## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----eval = FALSE------------------------------------------------------------- # library(tidycensus) # library(dplyr) # library(acsmoe) # # vars <- paste0("B01001_0", c(20:25, 44:49)) # # ramsey <- get_acs( # geography = "tract", # variables = vars, # state = "MN", # county = "Ramsey", # year = 2016 # ) # # ramsey65 <- ramsey |> # group_by(GEOID) |> # summarize( # estimate_65plus = sum(estimate), # moe_65plus = acs_sum(estimate, moe)$moe, # .groups = "drop" # ) ## ----------------------------------------------------------------------------- library(acsmoe) tracts <- data.frame( region = c("north", "north", "south", "south"), population = c(1000, 1200, 900, 1100), population_moe = c(120, 140, 100, 130), households = c(420, 500, 360, 440), households_moe = c(60, 70, 50, 65) ) acs_aggregate( tracts, group_var = "region", value_cols = c("population", "households"), moe_cols = c("population_moe", "households_moe") ) ## ----------------------------------------------------------------------------- estimates <- c(1000, 1200) moes <- c(120, 140) ses <- moe_to_se(moes) cov_mat <- matrix( c(ses[1]^2, 1500, 1500, ses[2]^2), nrow = 2 ) acs_sum(estimates, moes, cov = cov_mat) ## ----------------------------------------------------------------------------- acs_aggregate( tracts, group_var = "region", value_cols = "population", moe_cols = "population_moe", cov_strategy = "constant", cov_value = 0.25 )