Supplements

Source and Accuracy Statement for the May 1997 CPS Microdata File on Work Schedules


SOURCE OF DATA

The data for this microdata file come from the May 1997 Current Population Survey (CPS). This month's survey uses two sets of questions, the basic CPS and the supplement. The Bureau of the Census conducts the basic CPS every month and asks supplementary questions during certain months.

Basic CPS. The basic CPS collects primarily labor force data about the civilian noninstitutional population. Interviewers ask questions concerning labor force participation about each member 15 years old and over in every sample household.

May 1997 supplement. In addition to the basic CPS questions, interviewers asked supplementary questions on multiple job holding, work schedules, and telecommuters who work at home or at a designated site.

Sample design. The present CPS sample was selected from the 1990 Decennial Census files with coverage in all 50 states and the District of Columbia. The sample is continually updated to account for new residential construction. The United States was divided into 2,007 geographic areas. In most states, a geographic area consisted of a county or several contiguous counties. In some areas of New England and Hawaii, minor civil divisions are used instead of counties. A total of 754 geographic areas were selected for sample. About 50,000 occupied households are eligible for interview every month. Interviewers are unable to obtain interviews at about 3,200 of these units. This occurs when the occupants are not found at home after repeated calls or are unavailable for some other reason.

Since the introduction of the CPS, the Bureau of the Census has redesigned the CPS sample several times. These redesigns have improved the quality and accuracy of the data and have satisfied changing data needs. The most recent changes were completely implemented in July 1995.

Estimation procedure. This survey's estimation procedure adjusts weighted sample results to agree with independent estimates of the civilian noninstitutional population of the United States by age, sex, race, Hispanic/non-Hispanic origin, and state of residence. The adjusted estimate is called the poststratification ratio estimate. The independent estimates are calculated based on information from four primary sources:

The independent population estimates include some, but not all, undocumented immigrants.

ACCURACY OF THE ESTIMATES

Since the CPS estimates come from a sample, they may differ from figures from a complete census using the same questionnaires, instructions, and enumerators. A sample survey estimate has two possible types of error: sampling and nonsampling. The accuracy of an estimate depends on both types of error, but the full extent of the nonsampling error is unknown. Consequently, one should be particularly careful when interpreting results based on a relatively small number of cases or on small differences between estimates. The standard errors for CPS estimates primarily indicate the magnitude of sampling error. They also partially measure the effect of some nonsampling errors in responses and enumeration, but do not measure systematic biases in the data. (Bias is the average over all possible samples of the differences between the sample estimates and the desired value.)

Nonsampling variability. There are several sources of nonsampling errors including the following:

For the September 1997 basic CPS, the monresponse rate was 7.3% and for the veterans supplement a total spplement nonresponse rate of 7.1%.

CPS undercoverage results from missed housing units and missed persons within sample households. Overall CPS undercoverage is estimated to be about 8 percent. CPS undercoverage varies with age, sex, and race. Generally, undercoverage is larger for males than for females and larger for Blacks and other races combined than for Whites. As described previously, ratio estimation to independent age-sex-race-Hispanic population controls partially corrects for the bias due to undercoverage. However, biases exist in the estimates to the extent that missed persons in missed households or missed persons in interviewed households have different characteristics from those of interviewed persons in the same age-sex-race-origin-state group.

A common measure of survey coverage is the coverage ratio, the estimated population before poststratification divided by the independent population control. Table A shows CPS coverage ratios for age-sex-race groups for a typical month. The CPS coverage ratios can exhibit some variability from month to month. Other Census Bureau household surveys experience similar coverage.

Table A. CPS Coverage Ratios

Non-Black

Black

All Persons

Age

M

F

M

F

M

F

Total

0-14

0.929

0.964

0.850

0.838

0.916

0.943

0.929

15

0.933

0.895

0.763

0.824

0.905

0.883

0.895

16-19

0.881

0.891

0.711

0.802

0.855

0.877

0.866

20-29

0.847

0.897

0.660

0.811

0.823

0.884

0.854

30-39

0.904

0.931

0.680

0.845

0.877

0.920

0.899

40-49

0.928

0.966

0.816

0.911

0.917

0.959

0.938

50-59

0.953

0.974

0.896

0.927

0.948

0.969

0.959

60-64

0.961

0.941

0.954

0.953

0.960

0.942

0.950

65-69

0.919

0.972

0.982

0.984

0.924

0.973

0.951

70+

0.993

1.004

0.996

0.979

0.993

1.002

0.998

15+

0.914

0.945

0.767

0.874

0.898

0.927

0.918

0+

0.918

0.949

0.793

0.864

0.902

0.931

0.921

For additional information on nonsampling error including the possible impact on CPS data when known, refer to Statistical Policy Working Paper 3, An Error Profile: Employment as Measured by the Current Population Survey, Office of Federal Statistical Policy and Standards, U.S. Department of Commerce, 1978 and Technical Paper 40, The Current Population Survey: Design and Methodology, Bureau of the Census, U.S. Department of Commerce.

Comparability of data. Data obtained from the CPS and other sources are not entirely comparable. This results from differences in interviewer training and experience and in differing survey processes. This is an example of nonsampling variability not reflected in the standard errors. Use caution when comparing results from different sources.

A number of changes were made in data collection and estimation procedures beginning with the January 1994 CPS. The major change was the use of a new questionnaire. The questionnaire was redesigned to measure the official labor force concepts more precisely, to expand the amount of data available, to implement several definitional changes, and to adapt to a computer-assisted interviewing environment. The March supplemental income questions were also modified for adaptation to computer-assisted interviewing, although there were no changes in definitions and concepts. Due to these and other changes, one should use caution when comparing estimates from data collected in 1994 and later years with estimates from earlier years.

Caution should also be used when comparing data from this microdata file, which reflects 1990 census-based population controls, with microdata files from 1993 and earlier years, which reflect 1980 census-based population controls. This change in population controls had relatively little impact on summary measures such as means, medians, and percentage distributions. It did have a significant impact on levels. For example, use of 1990 based population controls results in about a 1-percent increase in the civilian noninstitutional population and in the number of families and households. Thus, estimates of levels for data collected in 1994 and later years will differ from those for earlier years by more than what could be attributed to actual changes in the population. These differences could be disproportionately greater for certain subpopulation groups than for the total population.

Since no independent population control totals for persons of Hispanic origin were used before 1985, compare Hispanic estimates over time cautiously.

Based on the results of each decennial census, the Bureau of the Census gradually introduces a new sample design for the CPS. During this phase-in period, CPS data are collected from sample designs based on different censuses. While most CPS estimates have been unaffected by this mixed sample, geographic estimates are subject to greater error and variability. Users should exercise caution when comparing estimates across years for metropolitan/nonmetropolitan categories.

Note when using small estimates. Because of the large standard errors involved, summary measures probably do not reveal useful information when computed on a base smaller than 75,000.

Take care in the interpretation of small differences. Even a small amount of nonsampling error can cause a borderline difference to appear significant or not, thus distorting a seemingly valid hypothesis test.

Sampling variability. Sampling variability is variation that occurred by chance because a sample was surveyed rather than the entire population. Standard errors as calculated below are primarily measures of sampling variability, but they may include some nonsampling error.

Standard errors and their use. A number of approximations are required to derive, at a moderate cost, standard errors applicable to estimates from this microdata file. Instead of providing an individual standard error for each estimate, two parameters, a and b, are provided to calculate standard errors for each type of characteristic. These parameters are in Table B.

The sample estimate and its standard error enable one to construct a confidence interval. A confidence interval is a range that would include the average result of all possible samples with a known probability. For example, if all possible samples were surveyed under essentially the same general conditions and the same sample design, and if an estimate and its standard error were calculated from each sample, then approximately 90-percent of the intervals from 1.645 standard errors below the estimate to 1.645 standard errors above the estimate would include the average result of all possible samples.

A particular confidence interval may or may not contain the average estimate derived from all possible samples. However, one can say with specified confidence that the interval includes the average estimate calculated from all possible samples.

Standard errors may be used to perform hypothesis testing. This is a procedure for distinguishing between population parameters using sample estimates. The most common type of hypothesis is that the population parameters are different. An example of this would be comparing the percentage of Whites with a college education to the percentage of Blacks with a college education.

Tests may be performed at various levels of significance. A significance level is the probability of concluding that the characteristics are different when, in fact, they are the same. For example, to conclude that two parameters are different at the 0.10 level of significance, the absolute value of the estimated difference between characteristics must be greater than or equal to 1.645 times the standard error of the difference.

The Census Bureau uses 90-percent confidence intervals and 0.10 levels of significance to determine statistical validity. Consult standard statistical texts for alternative criteria.

For information on calculating standard errors for labor force data from the CPS which involve quarterly or yearly averages, changes in consecutive quarterly or yearly averages, consecutive month-to-month changes in estimates, and consecutive year-to-year changes in monthly estimates see AExplanatory Notes and Estimates of Error: Household Data@ in the corresponding Employment and Earnings published by the Bureau of Labor Statistics.

Standard errors of estimated numbers. The approximate standard error, sx, of an estimated number from this microdata file can be obtained using this formula:


Formula (1)

Here x is the size of the estimate and a and b are the parameters in Table B associated with the particular type of characteristic. When calculating standard errors from cross-tabulations involving different characteristics, use the set of parameters for the characteristic which will give the largest standard error.

Illustration

Suppose there were 6,000,000 unemployed men in the civilian labor force. Use the appropriate parameters from Table B and formula (1) to get

Number, x

3,500,000

a parameter

-0.000018

b parameter

2,957

Standard error

101,000

90% conf. int.

3,334,000 to 3,566,000

The standard error is calculated as

The 90-percent confidence interval is calculated as 3,500,000 ± 1.645´101,000.

A conclusion that the average estimate derived from all possible samples lies within a range computed in this way would be correct for roughly 90- percent of all possible samples.

Standard errors of estimated percentages. The reliability of an estimated percentage, computed using sample data from both numerator and denominator, depends on both the size of the percentage and its base. Estimated percentages are relatively more reliable than the corresponding estimates of the numerators of the percentages, particularly if the percentages are 50 percent or more. When the numerator and denominator of the percentage are in different categories, use the parameter from Table B indicated by the numerator.

The approximate standard error, sx,p, of an estimated percentage can be obtained by use of the formula


Formula (2)

Here x is the total number of persons, families, households, or unrelated individuals in the base of the percentage, p is the percentage (0 £ p £ 100), and b is the parameter in Table B associated with the characteristic in the numerator of the percentage.

Illustration

Suppose that of approximately 111,147,000 workers, 29.9% were on flexible schedules. Use the appropriate parameter from Table B and formula (2) to get

Percentage, p

29.9

Base, x

111,147,000

b parameter

2,985

Standard error

0.2

90% conf. int.

29.6 to 30.2

The standard error is calculated as

The 90-percent confidence interval of the percentage of workers on flexible schedules is calculated as 29.9 ± 1.645´0.2.

Standard error of a difference. The standard error of the difference between two sample estimates is approximately equal to


Formula (3)

where sx and sy are the standard errors of the estimates, x and y. The estimates can be numbers, percentages, ratios, etc. This will represent the actual standard error quite accurately for the difference between estimates of the same characteristic in two different areas, or for the difference between separate and uncorrelated characteristics in the same area. However, if there is a high positive (negative) correlation between the two characteristics, the formula will overestimate (underestimate) the true standard error.

Illustration

Suppose that of 6,285,000 employed men between 20-24 years of age, 1,516,000 or 24.1 percent were part-time workers, and of the 5,824,000 employed women between 20-24 years of age, 2,169,000 or 37.2 percent were part-time workers. Use the appropriate parameters from Table B and formulas (2) and (3) to get

 

x

y

difference

Percentage, p

24.1

37.2

13.1

Number, x

6,285,000

5,824,000

-

b parameter

2,764

2,530

-

Standard error

0.9

1.0

1.3

90% conf. int.

22.6 to 25.6

35.6 to 38.8

11.0 to 15.2

The standard error of the difference is calculated as

The 90-percent confidence interval around the difference is calculated as 13.1 ± 1.645´1.3. Since this interval does not include zero, we can conclude with 90- percent confidence that the percentage of part-time women workers between 20-24 years of age is greater than the percentage of part-time men workers between 20-24 years of age.

Table B. Parameters for Computation of Standard Errors for Labor Force Characteristics - May 1997

Characteristic

a

b

Labor Force and Not In Labor Force Data Other than Agricultural Employment and Unemployment

 

 

Total 1

-0.000018

2,985

- Men 1

-0.000033

2,764

- Women

-0.000030

2,530

- Both sexes, 16 to 19 years

-0.000172

2,545

White 1

-0.000020

2,985

- Men

-0.000037

2,767

- Women

-0.000034

2,527

- Both sexes, 16 to 19 years

-0.000204

2,550

Black

-0.000125

3,139

- Men

-0.000302

2,931

- Women

-0.000183

2,637

- Both sexes, 16 to 19 years

-0.001295

2,949

Hispanic origin

-0.000206

3,896

Not In Labor Force (use only for Total, Total Men, and White)

+0.000006

829

Agricultural Employment

 

 

Total or White

+0.000782

3,049

- Men

+0.000858

2,825

- Women or Both sexes, 16 to 19 years

-0.000025

2,582

- Black

-0.000135

3,155

Hispanic origin

 

 

- Total or Women

+0.011857

2,895

- Men or Both sexes, 16 to 19 years

+0.015736

1,703

Unemployment

 

 

Total or White

-0.000018

2,957

Black

-0.000212

3,150

Hispanic origin

-0.000102

3,576

 

1 For not in labor force characteristics, use the Not In Labor Force parameters.

 

For foreign-born characteristics for Total and White, the a and b parameters should be multiplied by 1.3. No adjustment is necessary for foreign-born characteristics for Blacks and Hispanics.


CPS Work Schedules Supplement - Methodology and Documentation Page

CPS Main Page


Source: U.S. Census Bureau
Author: Thomas Moore III-Census/DSMD
Contact: (ask.census.gov) CPS Help-Census/DSD/CPSB
Last revised: December 04, 1998
URL: http://www.bls.census.gov/cps/worksch/1997/ssrcacc.htm