Code for Quiz 6, more dplyr and our first interactive chart using echarts4t.
drug_cos.csv
, health_cos.csv
in to R and assign to the variables drug_cos
and health_cos
, respectivelydrug_cos <- read_csv("https://estanny.com/static/week6/drug_cos.csv")
health_cos <- read_csv("https://estanny.com/static/week6/health_cos.csv")
drug_cos %>% glimpse()
Rows: 104
Columns: 9
$ ticker <chr> "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "Z...
$ name <chr> "Zoetis Inc", "Zoetis Inc", "Zoetis Inc", "Z...
$ location <chr> "New Jersey; U.S.A", "New Jersey; U.S.A", "N...
$ ebitdamargin <dbl> 0.149, 0.217, 0.222, 0.238, 0.182, 0.335, 0....
$ grossmargin <dbl> 0.610, 0.640, 0.634, 0.641, 0.635, 0.659, 0....
$ netmargin <dbl> 0.058, 0.101, 0.111, 0.122, 0.071, 0.168, 0....
$ ros <dbl> 0.101, 0.171, 0.176, 0.195, 0.140, 0.286, 0....
$ roe <dbl> 0.069, 0.113, 0.612, 0.465, 0.285, 0.587, 0....
$ year <dbl> 2011, 2012, 2013, 2014, 2015, 2016, 2017, 20...
health_cos %>% glimpse()
Rows: 464
Columns: 11
$ ticker <chr> "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "ZT...
$ name <chr> "Zoetis Inc", "Zoetis Inc", "Zoetis Inc", "Zo...
$ revenue <dbl> 4233000000, 4336000000, 4561000000, 478500000...
$ gp <dbl> 2581000000, 2773000000, 2892000000, 306800000...
$ rnd <dbl> 427000000, 409000000, 399000000, 396000000, 3...
$ netincome <dbl> 245000000, 436000000, 504000000, 583000000, 3...
$ assets <dbl> 5711000000, 6262000000, 6558000000, 658800000...
$ liabilities <dbl> 1975000000, 2221000000, 5596000000, 525100000...
$ marketcap <dbl> NA, NA, 16345223371, 21572007994, 23860348635...
$ year <dbl> 2011, 2012, 2013, 2014, 2015, 2016, 2017, 201...
$ industry <chr> "Drug Manufacturers - Specialty & Generic", "...
4.Which variables are the same in both data sets
names_drug <- drug_cos %>% names()
names_health <- health_cos %>% names()
intersect(names_drug, names_health)
[1] "ticker" "name" "year"
For drug_cos
select (in this order): ticker
, year
, grossmargin
drug_subset
For health_cos
select (in this order): ticker
, year
, revenue
, gp
, industry
Extract observations for 2018
Assign output to health_subset
drug_subset
join with columns in health_subset
drug_subset %>% left_join(health_subset)
# A tibble: 13 x 6
ticker year grossmargin revenue gp industry
<chr> <dbl> <dbl> <dbl> <dbl> <chr>
1 ZTS 2018 0.672 5.82e 9 3.91e 9 Drug Manufacturers - ~
2 PRGO 2018 0.387 4.73e 9 1.83e 9 Drug Manufacturers - ~
3 PFE 2018 0.79 5.36e10 4.24e10 Drug Manufacturers - ~
4 MYL 2018 0.35 1.14e10 4.00e 9 Drug Manufacturers - ~
5 MRK 2018 0.681 4.23e10 2.88e10 Drug Manufacturers - ~
6 LLY 2018 0.738 2.46e10 1.81e10 Drug Manufacturers - ~
7 JNJ 2018 0.668 8.16e10 5.45e10 Drug Manufacturers - ~
8 GILD 2018 0.781 2.21e10 1.73e10 Drug Manufacturers - ~
9 BMY 2018 0.71 2.26e10 1.60e10 Drug Manufacturers - ~
10 BIIB 2018 0.865 1.35e10 1.16e10 Drug Manufacturers - ~
11 AMGN 2018 0.827 2.37e10 1.96e10 Drug Manufacturers - ~
12 AGN 2018 0.861 1.58e10 1.36e10 Drug Manufacturers - ~
13 ABBV 2018 0.764 3.28e10 2.50e10 Drug Manufacturers - ~
Start with drug_cos
Extract observations for the ticker MRK from drug_cos
Assign output to the variable drug_cos_subset
drug_cos_subset <- drug_cos %>%
filter(ticker == "MRK")
drug_cos_subset
drug_cos_subset
# A tibble: 8 x 9
ticker name location ebitdamargin grossmargin netmargin ros roe
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl> <dbl>
1 MRK Merc~ New Jer~ 0.305 0.649 0.131 0.15 0.114
2 MRK Merc~ New Jer~ 0.33 0.652 0.13 0.182 0.113
3 MRK Merc~ New Jer~ 0.282 0.615 0.1 0.123 0.089
4 MRK Merc~ New Jer~ 0.567 0.603 0.282 0.409 0.248
5 MRK Merc~ New Jer~ 0.298 0.622 0.112 0.136 0.096
6 MRK Merc~ New Jer~ 0.254 0.648 0.098 0.117 0.092
7 MRK Merc~ New Jer~ 0.278 0.678 0.06 0.162 0.063
8 MRK Merc~ New Jer~ 0.313 0.681 0.147 0.206 0.199
# ... with 1 more variable: year <dbl>
Use left_join
to combine the rows and columns of drug_cos_subset
with the columns of health_cos
Assign the output to combo_df
combo_df <- drug_cos_subset %>%
left_join(health_cos)
*Display combo_df
combo_df
# A tibble: 8 x 17
ticker name location ebitdamargin grossmargin netmargin ros roe
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl> <dbl>
1 MRK Merc~ New Jer~ 0.305 0.649 0.131 0.15 0.114
2 MRK Merc~ New Jer~ 0.33 0.652 0.13 0.182 0.113
3 MRK Merc~ New Jer~ 0.282 0.615 0.1 0.123 0.089
4 MRK Merc~ New Jer~ 0.567 0.603 0.282 0.409 0.248
5 MRK Merc~ New Jer~ 0.298 0.622 0.112 0.136 0.096
6 MRK Merc~ New Jer~ 0.254 0.648 0.098 0.117 0.092
7 MRK Merc~ New Jer~ 0.278 0.678 0.06 0.162 0.063
8 MRK Merc~ New Jer~ 0.313 0.681 0.147 0.206 0.199
# ... with 9 more variables: year <dbl>, revenue <dbl>, gp <dbl>,
# rnd <dbl>, netincome <dbl>, assets <dbl>, liabilities <dbl>,
# marketcap <dbl>, industry <chr>
co_name
co_name <- combo_df %>%
distinct(name) %>%
pull()
co_location
co_location <- combo_df %>%
distinct(location) %>%
pull()
co_industry group
co_industry <- combo_df %>%
distinct(industry) %>%
pull()
Put the r inline commands used in the blanks below. When you knit the document the results of the commands will be displayed in your text.
The company ??? is located in ??? and is a member of the ??? industry group.
Start with combo_df
Select variables (in this order): year
, grossmargin
, netmargin
, revenue
, gp
, netincome
Assign the output to combo_df_subset
combo_df_subset <- combo_df %>%
select("year", "grossmargin", "netmargin",
"revenue", "gp", "netincome")
combo_df_subset
combo_df_subset
# A tibble: 8 x 6
year grossmargin netmargin revenue gp netincome
<dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1 2011 0.649 0.131 48047000000 31176000000 6272000000
2 2012 0.652 0.13 47267000000 30821000000 6168000000
3 2013 0.615 0.1 44033000000 27079000000 4404000000
4 2014 0.603 0.282 42237000000 25469000000 11920000000
5 2015 0.622 0.112 39498000000 24564000000 4442000000
6 2016 0.648 0.098 39807000000 25777000000 3920000000
7 2017 0.678 0.06 40122000000 27210000000 2394000000
8 2018 0.681 0.147 42294000000 28785000000 6220000000
grossmargin_check
to compare with the variable grossmargin
. They should be equal.
close_enough
to check that the absolute value of the difference between grossmargin_check
and grossmargin
is less than 0.001combo_df_subset %>%
mutate(grossmargin_check = gp / revenue,
close_enough = abs(grossmargin_check - grossmargin) < 0.001)
# A tibble: 8 x 8
year grossmargin netmargin revenue gp netincome
<dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1 2011 0.649 0.131 4.80e10 3.12e10 6.27e 9
2 2012 0.652 0.13 4.73e10 3.08e10 6.17e 9
3 2013 0.615 0.1 4.40e10 2.71e10 4.40e 9
4 2014 0.603 0.282 4.22e10 2.55e10 1.19e10
5 2015 0.622 0.112 3.95e10 2.46e10 4.44e 9
6 2016 0.648 0.098 3.98e10 2.58e10 3.92e 9
7 2017 0.678 0.06 4.01e10 2.72e10 2.39e 9
8 2018 0.681 0.147 4.23e10 2.88e10 6.22e 9
# ... with 2 more variables: grossmargin_check <dbl>,
# close_enough <lgl>
Create the variable netmargin_check
to compare with the variable netmargin
. They should be equal.
Create the variable close_enough
to check that the absolute value of the difference between netmargin_check
and netmargin
is less than 0.001
combo_df_subset %>%
mutate(netmargin_check = netincome / revenue,
close_enough = abs(netmargin_check - netmargin) < 0.001)
# A tibble: 8 x 8
year grossmargin netmargin revenue gp netincome
<dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1 2011 0.649 0.131 4.80e10 3.12e10 6.27e 9
2 2012 0.652 0.13 4.73e10 3.08e10 6.17e 9
3 2013 0.615 0.1 4.40e10 2.71e10 4.40e 9
4 2014 0.603 0.282 4.22e10 2.55e10 1.19e10
5 2015 0.622 0.112 3.95e10 2.46e10 4.44e 9
6 2016 0.648 0.098 3.98e10 2.58e10 3.92e 9
7 2017 0.678 0.06 4.01e10 2.72e10 2.39e 9
8 2018 0.681 0.147 4.23e10 2.88e10 6.22e 9
# ... with 2 more variables: netmargin_check <dbl>,
# close_enough <lgl>
Fill in the blanks
Put the command you use in the Rchunks in the Rmd file for this quiz
Use the health_cos
data
For each industry calculate
health_cos %>%
group_by(industry) %>%
summarise(mean_netmargin_percent = mean(netincome / revenue) * 100,
median_netmargin_percent = median(netincome / revenue) * 100,
min_netmargin_percent = min(netincome / revenue) * 100,
max_netmargin_percent = max(netincome / revenue) * 100)
# A tibble: 9 x 5
industry mean_netmargin_~ median_netmargi~ min_netmargin_p~
* <chr> <dbl> <dbl> <dbl>
1 Biotech~ -4.66 7.62 -197.
2 Diagnos~ 13.1 12.3 0.399
3 Drug Ma~ 19.4 19.5 -34.9
4 Drug Ma~ 5.88 9.01 -76.0
5 Healthc~ 3.28 3.37 -0.305
6 Medical~ 6.10 6.46 1.40
7 Medical~ 12.4 14.3 -56.1
8 Medical~ 1.70 1.03 -0.102
9 Medical~ 12.3 14.0 -47.1
# ... with 1 more variable: max_netmargin_percent <dbl>
mean_netmargin_percent for the industry Medical Care Facilities is 6.1%
median_netmargin_percent for the industry Medical Care Facilities is 6.46%
min_netmargin_percent for the industry Medical Care Facilities is 1.40%
max_netmargin_percent for the industry Medical Care Facilities is 8.3%
Fill in the blanks
Use the health_cos
data
Extract observations for the ticker ZTS from health_cos
and assign to the variable health_cos_subset
health_cos_subset <- health_cos %>%
filter(ticker == "ZTS")
health_cos_subset
health_cos_subset
# A tibble: 8 x 11
ticker name revenue gp rnd netincome assets liabilities
<chr> <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1 ZTS Zoet~ 4.23e9 2.58e9 4.27e8 2.45e8 5.71e 9 1975000000
2 ZTS Zoet~ 4.34e9 2.77e9 4.09e8 4.36e8 6.26e 9 2221000000
3 ZTS Zoet~ 4.56e9 2.89e9 3.99e8 5.04e8 6.56e 9 5596000000
4 ZTS Zoet~ 4.78e9 3.07e9 3.96e8 5.83e8 6.59e 9 5251000000
5 ZTS Zoet~ 4.76e9 3.03e9 3.64e8 3.39e8 7.91e 9 6822000000
6 ZTS Zoet~ 4.89e9 3.22e9 3.76e8 8.21e8 7.65e 9 6150000000
7 ZTS Zoet~ 5.31e9 3.53e9 3.82e8 8.64e8 8.59e 9 6800000000
8 ZTS Zoet~ 5.82e9 3.91e9 4.32e8 1.43e9 1.08e10 8592000000
# ... with 3 more variables: marketcap <dbl>, year <dbl>,
# industry <chr>
In the console, type ?distinct
. Go to the help pane to see what distinct does
In the console, type ?pull
. Go to the help pane to see what pull does
Run the code below
health_cos_subset %>%
distinct(name) %>%
pull(name)
[1] "Zoetis Inc"
co_name
co_name <- health_cos_subset %>%
distinct(name) %>%
pull(name)
**You can take output from your code and include it in your text.
In following chuck
co_industry
co_industry <- health_cos_subset %>%
distinct(industry) %>%
pull()
This is outside the R chunk. Put the r inline commands used in the blanks below. When you knit the document the results of the commands will be displayed in your text.
The company co_name
is a member of the co_industry
group.
start with health_cos THEN
group_by industry THEN
calculate the median research and development expenditure as a percent of revenue by industry
assign the output to df
glimpse
to glimpse the data for the plotsdf %>% glimpse()
Rows: 9
Columns: 2
$ industry <chr> "Biotechnology", "Diagnostics & Research", "D...
$ med_rnd_rev <dbl> 0.48317287, 0.05620271, 0.17451442, 0.0685187...
ggplot
to initialize the chartdf
industry
is mapped to the x-axis
med_rnd_rev
med_rnd_rev
is mapped to the y-axisgeom_col
scale_y_continuous
to label the y-axis with percentcoord_flip()
to flip the coordinateslabs
to add title, subtitle and remove x and y-axestheme_ipsum()
from the hrbrthemes package to improve the themeggplot(data = df,
mapping = aes(
x = reorder(industry, med_rnd_rev ),
y = med_rnd_rev
)) +
geom_col() +
scale_y_continuous(labels = scales::percent) +
coord_flip() +
labs(
title = "Median R&D expenditures",
subtitle = "by industry as a percent of revenue from 2011 to 2018",
x = NULL, y = NULL) +
theme_ipsum()
ggsave(filename = "preview.png",
path = here::here("_posts", "2021-03-16-joining-data"))
df
med_rnd_rev
e_charts
to initialize a chart
industry
is mapped to the x-axise_bar
with the values of med_rnd_rev
e_flip_coords()
to flip the coordinatese_title
to add the title and the subtitlee_legend
to remove the legendse_x_axis
to change format of labels on x-axis to percente_y_axis
to remove labels on y-axis-e_theme
to change the theme. Find more themes here heredf %>%
arrange(med_rnd_rev) %>%
e_charts(
x = industry
) %>%
e_bar(
serie = med_rnd_rev,
name = "median"
) %>%
e_flip_coords() %>%
e_tooltip() %>%
e_title(
text = "Median industry R&D expenditures",
subtext = "by industry as a percent of revenue from 2011 to 2018",
left = "center") %>%
e_legend(FALSE) %>%
e_x_axis(
formatter = e_axis_formatter("percent", digits = 0)
) %>%
e_y_axis(
show = FALSE
) %>%
e_theme("infographic")