QRIS 2015-2018 System Clearance Part B

QRIS 2015-2018 System Clearance Part B.docx

Quick Response Information System (QRIS) 2015-2018 System Clearance

OMB: 1850-0733

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QUICK RESPONSE INFORMATION SYSTEM

(QRIS)





SUPPORTING STATEMENT PART B



SYSTEM CLEARANCE PROPOSAL




FOR THE YEARS 20152018


OMB # 1850-0733 v.30













October 10, 2014


Section B. Description of Statistical Methodology


B.1. Respondent Universe and Sample Design


The Quick Response Information System (QRIS) consists of the Fast Response Survey System (FRSS) and the Postsecondary Education Quick Information System (PEQIS). The respondent universes and sample designs for FRSS and PEQIS that are covered by this generic clearance request are described below.


Fast Response Survey System


FRSS is designed to conduct brief surveys of state education agencies, public elementary and secondary schools, private elementary and secondary schools, public school districts, and school and public libraries. In the sections that follow, the approaches that will be used to design and select samples from the various sectors of interest are described. State education agencies are not discussed here, since they would be surveyed on a 100-percent basis without sampling.


Efficient probability sampling designs are an integral part of the FRSS. For those sectors that are surveyed frequently in FRSS (e.g., school districts and public schools), a general approach to sampling is designed and modified as necessary to meet the specific goals of the study. For example, for many FRSS surveys, stratified probability-proportionate-to-size (PPS) sampling designs are used to ensure that (a) estimates with specified levels of sampling precison can be obtained for key subgroups of interest, and (b) both categorical and quantitative variables can be estimated reliably.


For some of the less frequently surveyed sectors, it is desirable to select a sample that is tailored to the specific needs of the individual survey. This specialization will be most efficient when pertinent data are available for sample selection purposes. Examples of situations that will necessitate designing and drawing special-purpose samples include surveys that are restricted to a particular subgroup (e.g., districts with summer migrant education programs, or less-than-2-year postsecondary institutions), surveys that require concurrent fielding of different questionnaires in the same sector (e.g., library services for children and young adults), and related surveys involving different sets of respondents that must be linked through an overlapping sample design (e.g., the three surveys on educational technology conducted in 2008-09).


Public Elementary and Secondary Schools


Since each new survey to be conducted under the FRSS will have unique analytic requirements, it is not possible to specify the exact form of the sample design that will be appropriate and efficient for a particular study. This can only be done after the study objectives and data requirements have been clearly delineated. However, past experience suggests that many design features that have been employed successfully in prior studies will also be applicable to future FRSS studies.


First, the frame to be used to select the required samples will be constructed from the most recent NCES CCD Public School Universe File. As shown in Table 1, about 87,000 regular public schools are included in the 2011-12 CCD file, including about 51,000 primary schools and about 36,000 middle/high/combined schools. The school-level variables that are available in the CCD Public School Universe File include type-of-school code, enrollment, number of teachers, instructional level, grade span, type of locale, region, race/ethnicity of students, eligibility for free/reduced-price lunch, and others. Such information is critical for designing efficient samples for the QRIS. As in prior studies, it is anticipated that instructional level, enrollment size, and one or more other variables will be used to define the primary strata for sampling purposes. It should be noted, however, that it may be necessary to merge information from other data sources (e.g., the Schools and Staffing Survey - SASS) to obtain relevant auxiliary variables useful for stratification or weighting purposes. Also, some variables in the CCD file may have missing values (e.g., enrollment by race/ethnicity and the number of students eligible for free/reduced-price lunch). If used for stratification purposes, the missing values will have to be imputed or treated as a separate category.


Next, decisions must be made on how to allocate the total sample to the primary strata. For example, proportional allocation (in which the sample is allocated to a stratum in proportion to the number of schools in the stratum) is generally efficient for estimating the percentage of schools having a given characteristic (e.g., percentage of schools with students enrolled in dual credit courses). On the other hand, allocation in proportion to enrollment is generally more effective for estimation of aggregate statistics that are correlated with enrollment (e.g., the number of enrollments of high school students in dual credit courses). Although many prior FRSS samples have been designed primarily to estimate the latter type of aggregate statistics, there has generally been an equal interest in estimating percentages. For this reason, allocation in proportion to the square root of enrollment offers a compromise solution that is often used in many QRIS surveys. Again, the specific requirements of a particular survey will dictate how the sample is allocated to strata.


Table 1. Number of regular public elementary and secondary schools in the 2011-12 CCD Public School Universe file, by instructional level

Instructional level

Number of schools*

Primary schools

50,807

Middle schools

16,536

High schools

13,556

Other (combined) schools

5,801

TOTAL

86,590

* Counts reflect only regular schools with membership in the CCD file. For example, special education, vocational education, and other alternative schools are excluded. The 2011-12 CCD file (version v1.a) is the most recent file used for FRSS sampling purposes.


Within the primary sampling strata, schools can also be selected at varying rates depending on the goals of the study. This can be accomplished either by using a PPS systematic sampling algorithm (Hansen, Hurwitz, and Madow, 1953), or by forming appropriate size classes (strata) of equal aggregate measure of size and selecting equal numbers of schools from each size stratum. The latter procedure is often used for reasons of simplicity.


The sample size for a typical FRSS survey of public schools is approximately 1,200. This will yield a sample of 1,080 respondents assuming a response rate of 90 percent. For a sample of this size, the standard error of an estimated percentage for the total sample can be expected to be in the range of 1.3 to 1.6 percent. For a 50 percent item, a standard error of 2 percent corresponds to a coefficient of variation (cv) or relative standard error (RSE) of 4 percent. Moreover, the sample is large enough to provide reasonably reliable estimates for broad subsets of the population (e.g., one-way classifications by type of locale or size class). Table 2 illustrates the levels of precision that can be expected for a sample of 1,080 responding public schools. The standard errors presented in this table are given for illustrative purposes only; the actual standard errors to be obtained for any given QRIS survey may be smaller or larger than those shown.


Table 2. Illustrative standard errors for an estimated percentage based on a sample of 1,080 public schools, by instructional level, Census region, type of locale, and size class



Estimated percentage equal to:

Subset of sample

Expected sample size*

80%

50%

30%

Total sample

1,080

1.3

1.6

1.5






Instructional level





Elementary

648

1.7

2.1

2.0

Secondary/combined

432

2.1

2.6

2.4

Census region





Northeast

186

3.1

3.8

3.6

Midwest

297

2.5

3.1

2.9

South

372

2.2

2.8

2.6

West

227

3.0

3.8

3.5

Type of locale





Cities

252

2.8

3.5

3.2

Urban fringe

262

2.7

3.4

3.1

Towns

292

2.5

3.1

2.8

Rural areas

274

2.5

3.2

2.9

Enrollment size





Small (less than 500)

356

2.1

2.7

2.4

Medium (500-999)

351

2.1

2.7

2.4

Large (1,000+)

373

2.1

2.6

2.4

* Assumes an initial sample of 1,200 schools and a response rate of 90 percent.


Private Elementary and Secondary Schools


The general approach described previously for public schools will also apply to private schools. Samples of private schools will be selected from the most current NCES Private School Survey (PSS) Universe File. Note that the PSS frame consists of two parts: a list frame and an “area frame.” The latter is actually an area probability sample that represents schools not included in the list frame. Consequently, the schools in the area sample must be weighted to represent the unlisted portion of the private school universe. Table 3 summarizes the weighted distribution of private schools in the 2009-10 PSS frame by school size and private school typology. To select the sample of private schools, stratification by instructional level (elementary, secondary, and combined), private school typology (Catholic, other religious, and nonsectarian), and other characteristics may be employed. Within each primary stratum, the private school frame can be sorted by enrollment size, geographic region, or other characteristics available in the PSS file to induce additional implicit stratification. Depending on the goals of the survey, the total sample can be allocated to the primary strata in different ways (e.g., in proportion to the number of schools, in proportion to enrollment, or in proportion to the aggregate square root of the enrollment). Table 4 illustrates the levels of precision that might be expected for a sample of 1,080 responding private schools (based on an initial sample of 1,200 schools and a response rate of 90 percent).


Table 3. Number of schools in the 2009-10 PSS private school frame by school size and private school typology



Private school typology

School size

Total

Catholic

Other religious

Nonsectarian

Less than 50 students

15,127

368

8,006

6,753

50-149 students

8,229

1,675

4,280

2,274

150-299 students

5,600

2,802

1,953

845

300-499 students

2,570

1,342

800

427

500-749 students

1,105

594

330

181

750 or more students

736

333

248

154

Total

33,367

7,114

15,617

10,634

Note: Detail may not sum to totals because of rounding or missing values.


Table 4. Illustrative standard errors for an estimated percentage based on a sample of 1,080 private schools, by instructional level and private school typology



Estimated percentage equal to:

Subset of sample

Expected sample size*

80%

50%

30%

Total sample

1,080

1.4

1.7

1.6

Instructional level





Elementary

527

1.9

2.4

2.2

Secondary

278

2.7

3.5

3.2

Combined

276

2.8

3.5

3.3

Private school typology





Catholic

491

2.0

2.5

2.4

Other religious

407

2.2

2.8

2.6

Nonsectarian

183

3.3

4.1

3.8

* Assumes an initial sample of 1,200 schools and a response rate of 90 percent.


Public School Districts (LEAs)


The sampling frame to be used to select the required samples of public school districts (LEAs) will be constructed from the most recent NCES CCD Public Elementary and Secondary Agency Universe File. As shown in Table 5, about 14,000 regular public school districts are included in the 2011-12 CCD file. We anticipate that for most of the district surveys to be conducted under FRSS, stratification by size class, region, metropolitan status, poverty status, or other variables will be used to improve the precision of overall estimates, and to ensure minimum sample sizes for the analytic domains of interest. Further, we expect that a probability-proportionate-to-square-root-of-size design will be efficient for the goals of the study. However, this basic design will be modified as necessary to meet the particular objectives of a given study.


The sample size for a typical FRSS district survey is approximately 1,200 districts. Assuming a response rate of 90 percent, an initial sample of 1,200 districts will yield approximately 1,080 respondents. If the sample is allocated to strata in rough proportion to the aggregate square root of enrollment, the expected sample sizes would be those shown in Table 6. With these sample sizes, survey-based estimates for the total sample and for selected subgroups are expected to be reasonably precise. Table 6 illustrates the levels of precision to be expected for a sample of 1,080 public school districts


Table 5. Number of regular public school districts in the 2011-12 NCES CCD LEA Universe Survey by enrollment size class



Enrollment size class

Number of districts

Less than 1,000

6,455

1,000 to 2,499

3,224

2,500 to 9,999

3,027

10,000 to 24,999

600

25,000 or more

282

TOTAL

13,588

Includes district types 1 (local school district not part of a supervisory union) and 2 (local school district component of a supervisory union). Counts of districts with 0 or missing enrollment as reported in the CCD universe file are included in the less than 1,000 category.


Table 6. Illustrative standard errors for an estimated percentage based on a sample of 1,080 public school districts, by size class, region, and metropolitan status

Subset of sample

Expected sample size*

Estimated percentage equal to:



80%

50%

30%

Total sample

1,080

1.5

2.0

1.8

District size class





Less than 2,500

376

2.5

3.0

2.8

2,500 to 9,999

388

2.2

2.8

2.6

10,000 or more

315

2.5

3.1

2.8

Region





Central

318

2.8

3.5

3.3

Northeast

210

3.5

4.3

4.0

Southeast

216

3.5

4.3

3.9

West

335

2.8

3.5

3.2

Metropolitan status





Urban

211

3.0

3.8

3.5

Suburban

470

2.3

2.9

2.7

Rural

398

2.6

3.2

2.9

* Assumes an initial sample of 1,200 districts and a response rate of 90 percent.


Libraries


As an important provider of educational services, libraries (both school and public libraries) have been the focus of past research efforts. For example, public libraries have been surveyed in FRSS 66 (survey on programs for adults in public library outlets) and FRSS 47 (survey on library services for children and young adults). In addition, Westat, the current contractor to ED for FRSS and PEQIS surveys, conducted surveys of public and private school libraries for ED as part of the Assessment of the Role of School and Public Libraries in Support of the National Education Goals. If required for a QRIS survey, samples of public libraries will be drawn from the most recent Public Library Survey (PLS) universe file (the PLS is now conducted by the Institute of Museum and Library Services).


Postsecondary Education Quick Information System (PEQIS)


The samples of postsecondary institutions for PEQIS studies will usually use the existing postsecondary education panel. This panel currently consists of a stratified probability sample of approximately 1,650 2- and 4-year public and private institutions. The sampling frame for the PEQIS panel was constructed from the 2009-10 Integrated Postsecondary Education Data System (IPEDS) Institutional Characteristics file. Institutions eligible for the PEQIS frame included 2-year and 4-year (including graduate-level) institutions that are both Title IV eligible and degree granting, and are located in the 50 states and the District of Columbia: a total of 4,485 institutions. The PEQIS sampling frame was stratified by instructional level (4-year, 2-year), control (public, private not-for-profit, private for-profit), highest level of offering (doctor’s/first-professional, master’s, bachelor’s, less than bachelor’s), and total enrollment. Within each of the strata, institutions were sorted by region (Northeast, Southeast, Central, West) and by whether the institution had a relatively high minority enrollment. The sample of 1,647 institutions was allocated to the strata in proportion to the aggregate square root of total enrollment. Institutions within a stratum were sampled with equal probabilities of selection. Table 7 summarizes the PEQIS universe counts and sample sizes by level and type of control.


Table 7. Distribution of institutions in the postsecondary (PEQIS) universe and panel by level and type of control

Level

Control

Number of institutions in PEQIS frame

Number of institutions in PEQIS panel

4-year

Public

672

442


Private, not-for-profit

1,537

435


Private, for profit

562

128

2-year

Public

999

544


Private, not-for-profit

85

11


Private, for profit

630

87

Total


4,485

1,647


Less-than-2-year and non-degree-granting institutions are not included in the PEQIS universe and panel because of the great volatility of these types of institutions. These schools, many of which are proprietary, open and close at a much faster rate than other kinds of postsecondary institutions. This means that any portion of the PEQIS panel allotted to less-than-2-year and non-degree-granting institutions would be outdated very quickly -- that is, it would no longer represent an up-to-date universe of these schools. Further, NCES does not anticipate that there will be many survey requests that include these institutions. Thus, NCES decided that when a survey was requested through PEQIS that included less-than-2-year or non-degree-granting institutions, the most recent IPEDS Institutional Characteristics file would be used to draw an up-to-date supplementary sample of these institutions to be used for that survey. This approach means that the basic PEQIS panel will remain up-to-date (i.e., will accurately reflect the current universe of sampled institutions) for a longer period of time, and the supplementary samples of less-than-2-year and non-degree-granting institutions will also be up-to-date for the specific surveys for which these supplementary samples are drawn. NCES believes that this approach is the best compromise between the efficiencies of a standing panel of postsecondary institutions and the need for any such panel to reflect the current universe of institutions.


Sampling weights reflecting the overall probabilities of selection under the design employed for a FRSS or PEQIS study will be computed and assigned to each sampled unit. Nonresponse weight adjustments will be used to correct for unit (whole questionnaire) nonresponse in the survey. Item imputation techniques such as “hot deck” or regression methods will be used to estimate missing values of individual survey items as required. To estimate levels of precison, sampling variances will be computed using the jackknife or other appropriate replication method. Estimates of population characteristcs produced from FRSS and PEQIS surveys have generally achieved coefficients of variation (CVs) in the range of 2 to 4 percent for most national estimates, with somewhat higher CVs for subgroup estimates. .


B.2. Statistical Methodology


The statistical methodology is described in detail in Section B.1.


B.3. Methods for Maximizing the Response Rate


Telephone followup for nonresponse will begin about 3 weeks after questionnaires have been mailed to the institutions. Experienced telephone interviewers will be trained in administering the questionnaire and will be monitored by Westat supervisory personnel during all interviewing hours. The response rate for most of the quick response surveys with single-stage samples completed to date through FRSS ranged from 85 to 99 percent, with most surveys above 90 percent, and on PEQIS ranged from 90 to 96 percent. Similar response rates are anticipated for future FRSS and PEQIS surveys. Ratio-weighting within adjustment cells will be used to partially compensate for the expected 10 percent (or less) nonresponse to each survey.


B.4. Tests of Procedures and Methods


Following the procedures for NCES quick-response surveys (PEQIS and FRSS) established during the current QRIS generic clearance (1850-0733), feasibility calls and a pretest (for which OMB clearance is requested under the NCES system clearance for Cognitive, Pilot, and Field Test Studies, OMB #1850-0803) are conducted for each survey prior to OMB review under this QRIS generic clearance (1850-0733). The purpose of the feasibility calls and pretest is to determine what problems respondents might have in providing the requested information and to make appropriate changes to the questionnaire, if necessary. Responses and comments on the questionnaire are collected by fax and telephone during the pretest, and the results are summarized as part of the documentation for the survey.


B.5. Reviewing Statisticians


QRIS surveys are conducted by NCES. NCES contracted Westat to carry out developmental studies; mail the questionnaires; collect data by Web, mail, and telephone; edit, code, key, and verify the data; and produce tabulations and survey reports. Adam Chu, Senior Statistician at Westat, was consulted about the statistical aspects of the PEQIS panel design and the FRSS samples. Chris Chapman, the Associate Commissioner of the Sample Surveys Division withing NCES, is the Contracting Officer’s Representative for QRIS, and supervises staff working on QRIS surveys.

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