December 1, 2020
Supporting Statement for OMB Clearance Request
Part B: Collection of Information Employing Statistical Methods
Study of District and School Uses of Federal Education Funds
Submitted to:
Stephanie Stullich
National Center for Education Evaluation
Institute of Education Sciences
U.S. Department of Education
550 12th Street, SW
Washington, DC 20202
Prepared by:
SRI International
Ashley Campbell
Julie Harris
Deborah Jonas
Jaunelle Pratt-Williams
Augenblick, Palaich & Associates
Bob Palaich
Robert Reichardt
Contract GS-10F-0554N/BPA Order ED-PEP-16-A-0005/91990019F0407 (Task 4.11)
Content
s
B. Collections of information employing statistical methods 1
1. Respondent universe and selection methods 1
2. Procedures for the collection of information 3
State extant data and documents (previous OMB package) 3
District- and school-level data collection (current OMB package) 3
3. Methods to maximize response rates and to deal with issues of nonresponse 3
4. Tests of procedures or methods to be undertaken to minimize burden and improve utility 4
Exhibit 1. Universe of respondents and sample selection 1
Exhibit 2. Preliminary sampling framework for districts that receive federal funds 2
Exhibit 3. Staff responsible for collecting and analyzing study data 4
The U.S. Department of Education, through its Institute of Education Sciences (IES), is requesting clearance for a new data collection to examine how the distribution of federal funds varies in relation to program goals and student needs.
This information clearance request is for a study to examine targeting and resource allocation for five major federal education programs: Part A of Titles I, II, III, and IV of the Elementary and Secondary Education Act (ESEA) — including school improvement grants provided under Section 1003 of Title I, Part A — as well as Title I, Part B of the Individuals with Disabilities Education Act (IDEA). The study will also collect information on the distribution and uses of funds provided to school districts through the Coronavirus Aid, Relief, and Economic Security Act (CARES Act).
This package is the second of two OMB clearance requests for this study. The previous package requested approval for selection and recruitment of the study sample and was approved by OMB on June 24, 2020.
B. Collections of information employing statistical methods
1. Respondent universe and selection methods
The study will select a sample of districts and schools that is representative of the population of interest, which includes all districts, and schools that receive funds from Part A of Title programs I, II, III, IV, and/or Title I, Part B of the Individuals with Disabilities Education Act. Exhibit 1 provides information about the universe of potential respondents, sample size (where applicable), and expected response rates.
Exhibit 1. Universe of respondents and sample selection
Data collection activity |
Universe of respondents |
Sample selection |
Expected response rate |
Extant data and documents |
All states and the District of Columbia |
All states and the District of Columbia |
100 percent |
Fiscal and personnel data |
17,554 districts 99,785 schools1 |
400 districts 2,8002 |
> 80 percent |
1The estimated number of districts and schools in the universe of respondents for the resource allocation data came from the NCES Common Core of Data (2018-19 school year). The number of districts includes all regular public school and independent charter districts, which excludes regional education service agencies and supervisory union administrative centers, state-operated agencies, and federally operated agencies. The number of schools includes all public schools (including all types of charter schools as well).
2Estimated number of schools assuming an average of 7 schools per district. The sample will include all schools from within the sampled 400 districts.
District-level sampling criteria
The sample will be determined by first selecting 400 districts, stratifying based on district size (number of students), predominant locale (urban, rural, or suburban), region of the country, and poverty rate. Districts will have equal probabilities of selection within these strata, with the exception that we will include extremely large districts (defined as those in the top 0.1 percent of student count) with certainty. Stratifying based on these variables will allow us to ensure adequate representation of districts with important characteristics that may be excluded from the random sample. Random selection within the identified strata allows us to increase the generalizability of the results within each subgroup.
Exhibit 2 summarizes the district sampling framework.
Exhibit 2. Preliminary sampling framework for districts that receive federal funds
Region |
Locale type |
Number of students |
Poverty rate |
Number of sample districts |
Northeast |
City |
Large |
High |
13 |
|
|
|
Low |
13 |
|
Urban fringe/town |
Large |
High |
13 |
|
|
|
Low |
13 |
|
|
Small |
High |
12 |
|
|
|
Low |
12 |
|
Rural |
Small |
High |
12 |
|
|
|
Low |
12 |
Midwest |
City |
Large |
High |
13 |
|
|
|
Low |
13 |
|
Urban fringe/town |
Large |
High |
13 |
|
|
|
Low |
13 |
|
|
Small |
High |
12 |
|
|
|
Low |
12 |
|
Rural |
Small |
High |
12 |
|
|
|
Low |
12 |
South |
City |
Large |
High |
13 |
|
|
|
Low |
13 |
|
Urban fringe/town |
Large |
High |
13 |
|
|
|
Low |
13 |
|
|
Small |
High |
12 |
|
|
|
Low |
12 |
|
Rural |
Small |
High |
12 |
|
|
|
Low |
12 |
West |
City |
Large |
High |
13 |
|
|
|
Low |
13 |
|
Urban fringe/town |
Large |
High |
13 |
|
|
|
Low |
13 |
|
|
Small |
High |
12 |
|
|
|
Low |
12 |
|
Rural |
Small |
High |
12 |
|
|
|
Low |
12 |
Note: The study team will specify operational definitions of each stratum after examining relevant district- and school-level data, likely using a natural cut point in the distribution to define large/small and high/low. We may decide to implement separate strata definitions for each locale type if we find sufficient variation within locales. We may decide to include additional strata if, for example, we find there are many districts in rural communities that have a large number of students. District poverty rates will be based on the most recent data available from the Census Bureau’s Small Area Income and Poverty Estimates (SAIPE) program. Data for other sampling strata will be obtained from the NCES Common Core of Data (CCD).
School-level sampling criteria
The sample will include all schools within sampled districts. Districts will be asked to provide fiscal and personnel data for all schools within their district.
2. Procedures for the collection of information
State extant data (previous OMB package)
State-level extant data will be collected in two phases. Based on OMB’s prior approval for the study design and the collection of preliminary state-level information (1850-0951), all 50 states and the District of Columbia will receive a letter by email requesting lists of subgrantees and suballocation amounts for each program, the state chart of accounts, and a cross-walk from F-33 survey revenue and expenditure data reporting codes to the state chart of accounts.
In the second phase of extant data collection from states (after OMB approval for the fiscal data collection instruments), we will collect the school-level expenditure data that states are required to make publicly available through state and district report cards. We will first seek to harvest machine-readable data from SEA websites and, in states where these data are not readily accessible in a machine-readable format, we will ask the states to provide such data electronically.
District- and school-level data collection (current OMB package)
The district-and school-level data collection will be a collection of fiscal data through exported accounting files or resource allocation workbooks from the nationally representative sample of 400 districts and sampled schools within those districts.
Fiscal and personnel data. The study will collect detailed fiscal data on the uses of federal education funds, including program revenues, expenditures, and personnel data,1 from the nationally representative sample of school districts. District staff will be asked to provide these data for both the district at large and for all schools within the district. Data will be collected via Excel files, that are typically exported from district accounting systems. If this is not possible for a distrct, Excel workbooks that have been customized to the accounting codes and conventions used in each state are available for participants. Districts will be given the option to submit the data in a format of the respondent’s choosing.
3. Methods to maximize response rates and to deal with issues of nonresponse
To minimize respondent burden and to facilitate collection of valid and reliable data, respondents will receive a webinar that provides an overview of data collection instruments (i.e., details of requested expenditure data), operational definitions for easy reference, and a regularly updated frequently asked questions (FAQ) guide. In addition, project staff with will be available to respond to email or phone questions within 24 business hours of receiving a question. Team members will be assigned to regions so that participating districts have a consistent, personal point of contact to answer their questions and support their data submission. Respondents’ ongoing questions will receive one-on-one video or phone meetings to discuss their individual needs.
A week after receiving the resource allocation data workbooks, respondents will receive a follow-up email that includes a reminder of the due date and invites them to contact the data collection administrator with any questions or concerns. Follow up with nonrespondents will continue via email approximately once a week for three weeks. Persistent nonrespondents will receive additional follow up by telephone. Similar approaches in past data collection activities have yielded very high response rates, but bias due to nonresponse is still a possibility. To mitigate this potential for bias, SRI will fit a logistic regression to model the probability of responding as a function of district characteristics. Each respondent’s initial weight (described above) will be modified using the estimated probability of response (i.e., multiplying the initial weight by the inverse of the probability of response) to generate a final weight. Statistical analyses will then be weighted by the final weight to obtain conclusions that are representative of the universe of eligible districts.
4. Tests of procedures or methods to be undertaken to minimize burden and improve utility
The resource allocation data collection processes will be piloted with up to nine individual respondents. These pilot tests help researchers understand how instruments can be improved by providing information about clarity of questions, specificity of measures, and the overall user-friendliness of the instruments. Follow-up phone calls with pilot respondents will help the study team learn more about the respondents’ understanding of data collection format, data entry procedures, and definitions of key terms. This feedback will be incorporated into revisions of the instruments.
5. Names and telephone numbers of individuals consulted on statistical aspects of the design and the names of the contractors who will actually collect or analyze the information for the agency
Exhibit 3. Staff responsible for collecting and analyzing study data
Name |
Project role |
Organization |
Phone number |
Ashley Campbell |
Project director |
SRI |
720-389-5906 |
Julie Harris |
Study design and quantitative research expert |
SRI |
703-247-8619 |
Rebecca Schmidt |
Senior advisor |
SRI |
703-247-8491 |
Robert (Bob) Palaich |
Deputy project director |
APA |
720-227-0072 |
Mark Fermanich |
Data collection oversight |
APA |
720-227-0101 |
Robert Reichardt |
Design, instrumentation, and analysis contributor |
APA |
702-227-0098 |
Justin Silverstein |
Design, instrumentation, and analysis contributor |
APA |
720-227-0075 |
1 Personnel data are public information but typically are not readily accessible online.
File Type | application/vnd.openxmlformats-officedocument.wordprocessingml.document |
Author | Deborah Jonas |
File Modified | 0000-00-00 |
File Created | 2021-01-13 |