ACS.R: An R Package for Neighborhood-Level Data from the U.S. Census

Posted: 6 Nov 2012

See all articles by Ezra Haber Glenn

Ezra Haber Glenn

Massachusetts Institute of Technology (MIT)

Date Written: July 6, 2011


Over the past decade, the U.S. Census Bureau has implemented the American Community Survey as a replacement for its traditional decennial “long-form” survey. This year — for the first time ever — ACS data was made available at the census tract and block group level for the entire nation, representing geographies small enough to be useful to local planners; in the future these estimates will be updated on a yearly basis, providing much more current data than was ever available in the past. Although the ACS represents a bold strategy with great promise for planners working at the neighborhood scale, it will require them to become comfortable with statistical techniques and concerns that they have traditionally been able to avoid.

To help with this challenge the author has been working with local-level planners to determine the most common problems associated with using ACS data, and has implemented these functions as a package in the R statistical programming language. The e ort is still in a “beta” stage, with much work to be done, but the basic framework is in place. The package defines a new “acs” class object (containing estimates, standard errors, and metadata for tables from the ACS), with methods to deal appropriately with common tasks (e.g., combining subgroups or geographies, mathematical operations on estimates, tests of significance, plots of confidence intervals, etc.).

Keywords: R, census, ACS, sampling, standard error

Suggested Citation

Glenn, Ezra Haber, ACS.R: An R Package for Neighborhood-Level Data from the U.S. Census (July 6, 2011). Available at SSRN: or

Ezra Haber Glenn (Contact Author)

Massachusetts Institute of Technology (MIT) ( email )

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