

Now together we’ll count the number of artists by gender. You’ll need to give count two variable names in the parentheses: artist_gender and artist.

moma %>% 
  count(artist_gender, artist, sort = TRUE) 
# A tibble: 989 x 3
   artist_gender artist               n
   <chr>         <chr>            <int>
 1 Male          Pablo Picasso       55
 2 Male          Henri Matisse       32
 3 Male          On Kawara           32
 4 Male          Jacob Lawrence      30
 5 Male          Batiste Madalena    25
 6 Male          Jean Dubuffet       25
 7 Male          Odilon Redon        25
 8 Male          Ben Vautier         24
 9 Male          Frank Stella        23
10 Male          Philip Guston       23
# … with 979 more rows

This output is not superhelpful as we already know that Pablo Picasso has 55 paintings in the MoMA collection. But how can we find out which female artist has the most paintings? We have a few options. Let’s first add a filter for females.

moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  filter(artist_gender == "Female")
# A tibble: 143 x 3
   artist_gender artist                    n
   <chr>         <chr>                 <int>
 1 Female        Sherrie Levine           12
 2 Female        Agnes Martin              9
 3 Female        Elizabeth Murray          8
 4 Female        Susan Rothenberg          8
 5 Female        Joan Mitchell             6
 6 Female        Loren MacIver             6
 7 Female        R. H. Quaytman            6
 8 Female        Helen Frankenthaler       5
 9 Female        Georgia O'Keeffe          4
10 Female        Lynette Yiadom-Boakye     4
# … with 133 more rows

Another option is to use another dplyr function called top_n(). Use ?top_n to see how it works. How it won’t work in this context:

moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  top_n(2)
# A tibble: 3 x 3
  artist_gender artist            n
  <chr>         <chr>         <int>
1 Male          Pablo Picasso    55
2 Male          Henri Matisse    32
3 Male          On Kawara        32

How it will work better is following a group_by(artist_gender):

moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  group_by(artist_gender) %>% 
  top_n(1)
# A tibble: 3 x 3
# Groups:   artist_gender [3]
  artist_gender artist                                                 n
  <chr>         <chr>                                              <int>
1 Male          Pablo Picasso                                         55
2 Female        Sherrie Levine                                        12
3 <NA>          Gilbert & George, Gilbert Proesch, George Passmore     2

Now we can see that Sherrie Levine has 12 paintings. This is a pretty far cry from the 55 paintings by Pablo Picasso.

5.7 How many artists of each gender are there?

This is a harder question to answer than you think! This is because the level of observation in our current moma dataset is unique paintings. We have multiple paintings done by the same artists though, so counting just the number of unique paintings is different than counting the number of unique artists.

Remember how count can be used back-to-back to roll up a level of detail? Try running count(artist_gender) again on your last code chunk.

moma %>% 
  count(artist_gender, artist) %>% 
  count(artist_gender)
# A tibble: 3 x 2
  artist_gender     n
  <chr>         <int>
1 <NA>              9
2 Female          143
3 Male            837

This output takes the previous table (made with count(artist_gender, artist)), and essentially ignores the n column. So we no longer care about how many paintings each individual artist created. Instead, we want to count the rows in this new table where each row is a unique artist. By counting by artist_gender in the last line, we are grouping by levels of that variable (so Female/Male/NA) and nn is the number of unique artists for each gender category recorded.

5.8 When were the most paintings in the collection acquired?

Hint: Try dplyr::count. Use ?count to figure out how to sort the output.

moma %>% 
  count(year_acquired, sort = TRUE)
# A tibble: 88 x 2
   year_acquired     n
           <dbl> <int>
 1          1985    86
 2          1942    71
 3          1979    71
 4          1991    67
 5          2005    67
 6          1967    65
 7          2008    55
 8          1961    45
 9          1969    45
10          1956    42
# … with 78 more rows

5.9 When were the most paintings in the collection created?

Hint: Try dplyr::count. Use ?count to figure out how to sort the output.

moma %>% 
  count(year_created, sort = TRUE)
# A tibble: 139 x 2
   year_created     n
          <dbl> <int>
 1         1977    57
 2         1940    56
 3         1964    56
 4         1961    50
 5         1962    49
 6         1963    44
 7         1959    42
 8         1968    40
 9         1960    39
10         1914    37
# … with 129 more rows

5.10 What about the first painting by a solo female artist?

Hint: Try combining three dplyr functions: filter, select, and arrange.

When was the first painting by a solo female artist acquired?

moma %>% 
  filter(num_artists == 1 & n_female_artists == 1) %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_acquired)
# A tibble: 252 x 4
   title                     artist              year_acquired year_created
   <chr>                     <chr>                       <dbl>        <dbl>
 1 Landscape, 47             Natalia Goncharova           1937         1912
 2 Shack                     Loren MacIver                1938         1934
 3 Hopscotch                 Loren MacIver                1940         1940
 4 Shadows with Painting     Irene Rice Pereira           1941         1940
 5 Figure                    Varvara Stepanova            1941         1921
 6 Still Life in Red         Amelia Peláez Del …          1942         1938
 7 White Lines               Irene Rice Pereira           1942         1942
 8 Musical Squash            Maud Morgan                  1942         1942
 9 Desolation                Raquel Forner                1942         1942
10 Self-Portrait with Cropp… Frida Kahlo                  1943         1940
# … with 242 more rows

What is the oldest painting by a solo female artist, and when was it created?

moma %>% 
  filter(num_artists == 1 & n_female_artists == 1) %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_created)
# A tibble: 252 x 4
   title                          artist         year_acquired year_created
   <chr>                          <chr>                  <dbl>        <dbl>
 1 Self-Portrait with Two Flower… Paula Moderso…          2017         1907
 2 Girl with Bare Shoulders       Gwen John               1958         1909
 3 Girl Reading at a Window       Gwen John               1971         1911
 4 Landscape, 47                  Natalia Gonch…          1937         1912
 5 Cubist Nude                    Alexandra Ext…          1991         1912
 6 Rayonism, Blue-Green Forest    Natalia Gonch…          1985         1913
 7 The Factory and the Bridge     Olga Rozanova           1985         1913
 8 Subject from a Dyer's Shop     Lyubov Popova           1985         1914
 9 Portuguese Market              Sonia Delauna…          1955         1915
10 Girl with a Blue Scarf         Gwen John               1963         1915
# … with 242 more rows
# or, because artist_gender is missing when num_artists > 1
moma %>% 
  filter(artist_gender == "Female") %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_acquired)

6 Basics of ggplot2

Challenge #2:
We’ll do this together (nothing to turn in): see slides.

7 Plot your data

7.1 Plot year painted vs year acquired

Challenge #3:

Let’s recreate this plot from fivethirtyeight (mostly)!

Things to consider:

  • You’ll want to play around with setting an alpha value here- keep in mind that 0 is totally transparent and 1 is opaque.
  • Try using geom_abline() to add the line in red (use the default intercept value of 0). The actual red line is difficult to recreate- here is what the authors say: “The red regression line shows the “modernizing” of MoMA’s collection — how quickly the museum has moved toward acquiring recent paintings."
  • Go back to Lab 01 to review how to do the following:
    • Change the x- and y-axis labels and the plot title to match the plot above
ggplot(moma, aes(year_created, year_acquired)) +
  geom_point(alpha = .1, na.rm = TRUE) +
  geom_abline(intercept = c(0,0), colour = "red") +
  labs(x = "Year Painted", y = "Year Acquired") +
  ggtitle("MoMA Keeps Its Collection Current") 

7.2 Facet by artist gender

Can you make the same plot above, but facet by artist gender?

Hint: For this to make sense, you probably want to do some filtering to select only those paintings where there was one “solo” artist.

moma_solo <- moma %>% 
  filter(num_artists == 1)
ggplot(moma_solo, aes(year_created, year_acquired)) +
  geom_point(alpha = .1) +
  geom_abline(intercept = c(0,0), colour = "red") +
  labs(x = "Year Painted", y = "Year Acquired") +
  ggtitle("MoMA Keeps Its Collection Current") +
  facet_wrap(~artist_gender)

8 Plot painting dimensions

Challenge #4:

Let’s (somewhat) try to recreate this scatterplot from fivethirtyeight.

To recreate, some things to consider:

  • Try filtering all paintings with height less than 600 cm and width less than 760 cm.
  • If you want to add color as in the original, you’ll need to create a new variable using mutate.

Hint: You’ll probably also want to look into case_when to create a categorical variable to color by.

moma_dim <- moma %>% 
  filter(height_cm < 600, width_cm < 760) %>% 
  mutate(hw_ratio = height_cm / width_cm,
         hw_cat = case_when(
           hw_ratio > 1 ~ "taller than wide",
           hw_ratio < 1 ~ "wider than tall",
           hw_ratio == 1 ~ "perfect square"
         ))
library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#FF9900", "#B14CF0")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") 

Because Grace is right, we can do better with colors!

library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#ee5863", "#6999cd")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") 

We could also do away with the legend and use geom_annotate instead.

library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5, show.legend = FALSE) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#ee5863", "#6999cd")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") +
  annotate(x = 200, y = 380, geom = "text", 
           label = "Taller than\nWide", color = "#ee5863", 
           size = 5, family = "Lato", hjust = 1, fontface = 2) +
    annotate(x = 375, y = 100, geom = "text", 
             label = "Wider than\nTall", color = "#6999cd", 
             size = 5, family = "Lato", hjust = 0, fontface = 2)

9 Plot something new & different!

Challenge #5:

It can be anything- you can change colors, add annotations, switch the geoms, add new variables to examine- the world is your oyster! The only requirements are:

  1. You make one new plot that is original, and
  2. You write 1-2 sentences to present the plot and why it makes sense. What questions do you think your plot can help you to answer?
It does not have to be pretty right now, but it must make sense as a visualization- you must be able to intelligently and succintly tell us about it in real words.
---
title: "Lab 02: MoMA Museum Tour"
subtitle: "CS631"
author: "Alison Hill"
output:
  html_document:
    css: moma_style.css
    theme: flatly
    toc: TRUE
    toc_float: TRUE
    toc_depth: 2
    number_sections: TRUE
    code_folding: hide
    code_download: TRUE
---
```{r setup_moma, include = FALSE, cache = FALSE}
knitr::opts_chunk$set(
  comment = NA, 
  warning = FALSE, 
  message = FALSE,
  fig.path = "moma-figs/")
```

# Goals for Lab 02

- Review `dplyr` functions learned in last lab and DataCamp course
- Practice using `dplyr` functions to get to know a new dataset
- Map global plot aesthetics to variables in `ggplot2`
- Create facetted plots with `ggplot2`




# Inspiration + data

We'll use data from the Museum of Modern Art (MoMA)

- Publicly available on [GitHub](https://github.com/MuseumofModernArt/collection)
- As analyzed by [fivethirtyeight.com](https://fivethirtyeight.com/features/a-nerds-guide-to-the-2229-paintings-at-moma/)
- And by [others](https://medium.com/@foe/here-s-a-roundup-of-how-people-have-used-our-data-so-far-80862e4ce220)

# Packages needed

```{r}
library(here) # to set file path if working from local file
library(tidyverse) # readr, ggplot2, dplyr
```


# Read in the data

Note! This is not the original data- I did a lot of cleaning and decision-making in the pre-processing. The below contains only paintings and drawings in the MoMA collection.

Use this code chunk to read in the data available at [http://bit.ly/cs631-moma](http://bit.ly/cs631-moma):

```{r eval = FALSE, echo = TRUE}
library(readr)
moma <- read_csv("http://bit.ly/cs631-moma")
```

I called my cleaned data `artworks-cleaned.csv`, and stored it in a folder called `data`. You can use this code if you want to read in the local CSV file.

```{r}
library(here)
library(readr)
library(dplyr)
moma <- read_csv("http://bit.ly/cs631-moma")
```




# Know your data

<div class="panel panel-success">
  <div class="panel-heading">Challenge #1:</div>
  <div class="panel-body">
Try to answer all of these questions using `dplyr`. Answers are below but try them on your own first!

1. How many paintings (rows) are in `moma`? How many variables (columns) are in `moma`?
1. What is the first painting acquired by MoMA? Which year? Which artist? What title?
1. What is the oldest painting in the collection? Which year? Which artist? What title?
1. How many distinct artists are there?
1. Which artist has the most paintings in the collection? How many paintings are by this artist?
1. How many paintings by male vs female artists?


If you want more:

1. How many artists of each gender are there?
1. In what year were the most paintings acquired? Created?
1. In what year was the first painting by a (solo) female artist acquired? When was that painting created? Which artist? What title?
  </div>
</div>

## How many paintings?

- How many rows/observations are in `moma`?
- How many variables are in `moma`?

<p class="text-info"> __Hint:__ These questions can be answered using the `dplyr` function `glimpse`.</p>


```{r}
library(dplyr)
moma
glimpse(moma)
```

There are `r nrow(moma)` paintings in `moma`.

## What is the first painting acquired?


- What is the first painting acquired by MoMA (since they started tracking)? 
- What year was it acquired?
- Which artist?
- What title?

<p class="text-info"> __Hint:__ These questions can be answered by combining two `dplyr` functions: `select` and `arrange`.</p>


```{r}
moma %>% 
  select(artist, title, year_acquired) %>% 
  arrange(year_acquired)
```

## What is the oldest painting in the MoMA collection?


- What is the oldest painting in the MoMA collection historically (since they started tracking)? 
- What year was it created?
- Which artist?
- What title?

<p class="text-info"> __Hint:__ These questions can be answered by combining two `dplyr` functions: `select` and `arrange`.</p>



```{r}
moma %>% 
  select(artist, title, year_created) %>% 
  arrange(year_created)
```

```{r include = FALSE}
oldest <- moma %>% 
  select(artist, title, year_created) %>% 
  arrange(year_created) %>% 
  slice(1)
```

To do inline comments, I could say that the oldest painting is `r oldest %>% pull(title)`, painted by `r oldest %>% pull(artist)` in `r oldest %>% pull(year_created)`.

## How many artists?

- How many distinct artists are there?

<p class="text-info"> __Hint:__ Try `dplyr::distinct`.</p>
 

```{r}
moma %>% 
  distinct(artist)
```

You could add a `tally()` too to get just the number of rows. You can also then use `pull()` to get that single number out of the tibble:

```{r}
num_artists <- moma %>% 
  distinct(artist) %>% 
  tally() %>% 
  pull()
num_artists
```

Then I can refer to this number in inline comments like: there are `r num_artists` total.

## Which artist has the most paintings?

- Which artist has the most paintings ever owned by `moma`? 
- How many paintings in the MoMA collection by that artist?

<p class="text-info"> __Hint:__ Try `dplyr::count`. Use `?count` to figure out how to sort the output.</p>


```{r}
moma %>% 
  count(artist, sort = TRUE)
```

```{r include = FALSE}
pablo <- moma %>% 
  count(artist, sort = TRUE) %>% 
  slice(1)
```

In the `?count` documentation, it says: "`count` and `tally` are designed so that you can call them repeatedly, each time rolling up a level of detail." Try running `count()` again (leave parentheses empty) on your last code chunk.

```{r}
moma %>% 
  count(artist, sort = TRUE) %>% 
  count()
```

## How many paintings by male vs female artists?


```{r}
moma %>% 
  count(artist_gender)
```


Now together we'll count the number of artists by gender. You'll need to give `count` two variable names in the parentheses: `artist_gender` and `artist`.

```{r}
moma %>% 
  count(artist_gender, artist, sort = TRUE) 
```

This output is not superhelpful as we already know that `r pablo %>% pull(artist)` has `r pablo %>% pull(n)` paintings in the MoMA collection. But how can we find out which female artist has the most paintings? We have a few options. Let's first add a `filter` for females.

```{r}
moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  filter(artist_gender == "Female")
```

Another option is to use another `dplyr` function called `top_n()`. Use `?top_n` to see how it works. How it won't work in this context:

```{r}
moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  top_n(2)
```

How it will work better is following a `group_by(artist_gender)`:

```{r}
moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  group_by(artist_gender) %>% 
  top_n(1)
```


```{r include = FALSE}
sherrie <- moma %>% 
  count(artist_gender, artist, sort = TRUE) %>% 
  filter(artist_gender == "Female") %>% 
  slice(1)
```

Now we can see that `r sherrie %>% pull(artist)` has `r sherrie %>% pull(n)` paintings. This is a pretty far cry from the `r pablo %>% pull(n)` paintings by `r pablo %>% pull(artist)`.

## How many artists of each gender are there?

This is a harder question to answer than you think! This is because the level of observation in our current `moma` dataset is *unique paintings*. We have multiple paintings done by the same artists though, so counting just the number of unique paintings is different than counting the number of unique artists. 

Remember how `count` can be used back-to-back to roll up a level of detail? Try running `count(artist_gender)` again on your last code chunk.

```{r}
moma %>% 
  count(artist_gender, artist) %>% 
  count(artist_gender)
```


This output takes the previous table (made with `count(artist_gender, artist)`), and essentially ignores the `n` column. So we no longer care about how *many* paintings each individual artist created. Instead, we want to `count` the rows in this *new* table where each row is a unique artist. By counting by `artist_gender` in the last line, we are grouping by levels of that variable (so Female/Male/`NA`) and `nn` is the number of unique artists for each gender category recorded.

## When were the most paintings in the collection acquired?


<p class="text-info"> __Hint:__ Try `dplyr::count`. Use `?count` to figure out how to sort the output.</p>

```{r}
moma %>% 
  count(year_acquired, sort = TRUE)
```

## When were the most paintings in the collection created?


<p class="text-info"> __Hint:__ Try `dplyr::count`. Use `?count` to figure out how to sort the output.</p>

```{r}
moma %>% 
  count(year_created, sort = TRUE)
```


## What about the first painting by a solo female artist?



<p class="text-info"> __Hint:__ Try combining three `dplyr` functions: `filter`, `select`, and `arrange`.</p>

When was the first painting by a solo female artist acquired?

```{r}
moma %>% 
  filter(num_artists == 1 & n_female_artists == 1) %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_acquired)
```

What is the oldest painting by a solo female artist, and when was it created?

```{r}
moma %>% 
  filter(num_artists == 1 & n_female_artists == 1) %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_created)
```

```{r eval = FALSE}
# or, because artist_gender is missing when num_artists > 1
moma %>% 
  filter(artist_gender == "Female") %>% 
  select(title, artist, year_acquired, year_created) %>% 
  arrange(year_acquired)
```

# Basics of `ggplot2`

<div class="panel panel-success">
  <div class="panel-heading">Challenge #2:</div>
  <div class="panel-body">
We'll do this together *(nothing to turn in)*: see [slides](https://apreshill.github.io/data-vis-labs-2018/slides/02-slides.html#16).
  </div>
</div>



# Plot your data



## Plot year painted vs year acquired

 



<div class="panel panel-success">
  <div class="panel-heading">Challenge #3:</div>
  <div class="panel-body">
Let's recreate this plot from [fivethirtyeight](https://fivethirtyeight.com/features/a-nerds-guide-to-the-2229-paintings-at-moma/) (mostly)!

![](https://espnfivethirtyeight.files.wordpress.com/2015/08/roeder-feature-moma-1.png?w=1150&quality=90&strip=info)

Things to consider:

- You'll want to play around with setting an `alpha` value here- keep in mind that `0` is totally transparent and `1` is opaque. 
- Try using `geom_abline()` to add the line in red (use the default intercept value of 0). The actual red line is difficult to recreate- here is what the authors say: "The red regression line shows the “modernizing” of MoMA’s collection — how quickly the museum has moved toward acquiring recent paintings."
- Go back to [Lab 01](https://apreshill.github.io/data-vis-labs-2018/01-eda_hot_dogs.html) to review how to do the following:
    - Change the x- and y-axis labels and the plot title to match the plot above
  </div>
</div>


```{r}
ggplot(moma, aes(year_created, year_acquired)) +
  geom_point(alpha = .1, na.rm = TRUE) +
  geom_abline(intercept = c(0,0), colour = "red") +
  labs(x = "Year Painted", y = "Year Acquired") +
  ggtitle("MoMA Keeps Its Collection Current") 
```



## Facet by artist gender

Can you make the same plot above, but facet by artist gender? 

<p class="text-info"> __Hint:__ For this to make sense, you probably want to do some filtering to select only those paintings where there was one "solo" artist.</p>

```{r}
moma_solo <- moma %>% 
  filter(num_artists == 1)
ggplot(moma_solo, aes(year_created, year_acquired)) +
  geom_point(alpha = .1) +
  geom_abline(intercept = c(0,0), colour = "red") +
  labs(x = "Year Painted", y = "Year Acquired") +
  ggtitle("MoMA Keeps Its Collection Current") +
  facet_wrap(~artist_gender)
```


# Plot painting dimensions

<div class="panel panel-success">
  <div class="panel-heading">Challenge #4:</div>
  <div class="panel-body">
Let's (somewhat) try to recreate this scatterplot from [fivethirtyeight](https://fivethirtyeight.com/features/a-nerds-guide-to-the-2229-paintings-at-moma/). 


![](https://espnfivethirtyeight.files.wordpress.com/2015/08/roeder-feature-moma-3.png?w=1150&quality=90&strip=info)

To recreate, some things to consider:

- Try filtering all paintings with height less than 600 cm and width less than 760 cm. 
- If you want to add color as in the original, you'll need to create a new variable using `mutate`. 


<p class="text-info"> __Hint:__ You'll probably also want to look into `case_when` to create a categorical variable to color by.</p>
  </div>
</div>







```{r}
moma_dim <- moma %>% 
  filter(height_cm < 600, width_cm < 760) %>% 
  mutate(hw_ratio = height_cm / width_cm,
         hw_cat = case_when(
           hw_ratio > 1 ~ "taller than wide",
           hw_ratio < 1 ~ "wider than tall",
           hw_ratio == 1 ~ "perfect square"
         ))
library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#FF9900", "#B14CF0")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") 
```


Because Grace is right, we can do better with colors!

```{r}
library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#ee5863", "#6999cd")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") 
```

We could also do away with the legend and use `geom_annotate` instead.

```{r}
library(ggthemes)
ggplot(moma_dim, aes(x = width_cm, y = height_cm, colour = hw_cat)) +
  geom_point(alpha = .5, show.legend = FALSE) +
  ggtitle("MoMA Paintings, Tall and Wide") +
  scale_colour_manual(name = "",
                      values = c("gray50", "#ee5863", "#6999cd")) +
  theme_fivethirtyeight() +
  theme(axis.title = element_text()) +
  labs(x = "Width", y = "Height") +
  annotate(x = 200, y = 380, geom = "text", 
           label = "Taller than\nWide", color = "#ee5863", 
           size = 5, family = "Lato", hjust = 1, fontface = 2) +
    annotate(x = 375, y = 100, geom = "text", 
             label = "Wider than\nTall", color = "#6999cd", 
             size = 5, family = "Lato", hjust = 0, fontface = 2)
```

# Plot something new & different!

<div class="panel panel-success">
  <div class="panel-heading">Challenge #5:</div>
  <div class="panel-body">
It can be anything- you can change colors, add annotations, switch the geoms, add new variables to examine- the world is your oyster! The only requirements are:

1. You *make* one new plot that is original, and 
2. You *write* 1-2 sentences to present the plot and why it makes sense. What questions do you think your plot can help you to answer?

It does not have to be pretty right now, but it must make sense as a visualization- you must be able to intelligently and succintly tell us about it in real words.
  </div>
</div>





