I have a couple questions about how I can best use the acs R package. Thanks in advance for your help.
I would like to build up a comprehensive data frame that is a lookup table with all census data I can get from their API for each Zip code. Currently I just look up several individual tables using R code like the below example. Is there a better way of finding all available tables and build up the data table dataset automatically with the column names populated? I am aware of the acs.lookup function, but I would like to load all the tables and get the data for their zip codes. Is there a way to get a list of all the tables from the acs.lookup output, or maybe a complete list of the tables that are available?
I would also like to get future projection data for as many variables as I can get. I think I can calculate the projections that I found using the above methods using multiple years (2014, 2013, 2012, 2011) and using acs14lite R package for 2014. Before I do this I am wondering if the US census itself has future projections using this ACS data or something else?
Create user specified geographies
use all zip codes
zip_geo = geo.make(zip.code = "*")
Create race data frame
get race data
race.data = acs.fetch(geography=zip_geo, table.number = "B03002", col.names = "pretty", endyear = 2013, span = 5)
create data frame of the demographics
zip_demographics = data.frame(region = as.character(geography(race.data)$zipcodetabulationarea), total_population = as.numeric(estimate(race.data[,1])))
zip_demographics$region = as.character(zip_demographics$region)
convert to a data.frame
race_df = data.frame(white_alone_not_hispanic = as.numeric(estimate(race.data[,3])), black_alone_not_hispanic = as.numeric(estimate(race.data[,4])), asian_alone_not_hispanic = as.numeric(estimate(race.data[,6])), hispanic_all_races = as.numeric(estimate(race.data[,12])))
zip_demographics$percent_white = (race_df$white_alone_not_hispanic / zip_demographics$total_population * 100) zip_demographics$percent_black = (race_df$black_alone_not_hispanic / zip_demographics$total_population * 100) zip_demographics$percent_asian = (race_df$asian_alone_not_hispanic / zip_demographics$total_population * 100) zip_demographics$percent_hispanic = (race_df$hispanic_all_races / zip_demographics$total_population * 100)