0

I have a long term sightings data set of identified individuals (~16,000 records from 1979- 2019) and I would like to subset the same date range (YYYY-09-01 to YYYY(+1)-08-31) across years in R. I have successfully done so for each "year" (and obtained the unique IDs) using:

library(dplyr)
library(lubridate)

year79 <-data%>%
  select(ID, Sex, AgeClass, Age, Date, Month, Year)%>%
  filter(Date>= as.Date("1978-09-01") & Date<= as.Date("1979-08-31")) %>%
  filter(!duplicated(ID))

year80 <-data%>%
  select(ID, Sex, AgeClass, Age, Date, Month, Year)%>%
  filter(Date>= as.Date("1979-09-01") & Date<= as.Date("1980-08-31")) %>%
  filter(!duplicated(ID))

I would like to clean up the code and ideally not need to specify the each range (just have it iterate through). I am new at R and stuck how to do this. Any suggestions?

FYI "Month" and "Year" are included for producing a table via melt and cast later on.

example data:

    ID Year   Month Day  Date       AgeClass Age Sex
1 1034 1979     4  17 1979-04-17        U   3   F
2 1127 1979     5   3 1979-05-03        A  13   F
3 1222 1979     5   3 1979-05-03        U   0   F
4 1303 1979     6  16 1979-06-16        U   0   F
5 1153 1980     4  16 1980-04-16        C   0   F
6 1014 1980     4  16 1980-04-16        U   6   F
                  ID Year   Month Day  Date       AgeClass Age  Sex
16428           2503 2019     5   8 2019-05-08        U  NA    F
16429           3760 2019     5   8 2019-05-08        A  12    F
16430           4080 2019     5   9 2019-05-09        A   9    F
16431           4095 2019     5   9 2019-05-09        A   9    U
16432           1204 2019     5  11 2019-05-11        A  37    F
16433           1204 2019     5  11 2019-05-11        A  NA    F

#> sessionInfo()
R version 3.5.1 (2018-07-02)
Platform: x86_64-w64-mingw32/x64 (64-bit)
Running under: Windows >= 8 x64 (build 9200)
1
0

Every year has 122 days from Sept 1 to Dec 31 inclusive, so you could add a variable marking the "fiscal year" for each row:

set.seed(42)
library(dplyr)
my_data <- tibble(ID = 1:6,
                  Date = as.Date("1978-09-01") + c(-1, 0, 1, 364, 365, 366))
my_data
# There are 122 days from each Aug 31 (last of the FY) to the end of the CY.
# lubridate::ymd(19781231) - lubridate::ymd(19780831)

my_data %>%
  mutate(FY = year(Date + 122))

## A tibble: 6 x 3
#     ID Date          FY
#  <int> <date>     <dbl>
#1     1 1978-08-31  1978
#2     2 1978-09-01  1979
#3     3 1978-09-02  1979
#4     4 1979-08-31  1979
#5     5 1979-09-01  1980
#6     6 1979-09-02  1980

You could keep the data in one table and do subsequent analysis using group_by(FY), or use %>% split(.$FY) to put each FY into its own element of a list. From my limited experience, I think it's generally an anti-pattern to create separate data frames for annual subsets of your data, as that makes your code harder to maintain, troubleshoot, and modify.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.