Presentation is loading. Please wait.

Presentation is loading. Please wait.

Dixie Sommers and Laurie Salmon

Similar presentations


Presentation on theme: "Dixie Sommers and Laurie Salmon"— Presentation transcript:

1 Sampling and Collection in the Occupational Employment Statistics (OES) Program
Dixie Sommers and Laurie Salmon Occupational Information Development Advisory Panel May 4, 2011

2 Overview Data available from OES Uses and users of OES data
Standard classifications used OES sample design OES survey operations OES estimation methods Special OES tabulations for O*NET

3 Data available from OES

4 Occupational Employment Statistics
Employment and wages for over 800 occupations Cross-industry estimates for The Nation States, District of Columbia, and selected territories Over 580 metropolitan and nonmetropolitan areas National estimates by specific industries Estimates by ownership Published annually with May reference date May 2010 data to be published May 17, 2011

5 Data items available Employment Hourly and annual mean wages
Hourly and annual wages by percentile 10th, 25th, median, 75th, 90th percentiles Measure of sampling error Employment and mean wage percent relative standard errors (PRSEs)

6 Uses and users Employers and Human Resources professionals
Compare pay to data for their industry or area Understanding occupational employment and wages in making location and expansion decisions Academic researchers Understanding the structure of the labor market Understanding wages Media and general public

7 Uses and users Career and job search information
Students and job seekers Guidance and career counselors Policy and program uses E.g., wages for Foreign Labor Certification Staffing patterns uses Preparing employment projections O*NET sampling design to identify industries with concentrations of employment in occupations being surveyed

8 Standard classifications used

9 Industry classification
North American Industrial Classification System (NAICS) Establishments are classified according to the goods or services the establishment produces Issued by Office of Management and Budget Jointly developed by U.S., Canada, and Mexico U.S. Economic Classification Policy Committee chaired by Census Bureau Revised every five years (2002, 2007, 2012)

10 Industry classification
NAICS example 21 Mining, Quarrying, and Oil and Gas Extraction 211 Oil and Gas Extraction 2111 Oil and Gas Extraction 21111 Oil and Gas Extraction Crude Petroleum and Natural Gas Extraction Natural Gas Liquid Extraction

11 Occupational classification
Standard Occupational Classification (SOC) Workers and jobs are classified into occupations based on the work performed Issued by Office of Management and Budget Standard Occupational Classification Policy Committee chaired by BLS Established SOC Classification Principles and Coding Guidelines Revised 2000 and 2010 Next revision planned for 2018

12 Occupational classification
2010 SOC structure 23 Major groups 97 Minor groups 461 Broad occupations 840 Detailed occupations

13 Occupational classification
SOC Example Major group Sales and related occupations Minor group Retail sales workers Broad occupation Counter and rental clerks and parts salespersons Detailed occupations Counter and rental clerks Receive orders, generally in person, for repairs, rentals, and services. May describe available options, compute cost, and accept payment. Parts salespersons Sell spare and replacement parts and equipment in repair shop or parts store.

14 Occupational classification
SOC Manual provides approved modifications to the structure Delineation below the detailed occupation level permitted Add digits to the code Financial Managers Treasurers and Controllers OMB recommends that those needing extra detail use the O*NET structure   

15 Occupational classification
All Federal agencies publishing occupational data for statistical purposes required to use SOC Increases data comparability across Federal programs SOC developed for statistical purposes only Non-statistical purposes play no role in SOC development OMB will not modify the SOC to meet requirements of non-statistical programs

16 Using industries and occupations together
The combination of industry and occupation can further define the work E.g., retail salesperson may work selling cars and may need to drive. Others may work in stores and need to stand. OES provides these data Distribution of an occupation’s employment by industry Distribution of an industry’s employment by occupation (staffing pattern)

17 OES methodology Sample design Data collection cycle Estimation

18 OES sample design Universe and sample sizes Sampling frame
Unemployment insurance list of employers Covers 98 percent of wage and salary jobs Industry, county and employment level for each establishment Supplemented by other sources for industries not covered by state unemployment insurance Mainly Federal government and railroads Universe and sample sizes Universe size of about 8 million establishments 1.2 million establishments in OES sample

19 OES sample design Sample stratification
By metropolitan and non-metropolitan area By industry strata Generally 4-digit NAICS, some 5-digit NAICS By ownership for certain sectors Education and hospitals by state government, local government, and private ownership

20 OES sample design Sample allocation for each stratum
Include all large establishments “Certainty units” Improves sample efficiency For all other units Based on expected variability and stratum size Minimum number of sample units

21 Data collection cycle Full sample collected over 3-year cycle
Two collection panels per year Reference dates of May and November

22 OES Survey Operations OMB clearance Operational structure
Data collection and processing

23 OMB clearance OMB clearance to conduct the survey Requires
Description of purpose and uses No duplication of other federal data sources Detailed sample description Description of respondent burden hours and cost Response rate targets Use of standard classification systems Description of collection methods Public comment periods

24 Operational structure
Federal-State Cooperative Program BLS National and Regional offices State Workforce Agencies BLS responsibilities Concepts and procedures Sample design and selection Survey form design, printing and mailing Data capture and estimation systems Produce and publish estimates Data quality assurance Training and technical assistance Confidentiality policy and procedures Funding

25 Operational structure
State workforce agency responsibilities Address refinement of sample units Data collection, including non-response follow-up Data processing and editing Occupational coding Estimates review and publication Protect data confidentiality

26 OES survey forms Developed through cognitive and field testing
For all types of establishments Verify known information about the establishment: employment, industry Request contact information for follow-up

27 OES survey forms Structured forms
For medium size and larger establishments Specific to individual industries or groups of industries Lists occupations commonly found in the industry Includes occupation definitions Employer determines how SOC codes relate to establishment’s job categories

28 OES survey forms Unstructured forms Open-ended format
For smaller establishments For all non-responding establishments in the third follow-up mailing Open-ended format No occupations listed on form Employer reports by own job categories Data coded to SOC by state or regional office staff

29 OES survey forms All forms
Request employment in the occupation by wage intervals Wage intervals used to estimate wage means, medians, and percentiles

30 Data collection Mailing Response mode options
Includes form, letter, information sheet Second and third mailings to non-respondents Response mode options Complete paper form and mail back Complete form online Phone response Fax response Provide electronic payroll file (mail or ) Provide paper payroll listing

31 Data collection Improving response rates Pre-notification postcards
Telephone follow-up Flexibility in reporting mode Web site for respondents Why respondent’s data are important Provide publications Confidentiality pledge Training data collectors on reluctance aversion

32 Data collection Response mode varies by establishment size
Response rates for most recent panel 77.7 percent of establishments 69.5 percent of employment

33 OES estimation methods
Use three years of data (six panels) May 2010 data based on these panels: May November 2009 May November 2008 May 2008 November 2007 Employment estimation Sample weight adjustment Benchmarked to industry employment level from external source

34 OES estimation methods
Wage estimation using wage interval data BLS National Compensation Survey data used to estimate mean wages in each interval BLS Employment Cost Index used to “age” wages collected in earlier panels Wages estimation using wage rate data Direct computation of means, medians, and percentiles Wage rate data for in certain sectors Federal government, U.S. Postal Service State government in many states

35 Special tabulations for O*NET
Distribution of occupational employment by 6-digit NAICS More detailed than published OES data Shows industries and areas with most employment in the occupation Useful for targeting sample selection on industries where occupation known to exist

36 Dixie Sommers Assistant Commissioner, Office of Occupational Statistics and Employment Projections Laurie Salmon Supervisory Economist, Division of Occupational Employment Statistics


Download ppt "Dixie Sommers and Laurie Salmon"

Similar presentations


Ads by Google