Supporting Statement (1220-0050) CE Part B_3_12

Supporting Statement (1220-0050) CE Part B_3_12.docx

The Consumer Expenditure Surveys: The Quarterly Interview and the Diary

OMB: 1220-0050

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Supporting Statement



B. Collection of Information Employing Statistical Methods


  1. Sampling Method

    Consumer Units

    There are approximately 122 million consumer units (CUs) in the Consumer Expenditure (CE) Survey’s universe.1 A CU is the unit from which we seek expenditure reports. It consists of all household members in a particular housing unit or other type of living quarters who are related by blood, marriage, adoption, or some other legal arrangement. The CU determination for unrelated persons is based on financial dependence in three expenditure categories: shelter, food, and all other expenses. Unrelated persons are considered to be separate CUs if they are responsible for paying their own expenses for at least two of these categories, and they are considered to be part of the same CU if they share expenses for at least two of these categories. Approximately 97 percent of all occupied living quarters are occupied by a single CU.


For an overview of the CE sample design and the CU selection process, please refer to the 2008 CE Anthology article, “Selecting a Sample of Households for the Consumer Expenditure Survey” by Susan King and Sylvia Johnson-Herring (Attachment O).


The following table shows estimated numbers of CUs in all 91 strata from which PSUs were selected.2 (See the section below entitled “PSUs” for more information.)


Estimated Number of CUs in CE’s 91 Strata



Stratum Code

Estimated Number of CUs in Stratum

A102

2,682,337

A103

3,076,725

A104

1,109,160

A109

3,471,120

A110

3,345,637

A111

2,887,479

A207

3,975,571

A208

2,365,042

A209

1,161,194

A210

1,276,845

A211

1,359,359

A312

2,179,256

A313

1,106,574

A316

2,286,803

A318

2,043,853

A319

1,820,983

A320

1,680,184

A321

1,017,906

A419

5,359,776

A420

1,737,241

A422

3,051,152

A423

1,540,781

A424

1,219,632

A425

1,098,491

A426

423,037

A427

154,316

A429

1,409,498

A433

1,269,841

X102

1,984,754

X104

1,153,681

X108

1,527,077

X210

1,541,319

X212

1,031,743

X218

1,176,233

X220

1,190,474

X222

1,306,535

X224

1,867,021

X226

1,054,968

X228

818,698

X232

757,580

X336

1,717,072

X338

1,193,581

X340

1,229,480

X342

1,598,293

X344

1,251,499

X346

1,133,546

X350

961,323

X352

1,227,622

X354

1,767,779

X356

1,247,878

X358

1,750,423

X362

1,598,245

X364

1,783,151

X366

904,262

X368

1,252,451

X472

1,780,653

X474

2,009,485

X482

1,504,454

X484

1,315,058

Y102

589,789

Y104

685,725

Y206

864,751

Y208

1,028,433

Y210

857,333

Y212

1,028,146

Y314

851,877

Y316

984,162

Y318

816,244

Y320

859,416

Y322

1,016,067

Y324

813,425

Y426

553,445

Y428

505,920

Y430

623,627

Y432

603,219

Z102

387,673

Z104

603,031

Z206

890,485

Z208

654,787

Z210

805,152

Z212

956,245

Z314

810,396

Z316

769,006

Z318

814,876

Z320

1,069,877

Z322

989,211

Z324

588,576

Z426

284,458

Z428

247,159

Z430

341,514

Z432

359,851

Total

122,000,000




Response Rates


The following table shows expected 2013 sample sizes for the Quarterly Interview Survey (CEQ) and the Diary Survey (CED) based on the target number of completed interviews and 2011 response rates.



Category

Quarterly

(quarter) (1)

Diary

(annual)

Total Sample Size

15,320

11,750

Total Type B and C Noninterviews (vacant, demolished, etc.):

Number

Percent of Total Sample


3,064

20.0


2,350

20.0

Total Eligible Units

12,256

9,400

Total Type A Noninterviews

Number

Percent of Total Eligible


3,432

28.0


2,350

25.0

Total Completed Interviews

Number

Percent of Total Eligible


8,825

72.0


7,050

75.0

(1) This is the expected quarterly sample size for all five waves of the survey.


For more information on the calculation of response rates, please see the 2008 CE Anthology article “Response Rates in the Consumer Expenditure Survey,” by Sylvia Johnson-Herring and Sharon Krieger (Attachment P).


In 2008  CE staff conducted a nonresponse bias study to determine whether the missing data from nonrespondents generated any bias in the Interview survey’s published estimates.  Their study was undertaken in response to OMB’s recent directive on the matter.  They synthesized the results from four individual studies, and concluded that CE’s data are not “missing completely at random,” but that no bias is introduced into the survey’s published estimates in spite of that fact.  As they said, “the results from these four studies provide a counterexample to the commonly held belief that if a survey’s data are not missing completely at random (MCAR) then its estimates are subject to nonresponse bias.”  For more information, please see “Assessing Nonresponse Bias in the Consumer Expenditure Interview Survey” (Attachment T).



2. Collection Methods


Primary Sampling Units (PSUs)

The primary sampling units (PSUs) used in the CEQ and CED are small clusters of counties. The average number of counties in a PSU is approximately five. The set of sample PSUs used in the two CE surveys consist of 91 PSUs, 75 of which are also used in the Consumer Price Index (CPI). The 91 PSUs fall into four categories:


PSU

size class”

Number

of PSUs

Description

A

28

Large Metropolitan CBSAs (self-representing PSUs)

X

31

Small Metropolitan CBSAs (non-self-representing PSUs)

Y

16

Micropolitan CBSAs (non-self-representing PSUs)

Z

16

Non-CBSA Areas (non-self-representing PSUs)


The BLS selected these PSUs from a stratified sample design in which one PSU was selected from each stratum. Stratification of the non-self-representing PSUs (the X, Y, and Z PSUs) used a 5-variable model whose independent variables were latitude, longitude, latitude squared, longitude squared, and the percent of consumer units living in an urban area.


Sampling Within PSUs


Four non-overlapping sampling frames are used to select CUs for the CE surveys. The four frames are: Unit, Area, Group Quarters (GQ), and Permit. The first three frames, Unit, Area, and GQ, are called “old construction”; and the Permit frame is called “new construction.” The Permit frame consists of housing units built after April 1, 2000.


The Unit frame covers 80% of the sample, and consists of addresses of housing units located in census blocks in areas that issue building permits, and in which a high percentage of the addresses are “complete” (they contain a street name and house number). The Area frame covers 10% of the sample, and consists of addresses located in census blocks that are not in permit-issuing areas, or where more than 4 percent of the addresses in the blocks are incomplete or missing. These addresses are mostly in rural areas. The GQ frame covers 1% of the sample, and consists of boarding houses, hotel rooms, and institutions that are found in the decennial census but are not counted as housing units. These addresses are located in census blocks that contain complete addresses and where building permits are issued. Since the census does not cover housing units built after April 1 of the census year, the list of addresses in these three frames is supplemented by a sample of building permits from the Building Permit Survey, which is conducted by the Census Bureau. The Permit frame is updated by this survey monthly and covers about 9% of the sample.


Within each PSU, a “systematic sample” of households is selected from each of the four frames. The first step in the selection process is sorting the households by variables that are correlated with their expenditures. The purpose of this is to ensure that households of every wealth level are well-represented in the sample. The first household in the systematic sample is selected from the sorted list using a random number generator. After the initial household is selected, another household is selected every “k” households down the list, where “k” is the inverse of the PSU’s probability of selection times the PSU’s sampling interval.


Each frame has different sort variables. For the Unit frame, each address is assigned to a category based on whether the address is rental or owned property. Both the rental and owned categories are subdivided into quartiles of rental and property values, which are defined uniquely for each county. These eight categories are further subdivided by whether the housing unit is vacant or occupied by 1, 2, 3, or more than 4 people, and each cell is assigned a stratification code value (see table 1).


Table 1. CE Unit Frame Stratification Code Values


Renter/Owner Quartile

Number of Occupants


Vacant

1 person

2 persons

3 persons

4+ persons

Renters 1st Quartile

10

11

12

13

14

Renters 2nd Quartile

25

24

23

22

21

Owners 1st Quartile

30

31

32

33

34

Owners 2nd Quartile

45

44

43

42

41

Renters 3rd Quartile

50

51

52

53

54

Renters 4th Quartile

65

64

63

62

61

Owners 3rd Quartile

70

71

72

73

74

Owners 4th Quartile

85

84

83

82

81

Residual Vacant

99






All addresses in the Unit frame fall into one of these cells. When the addresses are placed in order, those whose rent is in the lowest quartile and have a small number of occupants are at one end of the list, and those whose property values are in the highest quartile with a small number of occupants are at the other end of the list. The stratification code is a surrogate for sorting by expenditures. To draw a systematic sample, the Unit frame addresses are sorted by PSU, urban/rural classification, FIPS State code, FIPS County code, the stratification variable described above, Census Tract code, Census Block code, Basic Street Address, and Unit Sort Order code.


Addresses in the Area frame are sorted in a similar way, but using different variables. A Combined Block Stratification code is calculated using median household size and the proportion of owner-occupied housing units. Then addresses in the Area frame are sorted by PSU, an urban/rural variable, Combined Block Housing Flag, FIPS State code, FIPS County code, Combined Block Stratification code, Census Tract, and a Combined Block code.


The GQ and Permit frames do not have a stratification code, but they have a within-PSU sort. The sort variables in the GQ frame are: PSU, FIPS State code, FIPS County code, Census Tract, Combined Block code, and a Within-Combined-Block code.


For more information on sampling within PSUs for the CE Surveys, please refer to the 2008 CE Anthology article, “Selecting a Sample of Households for the Consumer Expenditure Survey” by Susan King and Sylvia Johnson-Herring (Attachment O).



Estimation


The estimation procedure for both the CED and CEQ follow well-established statistical principles. The final weight for each sample CU is the product of the inverse of its probability of selection; a weight adjustment to account for noninterviews; and a calibration adjustment that post-stratifies the weights to account for population undercoverage.


For additional information on the sample design and estimation methodology used in the CE surveys, please refer to “Chapter 16, Consumer Expenditures and Income” in the BLS Handbook of Methods (Attachment Q). Another source of information is Kenneth V. Dalton’s memo to Chester E. Bowie, “Specifications for the Selection of CE/CPI Samples in PSUs Based on the 2000 Census,” June 28, 2002 (Attachment R); and Alan R. Tupek’s memo to Kenneth V. Dalton, “Calculations of Within-PSU Sampling Intervals for the Census 2000-Based Redesign of the Consumer Expenditure Surveys and the CPI Permit New Construction Housing Sample,” November 11, 2002 (Attachment S).



3. Methods to Maximize Response Rates


In the CE Surveys, keeping the noninterview rate at a low level requires special efforts, particularly from the Census Bureau Field staff. For each refusal case, the regional office sends a special letter to the address and assigns the case for follow-up by the program supervisor, supervisory field representative, or senior interviewer, taking into account time and cost considerations.


To adjust for those noninterviews that the field staff cannot convert to interviews, the sample design provides for a noninterview adjustment in the estimation procedure. The computer processing employs special techniques in the CEQ to reference data provided in the previous interview, keeping recall problems and interview time to a minimum.



4. Testing Plans

Subject to resource availability, CE plans to conduct the following studies (prior to the expiration of the clearance). Ideally these studies will utilize non-production sample, but funding may necessitate the use of production sample for some tests. A Non-Substantive Change Request (NCR) will be submitted for all of the proposed studies should funding and resources become available.

CE Interview Survey


  1. Telephone Friendly Questions - A field test of questions that are mode neutral between personal visit and telephone interviewing. Current questions in the interview were designed for a personal visit setting, relying on long lists from the Information Booklet and do not convey well in telephone interviewing.

  2. Promotional Materials Test - A test of providing promotional materials to respondents in order to encourage participation in subsequent waves. A maximum of three items will be tested in several regions to determine the effectiveness of providing the promotional materials to respondents. The items that have been considered for this test are: ceramic, acrylic or plastic mugs, magnets, and reusable canvas bags all with the Census and BLS logos.

  3. Expense Worksheet - This study is designed to determine whether it is feasible to ask respondents to record expenditures between interviews on a worksheet and to determine if recording expenditures between interviews results in better data quality and potentially less respondent burden as preparation may make the interview shorter.

  4. Information Booklet for Telephone Respondents Test – This test will follow up on previous research conducted to determine if providing an Information Booklet to telephone respondents improved data quality. Initial research showed that it was not feasible to provide an Information Booklet to telephone respondents using the prior test procedures. Also, there was some evidence that use of the Information Booklet during a telephone interview may have affected the level of expenditures reported. This test would allow CE to test another set of field procedures and better determine the affect of the booklet on expenditure reporting levels.

CE Diary Survey

  1. Individual Diary Feasibility Study – This study, as described earlier, will test the feasibility and impact of using both individual diaries and multiple modes to collect CE Diary expenditures. All CU members in the research sample will be offered, sequentially, a mobile-optimized web option, then a web survey, and then a two-week paper diary for recording expenditures. The purpose of this test is to evaluate the operational issues related to implementing a mobile-optimized web option for Diary data collection versus web mode with an individual log-in versus a two-week paper diary; to evaluate if high-level expenditure reporting rates and data quality differ by research group and the control group; to determine differences in acceptance and completion rates by research group and control group; and lastly, to ascertain web respondents’ and mobile-optimized web option respondents’ specific data entry patterns.


  1. Expenditure App Prototype Study – This study includes the development and a small scale test of CE specific Smartphone applications (apps). A contract will be issued to a private vendor to develop iOS and Android apps designed to collect CE specific data elements. The apps will be branded as Consumer Expenditure Survey applications. Internal studies of existing apps were conducted by BLS and none easily collected all required CE data elements. The apps will be evaluated as both primary and secondary sources of CE data.

  2. TPOPS Test - A test to combine the CE Diary Survey and CPI’s Point of Purchase Survey (TPOPS). This test might be undertaken to determine whether data collected on point of purchase can be combined with expenditure data in order to provide CPI with lower levels of nonresponse error for point of purchase data.



5. Statistical Contacts

The Census Bureau will collect the data. Within the Census Bureau, you may consult the following individuals and their area of expertise for further information.


Sample Design: Stephen Ash (301) 763-4294

Data Collection: Howard McGowan (301) 763-5342


11 The number of CUs comes from dividing the Census Bureau’s 2011 estimate of the number of people in the civilian non-institutional population (305 million) by the average number of people per CU (2.5).

2 The number of CUs per stratum comes from allocating the nationwide total of 122 million CUs by each stratum’s proportion of the nationwide population in the 2000 Census.

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