Hate Crimes Assignment

library(tidyverse)
── Attaching core tidyverse packages ──────────────────────── tidyverse 2.0.0 ──
✔ dplyr     1.1.4     ✔ readr     2.1.5
✔ forcats   1.0.0     ✔ stringr   1.5.1
✔ ggplot2   3.5.1     ✔ tibble    3.2.1
✔ lubridate 1.9.4     ✔ tidyr     1.3.1
✔ purrr     1.0.4     
── Conflicts ────────────────────────────────────────── tidyverse_conflicts() ──
✖ dplyr::filter() masks stats::filter()
✖ dplyr::lag()    masks stats::lag()
ℹ Use the conflicted package (<http://conflicted.r-lib.org/>) to force all conflicts to become errors
#tinytex::install_tinytex()
#library(tinytex)
setwd("~/Data 110 Class Folder")
hatecrimes <- read_csv("hateCrimes2010.csv")
Rows: 423 Columns: 44
── Column specification ────────────────────────────────────────────────────────
Delimiter: ","
chr  (2): County, Crime Type
dbl (42): Year, Anti-Male, Anti-Female, Anti-Transgender, Anti-Gender Identi...

ℹ Use `spec()` to retrieve the full column specification for this data.
ℹ Specify the column types or set `show_col_types = FALSE` to quiet this message.
names(hatecrimes) <- tolower(names(hatecrimes))
names(hatecrimes) <- gsub(" ","",names(hatecrimes))
head(hatecrimes)
# A tibble: 6 × 44
  county    year crimetype          `anti-male` `anti-female` `anti-transgender`
  <chr>    <dbl> <chr>                    <dbl>         <dbl>              <dbl>
1 Albany    2016 Crimes Against Pe…           0             0                  0
2 Albany    2016 Property Crimes              0             0                  0
3 Allegany  2016 Property Crimes              0             0                  0
4 Bronx     2016 Crimes Against Pe…           0             0                  4
5 Bronx     2016 Property Crimes              0             0                  0
6 Broome    2016 Crimes Against Pe…           0             0                  0
# ℹ 38 more variables: `anti-genderidentityexpression` <dbl>,
#   `anti-age*` <dbl>, `anti-white` <dbl>, `anti-black` <dbl>,
#   `anti-americanindian/alaskannative` <dbl>, `anti-asian` <dbl>,
#   `anti-nativehawaiian/pacificislander` <dbl>,
#   `anti-multi-racialgroups` <dbl>, `anti-otherrace` <dbl>,
#   `anti-jewish` <dbl>, `anti-catholic` <dbl>, `anti-protestant` <dbl>,
#   `anti-islamic(muslim)` <dbl>, `anti-multi-religiousgroups` <dbl>, …
summary(hatecrimes)
    county               year       crimetype           anti-male       
 Length:423         Min.   :2010   Length:423         Min.   :0.000000  
 Class :character   1st Qu.:2011   Class :character   1st Qu.:0.000000  
 Mode  :character   Median :2013   Mode  :character   Median :0.000000  
                    Mean   :2013                      Mean   :0.007092  
                    3rd Qu.:2015                      3rd Qu.:0.000000  
                    Max.   :2016                      Max.   :1.000000  
  anti-female      anti-transgender  anti-genderidentityexpression
 Min.   :0.00000   Min.   :0.00000   Min.   :0.00000              
 1st Qu.:0.00000   1st Qu.:0.00000   1st Qu.:0.00000              
 Median :0.00000   Median :0.00000   Median :0.00000              
 Mean   :0.01655   Mean   :0.04728   Mean   :0.05674              
 3rd Qu.:0.00000   3rd Qu.:0.00000   3rd Qu.:0.00000              
 Max.   :1.00000   Max.   :5.00000   Max.   :3.00000              
   anti-age*         anti-white        anti-black    
 Min.   :0.00000   Min.   : 0.0000   Min.   : 0.000  
 1st Qu.:0.00000   1st Qu.: 0.0000   1st Qu.: 0.000  
 Median :0.00000   Median : 0.0000   Median : 1.000  
 Mean   :0.05201   Mean   : 0.3357   Mean   : 1.761  
 3rd Qu.:0.00000   3rd Qu.: 0.0000   3rd Qu.: 2.000  
 Max.   :9.00000   Max.   :11.0000   Max.   :18.000  
 anti-americanindian/alaskannative   anti-asian    
 Min.   :0.000000                  Min.   :0.0000  
 1st Qu.:0.000000                  1st Qu.:0.0000  
 Median :0.000000                  Median :0.0000  
 Mean   :0.007092                  Mean   :0.1773  
 3rd Qu.:0.000000                  3rd Qu.:0.0000  
 Max.   :1.000000                  Max.   :8.0000  
 anti-nativehawaiian/pacificislander anti-multi-racialgroups anti-otherrace
 Min.   :0                           Min.   :0.00000         Min.   :0     
 1st Qu.:0                           1st Qu.:0.00000         1st Qu.:0     
 Median :0                           Median :0.00000         Median :0     
 Mean   :0                           Mean   :0.08511         Mean   :0     
 3rd Qu.:0                           3rd Qu.:0.00000         3rd Qu.:0     
 Max.   :0                           Max.   :3.00000         Max.   :0     
  anti-jewish     anti-catholic     anti-protestant   anti-islamic(muslim)
 Min.   : 0.000   Min.   : 0.0000   Min.   :0.00000   Min.   : 0.0000     
 1st Qu.: 0.000   1st Qu.: 0.0000   1st Qu.:0.00000   1st Qu.: 0.0000     
 Median : 0.000   Median : 0.0000   Median :0.00000   Median : 0.0000     
 Mean   : 3.981   Mean   : 0.2695   Mean   :0.02364   Mean   : 0.4704     
 3rd Qu.: 3.000   3rd Qu.: 0.0000   3rd Qu.:0.00000   3rd Qu.: 0.0000     
 Max.   :82.000   Max.   :12.0000   Max.   :1.00000   Max.   :10.0000     
 anti-multi-religiousgroups anti-atheism/agnosticism
 Min.   : 0.00000           Min.   :0               
 1st Qu.: 0.00000           1st Qu.:0               
 Median : 0.00000           Median :0               
 Mean   : 0.07565           Mean   :0               
 3rd Qu.: 0.00000           3rd Qu.:0               
 Max.   :10.00000           Max.   :0               
 anti-religiouspracticegenerally anti-otherreligion anti-buddhist
 Min.   :0.000000                Min.   :0.000      Min.   :0    
 1st Qu.:0.000000                1st Qu.:0.000      1st Qu.:0    
 Median :0.000000                Median :0.000      Median :0    
 Mean   :0.007092                Mean   :0.104      Mean   :0    
 3rd Qu.:0.000000                3rd Qu.:0.000      3rd Qu.:0    
 Max.   :2.000000                Max.   :4.000      Max.   :0    
 anti-easternorthodox(greek,russian,etc.)   anti-hindu      
 Min.   :0.000000                         Min.   :0.000000  
 1st Qu.:0.000000                         1st Qu.:0.000000  
 Median :0.000000                         Median :0.000000  
 Mean   :0.002364                         Mean   :0.002364  
 3rd Qu.:0.000000                         3rd Qu.:0.000000  
 Max.   :1.000000                         Max.   :1.000000  
 anti-jehovahswitness  anti-mormon anti-otherchristian   anti-sikh
 Min.   :0            Min.   :0    Min.   :0.00000     Min.   :0  
 1st Qu.:0            1st Qu.:0    1st Qu.:0.00000     1st Qu.:0  
 Median :0            Median :0    Median :0.00000     Median :0  
 Mean   :0            Mean   :0    Mean   :0.01655     Mean   :0  
 3rd Qu.:0            3rd Qu.:0    3rd Qu.:0.00000     3rd Qu.:0  
 Max.   :0            Max.   :0    Max.   :3.00000     Max.   :0  
 anti-hispanic       anti-arab       anti-otherethnicity/nationalorigin
 Min.   : 0.0000   Min.   :0.00000   Min.   : 0.0000                   
 1st Qu.: 0.0000   1st Qu.:0.00000   1st Qu.: 0.0000                   
 Median : 0.0000   Median :0.00000   Median : 0.0000                   
 Mean   : 0.3735   Mean   :0.06619   Mean   : 0.2837                   
 3rd Qu.: 0.0000   3rd Qu.:0.00000   3rd Qu.: 0.0000                   
 Max.   :17.0000   Max.   :2.00000   Max.   :19.0000                   
 anti-non-hispanic*  anti-gaymale    anti-gayfemale   anti-gay(maleandfemale)
 Min.   :0          Min.   : 0.000   Min.   :0.0000   Min.   :0.0000         
 1st Qu.:0          1st Qu.: 0.000   1st Qu.:0.0000   1st Qu.:0.0000         
 Median :0          Median : 0.000   Median :0.0000   Median :0.0000         
 Mean   :0          Mean   : 1.499   Mean   :0.2411   Mean   :0.1017         
 3rd Qu.:0          3rd Qu.: 1.000   3rd Qu.:0.0000   3rd Qu.:0.0000         
 Max.   :0          Max.   :36.000   Max.   :8.0000   Max.   :4.0000         
 anti-heterosexual  anti-bisexual      anti-physicaldisability
 Min.   :0.000000   Min.   :0.000000   Min.   :0.00000        
 1st Qu.:0.000000   1st Qu.:0.000000   1st Qu.:0.00000        
 Median :0.000000   Median :0.000000   Median :0.00000        
 Mean   :0.002364   Mean   :0.004728   Mean   :0.01182        
 3rd Qu.:0.000000   3rd Qu.:0.000000   3rd Qu.:0.00000        
 Max.   :1.000000   Max.   :1.000000   Max.   :1.00000        
 anti-mentaldisability totalincidents    totalvictims    totaloffenders  
 Min.   :0.000000      Min.   :  1.00   Min.   :  1.00   Min.   :  1.00  
 1st Qu.:0.000000      1st Qu.:  1.00   1st Qu.:  1.00   1st Qu.:  1.00  
 Median :0.000000      Median :  3.00   Median :  3.00   Median :  3.00  
 Mean   :0.009456      Mean   : 10.09   Mean   : 10.48   Mean   : 11.77  
 3rd Qu.:0.000000      3rd Qu.: 10.00   3rd Qu.: 10.00   3rd Qu.: 11.00  
 Max.   :1.000000      Max.   :101.00   Max.   :106.00   Max.   :113.00  
hatecrimes2 <- hatecrimes |>
  select(county, year, 'anti-black', 'anti-white', 'anti-jewish', 'anti-catholic','anti-age*','anti-islamic(muslim)', `anti-multi-religiousgroups`, 'anti-gaymale', 'anti-hispanic', `anti-otherethnicity/nationalorigin`) |>
  group_by(county, year)
head(hatecrimes2)
# A tibble: 6 × 12
# Groups:   county, year [4]
  county    year `anti-black` `anti-white` `anti-jewish` `anti-catholic`
  <chr>    <dbl>        <dbl>        <dbl>         <dbl>           <dbl>
1 Albany    2016            1            0             0               0
2 Albany    2016            2            0             0               0
3 Allegany  2016            1            0             0               0
4 Bronx     2016            0            1             0               0
5 Bronx     2016            0            1             1               0
6 Broome    2016            1            0             0               0
# ℹ 6 more variables: `anti-age*` <dbl>, `anti-islamic(muslim)` <dbl>,
#   `anti-multi-religiousgroups` <dbl>, `anti-gaymale` <dbl>,
#   `anti-hispanic` <dbl>, `anti-otherethnicity/nationalorigin` <dbl>
dim(hatecrimes2)
[1] 423  12
# There are currently 12 variables with 423 rows.
summary(hatecrimes2)
    county               year        anti-black       anti-white     
 Length:423         Min.   :2010   Min.   : 0.000   Min.   : 0.0000  
 Class :character   1st Qu.:2011   1st Qu.: 0.000   1st Qu.: 0.0000  
 Mode  :character   Median :2013   Median : 1.000   Median : 0.0000  
                    Mean   :2013   Mean   : 1.761   Mean   : 0.3357  
                    3rd Qu.:2015   3rd Qu.: 2.000   3rd Qu.: 0.0000  
                    Max.   :2016   Max.   :18.000   Max.   :11.0000  
  anti-jewish     anti-catholic       anti-age*       anti-islamic(muslim)
 Min.   : 0.000   Min.   : 0.0000   Min.   :0.00000   Min.   : 0.0000     
 1st Qu.: 0.000   1st Qu.: 0.0000   1st Qu.:0.00000   1st Qu.: 0.0000     
 Median : 0.000   Median : 0.0000   Median :0.00000   Median : 0.0000     
 Mean   : 3.981   Mean   : 0.2695   Mean   :0.05201   Mean   : 0.4704     
 3rd Qu.: 3.000   3rd Qu.: 0.0000   3rd Qu.:0.00000   3rd Qu.: 0.0000     
 Max.   :82.000   Max.   :12.0000   Max.   :9.00000   Max.   :10.0000     
 anti-multi-religiousgroups  anti-gaymale    anti-hispanic    
 Min.   : 0.00000           Min.   : 0.000   Min.   : 0.0000  
 1st Qu.: 0.00000           1st Qu.: 0.000   1st Qu.: 0.0000  
 Median : 0.00000           Median : 0.000   Median : 0.0000  
 Mean   : 0.07565           Mean   : 1.499   Mean   : 0.3735  
 3rd Qu.: 0.00000           3rd Qu.: 1.000   3rd Qu.: 0.0000  
 Max.   :10.00000           Max.   :36.000   Max.   :17.0000  
 anti-otherethnicity/nationalorigin
 Min.   : 0.0000                   
 1st Qu.: 0.0000                   
 Median : 0.0000                   
 Mean   : 0.2837                   
 3rd Qu.: 0.0000                   
 Max.   :19.0000                   
hatelong <- hatecrimes2 |> 
    pivot_longer(
        cols = 3:12,
        names_to = "victim_cat",
        values_to = "crimecount")
hatecrimplot <-hatelong |> 
  ggplot(aes(year, crimecount))+
  geom_point()+
  aes(color = victim_cat)+
  facet_wrap(~victim_cat)
hatecrimplot

hatenew <- hatelong |>
  filter( victim_cat %in% c("anti-black", "anti-jewish", "anti-gaymale"))|>
  group_by(year, county) |>
  arrange(desc(crimecount))
hatenew
# A tibble: 1,269 × 4
# Groups:   year, county [277]
   county   year victim_cat  crimecount
   <chr>   <dbl> <chr>            <dbl>
 1 Kings    2012 anti-jewish         82
 2 Kings    2016 anti-jewish         51
 3 Suffolk  2014 anti-jewish         48
 4 Suffolk  2012 anti-jewish         48
 5 Kings    2011 anti-jewish         44
 6 Kings    2013 anti-jewish         41
 7 Kings    2010 anti-jewish         39
 8 Nassau   2011 anti-jewish         38
 9 Suffolk  2013 anti-jewish         37
10 Nassau   2016 anti-jewish         36
# ℹ 1,259 more rows
plot2 <- hatenew |>
  ggplot() +
  geom_bar(aes(x=year, y=crimecount, fill = victim_cat),
      position = "dodge", stat = "identity") +
  labs(fill = "Hate Crime Type",
       y = "Number of Hate Crime Incidents",
       title = "Hate Crime Type in NY Counties Between 2010-2016",
       caption = "Source: NY State Division of Criminal Justice Services")
plot2

plot3 <- hatenew |>
  ggplot() +
  geom_bar(aes(x=county, y=crimecount, fill = victim_cat),
      position = "dodge", stat = "identity") +
  labs(fill = "Hate Crime Type",
       y = "Number of Hate Crime Incidents",
       title = "Hate Crime Type in NY Counties Between 2010-2016",
       caption = "Source: NY State Division of Criminal Justice Services")
plot3

counties <- hatenew |>
  group_by(year, county)|>
  summarize(sum = sum(crimecount)) |>
  arrange(desc(sum))
`summarise()` has grouped output by 'year'. You can override using the
`.groups` argument.
counties
# A tibble: 277 × 3
# Groups:   year [7]
    year county     sum
   <dbl> <chr>    <dbl>
 1  2012 Kings      136
 2  2010 Kings      110
 3  2016 Kings      101
 4  2013 Kings       96
 5  2014 Kings       94
 6  2015 Kings       90
 7  2011 Kings       86
 8  2016 New York    86
 9  2012 Suffolk     83
10  2013 New York    75
# ℹ 267 more rows
counties2 <- hatenew |>
  group_by(county)|>
  summarize(sum = sum(crimecount)) |>
  slice_max(order_by = sum, n=5)
counties2
# A tibble: 5 × 2
  county     sum
  <chr>    <dbl>
1 Kings      713
2 New York   459
3 Suffolk    360
4 Nassau     298
5 Queens     235
plot4 <- hatenew |>
  filter(county %in% c("Kings", "New York", "Suffolk", "Nassau", "Queens")) |>
  ggplot() +
  geom_bar(aes(x=county, y=crimecount, fill = victim_cat),
      position = "dodge", stat = "identity") +
  labs(y = "Number of Hate Crime Incidents",
       title = "5 Counties in NY with Highest Incidents of Hate Crimes",
       subtitle = "Between 2010-2016", 
       fill = "Hate Crime Type",
      caption = "Source: NY State Division of Criminal Justice Services")
plot4

setwd("~/Data 110 Class Folder")
nypop <- read_csv("newyorkpopulation.csv")
Rows: 62 Columns: 8
── Column specification ────────────────────────────────────────────────────────
Delimiter: ","
chr (1): Geography
dbl (7): 2010, 2011, 2012, 2013, 2014, 2015, 2016

ℹ Use `spec()` to retrieve the full column specification for this data.
ℹ Specify the column types or set `show_col_types = FALSE` to quiet this message.
nypop$Geography <- gsub(" , New York", "", nypop$Geography)
nypop$Geography <- gsub("County", "", nypop$Geography)
nypoplong <- nypop |>
  rename(county = Geography) |>
  gather("year", "population", 2:8) 
nypoplong$year <- as.double(nypoplong$year)
head(nypoplong)
# A tibble: 6 × 3
  county                  year population
  <chr>                  <dbl>      <dbl>
1 Albany , New York       2010     304078
2 Allegany , New York     2010      48949
3 Bronx , New York        2010    1388240
4 Broome , New York       2010     200469
5 Cattaraugus , New York  2010      80249
6 Cayuga , New York       2010      79844
nypoplong12 <- nypoplong |>
  filter(year == 2012) |>
  arrange(desc(population)) |>
  head(10)
nypoplong12$county<-gsub(" , New York","",nypoplong12$county)
nypoplong12
# A tibble: 10 × 3
   county       year population
   <chr>       <dbl>      <dbl>
 1 Kings        2012    2572282
 2 Queens       2012    2278024
 3 New York     2012    1625121
 4 Suffolk      2012    1499382
 5 Bronx        2012    1414774
 6 Nassau       2012    1350748
 7 Westchester  2012     961073
 8 Erie         2012     920792
 9 Monroe       2012     748947
10 Richmond     2012     470978
counties12 <- counties |>
  filter(year == 2012) |>
  arrange(desc(sum)) 
counties12
# A tibble: 41 × 3
# Groups:   year [1]
    year county        sum
   <dbl> <chr>       <dbl>
 1  2012 Kings         136
 2  2012 Suffolk        83
 3  2012 New York       71
 4  2012 Nassau         48
 5  2012 Queens         48
 6  2012 Erie           28
 7  2012 Bronx          23
 8  2012 Richmond       18
 9  2012 Multiple       14
10  2012 Westchester    13
# ℹ 31 more rows
datajoin <- counties12 |>
  full_join(nypoplong12, by=c("county", "year"))
datajoin
# A tibble: 41 × 4
# Groups:   year [1]
    year county        sum population
   <dbl> <chr>       <dbl>      <dbl>
 1  2012 Kings         136    2572282
 2  2012 Suffolk        83    1499382
 3  2012 New York       71    1625121
 4  2012 Nassau         48    1350748
 5  2012 Queens         48    2278024
 6  2012 Erie           28     920792
 7  2012 Bronx          23    1414774
 8  2012 Richmond       18     470978
 9  2012 Multiple       14         NA
10  2012 Westchester    13     961073
# ℹ 31 more rows
datajoin <- counties12 |>
  full_join(nypoplong12, by=c("county", "year"))
datajoin
# A tibble: 41 × 4
# Groups:   year [1]
    year county        sum population
   <dbl> <chr>       <dbl>      <dbl>
 1  2012 Kings         136    2572282
 2  2012 Suffolk        83    1499382
 3  2012 New York       71    1625121
 4  2012 Nassau         48    1350748
 5  2012 Queens         48    2278024
 6  2012 Erie           28     920792
 7  2012 Bronx          23    1414774
 8  2012 Richmond       18     470978
 9  2012 Multiple       14         NA
10  2012 Westchester    13     961073
# ℹ 31 more rows
datajoinrate <- datajoin |>
  mutate(rate = sum/population*100000) |>
  arrange(desc(rate))
datajoinrate
# A tibble: 41 × 5
# Groups:   year [1]
    year county        sum population  rate
   <dbl> <chr>       <dbl>      <dbl> <dbl>
 1  2012 Suffolk        83    1499382 5.54 
 2  2012 Kings         136    2572282 5.29 
 3  2012 New York       71    1625121 4.37 
 4  2012 Richmond       18     470978 3.82 
 5  2012 Nassau         48    1350748 3.55 
 6  2012 Erie           28     920792 3.04 
 7  2012 Queens         48    2278024 2.11 
 8  2012 Bronx          23    1414774 1.63 
 9  2012 Westchester    13     961073 1.35 
10  2012 Monroe          5     748947 0.668
# ℹ 31 more rows
dt <- datajoinrate[,c("county","rate")]
dt
# A tibble: 41 × 2
   county       rate
   <chr>       <dbl>
 1 Suffolk     5.54 
 2 Kings       5.29 
 3 New York    4.37 
 4 Richmond    3.82 
 5 Nassau      3.55 
 6 Erie        3.04 
 7 Queens      2.11 
 8 Bronx       1.63 
 9 Westchester 1.35 
10 Monroe      0.668
# ℹ 31 more rows
aggregategroups <- hatecrimes |>
  pivot_longer(
    cols = 4:44,
    names_to = "victim_cat",
    values_to = "crimecount"
  )
unique(aggregategroups$victim_cat)
 [1] "anti-male"                               
 [2] "anti-female"                             
 [3] "anti-transgender"                        
 [4] "anti-genderidentityexpression"           
 [5] "anti-age*"                               
 [6] "anti-white"                              
 [7] "anti-black"                              
 [8] "anti-americanindian/alaskannative"       
 [9] "anti-asian"                              
[10] "anti-nativehawaiian/pacificislander"     
[11] "anti-multi-racialgroups"                 
[12] "anti-otherrace"                          
[13] "anti-jewish"                             
[14] "anti-catholic"                           
[15] "anti-protestant"                         
[16] "anti-islamic(muslim)"                    
[17] "anti-multi-religiousgroups"              
[18] "anti-atheism/agnosticism"                
[19] "anti-religiouspracticegenerally"         
[20] "anti-otherreligion"                      
[21] "anti-buddhist"                           
[22] "anti-easternorthodox(greek,russian,etc.)"
[23] "anti-hindu"                              
[24] "anti-jehovahswitness"                    
[25] "anti-mormon"                             
[26] "anti-otherchristian"                     
[27] "anti-sikh"                               
[28] "anti-hispanic"                           
[29] "anti-arab"                               
[30] "anti-otherethnicity/nationalorigin"      
[31] "anti-non-hispanic*"                      
[32] "anti-gaymale"                            
[33] "anti-gayfemale"                          
[34] "anti-gay(maleandfemale)"                 
[35] "anti-heterosexual"                       
[36] "anti-bisexual"                           
[37] "anti-physicaldisability"                 
[38] "anti-mentaldisability"                   
[39] "totalincidents"                          
[40] "totalvictims"                            
[41] "totaloffenders"                          
aggregategroups <- aggregategroups |>
  mutate(group = case_when(
    victim_cat %in% c("anti-transgender", "anti-gayfemale", "anti-gendervictim_catendityexpression", "anti-gaymale", "anti-gay(maleandfemale", "anti-bisexual") ~ "anti-lgbtq",
    victim_cat %in% c("anti-multi-racialgroups", "anti-jewish", "anti-protestant", "anti-multi-religousgroups", "anti-religiouspracticegenerally", "anti-buddhist", "anti-hindu", "anti-mormon", "anti-sikh", "anti-catholic", "anti-islamic(muslim)", "anti-atheism/agnosticism", "anti-otherreligion", "anti-easternorthodox(greek,russian,etc.)", "anti-jehovahswitness", "anti-otherchristian") ~ "anti-religion", 
    victim_cat %in% c("anti-asian", "anti-arab", "anti-non-hispanic", "anti-white", "anti-americanindian/alaskannative", "anti-nativehawaiian/pacificislander", "anti-otherrace", "anti-hispanic", "anti-otherethnicity/nationalorigin") ~ "anti-ethnicity",
    victim_cat %in% c("anti-physicaldisability", "anti-mentaldisability") ~ "anti-disability",
    victim_cat %in% c("anti-female", "anti-male") ~ "anti-gender",
    TRUE ~ "others"))
aggregategroups
# A tibble: 17,343 × 6
   county  year crimetype              victim_cat               crimecount group
   <chr>  <dbl> <chr>                  <chr>                         <dbl> <chr>
 1 Albany  2016 Crimes Against Persons anti-male                         0 anti…
 2 Albany  2016 Crimes Against Persons anti-female                       0 anti…
 3 Albany  2016 Crimes Against Persons anti-transgender                  0 anti…
 4 Albany  2016 Crimes Against Persons anti-genderidentityexpr…          0 othe…
 5 Albany  2016 Crimes Against Persons anti-age*                         0 othe…
 6 Albany  2016 Crimes Against Persons anti-white                        0 anti…
 7 Albany  2016 Crimes Against Persons anti-black                        1 othe…
 8 Albany  2016 Crimes Against Persons anti-americanindian/ala…          0 anti…
 9 Albany  2016 Crimes Against Persons anti-asian                        0 anti…
10 Albany  2016 Crimes Against Persons anti-nativehawaiian/pac…          0 anti…
# ℹ 17,333 more rows
lgbtq <- hatecrimes |>
  pivot_longer(
      cols = 4:44,
      names_to = "victim_cat",
      values_to = "crimecount") |>
filter(victim_cat %in% c("anti-transgender", "anti-gayfemale", "anti-gendervictim_catendityexpression", "anti-gaymale", "anti-gay(maleandfemale", "anti-bisexual"))
lgbtq
# A tibble: 1,692 × 5
   county    year crimetype              victim_cat       crimecount
   <chr>    <dbl> <chr>                  <chr>                 <dbl>
 1 Albany    2016 Crimes Against Persons anti-transgender          0
 2 Albany    2016 Crimes Against Persons anti-gaymale              1
 3 Albany    2016 Crimes Against Persons anti-gayfemale            0
 4 Albany    2016 Crimes Against Persons anti-bisexual             0
 5 Albany    2016 Property Crimes        anti-transgender          0
 6 Albany    2016 Property Crimes        anti-gaymale              0
 7 Albany    2016 Property Crimes        anti-gayfemale            0
 8 Albany    2016 Property Crimes        anti-bisexual             0
 9 Allegany  2016 Property Crimes        anti-transgender          0
10 Allegany  2016 Property Crimes        anti-gaymale              0
# ℹ 1,682 more rows