IES Blog

Institute of Education Sciences

Accessing the Common Core of Data (CCD)

Every year, NCES releases nonfiscal data files from the Common Core of Data (CCD), the Department of Education’s (ED’s) primary longitudinal database on public elementary and secondary education in the United States. CCD data releases include directory data (location, status, and grades offered), student membership data (by grade, gender, and race/ethnicity), data on full-time equivalent staff and teachers, and data on the number of students eligible for the National School Lunch Program (NSLP)

This blog post, one in a series of posts about CCD data, focuses on how to access and use the data. For information on using NSLP data, read the blog post Understanding School Lunch Eligibility in the Common Core of Data

CCD Data Use

CCD data are used both internally by ED and externally by the public. For example, within ED, CCD data serve as the sample frame for the National Assessment of Educational Progress (NAEP) and are the mainstay of many tables in the Digest of Education Statistics and The Condition of Education. Outside of ED, CCD data are used by researchers, the general public (e.g., realtor sites, The Common Application, Great Schools), and teachers who need their school’s NCES school ID to apply for grants.

Data Structure and Availability

CCD data are available at the state, district, and school levels, using a nested structure: all schools are within a parent district and all districts are within a state. CCD does not include any student- or staff-level data.

Most CCD data elements are available for school year (SY) 1986‒87 to the present.    

Unique Identifiers Within CCD

NCES uses a three-part ID system for public schools and districts: state-based Federal Information Processing Standards (FIPS) codes, district codes, and school codes. Using these three parts, several IDs can be generated:

  • District IDs: 7-digit (FIPS + 5-digit District)
  • School IDs:
    • 12-digit (FIPS + District + School)
    • 7-digit (FIPS + School) (unique from SY 2016‒17 on)

NCES IDs are assigned to districts and schools indefinitely, making them useful for analyzing data over time. For example, for a longitudinal school-level analysis, a school’s 7-digit ID should be used, as it remains the same even if the school changes districts. These IDs can also be used to link CCD district and school data to other ED databases.

Accessing CCD Data

There are three ways to access CCD data: the CCD District and School Locators, the Elementary/Secondary Information System (ElSi), and the raw data files. Each approach has different benefits and limitations.

  • CCD District and School locators
    • Quick and easy to use
    • Many ways to search for districts and schools (e.g., district/school name, street address, county, state)
    • Provides the latest year of CCD data available for the selected district(s) or school(s)
    • Tips for optimal use:
      • If you are having difficulty finding a district or school, only enter a key word for the name (e.g., for PS 100 Glen Morris in New York City, only enter “Glen Morris” or “PS 100”)
      • Export search results to Excel (including all CCD locator fields)

  • Elementary/Secondary Information System (ElSi)
    • quickFacts and expressTables: view most-requested CCD data elements at multiple levels
    • tableGenerator: combine data across topic areas and years to create a single file
    • Create “tables” that act like databases and include all of the roughly 100,000 public schools or 20,000 districts
    • Export data to Excel or CSV
    • Tips for optimal use:
      • Save and edit queries using the navigation buttons at the top of the screen
      • popularTables provide links to frequently requested data

 

Interested in learning more about CCD or accessing CCD data at the state, district, or school level? Check out the CCD website and use the District and School locators, ElSi, or the raw data files to find the data you are looking for.

 

By Patrick Keaton, NCES

Understanding School Lunch Eligibility in the Common Core of Data

Every year in the Common Core of Data (CCD), NCES releases data on the number of students eligible for the National School Lunch Program (NSLP), a U.S. Department of Agriculture (USDA) meal program that provides nutritionally balanced low-cost or free meals to children during the school day. The program was established under the National School Lunch Act, signed into law by President Harry Truman in 1946, and currently serves nearly 30 million children.

This post highlights substantial changes to the NSLP and related changes in CCD reporting and provides guidance on how to use the NSLP data.

Free or Reduced-Price Lunch vs. Direct Certification

Historically, student eligibility for free or reduced-price lunch (FRPL) was determined through individual students submitting school meals application forms within school districts. In 1986, the USDA introduced a direct certification option to reduce participation barriers in the school meal program. Under direct certification, any child belonging to a household that participates in Supplemental Nutrition Assistance Program (SNAP), Temporary Assistance for Needy Families (TANF), Food Distribution Program on Indian Reservations (FDPIR), or (in some states) Medicaid—as well as children who are migrant, homeless, in foster care, or in Head Start—are categorically eligible to receive free meals at school.

The NSLP data included in CCD releases include school-level FRPL and direct certification eligibility counts for all public schools with students enrolled. These point-in-time counts are taken on or around October 1 of each school year and reported by the states based on the following guidance: 

  • FRPL-Eligible Students
    • Free lunch students: those eligible to participate in the Free Lunch Program (i.e., those with family incomes below 130 percent of the poverty level or who are directly certified)
    • Reduced-price lunch students: those eligible to participate in the Reduced-Price Lunch Program (i.e., those with family incomes between 130 and 185 percent of the poverty level)
    • Free and reduced-price lunch student: the total of free lunch students and reduced-price lunch students
  • Direct Certification
    • The number of students reported as categorically eligible to receive free meals to the USDA for the FNS 742. Students are categorically eligible to receive free meals if they belong to a household receiving the selected federal benefits noted above or are migrant, homeless, in foster care, or in Head Start.

The count of students eligible for free lunch includes students directly certified plus any students who qualified for free lunch by completing a school meals application. As such, the number of students reported as directly certified should always be less than or equal to the number of free lunch students.

Note that changes in SNAP (both legislated eligibility requirements and temporary changes such as national disasters) can have implications for reported NSLP eligibility as well.

The Healthy, Hunger-Free Kids Act of 2010

In 2010, the Healthy, Hunger-Free Kids Act (HHFKA) established national nutrition standards for food served and sold in schools and made changes to the NSLP to increase food access. These changes also impacted the NSLP data published through CCD:

  • While direct certification had been an option since 1986, HHFKA mandated that states directly certify NSLP eligibility for at least 95 percent of SNAP participants. With the mandated use of direct certification, several states stopped reporting FRPL eligibility entirely. 
  • HHFKA introduced the Community Eligibility Provision (CEP) to expand access to free meals to all students in low-income areas. Schools qualifying under CEP no longer count students who qualify for reduced-price lunch since all students are provided a free lunch. CEP schools may report all students as eligible for free lunch regardless of economic status, since all students are provided a free lunch.

Guidance for Data Users

The NSLP eligibility data published through CCD are often used by researchers as a proxy measure for the number of students living in poverty. However, there are limitations to the usefulness of these data that researchers should consider when using NSLP data.

The NSLP data published through CCD has changed over time. CCD published just FRPL counts through SY 2015–16. Starting in SY 2016–17, states can report FRPL and/or direct certification eligibility counts for each school, and CCD publishes both FRPL and direct certification, as reported by the states.[1]

When creating state and national estimates (including tables in the Digest of Education Statistics), NCES uses FRPL counts when they are available. If FRPL data are not available, direct certification data is used as a proxy. For this type of analysis, NCES includes all schools for which both student enrollment data and FRPL or direct certification were reported. States that only reported direct certification are footnoted. NCES recommends that data users be mindful of the reporting differences when analyzing or drawing conclusions with these data.

The NSLP data meet a variety of critical analysis needs to help policy makers, researchers, and the public target resources and answer policy questions. CCD is the only source of nationwide school-level NSLP data. Explore NSLP data as well as all of the other CCD data elements available either by using the CCD data query tool or by downloading data files directly.

 

By Beth Sinclair, AEM, and Chen-Su Chen, NCES

 


[1] In SY 2018–19, states reported FRPL counts for 95 percent of schools. Five states/jurisdictions reported solely the number of direct certification students (Delaware, the District of Columbia, Massachusetts, Tennessee, and American Samoa). The remaining states/jurisdictions were split: about half reported solely the number of FRPL students for each school and the other half reported both FRPL and direct certification for each school (or FRPL for some schools and direct certification for others).

From Data Collection to Data Release: What Happens?

In today’s world, much scientific data is collected automatically from sensors and processed by computers in real time to produce instant analytic results. People grow accustomed to instant data and expect to get things quickly.

At the National Center for Education Statistics (NCES), we are frequently asked why, in a world of instant data, it takes so long to produce and publish data from surveys. Although improvements in the timeliness of federal data releases have been made, there are fundamental differences in the nature of data compiled by automated systems and specific data requested from federal survey respondents. Federal statistical surveys are designed to capture policy-related and research data from a range of targeted respondents across the country, who may not always be willing participants.

This blog is designed to provide a brief overview of the survey data processing framework, but it’s important to understand that the survey design phase is, in itself, a highly complex and technical process. In contrast to a management information system, in which an organization has complete control over data production processes, federal education surveys are designed to represent the entire country and require coordination with other federal, state, and local agencies. After the necessary coordination activities have been concluded, and the response periods for surveys have ended, much work remains to be done before the survey data can be released.

Survey Response

One of the first sources of potential delays is that some jurisdictions or individuals are unable to fill in their surveys on time. Unlike opinion polls and online quizzes, which use anyone who feels like responding to the survey (convenience samples), NCES surveys use rigorously formulated samples meant to properly represent specific populations, such as states or the nation as a whole. In order to ensure proper representation within the sample, NCES follows up with nonresponding sampled individuals, education institutions, school districts, and states to ensure the maximum possible survey participation within the sample. Some large jurisdictions, such as the New York City school district, also have their own extensive survey operations to conclude before they can provide information to NCES. Before the New York City school district, which is larger than about two-thirds of all state education systems, can respond to NCES surveys, it must first gather information from all its schools. Receipt of data from New York City and other large districts is essential to compiling nationally representative data.

Editing and Quality Reviews

Waiting for final survey responses does not mean that survey processing comes to a halt. One of the most important roles NCES plays in survey operations is editing and conducting quality reviews of incoming data, which take place on an ongoing basis. In these quality reviews, a variety of strategies are used to make cost-effective and time-sensitive edits to the incoming data. For example, in the Integrated Postsecondary Education Data System (IPEDS), individual higher education institutions upload their survey responses and receive real-time feedback on responses that are out of range compared to prior submissions or instances where survey responses do not align in a logical way. All NCES surveys use similar logic checks in addition to a range of other editing checks that are appropriate to the specific survey. These checks typically look for responses that are out of range for a certain type of respondent.

Although most checks are automated, some particularly complicated or large responses may require individual review. For IPEDS, the real-time feedback described above is followed by quality review checks that are done after collection of the full dataset. This can result in individualized follow up and review with institutions whose data still raise substantive questions. 

Sample Weighting

In order to lessen the burden on the public and reduce costs, NCES collects data from selected samples of the population rather than taking a full census of the entire population for every study. In all sample surveys, a range of additional analytic tasks must be completed before data can be released. One of the more complicated tasks is constructing weights based on the original sample design and survey responses so that the collected data can properly represent the nation and/or states, depending on the survey. These sample weights are designed so that analyses can be conducted across a range of demographic or geographic characteristics and properly reflect the experiences of individuals with those characteristics in the population.

If the survey response rate is too low, a “survey bias analysis” must be completed to ensure that the results will be sufficiently reliable for public use. For longitudinal surveys, such as the Early Childhood Longitudinal Study, multiple sets of weights must be constructed so that researchers using the data will be able to appropriately account for respondents who answered some but not all of the survey waves.

NCES surveys also include “constructed variables” to facilitate more convenient and systematic use of the survey data. Examples of constructed variables include socioeconomic status or family type. Other types of survey data also require special analytic considerations before they can be released. Student assessment data, such as the National Assessment of Educational Progress (NAEP), require that a number of highly complex processes be completed to ensure proper estimations for the various populations being represented in the results. For example, just the standardized scoring of multiple choice and open-ended items can take thousands of hours of design and analysis work.

Privacy Protection

Release of data by NCES carries a legal requirement to protect the privacy of our nation’s children. Each NCES public-use dataset undergoes a thorough evaluation to ensure that it cannot be used to identify responses of individuals, whether they are students, parents, teachers, or principals. The datasets must be protected through item suppression, statistical swapping, or other techniques to ensure that multiple datasets cannot be combined in such a way as to identify any individual. This is a time-consuming process, but it is incredibly important to protect the privacy of respondents.

Data and Report Release

When the final data have been received and edited, the necessary variables have been constructed, and the privacy protections have been implemented, there is still more that must be done to release the data. The data must be put in appropriate formats with the necessary documentation for data users. NCES reports with basic analyses or tabulations of the data must be prepared. These products are independently reviewed within the NCES Chief Statistician’s office.

Depending on the nature of the report, the Institute of Education Sciences Standards and Review Office may conduct an additional review. After all internal reviews have been conducted, revisions have been made, and the final survey products have been approved, the U.S. Secretary of Education’s office is notified 2 weeks in advance of the pending release. During this notification period, appropriate press release materials and social media announcements are finalized.

Although NCES can expedite some product releases, the work of preparing survey data for release often takes a year or more. NCES strives to maintain a balance between timeliness and providing the reliable high-quality information that is expected of a federal statistical agency while also protecting the privacy of our respondents.  

 

By Thomas Snyder

Data Tools for College Professors and Students

Ever wonder what parts of the country produce the most English majors? Want to know which school districts have the most guidance counselors? The National Center for Education Statistics (NCES) has all the tools you need to dig into these and lots of other data!

Whether you’re a student embarking on a research project or a college professor looking for a large data set to use for an assignment, NCES has you covered. Below, check out the tools you can use to conduct searches, download datasets, and generate your own statistical tables and analyses.

 

Conduct Publication Searches

Two search tools help researchers identify potential data sources for their study and explore prior research conducted with NCES data. The Publications & Products Search Tool can be used to search for NCES publications and data products. The Bibliography Search Tool, which is updated continually, allows users to search for individual citations from journal articles that have been published using data from most surveys conducted by NCES.

Key reference publications include the Digest of Education Statistics, which is a comprehensive library of statistical tabulations, and The Condition of Education, which highlights up-to-date trends in education through statistical indicators.

 

Learn with Instructional Modules

The Distance Learning Dataset Training System (DLDT) is an interactive online tool that allows users to learn about NCES data across the education spectrum. DLDT’s computer-based training introduces users to many NCES datasets, explains their designs, and offers technical considerations to facilitate successful analyses. Please see the NCES blog Learning to Use the Data: Online Dataset Training Modules for more details about the DLDT tool.
 




Download and Access Raw Data Files

Users have several options for conducting statistical analyses and producing data tables. Many NCES surveys release public-use raw data files that professors and students can download and analyze using statistical software packages like SAS, STATA, and SPSS. Some data files and syntax files can also be downloaded using NCES data tools:

  • Education Data Analysis Tool (EDAT) and the Online Codebook allow users to download several survey datasets in various statistical software formats. Users can subset a dataset by selecting a survey, a population, and variables relevant to their analysis.
  • Many data files can be accessed directly from the Surveys & Programs page by clicking on the specific survey and then clicking on the “Data Products” link on the survey website.

 

Generate Analyses and Tables

NCES provides several online analysis tools that do not require a statistical software package:

  • DataLab is a tool for making tables and regressions that features more than 30 federal education datasets. It includes three powerful analytic tools:
    • QuickStats—for creating simple tables and charts.
    • PowerStats—for creating complex tables and logistic and linear regressions.
    • TrendStats—for creating complex tables spanning multiple data collection years. This tool also contains the Tables Library, which houses more than 5,000 published analysis tables by topic, publication, and source.



  • National Assessment of Educational Progress (NAEP) Data Explorer can be used to generate tables, charts, and maps of detailed results from national and state assessments. Users can identify the subject area, grade level, and years of interest and then select variables from the student, teacher, and school questionnaires for analysis.
  • International Data Explorer (IDE) is an interactive tool with data from international assessments and surveys, such as the Program for International Student Assessment (PISA), the Program for the International Assessment of Adult Competencies (PIAAC), and the Trends in International Mathematics and Science Study (TIMSS). The IDE can be used to explore student and adult performance on assessments, create a variety of data visualizations, and run statistical tests and regression analyses.
  • Elementary/Secondary Information System (ElSi) allows users to quickly view public and private school data and create custom tables and charts using data from the Common Core of Data (CCD) and Private School Universe Survey (PSS).
  • Integrated Postsecondary Education Data System (IPEDS) Use the Data provides researcher-focused access to IPEDS data and tools that contain comprehensive data on postsecondary institutions. Users can view video tutorials or use data through one of the many functions within the portal, including the following:
    • Data Trends—Provides trends over time for high-interest topics, including enrollment, graduation rates, and financial aid.
    • Look Up an Institution—Allows for quick access to an institution’s comprehensive profile. Shows data similar to College Navigator but contains additional IPEDS metrics.
    • Statistical Tables—Equips power users to quickly get data and statistics for specific measures, such as average graduation rates by state.

 

 

Back to School by the Numbers: 2019–20 School Year

Across the country, hallways and classrooms are full of activity as students return for the 2019–20 school year. Each year, the National Center for Education Statistics (NCES) compiles back-to-school facts and figures that give a snapshot of our schools and colleges for the coming year. You can see the full report on the NCES website, but here are a few “by-the-numbers” highlights. You can also click on the hyperlinks throughout the blog to see additional data on these topics.

The staff of NCES and of the Institute of Education Sciences (IES) hopes our nation’s students, teachers, administrators, school staffs, and families have an outstanding school year!

 

 

56.6 million

The number of students expected to attend public and private elementary and secondary schools this year—slightly more than in the 2018–19­ school year (56.5 million).

Overall, 50.8 million students are expected to attend public schools this year. The racial and ethnic profile of public school students includes 23.7 million White students, 13.9 million Hispanic students, 7.7 million Black students, 2.7 million Asian students, 2.1 million students of Two or more races, 0.5 million American Indian/Alaska Native students, and 0.2 million Pacific Islander students.

About 5.8 million students are expected to attend private schools this year.

 

$13,440

The projected per student expenditure in public elementary and secondary schools in 2019–20. Total expenditures for public elementary and secondary schools are projected to be $680 billion for the 2019–20 school year.

 

3.7 million

The number of teachers in fall 2019. There will be 3.2 million teachers in public schools and 0.5 million teachers in private schools.

 

3.7 million

The number of students expected to graduate from high school this school year, including 3.3 million from public schools and nearly 0.4 million from private schools.

 

19.9 million

The number of students expected to attend American colleges and universities this fall—lower than the peak of 21.0 million in 2010. About 13.9 million students will attend four-year institutions and 6.0 million will attend two-year institutions.

 

56.7%

The projected percentage of female postsecondary students in fall 2019, for a total of 11.3 million female students, compared with 8.6 million male students.

 

By Sidney Wilkinson-Flicker