Attachment U - CE Survey Sample Allocation

Attachment U - Consumer Expenditure Surveys Sample Allocation - Feb 2014.docx

Consumer Expenditure Surveys: Quarterly Interview and Diary

Attachment U - CE Survey Sample Allocation

OMB: 1220-0050

Document [docx]
Download: docx | pdf

6


F
ebruary 5, 2014


MEMORANDUM FOR Jay Ryan

Chief, Division of Consumer Expenditure Surveys

Office of Prices and Living Conditions

Bureau of Labor Statistics


Through: Carolyn Pickering

Survey Director, Consumer Expenditure Survey

U.S. Census Bureau

From: Ruth Ann Killion

Chief, Demographic Statistical Methods Division

U.S. Census Bureau


Prepared by: Jacob Enriquez

Demographic Statistical Methods Division

U.S. Census Bureau


Subject: Consumer Expenditure Surveys Sample Allocation for the 2010 Census-Based Sample Design



Introduction


This memorandum gives the sample sizes for the 91 primary sampling units (PSU) in the Consumer Expenditure Survey’s (CE) upcoming 2010 Census-based sample design. They are scheduled to be used starting in 2015. The CE program budget allows for the selection of 12,000 addresses per year for the Interview survey and 12,000 addresses per year for the Diary survey. This sample size is expected to yield 6,900 interviewed households per quarter for the Interview survey and 6,900 interviewed households per year for the Diary survey. This memorandum describes the allocation of 12,000 addresses to the 91 individual PSUs for both the Interview and Diary surveys. The 12,000 addresses are from the unit frame only, as the sampling for the group quarters frame will be handled separately. Much of this memorandum is from Swanson (2013).



Background


Research by Consumer Expenditure Statistical Methods Division (CESMD) and Demographic Statistical Methods Division (DSMD) in recent years showed that allocating the nationwide sample of households to PSUs directly proportional to the populations they represent (i.e. their stratum populations) is a simple and effective way of producing expenditure estimates with small variances at the nationwide level. It is how CE’s sample has always been allocated, and the research confirmed its appropriateness (Swanson 2009a, Swanson 2009b, and Killion 2012). This allocation process is formalized in the language of mathematics by expressing the process as a constrained optimization problem.


One subtle change in the upcoming sample design is that addresses will be allocated instead of usable interviews. In the past the nationwide target number of usable interviews was allocated to individual PSUs in a two-step process – by first allocating them to CPI index areas1, and then sub-allocating them to individual PSUs. Then a nonresponse adjustment was made to inflate the number of usable interviews up to the number of addresses that needed to be selected. This time the allocation process will be done in a similar manner, except that addresses will be allocated instead of usable interviews. This change will move the nonresponse adjustment to an earlier step in the process (Johnson-Herring 2001, Swanson 2002, and Johnson-Herring, Krieger, Swanson 2005).



A Mathematical Description of the Allocation Process


Here is a mathematical description of the allocation process for the upcoming 2010 Census-based sample design. Let


pi

=

population of the i-th index area,

ri

=

participation rate of the i-th index area (0 ri 1), and

ni

=

number of addresses allocated to the i-th index area.


We assume the pi’s and ri’s are given, and we want to find the ni’s that minimize CE’s nationwide variance. The ni’s add up to 12,000. As mentioned above, the CESMD/DSMD research showed that allocating the nationwide sample to individual PSUs directly proportional to the populations they represent (their stratum populations) is a simple and effective way of producing expenditure estimates with small variances at the nationwide level. This suggests solving the following constrained least squares problem:


Given values of pi and ri for every index area i, find the values of ni that…

Minimize


Subject to:



niri 80

for all i urban index areas


niri 40

for all i rural index areas


Here is the total U.S. population; niri is the expected number of interviewed households in the i-th index area; and is the expected number of interviewed households nationwide. The ratio pi/p is the i-th index area’s proportion of the total population, and the ratio niri/NR is the i-th index area’s proportion of the total number of interviewed households. Minimizing the sum of squared differences produces an allocation as close to population proportionality as possible.


The minimum required sample size for rural index areas is smaller than the rest of the index areas in order to avoid over allocating to these index areas as well as have their sample sizes more in-line with their populations.



Computing the participation rates


Participation rates (0 ri 1) are required in the optimization problem in order to determine the expected number of interviewed households in the i-th index area (niri). The participation rate is the eligibility rate times the response rate. It is the percent of sample addresses from which usable interviews are collected.



Computing the response rates


The response rate is the number of interviews divided by the number of eligible cases,



where Eligible cases = Interviews + Type A non-interviews.


DSMD computed the response rates for each index area using interview outcomes of the past five years (2008 – 2012), and selecting unit frame cases located in the counties for the 2010 sample design. The Interview survey response rates include interviews one to five. The Diary survey response rate is per household unit and not per interview since addresses are allocated instead of usable interviews. Since response rates have been decreasing over time, the 5-year historical response rates are reduced by 5 percentage points in order to account for this downward trend.


Some counties in sample for the 2010 design do not have historical data, this is because some of the counties selected are new for the 2010 sample design and are not in the current sample design. For such instances, the response rate is computed using data from counties within the same index area, and are also in the current sample design. For example, the 2010 sample design includes only Addison County, Vermont for the index area R110. This county is not in the current sample design and therefore has no historical data. However, Somerset County, Maine is in the same index area and is in the current sample design. Hence, the response rate for index area R110 uses historical data from Somerset County, Maine.


Attachment C shows the 5-year historical response rates per index area, without the reduction of 5 percentage points.



Computing the eligibility rates


The eligibility rate is the percent of addresses with occupied housing units,



where Eligible cases = Interviews + Type A non-interviews.


For the 2010 sample redesign, CE will be using a frame based on the Census Bureau’s Master Address File (MAF); hence, the eligibility rates reflect the MAF and not historical CE interviews. As a result, DSMD computed the eligibility rates from the American Community Survey (ACS) sample, which uses the MAF as its frame. The computation is based on five years of ACS control files (2008-2012), and applies ACS base weights and CAPI sub sampling factors. The eligibility rate per index area is the weighted average of the PSU eligibility rates.



The Sub-Allocation Process


After allocating the nationwide sample of 12,000 addresses to the 41 index areas, the next step is sub-allocating to the individual PSUs in the index area. It is done directly proportional to each PSU’s share of the index area’s population. For example, index area N120 represents 15,036,701 people and Pittsburgh represents 27.04% of the index area’s population so it is given 27.04% of its sample. Likewise, Buffalo represents 23.16% of N120’s population so it is given 23.16% of its sample, Rochester is given 26.10% of its sample, and Reading is given 23.69% of its sample.


Index

PSU


Stratum

Percent

Area

Code

PSU Name

Population

of Total

N120

N12C

Pittsburgh, PA

4,065,877

27.04%

N120

N12D

Buffalo-Cheektowaga-Niagara Falls, NY

3,483,174

23.16%

N120

N12E

Rochester, NY

3,925,318

26.10%

N120

N12F

Reading, PA

3,562,332

23.69%

N120

––

Total

15,036,701

100.00%


Attachment B shows the results of the sub-allocation.




Number of addresses that need to be sampled


DSMD draws a single sample of addresses for both surveys, with the even-numbered addresses going to the Interview survey and the odd-numbered addresses going to the Diary survey. The number of addresses that need to be sampled is the larger of the two sample sizes. For example, the allocation results in Attachment B show that the Boston PSU (S11A) needs 171 addresses for the Interview survey and 161 addresses for the Diary survey. DSMD draws the larger of the two sample sizes, which is the Interview survey’s 171 addresses, for both surveys. Then a sample reduction process removes ten random addresses from the Diary survey.


The expected number of usable interviews is the number of sampled addresses times the eligibility rate, times the response rate (after the five percentage point reduction).


The take-every is the total household units in the MAF divided by the number of addresses that need to be sampled.



Results


Attachments A and B show the allocation results of this memo. Attachment A shows the number of addresses and the expected number of usable interviews in the 41 index areas, and Attachment B shows the same numbers for the 91 PSUs. Attachment C shows the participation rates.



References


Johnson-Herring, S. (2001). Bureau of Labor Statistics memorandum, “CE Minimum Within-PSU Sample Size,” from Sylvia Johnson-Herring to David Swanson, dated December 14, 2001.


Johnson-Herring, S., Krieger, S., and Swanson, D. (2005). “Determining Area Sample Sizes for the Consumer Expenditure Survey,” Consumer Expenditure Survey Anthology, 2005.


Killion, R.A. (2012). U.S. Census Bureau memorandum, “Sample Allocation Research for the Consumer Expenditures Interview Survey,” from Ruth Ann Killion to Jay Ryan, dated March 20, 2012.


Ryan, J. (2012). Bureau of Labor Statistics Memorandum “PSUs for the Consumer Expenditure Survey’s 2010 Census-Based Sample Design” from Jay Ryan to Richard Schwartz, dated December 19, 2012.


Swanson, D. (2001). Bureau of Labor Statistics memorandum, “Automating the CE Sample Allocation Process,” from David Swanson to SMD Files, dated January 10, 2001


Swanson, D. (2002). “Determining Within-PSU Sample Sizes for the Consumer Expenditure Survey,” Proceedings of the Section on Government Statistics, American Statistical Association, 2002.


Swanson, D. (2009a). Bureau of Labor Statistics memorandum, “Allocating CE’s Nationwide Sample to Individual PSUs,” from David Swanson to Jay Ryan, dated September 15, 2009.


Swanson, D. (2009b). Bureau of Labor Statistics memorandum, “Allocating CE’s Nationwide Sample to Individual PSUs,” from David Swanson to Jay Ryan, dated December 17, 2009.


Swanson, D. (2013). Bureau of Labor Statistics memorandum, “Allocating CE’s Nationwide Sample to Individual PSUs,” dated July 19, 2013.



Attachments



cc:

D. Castelo

(DSMD)

S. Ash


J. Farber


S. Bechtle


C. Pickering

(ADDP)

R. Schwartz


C. Seamands


D. Swanson

(BLS)

S. Paben


T. Olson




Number of Sample Addresses and

Expected Number of Usable Interviews in the 41 Index Areas


This is the nationwide sample of 12,000 addresses allocated to the

41 index areas along with the expected number of usable interviews.




Index


# Addresses

# Usable Interviews


Area

Population

Interview

Diary

Interview

Diary

1.

N110

9,239,719

318.79

284.73

193.44

192.90

2.

N120

15,036,701

547.82

548.02

314.49

316.01

3.

N230

28,676,810

1,062.20

1,071.07

647.83

696.45

4.

N240

12,053,008

445.41

434.97

244.21

254.72

5.

N350

33,959,783

1,256.04

1,249.31

742.70

725.20

6.

N360

15,382,945

560.48

553.92

322.22

338.03

7.

N370

21,047,585

765.99

754.20

409.25

367.93

8.

N480

13,999,691

511.35

512.59

289.59

288.92

9.

N490

19,359,051

700.29

699.69

450.69

460.41

10.

R110

652,744

69.65

71.73

40.00

40.00

11.

R120

825,870

131.25

150.28

56.08

60.32

12.

R230

2,957,143

146.64

140.06

74.30

72.79

13.

R240

3,385,874

137.69

147.88

74.84

78.47

14.

R350

3,396,724

72.09

101.68

46.18

61.08

15.

R360

2,974,706

207.86

187.85

83.93

83.15

16.

R370

2,903,346

64.04

103.21

40.00

59.02

17.

R480

1,328,391

92.20

158.52

46.63

65.15

18.

R490

714,395

101.75

80.57

47.27

40.00

19.

S11A

4,552,402

171.73

161.92

95.50

93.08

20.

S12A

19,567,410

714.41

714.35

387.89

391.80

21.

S12B

5,965,343

233.67

229.30

125.32

125.48

22.

S23A

9,461,105

323.62

310.72

198.85

200.24

23.

S23B

4,296,250

156.49

144.88

88.51

85.00

24.

S24A

3,348,859

119.03

116.31

80.00

80.00

25.

S24B

2,787,701

147.78

129.38

80.00

80.00

26.

S35A

5,636,232

199.28

195.39

114.86

114.48

27.

S35B

5,564,635

183.45

169.22

109.78

105.69

28.

S35C

5,286,728

174.02

150.93

103.83

96.04

29.

S35D

2,783,243

142.00

127.31

80.00

80.00

30.

S35E

2,710,489

154.90

202.57

80.00

92.61

31.

S37A

6,426,214

221.28

240.72

130.41

134.00

32.

S37B

5,920,416

234.19

237.15

124.64

125.53

33.

S48A

4,192,887

180.48

183.13

94.00

95.08

34.

S48B

2,543,482

131.52

118.56

80.00

80.00

35.

S49A

12,828,837

467.90

470.51

265.98

264.28

36.

S49B

4,335,391

169.42

167.19

106.18

92.56

37.

S49C

4,224,851

175.48

162.48

93.17

90.16

38.

S49D

3,439,809

117.98

115.95

80.00

80.00

39.

S49E

3,095,313

127.49

128.72

80.00

80.00

40.

S49F

1,360,301

127.31

134.08

80.00

80.00

41.

S49G

523,154

135.02

138.95

80.00

80.00


Total

308,745,538

12,000.00

12,000.00

6,882.57

6,946.58



Number of Sample Addresses and

Expected Number of Usable Interviews in the 91 PSUs


This is the nationwide sample of 12,000 addresses allocated to the

91 PSUs along with the expected number of usable interviews.


 

Index

PSU

 

 

# Addresses

# Usable Interviews

MAF

Take

 

Area

Code

PSU Name

Population

Interview

Diary

Interview

Diary

HU counts

Every*

1

N110

N11B

Hartford-West Hartford-East Hartford, CT

5,005,793

172.71

154.26

104.80

104.51

515,994

2,987.58

2

N110

N11C

Springfield, MA

4,233,926

146.08

130.47

88.64

88.39

258,410

1,768.94

3

N120

N12C

Pittsburgh, PA

4,065,877

148.13

148.18

85.04

85.45

1,128,340

7,614.44

4

N120

N12D

Buffalo-Cheektowaga-Niagara Falls, NY

3,483,174

126.90

126.95

72.85

73.20

529,995

4,174.93

5

N120

N12E

Rochester, NY

3,925,318

143.01

143.06

82.10

82.50

478,996

3,348.18

6

N120

N12F

Reading, PA

3,562,332

129.78

129.83

74.51

74.87

167,922

1,293.38

7

N230

N23C

Cincinnati, OH-KY-IN

3,395,853

125.78

126.83

76.71

82.47

933,932

7,363.41

8

N230

N23D

Cleveland-Elyria, OH

3,257,953

120.68

121.68

73.60

79.12

972,718

7,993.82

9

N230

N23E

Columbus, OH

3,758,510

139.22

140.38

84.91

91.28

847,347

6,036.12

10

N230

N23F

Milwaukee-Waukesha-West Allis, WI

3,256,494

120.62

121.63

73.57

79.09

682,307

5,609.73

11

N230

N23G

Dayton, OH

3,924,320

145.36

146.57

88.65

95.31

373,576

2,548.75

12

N230

N23H

Flint, MI

3,911,189

144.87

146.08

88.36

94.99

194,997

1,334.85

13

N230

N23I

Janesville-Beloit, WI

3,745,126

138.72

139.88

84.61

90.96

69,174

494.53

14

N230

N23J

Frankfort, IN

3,427,365

126.95

128.01

77.43

83.24

13,529

105.69

15

N240

N24C

Omaha-Council Bluffs, NE-IA

2,974,017

109.90

107.33

60.26

62.85

377,695

3,436.63

16

N240

N24D

Wichita, KS

2,842,770

105.05

102.59

57.60

60.08

275,971

2,626.98

17

N240

N24E

Lincoln, NE

3,288,318

121.52

118.67

66.63

69.49

132,440

1,089.89

18

N240

N24F

Wahpeton, ND-MN

2,947,903

108.94

106.38

59.73

62.30

10,798

99.12

19

N350

N35F

Charlotte-Concord-Gastonia, NC-SC

3,035,149

112.26

111.66

66.38

64.81

975,700

8,691.57

20

N350

N35G

Orlando-Kissimmee-Sanford, FL

2,642,941

97.75

97.23

57.80

56.44

974,388

9,967.96

21

N350

N35H

Richmond, VA

3,027,856

111.99

111.39

66.22

64.66

527,383

4,709.26

22

N350

N35I

Raleigh, NC

2,549,176

94.28

93.78

55.75

54.44

491,815

5,216.31

23

N350

N35J

Greenville-Anderson-Mauldin, SC

3,094,518

114.45

113.84

67.68

66.08

375,761

3,283.07

24

N350

N35K

Winston-Salem, NC

2,637,083

97.54

97.01

57.67

56.31

295,307

3,027.69

25

N350

N35L

Cape Coral-Fort Myers, FL

3,091,153

114.33

113.72

67.60

66.01

381,948

3,340.76

26

N350

N35M

Ocala, FL

2,568,744

95.01

94.50

56.18

54.85

169,498

1,784.04

27

N350

N35N

Gainesville, FL

2,913,140

107.75

107.17

63.71

62.21

123,267

1,144.06

28

N350

N35O

Wilmington, NC

2,736,321

101.21

100.66

59.84

58.43

132,731

1,311.50

29

N350

N35P

Jacksonville, NC

3,100,604

114.68

114.06

67.81

66.21

79,571

693.86

30

N350

N35Q

Big Stone Gap, VA

2,563,098

94.80

94.29

56.05

54.73

28,745

303.22

31

N360

N36A

Louisville/Jefferson County, KY-IN

2,529,624

92.17

91.09

52.99

55.59

555,975

6,032.19

32

N360

N36B

Birmingham-Hoover, AL

2,483,606

90.49

89.43

52.02

54.58

524,219

5,793.03

33

N360

N36C

Chattanooga, TN-GA

2,620,595

95.48

94.36

54.89

57.59

242,424

2,538.93

34

N360

N36D

Huntsville, AL

2,801,399

102.07

100.87

58.68

61.56

195,582

1,916.15

35

N360

N36E

Florence-Muscle Shoals, AL

2,550,408

92.93

91.84

53.42

56.04

72,916

784.67

36

N360

N36F

Meridian, MS

2,397,313

87.35

86.32

50.22

52.68

49,690

568.88

37

N370

N37C

San Antonio-New Braunfels, TX

2,436,095

88.66

87.29

47.37

42.59

899,396

10,144.60

38

N370

N37D

Oklahoma City, OK

2,812,948

102.37

100.80

54.69

49.17

573,736

5,604.39

39

N370

N37E

Baton Rouge, LA

2,543,610

92.57

91.15

49.46

44.46

350,744

3,788.94

40

N370

N37F

Lafayette, LA

2,444,837

88.98

87.61

47.54

42.74

210,467

2,365.44

41

N370

N37G

Brownsville-Harlingen, TX

2,581,037

93.93

92.49

50.19

45.12

152,513

1,623.64

42

N370

N37H

Amarillo, TX

2,756,117

100.30

98.76

53.59

48.18

107,779

1,074.52

43

N370

N37I

Russellville, AR

2,620,998

95.39

93.92

50.96

45.82

36,687

384.61

44

N370

N37J

Paris, TX

2,851,943

103.79

102.19

55.45

49.85

23,670

228.05

45

N480

N48C

Las Vegas-Henderson-Paradise, NV

3,227,960

117.90

118.19

66.77

66.62

870,033

7,361.34

46

N480

N48D

Provo-Orem, UT

3,724,271

136.03

136.36

77.04

76.86

161,723

1,185.99

47

N480

N48E

Yuma, AZ

3,840,701

140.29

140.62

79.45

79.26

90,593

644.22

48

N480

N48F

St. George, UT

3,206,759

117.13

117.41

66.33

66.18

61,470

523.54

49

N490

N49H

Portland-Vancouver-Hillsboro, OR-WA

5,208,366

188.41

188.25

121.26

123.87

955,334

5,070.59

50

N490

N49I

Santa Rosa, CA

5,163,670

186.79

186.63

120.21

122.81

207,317

1,109.89


*The Take Everys will need to be divided by two when the final redesign file is created in order to take twice as much sample to account for both CED and CEQ being selected at the same time.


 

Index

PSU

 

 

# Addresses

# Usable Interviews

MAF

Take

 

Area

Code

PSU Name

Population

Interview

Diary

Interview

Diary

HU counts

Every*

51

N490

N49J

Chico, CA

4,623,339

167.24

167.10

107.64

109.96

97,357

582.13

52

N490

N49K

Moses Lake, WA

4,363,676

157.85

157.72

101.59

103.78

36,615

231.96

53

R110

R11D

Addison, VT

652,744

69.65

71.73

40.00

40.00

17,271

240.77

54

R120

R12G

Northeast Pennsylvania

825,870

131.25

150.28

56.08

60.32

56,812

378.05

55

R230

R23K

Northern Michigan

1,605,685

79.62

76.05

40.34

39.52

39,430

495.22

56

R230

R23L

Holmes, OH

1,351,458

67.01

64.01

33.95

33.27

14,268

212.91

57

R240

R24G

Northern Missouri

1,838,073

74.75

80.28

40.63

42.60

20,862

259.87

58

R240

R24H

Northeast Nebraska

1,547,801

62.94

67.60

34.21

35.87

9,196

136.03

59

R350

R35R

Southern Virginia

1,543,021

32.75

46.19

20.98

27.75

64,826

1,403.43

60

R350

R35S

Southwest West Virginia

1,853,703

39.34

55.49

25.20

33.33

37,689

679.18

61

R360

R36G

Eastern Kentucky

1,567,733

109.55

99.00

44.23

43.82

91,078

831.40

62

R360

R36H

Western Tennessee

1,406,973

98.31

88.85

39.70

39.33

49,746

505.99

63

R370

R37K

Northeast Texas

1,315,398

29.02

46.76

18.12

26.74

60,280

1,289.17

64

R370

R37L

Northern Arkansas

1,587,948

35.03

56.45

21.88

32.28

45,063

798.32

65

R480

R48G

Ravalli, MT

481,660

33.43

57.48

16.91

23.62

20,117

350.01

66

R480

R48H

Lincoln, NM

399,341

27.72

47.65

14.02

19.59

18,341

384.89

67

R480

R48I

Gooding, ID

447,390

31.05

53.39

15.70

21.94

6,230

116.70

68

R490

R49L

Tillamook, OR

714,395

101.75

80.57

47.27

40.00

21,220

208.56

69

S11A

S11A

Boston-Cambridge-Newton, MA-NH

4,552,402

171.73

161.92

95.50

93.08

1,927,112

11,221.55

70

S12A

S12A

New York-Newark-Jersey City, NY-NJ-PA

19,567,410

714.41

714.35

387.89

391.80

7,971,063

11,157.47

71

S12B

S12B

Philadelphia-Camden-Wilmington, PA-NJ-DE-MD

5,965,343

233.67

229.30

125.32

125.48

2,497,308

10,687.38

72

S23A

S23A

Chicago-Naperville-Elgin, IL-IN-WI

9,461,105

323.62

310.72

198.85

200.24

3,865,594

11,944.90

73

S23B

S23B

Detroit-Warren-Dearborn, MI

4,296,250

156.49

144.88

88.51

85.00

1,922,500

12,285.44

74

S24A

S24A

Minneapolis-St. Paul-Bloomington, MN-WI

3,348,859

119.03

116.31

80.00

80.00

1,417,433

11,907.84

75

S24B

S24B

St. Louis, MO-IL

2,787,701

147.78

129.38

80.00

80.00

1,258,027

8,512.92

76

S35A

S35A

Washington-Arlington-Alexandria, DC-VA-MD-WV

5,636,232

199.28

195.39

114.86

114.48

2,311,536

11,599.64

77

S35B

S35B

Miami-Fort Lauderdale-West Palm Beach, FL

5,564,635

183.45

169.22

109.78

105.69

2,507,138

13,666.62

78

S35C

S35C

Atlanta-Sandy Springs-Roswell, GA

5,286,728

174.02

150.93

103.83

96.04

2,233,637

12,835.58

79

S35D

S35D

Tampa-St. Petersburg-Clearwater, FL

2,783,243

142.00

127.31

80.00

80.00

1,393,748

9,815.32

80

S35E

S35E

Baltimore-Columbia-Towson, MD

2,710,489

154.90

202.57

80.00

92.61

1,170,658

5,779.16

81

S37A

S37A

Dallas-Fort Worth-Arlington, TX

6,426,214

221.28

240.72

130.41

134.00

2,652,201

11,017.64

82

S37B

S37B

Houston-The Woodlands-Sugar Land, TX

5,920,416

234.19

237.15

124.64

125.53

2,437,679

10,279.24

83

S48A

S48A

Phoenix-Mesa-Scottsdale, AZ

4,192,887

180.48

183.13

94.00

95.08

1,846,989

10,085.41

84

S48B

S48B

Denver-Aurora-Lakewood, CO

2,543,482

131.52

118.56

80.00

80.00

1,110,175

8,441.29

85

S49A

S49A

Los Angeles-Long Beach-Anaheim, CA

12,828,837

467.90

470.51

265.98

264.28

4,548,636

9,667.52

86

S49B

S49B

San Francisco-Oakland-Hayward, CA

4,335,391

169.42

167.19

106.18

92.56

1,765,482

10,420.81

87

S49C

S49C

Riverside-San Bernardino-Ontario, CA

4,224,851

175.48

162.48

93.17

90.16

1,533,663

8,740.01

88

S49D

S49D

Seattle-Tacoma-Bellevue, WA

3,439,809

117.98

115.95

80.00

80.00

1,513,679

12,829.90

89

S49E

S49E

San Diego-Carlsbad, CA

3,095,313

127.49

128.72

80.00

80.00

1,182,963

9,190.01

90

S49F

S49F

Honolulu, HI

1,360,301

127.31

134.08

80.00

80.00

346,031

2,580.76

91

S49G

S49G

Anchorage, AK

523,154

135.02

138.95

80.00

80.00

159,502

1,147.91

 

 

 

Total

308,745,538

12,000.00

12,000.00

6,882.57

6,946.58

69,141,678

-


*The Take Everys will need to be divided by two when the final redesign file is created in order to take twice as much sample to account for both CED and CEQ being selected at the same time.


Response Rates and Eligibility Rates


The table below shows response rates and eligibility rates from the 5-year period 2008-2012 by index area. They range from 56.6% to 93.2% in the Interview survey, and from 56.9% to 89.1% in the Diary survey. Response rates have been decreasing over time, so the response rates used are the ones shown below minus 5 percentage points.



 

 

2008-2012 Interview Survey

2008-2012 Diary Survey

ACS

 

Index Area

Interviews

Type A

Response Rate

Interviews

Type A

Response Rate

Eligibility rate

# HU

1

N110

1,165

465

71.5

263

69

79.2

91.3

76,950

2

N120

4,001

1,699

70.2

800

335

70.5

88.1

272,268

3

N230

4,643

1,518

75.4

1,029

257

80.0

86.7

438,235

4

N240

1,064

508

67.7

236

92

72.0

87.5

96,109

5

N350

4,406

1,227

78.2

911

274

76.9

80.8

412,396

6

N360

2,528

874

74.3

594

162

78.6

82.9

173,888

7

N370

3,082

1,311

70.2

594

327

64.5

82.0

243,644

8

N480

3,165

996

76.1

624

200

75.7

79.7

117,182

9

N490

1,888

514

78.6

382

94

80.3

87.4

126,049

10

R110

74

25

74.7

16

6

72.7

82.3

4,512

11

R120

445

169

72.5

93

43

68.4

63.3

14,560

12

R230

437

126

77.6

93

24

79.5

69.8

12,610

13

R240

830

247

77.1

159

52

75.4

75.4

8,886

14

R350

221

16

93.2

43

6

87.8

72.6

13,611

15

R360

43

33

56.6

8

5

61.5

78.3

17,335

16

R370

97

8

92.4

17

3

85.0

71.5

13,414

17

R480

173

59

74.6

40

25

61.5

72.7

5,530

18

R490

175

34

83.7

41

5

89.1

59.0

3,125

19

S11A

2,457

1,277

65.8

517

245

67.8

91.5

181,283

20

S12A

11,164

5,660

66.4

2,410

1,188

67.0

88.5

834,325

21

S12B

3,738

1,991

65.2

811

409

66.5

89.0

262,437

22

S23A

5,985

1,966

75.3

1,467

397

78.7

87.4

393,158

23

S23B

2,619

1,018

72.0

567

194

74.5

84.4

219,506

24

S24A

1,918

532

78.3

380

95

80.0

91.7

166,076

25

S24B

1,586

744

68.1

359

107

77.0

85.8

131,695

26

S35A

2,923

1,351

68.4

618

272

69.4

90.9

217,131

27

S35B

2,028

512

79.8

497

101

83.1

80.0

227,780

28

S35C

2,254

668

77.1

490

108

81.9

82.7

201,859

29

S35D

1,576

510

75.6

390

76

83.7

79.9

129,324

30

S35E

1,547

883

63.7

345

261

56.9

88.0

114,813

31

S37A

2,686

1,010

72.7

530

239

68.9

87.1

255,908

32

S37B

2,228

1,043

68.1

450

214

67.8

84.3

224,457

33

S48A

1,532

689

69.0

326

148

68.8

81.4

171,109

34

S48B

1,366

526

72.2

311

80

79.5

90.5

108,468

35

S49A

7,163

3,581

66.7

1,473

761

65.9

92.2

475,848

36

S49B

2,553

922

73.5

459

242

65.5

91.5

167,526

37

S49C

1,805

809

69.1

382

149

71.9

82.9

157,668

38

S49D

1,898

489

79.5

396

94

80.8

91.0

143,358

39

S49E

2,007

687

74.5

395

140

73.8

90.3

115,373

40

S49F

1,938

587

76.8

362

133

73.1

87.6

39,384

41

S49G

1,482

517

74.1

301

116

72.2

85.7

18,608

 

Total

94,890

37,801

71.5%

20,179

7,748

72.3%

86.7

7,007,398



1 The 41 index areas consist of the 23 self-representing PSUs plus the 18 non-self-representing division-size classes (9 Census divisions x 2 size classes). The 2010 sample design brought about a change in the geographic areas used to stratify PSUs (from four Census regions to nine Census divisions) and the number of size classes (from four to three). The first three characters of a PSU code (the size class, the Census region, and the Census division) identify the index area. For example, the PSU codes N12C, N12D, N12E, and N12F all have the same first three characters and hence belong to the same index area, N120. In the 2000 design, only the first two characters are required to identify the index area. For more information on the differences in the PSU codes in the 2000 and 2010 design, refer to Ryan (2012).


File Typeapplication/vnd.openxmlformats-officedocument.wordprocessingml.document
Authorking_s
File Modified0000-00-00
File Created2021-01-27

© 2024 OMB.report | Privacy Policy