The Tabbed Page Component creates custom tabs to display full page content under each tab. In order to use this component you must submit a Jira ticket to CNMP requesting it be enabled for a specific page.
The Tabbed Page Component displays full page content under each tab. Users navigate between the tabs to access the page content. The component displays one page per tab.
The difference between this component and the tab component, is this component uses the standard sorting choices (building the tab order) of publication date, collection year or month, and reference year or month.
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Tabbed Page Component is useful for pages designed to display a high volume of previews for related datasets, releases, reports, interactive visuals, and other such pages. Tabs provide a manner by which to organize these related materials.
An author should use the Tabbed Page Component when they have a set of pages, releases, or data that lends to being organized by a preset order to parse items.
In contrast to the Tab Component, the Tabbed Page Component does not rely on the author to manually order the tabs; instead, it offers preset manners by which to order the tabs. Tabs can be built by collection month/year, by reference month/year, or by publication date and can be sorted manually or from oldest to newest or newest to oldest.
Content authors should use the Tabbed Page Component when they have a set of pages, releases, or data that tends to be organized by a preset order to parse items.
Individual pages that are in tabs should have redirects to their tabbed versions. While not required for these pages it is strongly recommended.
This way users can only see the tabbed version of the page. The redirect is found under Page Properties > Advanced tab.
APRIL 28, 2021 — Today the U.S. Census Bureau released a new set of “demonstration data” to help the data user community evaluate the latest update to the new Disclosure Avoidance System that will protect published 2020 Census Public Law (P.L.) 94-171 Redistricting data. The demonstration data use previously released 2010 Census data to illustrate the impact of the latest iteration of the new system. As with previous censuses, the disclosure avoidance methods – also known as differential privacy – are not applied to the apportionment census counts.
Metrics included in today’s release show that the latest update meets or exceeds specialized accuracy targets based on use cases provided by the Department of Justice for the redistricting process and enforcement of the Voting Rights Act of 1965.
The release, in the form of “Privacy-Protected Microdata Files,” is the first that reflects an increase in the “privacy-loss budget” (PLB). The “budget” has nothing to do with any sort of financial value. It refers to a chosen limit on how much privacy is traded for increased accuracy. That increased PLB is reflected in the accuracy of population counts and demographic characteristics at various levels of geography.
Today’s update uses a privacy-loss budget of 10.3 for persons and 1.9 for housing units (approximating the anticipated final PLB level). All previous “beta” releases used a privacy-loss budget of 4.0 for persons and 0.5 for housing units for development comparison purposes. We are including separate files using both the latest and previous PLBs. It is important to understand that the PLB is logarithmic, meaning every additional number in the PLB scale represents an exponential increase in the PLB.
We encourage data users to closely analyze today’s demonstration data and email feedback to 2020DAS@census.gov. (Include “April PPMF” in the subject line.) Feedback received by May 28 will be considered.
For more information and updates on the 2020 Census Disclosure Avoidance System visit our website and subscribe to our newsletter.
No news release associated with this product. Tip sheet only.
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The configure dialog allows the content author to define multiple tabs. See below for more about the Tab Component dialog.
Expand the section below to see the Tabbed Page Component HTML output.