Code for Quiz 5. More Practice with dplyr functions.
drug_cos <- read_csv("https://estanny.com/static/week5/drug_cos.csv")
glimpse(drug_cos)
Rows: 104
Columns: 9
$ ticker <chr> "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "ZTS", "ZTS"…
$ name <chr> "Zoetis Inc", "Zoetis Inc", "Zoetis Inc", "Zoet…
$ location <chr> "New Jersey; U.S.A", "New Jersey; U.S.A", "New …
$ ebitdamargin <dbl> 0.149, 0.217, 0.222, 0.238, 0.182, 0.335, 0.366…
$ grossmargin <dbl> 0.610, 0.640, 0.634, 0.641, 0.635, 0.659, 0.666…
$ netmargin <dbl> 0.058, 0.101, 0.111, 0.122, 0.071, 0.168, 0.163…
$ ros <dbl> 0.101, 0.171, 0.176, 0.195, 0.140, 0.286, 0.321…
$ roe <dbl> 0.069, 0.113, 0.612, 0.465, 0.285, 0.587, 0.488…
$ year <dbl> 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018,…
# A tibble: 8 × 1
year
<dbl>
1 2011
2 2012
3 2013
4 2014
5 2015
6 2016
7 2017
8 2018
# A tibble: 8 × 2
year n
<dbl> <int>
1 2011 13
2 2012 13
3 2013 13
4 2014 13
5 2015 13
6 2016 13
7 2017 13
8 2018 13
# A tibble: 13 × 2
name n
<chr> <int>
1 AbbVie Inc 8
2 Allergan plc 8
3 Amgen Inc 8
4 Biogen Inc 8
5 Bristol Myers Squibb Co 8
6 ELI LILLY & Co 8
7 Gilead Sciences Inc 8
8 Johnson & Johnson 8
9 Merck & Co Inc 8
10 Mylan NV 8
11 PERRIGO Co plc 8
12 Pfizer Inc 8
13 Zoetis Inc 8
# A tibble: 13 × 3
ticker name n
<chr> <chr> <int>
1 ABBV AbbVie Inc 8
2 AGN Allergan plc 8
3 AMGN Amgen Inc 8
4 BIIB Biogen Inc 8
5 BMY Bristol Myers Squibb Co 8
6 GILD Gilead Sciences Inc 8
7 JNJ Johnson & Johnson 8
8 LLY ELI LILLY & Co 8
9 MRK Merck & Co Inc 8
10 MYL Mylan NV 8
11 PFE Pfizer Inc 8
12 PRGO PERRIGO Co plc 8
13 ZTS Zoetis Inc 8
Use ‘filter()’ to extract rows that meet criteria
# A tibble: 26 × 9
ticker name location ebitdamargin grossmargin netmargin ros
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
1 ZTS Zoetis Inc New Jer… 0.222 0.634 0.111 0.176
2 ZTS Zoetis Inc New Jer… 0.379 0.672 0.245 0.326
3 PRGO PERRIGO C… Ireland 0.236 0.362 0.125 0.19
4 PRGO PERRIGO C… Ireland 0.178 0.387 0.028 0.088
5 PFE Pfizer Inc New Yor… 0.634 0.814 0.427 0.51
6 PFE Pfizer Inc New Yor… 0.34 0.79 0.208 0.221
7 MYL Mylan NV United … 0.228 0.44 0.09 0.153
8 MYL Mylan NV United … 0.258 0.35 0.031 0.074
9 MRK Merck & C… New Jer… 0.282 0.615 0.1 0.123
10 MRK Merck & C… New Jer… 0.313 0.681 0.147 0.206
# … with 16 more rows, and 2 more variables: roe <dbl>, year <dbl>
# A tibble: 52 × 9
ticker name location ebitdamargin grossmargin netmargin ros
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
1 ZTS Zoetis I… New Jer… 0.217 0.64 0.101 0.171
2 ZTS Zoetis I… New Jer… 0.238 0.641 0.122 0.195
3 ZTS Zoetis I… New Jer… 0.335 0.659 0.168 0.286
4 ZTS Zoetis I… New Jer… 0.379 0.672 0.245 0.326
5 PRGO PERRIGO … Ireland 0.226 0.345 0.127 0.183
6 PRGO PERRIGO … Ireland 0.157 0.371 0.059 0.104
7 PRGO PERRIGO … Ireland -0.791 0.389 -0.76 -0.877
8 PRGO PERRIGO … Ireland 0.178 0.387 0.028 0.088
9 PFE Pfizer I… New Yor… 0.447 0.82 0.267 0.307
10 PFE Pfizer I… New Yor… 0.359 0.807 0.184 0.247
# … with 42 more rows, and 2 more variables: roe <dbl>, year <dbl>
# A tibble: 16 × 9
ticker name location ebitdamargin grossmargin netmargin ros
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
1 PFE Pfizer Inc New Yor… 0.371 0.795 0.164 0.223
2 PFE Pfizer Inc New Yor… 0.447 0.82 0.267 0.307
3 PFE Pfizer Inc New Yor… 0.634 0.814 0.427 0.51
4 PFE Pfizer Inc New Yor… 0.359 0.807 0.184 0.247
5 PFE Pfizer Inc New Yor… 0.289 0.803 0.142 0.183
6 PFE Pfizer Inc New Yor… 0.267 0.767 0.137 0.158
7 PFE Pfizer Inc New Yor… 0.353 0.786 0.406 0.233
8 PFE Pfizer Inc New Yor… 0.34 0.79 0.208 0.221
9 MYL Mylan NV United … 0.245 0.418 0.088 0.161
10 MYL Mylan NV United … 0.244 0.428 0.094 0.163
11 MYL Mylan NV United … 0.228 0.44 0.09 0.153
12 MYL Mylan NV United … 0.242 0.457 0.12 0.169
13 MYL Mylan NV United … 0.243 0.447 0.09 0.133
14 MYL Mylan NV United … 0.19 0.424 0.043 0.052
15 MYL Mylan NV United … 0.272 0.402 0.058 0.121
16 MYL Mylan NV United … 0.258 0.35 0.031 0.074
# … with 2 more variables: roe <dbl>, year <dbl>
Use ‘select()’ to select, rename and reorder columns
# A tibble: 104 × 3
ticker name ros
<chr> <chr> <dbl>
1 ZTS Zoetis Inc 0.101
2 ZTS Zoetis Inc 0.171
3 ZTS Zoetis Inc 0.176
4 ZTS Zoetis Inc 0.195
5 ZTS Zoetis Inc 0.14
6 ZTS Zoetis Inc 0.286
7 ZTS Zoetis Inc 0.321
8 ZTS Zoetis Inc 0.326
9 PRGO PERRIGO Co plc 0.178
10 PRGO PERRIGO Co plc 0.183
# … with 94 more rows
# A tibble: 104 × 6
location ebitdamargin grossmargin netmargin roe year
<chr> <dbl> <dbl> <dbl> <dbl> <dbl>
1 New Jersey; U.S.A 0.149 0.61 0.058 0.069 2011
2 New Jersey; U.S.A 0.217 0.64 0.101 0.113 2012
3 New Jersey; U.S.A 0.222 0.634 0.111 0.612 2013
4 New Jersey; U.S.A 0.238 0.641 0.122 0.465 2014
5 New Jersey; U.S.A 0.182 0.635 0.071 0.285 2015
6 New Jersey; U.S.A 0.335 0.659 0.168 0.587 2016
7 New Jersey; U.S.A 0.366 0.666 0.163 0.488 2017
8 New Jersey; U.S.A 0.379 0.672 0.245 0.694 2018
9 Ireland 0.216 0.343 0.123 0.248 2011
10 Ireland 0.226 0.345 0.127 0.236 2012
# … with 94 more rows
start with ‘drug_cos’ THEN
change the name of ‘location’ to ‘headquarter’
put the columns in this order: ‘year’, ‘ticker’, ‘headquarter’, ‘netmargin’, ‘roe’
# A tibble: 104 × 5
year ticker headquarter netmargin roe
<dbl> <chr> <chr> <dbl> <dbl>
1 2011 ZTS New Jersey; U.S.A 0.058 0.069
2 2012 ZTS New Jersey; U.S.A 0.101 0.113
3 2013 ZTS New Jersey; U.S.A 0.111 0.612
4 2014 ZTS New Jersey; U.S.A 0.122 0.465
5 2015 ZTS New Jersey; U.S.A 0.071 0.285
6 2016 ZTS New Jersey; U.S.A 0.168 0.587
7 2017 ZTS New Jersey; U.S.A 0.163 0.488
8 2018 ZTS New Jersey; U.S.A 0.245 0.694
9 2011 PRGO Ireland 0.123 0.248
10 2012 PRGO Ireland 0.127 0.236
# … with 94 more rows
Question: filter and select
Use inputs from your quiz question ‘filter and select’ and replace ‘SEE QUIZ’ with inputs from your quiz and replace the ‘???’ in the code
start with ‘drug_cos’ THEN
extract information for the tickers ABBV, ZTS, AMGN THEN
select the variables ‘ticker’ , ‘year’ , and netmargin
# A tibble: 24 × 3
ticker year netmargin
<chr> <dbl> <dbl>
1 ZTS 2011 0.058
2 ZTS 2012 0.101
3 ZTS 2013 0.111
4 ZTS 2014 0.122
5 ZTS 2015 0.071
6 ZTS 2016 0.168
7 ZTS 2017 0.163
8 ZTS 2018 0.245
9 AMGN 2011 0.236
10 AMGN 2012 0.252
# … with 14 more rows
Question: rename
start with ‘drug_cos’ THEN
extract information for the tickers PFE, BMY, THEN
select the variables ‘ticker’ , ‘ebitdamargin’ and ‘roe’. Change the name of ‘roe’ to ‘return_on_equity’
drug_cos %>%
filter(ticker %in% c("PFE", "BMY")) %>%
select(ticker, ebitdamargin, return_on_equity = roe)
# A tibble: 16 × 3
ticker ebitdamargin return_on_equity
<chr> <dbl> <dbl>
1 PFE 0.371 0.114
2 PFE 0.447 0.179
3 PFE 0.634 0.279
4 PFE 0.359 0.12
5 PFE 0.289 0.105
6 PFE 0.267 0.116
7 PFE 0.353 0.342
8 PFE 0.34 0.162
9 BMY 0.285 0.229
10 BMY 0.141 0.131
11 BMY 0.222 0.177
12 BMY 0.178 0.132
13 BMY 0.144 0.104
14 BMY 0.322 0.292
15 BMY 0.286 0.072
16 BMY 0.292 0.373
# A tibble: 104 × 3
ebitdamargin grossmargin netmargin
<dbl> <dbl> <dbl>
1 0.149 0.61 0.058
2 0.217 0.64 0.101
3 0.222 0.634 0.111
4 0.238 0.641 0.122
5 0.182 0.635 0.071
6 0.335 0.659 0.168
7 0.366 0.666 0.163
8 0.379 0.672 0.245
9 0.216 0.343 0.123
10 0.226 0.345 0.127
# … with 94 more rows
# A tibble: 104 × 3
ebitdamargin grossmargin netmargin
<dbl> <dbl> <dbl>
1 0.149 0.61 0.058
2 0.217 0.64 0.101
3 0.222 0.634 0.111
4 0.238 0.641 0.122
5 0.182 0.635 0.071
6 0.335 0.659 0.168
7 0.366 0.666 0.163
8 0.379 0.672 0.245
9 0.216 0.343 0.123
10 0.226 0.345 0.127
# … with 94 more rows
‘starts_with(“abc”)’ matches columns start with “abc”
‘ends_with(“abc”)’ matches columns end with “abc”
‘contains(“abc”)’ matches columns contain “abc”
# A tibble: 104 × 2
ticker location
<chr> <chr>
1 ZTS New Jersey; U.S.A
2 ZTS New Jersey; U.S.A
3 ZTS New Jersey; U.S.A
4 ZTS New Jersey; U.S.A
5 ZTS New Jersey; U.S.A
6 ZTS New Jersey; U.S.A
7 ZTS New Jersey; U.S.A
8 ZTS New Jersey; U.S.A
9 PRGO Ireland
10 PRGO Ireland
# … with 94 more rows
drug_cos %>%
select(ticker, starts_with("r"))
# A tibble: 104 × 3
ticker ros roe
<chr> <dbl> <dbl>
1 ZTS 0.101 0.069
2 ZTS 0.171 0.113
3 ZTS 0.176 0.612
4 ZTS 0.195 0.465
5 ZTS 0.14 0.285
6 ZTS 0.286 0.587
7 ZTS 0.321 0.488
8 ZTS 0.326 0.694
9 PRGO 0.178 0.248
10 PRGO 0.183 0.236
# … with 94 more rows
# A tibble: 104 × 4
year ebitdamargin grossmargin netmargin
<dbl> <dbl> <dbl> <dbl>
1 2011 0.149 0.61 0.058
2 2012 0.217 0.64 0.101
3 2013 0.222 0.634 0.111
4 2014 0.238 0.641 0.122
5 2015 0.182 0.635 0.071
6 2016 0.335 0.659 0.168
7 2017 0.366 0.666 0.163
8 2018 0.379 0.672 0.245
9 2011 0.216 0.343 0.123
10 2012 0.226 0.345 0.127
# … with 94 more rows
Use ‘group_by’ to set up data for operations by group
# A tibble: 104 × 9
# Groups: ticker [13]
ticker name location ebitdamargin grossmargin netmargin ros
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
1 ZTS Zoetis Inc New Jer… 0.149 0.61 0.058 0.101
2 ZTS Zoetis Inc New Jer… 0.217 0.64 0.101 0.171
3 ZTS Zoetis Inc New Jer… 0.222 0.634 0.111 0.176
4 ZTS Zoetis Inc New Jer… 0.238 0.641 0.122 0.195
5 ZTS Zoetis Inc New Jer… 0.182 0.635 0.071 0.14
6 ZTS Zoetis Inc New Jer… 0.335 0.659 0.168 0.286
7 ZTS Zoetis Inc New Jer… 0.366 0.666 0.163 0.321
8 ZTS Zoetis Inc New Jer… 0.379 0.672 0.245 0.326
9 PRGO PERRIGO C… Ireland 0.216 0.343 0.123 0.178
10 PRGO PERRIGO C… Ireland 0.226 0.345 0.127 0.183
# … with 94 more rows, and 2 more variables: roe <dbl>, year <dbl>
# A tibble: 104 × 9
# Groups: year [8]
ticker name location ebitdamargin grossmargin netmargin ros
<chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
1 ZTS Zoetis Inc New Jer… 0.149 0.61 0.058 0.101
2 ZTS Zoetis Inc New Jer… 0.217 0.64 0.101 0.171
3 ZTS Zoetis Inc New Jer… 0.222 0.634 0.111 0.176
4 ZTS Zoetis Inc New Jer… 0.238 0.641 0.122 0.195
5 ZTS Zoetis Inc New Jer… 0.182 0.635 0.071 0.14
6 ZTS Zoetis Inc New Jer… 0.335 0.659 0.168 0.286
7 ZTS Zoetis Inc New Jer… 0.366 0.666 0.163 0.321
8 ZTS Zoetis Inc New Jer… 0.379 0.672 0.245 0.326
9 PRGO PERRIGO C… Ireland 0.216 0.343 0.123 0.178
10 PRGO PERRIGO C… Ireland 0.226 0.345 0.127 0.183
# … with 94 more rows, and 2 more variables: roe <dbl>, year <dbl>
Use ‘summarize’ to calculate summary statistics
# A tibble: 8 × 2
year max_roe
<dbl> <dbl>
1 2011 0.451
2 2012 0.69
3 2013 1.13
4 2014 0.828
5 2015 1.31
6 2016 1.11
7 2017 0.932
8 2018 0.694
# A tibble: 13 × 2
ticker max_roe
<chr> <dbl>
1 ABBV 1.31
2 AGN 0.184
3 AMGN 0.585
4 BIIB 0.334
5 BMY 0.373
6 GILD 1.04
7 JNJ 0.244
8 LLY 0.306
9 MRK 0.248
10 MYL 0.283
11 PFE 0.342
12 PRGO 0.248
13 ZTS 0.694
Question: summarize
Mean for year
find the mean netmargin for each ‘year’ and call the variable mean_netmargin
extract the mean for 2016
drug_cos %>%
group_by(year) %>%
summarise(mean_netmargin = mean(netmargin)) %>%
filter(year == 2016)
# A tibble: 1 × 2
year mean_netmargin
<dbl> <dbl>
1 2016 0.201
Median for year
find the median netmargin for each ‘year’ and call the variable median_netmargin
extract the median for 2016
drug_cos %>%
group_by(year) %>%
summarise(median_netmargin = median(netmargin)) %>%
filter(year == 2016)
# A tibble: 1 × 2
year median_netmargin
<dbl> <dbl>
1 2016 0.229
drug_cos %>%
filter(ticker == "ZTS") %>%
ggplot(aes(x = year, y = netmargin)) +
geom_col() +
scale_y_continuous(labels = scales::percent) +
labs(title = "Comparision of net margin",
subtitle = "for ZTS from 2011 to 2018",
x = NULL, y = NULL) +
theme_classic()