Benchmark Article (PDF version)

BLS Establishment Estimates Revised to Incorporate March 2008 Benchmarks

Introduction

Steven Kroll

Steven Kroll is an economist in the Division of Current Employment Statistics, Office of Employment and Unemployment Statistics, Bureau of Labor Statistics.  Telephone: (202) 691-6555; e-mail: CESInfo@bls.gov

With the release of data for January 2009, the Bureau of Labor Statistics (BLS) introduced its annual revision of national estimates of employment, hours, and earnings from the Current Employment Statistics (CES) monthly survey of nonfarm establishments.  Each year, the CES survey realigns its sample-based estimates to incorporate universe counts of employment—a process known as benchmarking.  Comprehensive counts of employment, or benchmarks, are derived primarily from unemployment insurance (UI) tax reports that nearly all employers are required to file with State Workforce Agencies.

Summary of the benchmark revisions

The March 2008 benchmark level for total nonfarm employment is 136,944,000; this figure is 89,000 below the sample-based estimate for March 2008, an adjustment of -0.1 percent.  Table 1 shows the total nonfarm percentage benchmark revisions for the past ten years.

Table 2 shows the nonfarm employment benchmarks for March 2008, not seasonally adjusted, by industry.  As is usually the case, benchmark revisions at many industry levels were larger in percentage terms than at total nonfarm, but were offsetting. Five supersectors had downward revisions. The largest downward revision occurred in leisure and hospitality with a revision of -151,000, or -1.1 percent. The revision is concentrated in limited-service restaurants, revised by -94,100 or -2.7 percent, full-service restaurants, revised by -48,100 or -1.1 percent, and drinking places, alcoholic beverages, revised by -16,100 or -4.6 percent.

Professional and business services was revised -63,000, or -0.4 percent, while financial activities was revised -23,000, or -0.3 percent. Within professional and business services, temporary help services was revised downwards by 24,800, or 1.0 percent. Within financial activities, mortgage and nonmortgage loan brokers revised downwards by 23,200, or 26.3 percent.

Manufacturing and education and health services each had a revision of -17,000, or -0.1 percent. Most of the revision in manufacturing was driven by heavy duty trucks, which was revised down by 10,400, or 34.6 percent. Within education and health services, offices of dentists was the largest downward revision of 15,400, or 1.9 percent.

Six supersectors had upward revisions. Trade, transportation, and utilities was revised upward by 65,000, or 0.2 percent. Within the supersector, retail trade dominated with a revision of 92,800, or 0.6 percent. Also contributing was an upward revision in transportation and warehousing of 15,000, or 0.3 percent, while wholesale trade was revised downwards by 43,100, or 0.7 percent. Other significant upward revisions occurred in construction (49,000 or 0.7 percent) and government (48,000 or 0.2 percent). The other supersectors with upward revisions were other services (revised up 9,000 or 0.2 percent), information (8,000 or 0.3 percent), and mining and logging (3,000 or 0.4 percent).

Revisions in the post-benchmark period

Post-benchmark period estimates from April 2008 to December 2008 were calculated for each month based on new benchmark levels. Also, beginning in April, model-based estimates for the net of birth/death employment were revised to incorporate information from the most recent year of universe employment counts. Text table A shows the net birth/death model figures for the supersectors over the post-benchmark period.  From April 2008 to December 2008, the cumulative net birth/death model added 825,000, compared with 1,005,000 in the previously published April to December estimates.

Text table A. Net Birth/Death Estimates, Post-Benchmark 2008
Mining & Logging Construction Manufacturing Trade, Transportation, & Utilities Information Financial Activities Professional & Business Services Education & Health Services Leisure & Hospitality Other Services Monthly Amount Contributed
2008 April 1 45 -16 17 3 -8 36 31 57 10 176
May 1 40 4 24 3 3 12 7 75 7 176
June 2 27 5 17 1 5 18 -8 91 7 165
July 0 0 -13 -6 -3 -5 -1 4 55 -6 25
August 1 11 3 14 4 2 20 10 24 3 92
September 1 9 1 17 1 2 2 14 -32 3 18
October 1 8 -7 25 2 13 50 27 -26 1 94
November 0 -7 2 12 2 3 10 8 -11 0 19
December 0 -10 1 18 3 14 7 7 15 5 60
Cumulative Total  7 123 -20 138 16 29 154 100 248 30 825

Revisions to November and December also reflect incorporation of the annual CES sample update and the routine inclusion of additional sample units not available for the respective months' preliminary estimates.

Why benchmarks differ from estimates

A benchmark revision is the difference between the benchmark employment level for a given March and its corresponding sample-based estimate.  The overall accuracy of the establishment survey is usually gauged by the size of this difference.  The benchmark revision often is regarded as a proxy for total survey error, but this does not take into account error in the universe data.  The employment counts obtained from quarterly unemployment insurance tax forms are administrative data that reflect employer record-keeping practices and differing State laws and procedures.  The benchmark revision can be more precisely interpreted as the difference between two independently derived employment counts, each subject to its own error sources.

Like all sample surveys, the establishment survey is susceptible to two sources of error:  sampling error and nonsampling error.  Sampling error is present any time a sample is used to make inferences about a population.  The magnitude of the sampling error, or variance, relates directly to sample size and the percentage of the universe covered by that sample.  The CES monthly survey captures slightly under one-third of the universe, exceptionally high by usual sampling standards.  This coverage insures a small sampling error at the total nonfarm employment level.

Both the universe counts and the establishment survey estimates are subject to nonsampling errors common to all surveys—coverage, response, and processing errors.  The error structures for both the CES monthly survey and the UI universe are complex.  Still, the two programs generally produce consistent total employment figures, each validating the other.  Over the last decade, annual benchmark revisions at the total nonfarm level have averaged 0.2 percent, with an absolute range of 0.1 percent to 0.6 percent.

Benchmark revision effects for other data types

The routine benchmarking process results in revisions to the series for production and nonsupervisory workers.  There are no benchmark employment levels for these series; they are revised by preserving ratios of employment for the particular data type to all employees employment prior to benchmarking, and then applying these ratios to the revised all-employee figures.  These figures are calculated at the basic cell level and then aggregated to produce the summary estimates. 

Average weekly hours and average hourly earnings are not benchmarked; they are estimated solely from reports supplied by survey respondents at the basic estimating cell level. 

The aggregate industry level of the hours and earnings series are derived as a weighted average.  The production or nonsupervisory worker employment estimates for the basic cells are used as weights for the hours and earnings estimates for broader industry groupings.  Adjustments of the all employee estimates to new benchmarks may alter the weights, which, in turn, may change the estimates for hours and earnings of production or nonsupervisory workers at higher levels of aggregation.

Generally, new employment benchmarks have little effect on hours and earnings estimates for major groupings.  To influence the hours and earnings estimates of a broader group, employment revisions have to be relatively large and must affect industries that have hours or earnings averages that are substantially different from those of other industries in their group.  Table 4 gives information on the levels of specific hours and earnings series resulting from the March 2008 benchmark.  At the total private level, there was no change in average weekly hours from the previously published level, while average hourly earnings was increased from the previously published level by 5 cents.

Methods

Benchmark adjustment procedure.  Establishment survey benchmarking is done on an annual basis to a population derived primarily from the administrative file of employees covered by unemployment insurance (UI).  The time required to complete the revision process--from the full collection of the UI population data to publication of the revised industry estimates--is about 10 months.  The benchmark adjustment procedure replaces the March sample-based employment estimates with UI-based population counts for March.  The benchmark therefore determines the final employment levels, while sample movements capture month-to-month trends.

Benchmarks are established for each basic estimating cell and are aggregated to develop published levels.  On a not seasonally adjusted basis, the sample-based estimates for the year preceding and the year following the benchmark also are then subject to revision.  Employment estimates for the months between the most recent March benchmark and the previous year's benchmark are adjusted using a "wedge-back" procedure.  In this process, the difference between the benchmark level and the previously published March estimate for each estimating cell is computed.  This difference, or error, is linearly distributed across the 11 months of estimates subsequent to the previous benchmark; eleven-twelfths of the March difference is added to February estimates, ten-twelfths to January estimates, and so on, ending with the previous April estimates, which receive one-twelfth of the March difference.  The wedge procedure assumes that the total estimation error accumulated at a steady rate since the last benchmark.  Applying previously derived over-the-month sample changes to the revised March level yields revised estimates for the months following the March benchmark.  New net birth/death model estimates also are calculated and applied during post-benchmark estimation, and new sample is introduced from the annual update.

Benchmark source material.  The principal source of benchmark data for private industries is the Quarterly Census of Employment and Wages (QCEW).  These employment data are provided to State Employment Security Agencies by employers covered by State UI laws.  BLS uses several other sources to establish benchmarks for the remaining industries partially covered or exempt from mandatory UI coverage, accounting for nearly 3 percent of the nonfarm employment total.

Data on employees covered under Social Security laws, published by the U.S. Census Bureau in County Business Patterns, are used to augment UI data for industries not fully covered by the UI scope, such as nonoffice insurance sales workers, child daycare workers, religious organizations, and private schools and hospitals.  Benchmarks for State and local government hospitals and educational institutions are based on the Annual Census of Governments conducted by the Census Bureau.  Benchmark data from these sources are available only on a lagged basis.  Extrapolation to a current level is accomplished by applying the employment trends from the UI-covered part of the population in these industries to the noncovered part.  Universe data for interstate railroads are obtained from the Railroad Retirement Board.

Business birth and death estimation.  Regular updating of the CES sample frame with information from the UI universe files helps to keep the CES survey current with respect to employment from business births and business deaths.  The timeliest UI universe files available, however, always will be a minimum of 9 months out of date.  The CES survey thus can not rely on regular frame maintenance alone to provide estimates for business birth and death employment contributions.  BLS has researched both sample-based and model-based approaches to measuring birth units that have not yet appeared on the UI universe frame.  Since the research demonstrated that sampling for births was not feasible in the very short CES production timeframes, the Bureau is utilizing a model-based approach for this component.

Earlier research indicated that while both the business birth and death portions of total employment are generally significant, the net contribution is relatively small and stable.  To account for this net birth/death portion of total employment, BLS is utilizing an estimation procedure with two components.  The first component uses business deaths to impute employment for business births.  This is incorporated into the sample-based link relative estimate procedure by simply not reflecting sample units going out of business, but imputing to them the same trend as the other firms in the sample.  The second component is an ARIMA time series model designed to estimate the residual net birth/death employment not accounted for by the imputation.  The historical time series used to create and test the ARIMA model was derived from the UI universe micro level database, and reflects the actual residual net of births and deaths over the past five years.  The net birth/death model component figures are unique to each month and include negative adjustments in some months.  Furthermore, these figures exhibit a seasonal pattern similar to the seasonal patterns of the continuing businesses.

Availability of revised data

LABSTAT, the BLS public database on the Internet, contains all historical employment, hours, and earnings data revised as a result of this benchmark, including both unadjusted and seasonally adjusted data.  The data can be accessed at http://www.bls.gov/ces/, the Current Employment Statistics homepage. 

Changes to the CES published series

All CES series are evaluated annually for sample size, coverage, and response rates. The following series changes result from a re-evaluation of the sample and universe coverage for NAICS industries. Some series proved to have sufficient sample to be broken into more detail. Other small industries no longer have sufficient sample to be estimated and published separately and have been combined with other similar industries for estimation and publication purposes, as shown below. Most of the collapsed and deleted series are in the manufacturing sector where employment has been declining over a number of years. Historical data for the series with changed scope were reconstructed to provide consistent time series.

Exhibit 1. Newly published series effective with the March 2008 benchmark revisions
Industry title NAICS code CES industry code New industry

Biotechnology research

541711 60541711

Biotechnology research was broken out from Research and development in the physical, engineering, and life sciences (NAICS 541710).

Physical, engineering, and life sciences research

541712 60541712

Physical, engineering, and life sciences was broken out from Research and development in the physical, engineering, and life sciences (NAICS 541710).

Exhibit 2. Series with changed scope
Industry title NAICS code CES industry code Industries collapsed

All other plywood and engineered wood products

321213,4,9 31321214

Engineered wood members and trusses (NAICS 321213,4) is collapsed with Reconstituted wood products (NAICS 321219). The collapsed series is renamed All other plywood and engineered wood products.

Glass containers and products made of purchased glass

327213,5 31327215

Glass containers (NAICS 327213) is collapsed into Glass products made of purchased glass (NAICS 327215). The collapsed series is renamed Glass containers and products made of purchased glass. 

Miscellaneous electronic instruments

334514,6,7,8,9 31334519

Irradiation apparatus (NAICS 334517) is collapsed into Miscellaneous electronic instruments (NAICS 334519).

All other electrical equipment and components

33592,9 3133599

Communication and energy wires and cables (NAICS 33592) is collapsed into All other electrical equipment and components (NAICS 33599). 

All other miscellaneous manufacturing

33993,9 3133999

Dolls, toys, and games (NAICS 33993) is collapsed into All other miscellaneous manufacturing (NAICS 33999). 

Women's and all other cut and sew apparel

31523,9 3231529

Women's cut and sew apparel (NAICS 31523) is collapsed into Other cut and sew apparel (NAICS 31529).  The collapsed series is renamed Women's and all other cut and sew apparel.

Petrochemicals, industrial gases, synthetic dyes, and pigments

32511,2,3 3232513

Petrochemicals and industrial gases (NAICS 32511,2) is collapsed into Synthetic dyes and pigments (NAICS 32513).  The collapsed series is renamed Petrochemicals, industrial gases, synthetic dyes, and pigments.

Urban transit systems and interurban and rural bus transportation

4851,2 434852

Urban transit systems (NAICS 4851) is collapsed into Interurban and rural bus transportation (NAICS 4852).  The collapsed series is renamed Urban transit systems and interurban and rural transportation.

Support activities for water transportation, except marine cargo handling

48831,3,9 4348839

Port and harbor operations (NAICS 48831) is collapsed into Navigational services and other water transportation support activities (NAICS 48833,9).  The collapsed series is renamed Support activities for water transportation, except marine cargo handling.

Historical sites, zoos, botanical gardens, nature parks, and similar institutions

71212,3,9 707121219

Historical sites (NAICS 71212) is collapsed into Zoos, botanical gardens, nature parks, and similar institutions (NAICS 71213,9).  The collapsed series is renamed Historical sites, zoos, botanical gardens, nature parks, and similar institutions.

 

Exhibit 3. Discontinued all employee series
Industry title NAICS code CES industry code Next highest published level

Pottery, ceramics, and plumbing fixtures

32711 3132711

Clay products and refractories (NAICS 3271)

Clay building materials and refractories

32712 3132712

Clay products and refractories (NAICS 3271)

Glass containers

327213 31327213

Glass and glass products (NAICS 3272)

Iron, steel pipe, and tube from purchased steel

33121 3133121

Steel products from purchased steel (NAICS 3312)

Rolling and drawing of purchased steel

33122 3133122

Steel products from purchased steel (NAICS 3312)

Rolled steel shapes

331221 31331221

Steel products from purchased steel (NAICS 3312)

Nonferrous metal, except CU and AL, shaping

33149 3133149

Other nonferrous metal production (NAICS 3314)

Steel foundries

331512,3 31331513

Ferrous metal foundries (NAICS 33151)

Air and gas compressors

333912 31333912

Pumps and compressors (NAICS 33391)

Pumps and pumping equipment, including measuring and dispensing

333911,3 31333913

Pumps and compressors (NAICS 33391)

Irradiation apparatus

334517 31334517

Electronic Instruments (NAICS 3345)

Small electronic appliances

33521 3133521

Household appliances (NAICS 3352)

Major appliances

33522 3133522

Household appliances (NAICS 3352)

Communication and energy wires and cables

33592 3133592

Other electrical equipment and components (NAICS 3359)

Dolls, toys, and games

33993 3133993

Other miscellaneous manufacturing (NAICS 3399)

Sugar

31131 3231131

Sugar and confectionary products (NAICS 3113)

Women's cut and sew apparel

31523 3231523

Cut and sew apparel (NAICS 3152)

Leather and hide tanning and finishing and other leather products

3161,9 323169

Leather and allied products (NAICS 316)

Petrochemicals and industrial gases

32511,2 3232512

Basic chemicals (NAICS 3251)

Resin and synthetic rubber

32521 3232521

Resin, rubber, and artificial fibers (NAICS 3252)

Synthetic rubber

325212 32325212

Resin, rubber, and artificial fibers (NAICS 3252)

Unlaminated plastics profile shapes

326121 32326121

Plastics pipe, fittings, and profile shapes (NAICS 32612)

Plastics pipe and pipe fittings

326122 32326122

Plastics pipe, fittings, and profile shapes (NAICS 32612)

Other chemicals

42469 4142469

Chemicals (NAICS 4246)

Sea, coastal, and Great Lakes transportation

4831 434831

Water transportation (NAICS 483)

Urban transit systems

4851 434851

Transit and ground passenger transportation (NAICS 485)

Port and harbor operations

48831 4348831

Support activities for water transportation (NAICS 4883)

Historical sites

71212 7071212

Museums, historical sites, zoos, and parks (NAICS 7121)

Amusement and theme parks

71311 7071311

Amusement parks and arcades (NAICS 7131)

Amusement arcades

71312 7071312

Amusement parks and arcades (NAICS 7131)

 

Exhibit 4. Discontinued production worker, hours, and earnings series
Industry title NAICS code CES industry code

Office supplies, except paper

33994 3133994

Paperboard mills

32213 3232213

Manifold business forms printing

323116 32323116

Dried and dehydrated food

311423 32311423

 

Exhibit 5. Discontinued average overtime series
Industry title NAICS code CES industry code

Office supplies, except paper

33994 3133994

Paperboard mills

32213 3232213

 

Exhibit 6. Change in title
CES industry code Original industry title New industry title

10000000

Natural resources and mining Mining and logging

Small domain model

The employment estimator for lessors of nonfinancial intangible assets (CES industry code 555330000) has been changed from the standard CES weighted-link-relative technique to the CES Small Domain Model (SDM). The SDM is used for industries where the sample alone is insufficient for reliable estimates. The CES SDM is a Weighted Least Squares model with two employment inputs: (1) an estimate based on available CES sample for that series, and (2) an ARIMA projection based on 10 years of historical QCEW data. Further background on the SDM is provided in the CES technical notes.

This brings the number of industries estimated by using SDM to six. The other industries are direct health and medical insurance carriers, tax preparation services, other technical consulting services, remediation services, and recreational and vacation camps.

Seasonal adjustment procedure

BLS uses X-12 ARIMA software developed by the U.S. Census Bureau to seasonally adjust national employment, hours, and earnings series derived from the CES program.  Individual series are seasonally adjusted using either a multiplicative or an additive model (Exhibit 7), and seasonal adjustment factors are directly applied to the component levels.  For employment, individual 3-digit NAICS levels are seasonally adjusted, and higher level aggregates are formed summing these components.  Seasonally adjusted totals for hours and earnings are obtained by taking weighted averages of the seasonally adjusted data for the component series.

Special model adjustments

Variable survey intervals.  Beginning with the release of the 1995 benchmark, BLS refined the seasonal adjustment procedures to control for survey interval variations, sometimes referred to as the 4- versus 5-week effect.  Although the CES survey is referenced to a consistent concept - the pay period including the 12th of each month - inconsistencies arise because there are sometimes 4 and sometimes 5 weeks between the week including the 12th in a given pair of months.  In highly seasonal industries, these variations can be an important determinant of the magnitude of seasonal hires or layoffs that have occurred at the time the survey is taken, thereby complicating seasonal adjustment.

Standard seasonal adjustment methodology relies heavily on the experience of the most recent 3 years to determine the expected seasonal change in employment for each month of the current year.  Prior to the implementation of the adjustment, the procedure did not distinguish between 4- and 5-week survey intervals, and the accuracy of the seasonal expectation depended in large measure on how well the current year’s survey interval corresponded with those of the previous 3 years.  All else the same, the greatest potential for distortion occurred when the current month being estimated had a 5-week interval but the 3 years preceding it were all 4-week intervals, or conversely when the current month had a 4-week interval but the 3 years preceding it were all 5-week intervals.

BLS adopted REGARIMA (regression with auto-correlated errors) modeling to identify the estimated size and significance of the calendar effect for each published series.  REGARIMA combines standard regression analysis, which measures correlation among two or more variables, with ARIMA modeling, which describes and predicts the behavior of data series based on its own past history.  For many economic time series, including nonfarm payroll employment, observations are auto-correlated over time; that is, each month’s value is significantly dependent on the observations that precede it.  These series, therefore, usually can be successfully fit using ARIMA models.  If auto-correlated time series are modeled through regression analysis alone, the measured relationships among other variables of interest may be distorted due to the influence of the auto-correlation.  Thus, the REGARIMA technique is appropriate for measuring relationships among variables of interest in series that exhibit auto-correlation, such as nonfarm payroll employment.

In this application, the correlations of interest are those between employment levels in individual calendar months and the lengths of the survey intervals for those months.  The REGARIMA models evaluate the variation in employment levels attributable to 11 separate survey interval variables, one specified for each month, except March.  March is excluded because there are almost always 4 weeks between the February and March surveys.  Models for individual basic series are fit with the most recent 10 years of data available, the standard time span used for CES seasonal adjustment.

The REGARIMA procedure yields regression coefficients for each of the 11 months specified in the model.  These coefficients provide estimates of the strength of the relationship between employment levels and the number of weeks between surveys for the 11 modeled months.  The X-12 ARIMA software also produces diagnostic statistics that permit the assessment of the statistical significance of the regression coefficients, and all series are reviewed for model adequacy.

Because the 11 coefficients derived from the REGARIMA models provide an estimate of the magnitude of variation in employment levels associated with the length of the survey interval, these coefficients are used to adjust the CES data to remove the calendar effect.  These "filtered" series then are seasonally adjusted using the standard X-12 ARIMA software.

For a few series, REGARIMA models do not fit well; these series are seasonally adjusted with the X-12 software but without the interval effect adjustment.  There are several additional special effects modeled through the REGARIMA process; they are described below.

Construction series.  Beginning with the 1996 benchmark revision, BLS utilized special treatment to adjust construction industry series.  In the application of the interval effect modeling process to the construction series, there initially was difficulty in accurately identifying and measuring the effect because of the strong influence of variable weather patterns on employment movements in the industry.  Further research allowed BLS to incorporate interval effect modeling for the construction industry by disaggregating the construction series into its finer industry and geographic estimating cells and tightening outlier designation parameters.  This allowed a more precise identification of weather-related outliers that had masked the interval effect and clouded the seasonal adjustment patterns in general.  With these outliers removed, interval effect modeling became feasible.  The result is a seasonally adjusted series for construction that is improved because it is controlled for two potential distortions:  unusual weather events and the 4- versus 5-week effect.

Floating holidays.  BLS is continuing the practice of making special adjustments for average weekly hours and average weekly overtime series to account for the presence or absence of religious holidays in the April survey reference period and the occurrence of Labor Day in the September reference period, back to the start date of each series.

Local government series.  A special adjustment also is made in November each year to account for variations in employment due to the presence or absence of poll workers in the local government, excluding educational services series.

Refinements in hours and earnings seasonal adjustment.  With the release of the 1997 benchmark, BLS implemented refinements to the seasonal adjustment process for the hours and earnings series to correct for distortions related to the method of accounting for the varying length of payroll periods across months.  There is a significant correlation between over-the-month changes in both the average weekly hour (AWH) and the average hourly earnings (AHE) series and the number of weekdays in a month, resulting in noneconomic fluctuations in these two series.  Both AWH and AHE show more growth in "short" months (20 or 21 weekdays) than in "long" months (22 or 23 weekdays).  The effect is stronger for the AWH than for the AHE series.

The calendar effect is traceable to response and processing errors associated with converting payroll and hours information from sample respondents with semi-monthly or monthly pay periods to a weekly equivalent.  The response error comes from sample respondents reporting a fixed number of total hours for workers regardless of the length of the reference month, while the CES conversion process assumes that the hours reporting will be variable.  A constant level of hours reporting most likely occurs when employees are salaried rather than paid by the hour, as employers are less likely to keep actual detailed hours records for such employees.  This causes artificial peaks in the AWH series in shorter months that are reversed in longer months.

The processing error occurs when respondents with salaried workers report hours correctly (vary them according to the length of the month), which dictates that different conversion factors be applied to payroll and hours.  The CES processing system uses the hours conversion factor for both fields, resulting in peaks in the AHE series in short months and reversals in long months.

REGARIMA modeling is used to identify, measure, and remove the length-of-pay-period effect for seasonally adjusted average weekly hours and average hourly earnings series.  The length-of-pay-period variable proves significant for explaining AWH movements in all the service-providing industries except utilities.  For AHE, the length-of-pay-period variable is significant for wholesale trade, retail trade, information, financial activities, professional and business services, and other services.  All AWH series in the service-providing industries except utilities have been adjusted from January 1990 forward.  The AHE series for wholesale trade, retail trade, information, financial activities, professional and business services, and other services have been adjusted from January 1990 forward as well.  For this reason, calculations of over-the-year change in the establishment hours and earnings series should use seasonally adjusted data.

The series to which the length-of-pay-period adjustment is applied are not subject to the 4- versus 5-week adjustment, as the modeling cannot support the number of variables that would be required in the regression equation to make both adjustments.  See Exhibit 7 for series that have the calendar effects modeling described above.

Exhibit 7. Model specifications
Seasonal Adjustment - AE
NAICS Tabcode Tabcode title Mode 4/5 week adj Other adj
1011331000 Logging MULT X
1021100000 Oil and gas extraction MULT X
1021200000 Mining, except oil and gas - X Indirect1
1021210000 Coal mining MULT X
1021300000 Support activities for mining ADD X
2023610000 Residential building - X Indirect
2023620000 Nonresidential building - X Indirect
2023700000 Heavy and civil engineering construction ADD X
2023800000 Specialty trade contractors - X Indirect
2023800100 Residential specialty trade contractors MULT X Raked2
2023800200 Nonresidential specialty trade contractors ADD X Raked
3132100000 Wood products ADD X
3132700000 Nonmetallic mineral products ADD X
3133100000 Primary metals MULT X
3133200000 Fabricated metal products MULT X
3133300000 Machinery MULT X
3133400000 Computer and electronic products - X Indirect
3133410000 Computer and peripheral equipment MULT X
3133420000 Communications equipment MULT X
3133440000 Semiconductors and electronic components MULT X
3133450000 Electronic instruments MULT X
3133500000 Electrical equipment and appliances MULT X
3133600000 Transportation equipment ADD
3133600100 Motor vehicles and parts ADD
3133700000 Furniture and related products ADD X
3133900000 Miscellaneous manufacturing MULT X
3231100000 Food manufacturing MULT X
3231200000 Beverages and tobacco products MULT X
3231300000 Textile mills MULT X
3231400000 Textile product mills MULT X
3231500000 Apparel MULT X
3231600000 Leather and allied products MULT X
3232200000 Paper and paper products MULT X
3232300000 Printing and related support activities MULT X
3232400000 Petroleum and coal products MULT X
3232500000 Chemicals MULT X
3232600000 Plastics and rubber products MULT X
4142300000 Durable goods MULT X
4142400000 Nondurable goods MULT X
4142500000 Electronic markets and agents and brokers MULT X
4244100000 Motor vehicle and parts dealers - X Indirect
4244110000 Automobile dealers ADD X
4244200000 Furniture and home furnishings stores MULT X
4244300000 Electronics and appliance stores MULT X
4244400000 Building material and garden supply stores MULT X
4244500000 Food and beverage stores MULT X
4244600000 Health and personal care stores MULT X
4244700000 Gasoline stations MULT X
4244800000 Clothing and clothing accessories stores MULT X
4245100000 Sporting goods, hobby, book, and music stores MULT X
4245200000 General merchandise stores - X Indirect
4245210000 Department stores MULT X
4245300000 Miscellaneous store retailers MULT X
4245400000 Nonstore retailers MULT X
4348100000 Air transportation MULT X
4348200000 Rail transportation MULT X
4348300000 Water transportation MULT X
4348400000 Truck transportation ADD X
4348500000 Transit and ground passenger transportation ADD
4348600000 Pipeline transportation MULT X
4348700000 Scenic and sightseeing transportation ADD X
4348800000 Support activities for transportation ADD X
4349200000 Couriers and messengers MULT X
4349300000 Warehousing and storage ADD X
4422100000 Utilities MULT X
5051100000 Publishing industries, except Internet MULT X
5051200000 Motion picture and sound recording industries MULT X
5051500000 Broadcasting, except Internet MULT X
5051700000 Telecommunications MULT X
5051800000 Data processing, hosting, and related services MULT X
5051900000 Other information services MULT X
5552100000 Monetary authorities-central bank MULT X
5552200000 Credit intermediation and related activities - X Indirect
5552210000 Depository credit intermediation MULT X
5552211000 Commercial banking MULT X
5552300000 Securities, commodity contracts, investments MULT X
5552400000 Insurance carriers and related activities MULT X
5552500000 Funds, trusts, and other financial vehicles MULT X
5553100000 Real estate MULT X
5553200000 Rental and leasing services MULT X
5553300000 Lessors of nonfinancial intangible assets MULT X
6054100000 Professional and technical services - X Indirect
6054110000 Legal services MULT X
6054120000 Accounting and bookkeeping services ADD X
6054130000 Architectural and engineering services ADD X
6054150000 Computer systems design and related services ADD X
6054160000 Management and technical consulting services MULT X
6055100000 Management of companies and enterprises MULT X
6056100000 Administrative and support services - X Indirect
6056130000 Employment services MULT X
6056132000 Temporary help services MULT X
6056140000 Business support services ADD X
6056170000 Services to buildings and dwellings MULT X
6056200000 Waste management and remediation services ADD X
6561100000 Educational services ADD X
6562100000 Ambulatory health care services - X Indirect
6562110000 Offices of physicians MULT X
6562140000 Outpatient care centers MULT X
6562160000 Home health care services ADD X
6562200000 Hospitals MULT X
6562300000 Nursing and residential care facilities - X Indirect
6562310000 Nursing care facilities MULT X
6562400000 Social assistance -

Indirect
6562440000 Child day care services ADD X
7071100000 Performing arts and spectator sports MULT X
7071200000 Museums, historical sites, zoos, and parks MULT X
7071300000 Amusements, gambling, and recreation ADD X
7072100000 Accommodation MULT X
7072200000 Food services and drinking places ADD X
8081100000 Repair and maintenance MULT X
8081200000 Personal and laundry services MULT X
8081300000 Membership associations and organizations ADD
9091100000 Federal, except U.S. Postal Service ADD X
9091912000 U.S. Postal Service MULT X
9092161100 State government education ADD X
9092200000 State government, excluding education MULT X
9093161100 Local government education ADD X
9093200000 Local government, excluding education ADD X Election adjustment3

Seasonal Adjustment - WW
NAICS Tabcode Tabcode title Mode 4/5 week adj Other adj
1000000000 Mining and Logging MULT X  
1021000000 Mining MULT X  
2000000000 Construction MULT X  
3100000000 Durable goods MULT X  
3200000000 Nondurable goods MULT X  
4142000000 Wholesale trade MULT X  
4200000000 Retail trade MULT X  
4300000000 Transportation and warehousing MULT X  
4422000000 Utilities MULT X  
5000000000 Information MULT X  
5552000000 Finance and insurance MULT X  
5553000000 Real estate and rental and leasing MULT X  
6054000000 Professional and technical services ADD X  
6055000000 Management of companies and enterprises MULT X  
6056000000 Administrative and waste services MULT X  
6561000000 Educational services ADD X  
6562000000 Health care and social assistance ADD X  
7071000000 Arts, entertainment, and recreation ADD X  
7072000000 Accommodation and food services ADD X  
8000000000 Other services ADD X  
9091000000 Federal MULT X  
9092000000 State government ADD X  
9093000000 Local government MULT X Election adjustment3

Seasonal Adjustment - PW
NAICS Tabcode Tabcode title Mode 4/5 week adj Other adj
   
1000000000 Mining and Logging MULT X
2000000000 Construction ADD X
3132100000 Wood products ADD X
3132700000 Nonmetallic mineral products ADD X
3133100000 Primary metals MULT X
3133200000 Fabricated metal products MULT X
3133300000 Machinery MULT X
3133400000 Computer and electronic products MULT X
3133500000 Electrical equipment and appliances MULT X
3133600000 Transportation equipment ADD
3133600100 Motor vehicles and parts ADD
3133700000 Furniture and related products MULT X
3133900000 Miscellaneous manufacturing MULT X
3231100000 Food manufacturing MULT X
3231200000 Beverages and tobacco products ADD X
3231300000 Textile mills MULT X
3231400000 Textile product mills MULT X
3231500000 Apparel MULT X
3231600000 Leather and allied products MULT X
3232200000 Paper and paper products MULT X
3232300000 Printing and related support activities MULT X
3232400000 Petroleum and coal products MULT X
3232500000 Chemicals ADD X
3232600000 Plastics and rubber products MULT X
4142000000 Wholesale trade MULT X
4200000000 Retail trade MULT X
4300000000 Transportation and warehousing MULT X
4422000000 Utilities MULT X
5000000000 Information MULT X
5500000000 Financial activities MULT X
6000000000 Professional and business services MULT X
6500000000 Education and health services ADD X
7000000000 Leisure and hospitality ADD X
8000000000 Other services MULT X

 

Seasonal Adjustment - AWH
NAICS Tabcode Tabcode title Mode 4/5 week adj 10/11 day adj Easter/Labor Day adj
1000000000 Mining and Logging MULT X X
2000000000 Construction ADD X X
3132100000 Wood products MULT X X
3132700000 Nonmetallic mineral products MULT X X
3133100000 Primary metals MULT X X
3133200000 Fabricated metal products MULT X X
3133300000 Machinery MULT X X
3133400000 Computer and electronic products MULT X X
3133500000 Electrical equipment and appliances MULT X X
3133600000 Transportation equipment MULT X X
3133600100 Motor vehicles and parts MULT X X
3133700000 Furniture and related products MULT X X
3133900000 Miscellaneous manufacturing MULT X X
3231100000 Food manufacturing MULT X X
3231200000 Beverages and tobacco products MULT X X
3231300000 Textile mills ADD X X
3231400000 Textile product mills MULT X X
3231500000 Apparel MULT X X
3231600000 Leather and allied products MULT X X
3232200000 Paper and paper products MULT X X
3232300000 Printing and related support activities MULT X X
3232400000 Petroleum and coal products MULT X X
3232500000 Chemicals MULT X
3232600000 Plastics and rubber products MULT X X
4142000000 Wholesale trade MULT X X
4200000000 Retail trade MULT X
4300000000 Transportation and warehousing MULT X X
4422000000 Utilities MULT X
5000000000 Information MULT X
5500000000 Financial activities MULT X
6000000000 Professional and business services MULT X X
6500000000 Education and health services MULT X
7000000000 Leisure and hospitality MULT X
8000000000 Other services MULT X X

 

Seasonal Adjustment - AHE
NAICS Tabcode Tabcode title Mode 4/5 week adj 10/11 day adj
1000000000 Mining and Logging MULT X
2000000000 Construction MULT X
3100000000 Durable goods ADD X
3200000000 Nondurable goods MULT X
4142000000 Wholesale trade ADD X
4200000000 Retail trade MULT X
4300000000 Transportation and warehousing MULT X
4422000000 Utilities ADD X
5000000000 Information MULT X
5500000000 Financial activities MULT X
6000000000 Professional and business services MULT X
6500000000 Education and health services ADD X
7000000000 Leisure and hospitality MULT X
8000000000 Other services MULT X

 

Seasonal Adjustment Comparison - AOT
NAICS Tabcode Tabcode title Mode 4/5 week adj 10/11 day adj Easter/Labor Day adj

31000000

Durable goods

MULT X X

32000000

Nondurable goods

MULT X X

1 Seasonal adjustment occurs at the lowest available industry level.

2 Residential and nonresidential specialty trade estimates are raked to the specialty trade estimates to ensure consistency.

3Special adjustment for the presence/absence of poll workers in local government.

 

Last Modified Date: February 6, 2009