## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) suppressPackageStartupMessages(library(dplyr)) suppressPackageStartupMessages(library(rollup)) ## ----warning=FALSE, eval=FALSE------------------------------------------------ # # From CRAN # install.packages("rollup") # # # From Github # library(devtools) # devtools::install_github("JuYoungAhn/rollup") ## ----warning=FALSE------------------------------------------------------------ mtcars %>% group_by(vs, am) %>% grouping_sets("vs","am",c("vs","am"), NA) %>% summarize(n=n(), avg_mpg=mean(mpg)) mtcars %>% group_by(vs, am) %>% with_rollup() %>% summarize(n=n(), avg_mpg=mean(mpg)) mtcars %>% group_by(vs, am) %>% with_cube() %>% summarize(n=n(), avg_mpg=mean(mpg)) ## ----setup-------------------------------------------------------------------- library(dplyr) library(rollup) data("web_service_data") # web_service_data of rollup package web_service_data %>% head ## ----warning=FALSE------------------------------------------------------------ library(tidyr) # compute average of `page_view_cnt` group by "gender", "age", and "gender & age", along with the overall average. NA in the output table represents overall aggregates. web_service_data %>% filter(date_id == '2024-06-30' & gender != "N") %>% group_by(gender, age) %>% grouping_sets('gender', 'age', c('gender','age'), NA) %>% summarize(avg_pv_cnt = mean(page_view_cnt)) # compute average of `page_view_cnt` group by "gender & age & product_view_cnt_cat" along with the marginal average with regard to "product_view_cnt_cat". web_service_data %>% filter(date_id == '2024-06-30' & gender != "N") %>% group_by(gender, age, product_view_cnt_cat) %>% grouping_sets('product_view_cnt_cat', c('product_view_cnt_cat', 'gender','age')) %>% summarize(avg_pv_cnt = mean(page_view_cnt)) %>% pivot_wider(names_from = product_view_cnt_cat, values_from = avg_pv_cnt) ## ----warning=FALSE------------------------------------------------------------ # This produces a table with average page view counts grouped by gender and age, including total aggregates across all combinations. web_service_data %>% filter(date_id == '2024-06-30' & gender != "N") %>% group_by(gender, age) %>% with_cube() %>% summarize(avg_pv_cnt = mean(page_view_cnt)) %>% pivot_wider(names_from = age, values_from = avg_pv_cnt) ## ----warning=FALSE------------------------------------------------------------ # The variables "age_big" and "age" have a hierarchy. web_service_data_processed <- web_service_data %>% mutate( age_big = case_when( age %in% c(10,20,30) ~ 'young', age %in% c(40,50,60) ~ 'old' ) ) # If there are aggregates "age_big & age", marginal aggregates for "age" are not necessary. # The following code computes aggregates for "age_big & age", "age_big", and entire data set. web_service_data_processed %>% group_by(age_big, age) %>% with_rollup() %>% summarize( user_cnt = n_distinct(id), avg_pv_cnt = mean(page_view_cnt) )