Please sit wherever you would like - PowerPoint PPT Presentation

1 / 95
About This Presentation
Title:

Please sit wherever you would like

Description:

Welcome Please sit wherever you would like LMI.. What you should know Presented by . Bill McNeece MS Dept of Employment Security LMI What is it? – PowerPoint PPT presentation

Number of Views:170
Avg rating:3.0/5.0
Slides: 96
Provided by: JohnSt179
Category:

less

Transcript and Presenter's Notes

Title: Please sit wherever you would like


1
Welcome
  • Please sit wherever you would like

2
Word on the street is you been askin a lotta
questions about LMI
3
LMI.. What you should know
  • Presented by.
  • Bill McNeece
  • MS Dept of Employment Security

4
LMI
  • What is it?
  • Where does it come from?
  • How can you use it?

5
One Popular Opinion
L
argely
M
ade Up
I
nformation
6
But, seriously, folks
L
abor
What is it Really?
M
arket
I
nformation
7
The Textbook Definition
  • A dynamic and systematic approach to workforce
    data designed to meet the changing needs of our
    customers.

8
In Laymans Terms
  • Or, to put it more simply
  • Basically, its any data or analysis that relates
    to the workforce.

9
LMI ????????????
WHO NEEDS 'IT ? ! ?
Unfortunately, you do
LMI data is the gas that fuels the ALMIS Data
Base engine
10
Whats our goal today?
  • To help YOU.
  • Navigate thru the LMI Lingo
  • Understand the Data Sources
  • Avoid Heartburn and Keep Your
    Sanity

11
Your Training Modules Today
  • Learning the Lingo
  • Who Makes this Stuff Up?
  • Avoiding Heartburn

12
Ready to get started?
  • Lets take a look at the first module

e
r
a
L
i
n
g
n
the
i
L
o
g
n
13
Feel Bombarded with Acronyms?
Americans DO love their acronyms!
But sometimes it makes things hard to understand
BLS
EIEIO
ALMIS
LMI
CPI
14
Did you know?
  • Acronym is actually an ACRONYM itself!
  • Abbreviations
  • Created
  • Routinely
  • Once every
  • New
  • York
  • Minute

15
Before we get very far
  • We need to wade through some Alphabet Soup so you
    wont think Im speaking a foreign language
  • These are some common acronyms tossed around in
    LMI circles

16
Alphabet Soup
BEA Bureau of Economic Analysis BLS Bureau of
Labor Statistics CPI Consumer Price Index CES
Current Employment Statistics
17
Alphabet Soup
CPS Current Population Survey ECI Employer
Cost Index ETA Employment Training
Administration
18
Alphabet Soup
LAUS Local Area Unemployment Statistics LMA
Labor Market Area MLS Mass Layoff Statistics MSA
Metropolitan Statistical Area NAICS North
American Industry
Classification System
19
Alphabet Soup
OES Occupational Employment Statistics PPI
Producers Price Index SIC Standard Industry
Classification SOC Standard Occupational
Classification QCEW Quarterly Census of
Employment
Wages (a.k.a ES 202)
20
Alphabet Soup
Any Questions?
21
Before we move on, lets take a short break
22
Picking up where we left off
  • Lets take a look at the next module

A
B
's
C
Of LMI
23
LMI Lingo
  • Must crawl before we walk
  • Well start with some basic terms and concepts
  • In other words, all you wanted to know but were
    afraid to ask

24
Labor Force Terms Concepts
  • Employed
  • Worked at least one hour for pay
  • During the week that includes the 12th
  • Unemployed
  • No job attachment
  • Available for work actively seeking it
  • Can be experienced or a new or re-entrant

25
Covered Employment
  • This employment tallies workers whose wages have
    been covered for UI purposes (i.e., the
    employer paid unemployment insurance on the wages
    paid to the individual)
  • Used only in QCEW data

26
EmploymentPlace of work
  • An estimate or count of employment based on the
    location of the job regardless of the workers
    residence
  • Also called Nonag Wage and Salary or
  • Nonfarm Employment
  • This counts jobs, not people
  • Used in QCEW, OES and CES data

27
EmploymentPlace of Residence
  • An estimate of employment based on where the
    employee lives, rather than where they work
  • This is a count of people not jobs
  • Used in calculating the labor force
  • Used only in LAUS data

28
Labor Force Terms Concepts
  • Civilian Labor Force
  • 16 years old
  • Employed Unemployed
  • Does NOT include military personnel
  • Unemployment rate
  • Unemployed Labor Force
  • Expressed as
  • Labor Force Participation rate
  • Labor Force Working Age Population

29
Labor Force Terms Concepts
  • Discouraged Workers
  • Harder to define and sometimes undercounted.
  • Generally are on long-term layoff with no
    immediate prospects.
  • Underemployed
  • Also hard to define and count.
  • Basically can be anyone working below their skill
    level.
  • Might be underemployed by choice.

30
Labor Force Terms Concepts
  • Labor Market Area
  • Groups of counties that encompass the county of
    residence and the county of work.
  • Defined by
  • Commuting patterns
  • The behavior of individuals included in
    American Community Survey, Census and UI claims
    data when compared to other data.

31
Covered Wages
  • This pertains to the actual wages earned by
    persons working for a covered employer
  • In other words, someone for whom unemployment tax
    has been paid
  • Used only in QCEW data

32
Average Weekly Wages
  • A simple average calculated by dividing the total
    wages paid by the number of weeks in the time
    period, then dividing again by the number of
    workers reported
  • Found in CES and QCEW data

33
Benchmark
  • Establishing a new reference point, from which
    estimates are calculated and/or revised, based on
    last known data.
  • Very similar to the census process
  • Only LAUS CES do this

34
Coding Systems
  • Why code data?
  • Why revise coding structures?
  • Types of coding
  • Geography
  • Industry
  • Occupation

35
Objectives of Coding Systems
  • Often designed to meet specific labor program
    needs
  • Ideally, a single system would meet all
    programmatic needs
  • Updating should be timely and cost-effective

36
Geographic Coding Systems
  • Only one major system in common usage
  • FIPS Federal Information Processing System
  • Developed by U.S. Office of Management and Budget
    (OMB)
  • Commonly used by almost all federal and local
    agencies
  • Consists of codes for states, MSAs, counties and
    cities, townships, etc.
  • Some GIS software applications use FIPS

37
Industry Coding Systems
  • Types
  • Standard Industrial Classification (SIC)
  • North American Industrial Classification System
    (NAICS)
  • Shifting from SIC to NAICS
  • Conversion now complete
  • Benefits
  • Program impacts

38
WHY NAICS?
  • Six-digit system, instead of four
  • Instead of 10 major industry groups, there are 20
    industrial sectors.
  • More consistent with other international systems
    and other classification systems used by BEA.

39
Occupational Coding Systems
  • DOT Dictionary of Occupational Titles
  • Phased out in 2002 2003
  • OES Occupational Employment Statistics
  • SOC Standard Occupational Code
  • ONET Occupational Information Network

40
ONet Crosswalks
  • AIM Apprenticeship Information Manager
  • 1990 Census occupations
  • CIP Classification of Instructional Programs
  • DOT Dictionary of Occupational Titles
  • GOE Guide for Occupational Exploration
  • MOC Military Occupation Codes
  • Office of Personnel Management occupations
  • SOC Standard Occupational Classification

41
LMI Lingo
Any Questions?
42
Next on our agenda is

Who makes this stuff up?
43
Just where do the numbers come from?
Mostly from BLS programs
44
Just who or what IS BLS?
  • Contrary to popular opinion, they are NOT the
    Bureau of Lying Sapsuckers!
  • In reality, they are the BUREAU OF LABOR
    STATISTICS, an arm of the US Department of Labor

45
As states, why are we involved with a Federal
agency?
  • They operate what is known as the Federal/State
    Cooperative Programs
  • Under these, they provide the funding for our
    base statistical programs

46
Historical Background
  • BLS has been around in one form or another for
    over a hundred years.
  • However, they only took control over the LMI
    programs in the mid-1970s
  • They provide both funding and technical support

47
LMI Produces lots of different
stuff
  • Does BLS control ALL our LMI programs?
  • Not in most states. They are only responsible
    for FIVE basic statistical programs. Anything
    else is funded and controlled by some other entity

48
Which five does BLS control?
  • QCEW
  • CES
  • LAUS
  • OES
  • MLS

49
There you go with the acronyms again!
  • In plain English, tell me what those stand for
  • And while youre at it, tell me a little bit
    about each of them

50
Okay, lets begin with QCEW
  • Its official name is the Quarterly Census of
    Employment Wages
  • Its commonly called ES 202 because the original
    report it was required to produce was Employment
    Security Report Number 202

51
What exactly does the QCEW program produce?
  • Detailed quarterly employment and payroll
    information for all employers covered under UI
    law.
  • Annual information on changes in industry codes
    that occur during the year

52
Data Sources for QCEW
  • UI quarterly contribution reports
  • UCFE federal agency employment reports
  • Comes to ALMIS DB via EQUI report
  • Supplementary employer surveys by state LMI
    offices
  • Multiple establishment detail (MWR)
  • Industrial coding (annual refile survey)
  • Follow-ups triggered by edits

53
How does QCEW differ from other programs?
  • Unlike LAUS, QCEW counts JOBS not PEOPLE
  • Jobs are counted at the work site
  • Its the only program that lists total wages paid

54
Uses of QCEW Data
  • Employment benchmark for all BLS federal/state
    employer survey programs CES, OES OSHA
  • Critical for Bureau of Economic Analysis
  • Personal income
  • State and national domestic product
  • Local planning
  • Only consistent source of county employment and
    wages by industry
  • Any employment analysis requiring detailed data

55
QCEW Limitations Changes
  • Some employment for large firms may be reported
    in the wrong areas (MWRs)
  • Some firms report total number of employees in a
    quarter as employment for each month
  • QCEW is not a time series
  • No wedging of changes by industry or area from
  • Annual refile survey
  • Changes in multi-establishment reporting
  • Shift to NAICS Break in series

56
QCEW Chronology
  • Data files produced QUARTERLY
  • Once completed they are NOT revised
  • Changes in industry designation only done ANNUALLY

57
QCEW
Any Questions?
58
Next on the agenda
The CES Program
Which stands for Current Employment Statistics
59
What is it?
  • The Current Employment Statistics program is a
    monthly employer survey conducted by the states
    in cooperation with BLS.
  • The survey provides a sample from which estimates
    of employment, hours and earnings by industry
    group are calculated

60
Data Sources for CES
  • Begins with covered employment from QCEW
    supplemented with non-covered adjustments
  • The monthly employer survey is used to estimate
    current monthly levels of employment by industry

61
What does it produce?
  • Today, the CES program produces employment, hours
    and earnings estimates for all states and MSAs.
  • It is the largest survey of its kind, with a
    nationwide sample of over 400,000 firms!


62
Coverage Differences Between CES QCEW
  • The following categories of workers are
    included in CES estimates but not in QCEW
  • Full commission salespersons
  • Elected and appointed government officials
  • Teachers in summer months who are paid on
    12-month contracts

63
CES Limitations Changes
  • Sample size limits state area industry detail
  • Sum of states employment does not equal national
    total
  • Estimates for many sub-state areas are not funded
  • Though accuracy exceeds that of other economic
    data, benchmark revisions still cause criticism
  • Earnings are for production workers not
    available for many state industries

64
CES Chronology
  • Data produced MONTHLY
  • Current month is PRELIMINARY, previous month is
    REVISED
  • Entire calendar year data set is benchmarked and
    revised ANNUALLY
  • Benchmark revisions include prior year, also
  • Hours and earnings data are revised monthly but
    NOT BENCHMARKED

65
Current Employment Statistics
Any Questions?
66
Moving right along
  • We come to

The OES Program
67
Occupational Employment Statistics (OES)
The OES Program
  • An annual employer survey which produces
    employment and wage-rate estimates by occupation
    and industry for states and areas
  • Program began in 1971 in 15 states with BLS and
    ETA sharing responsibility with the states
  • When BLS took total federal responsibility for
    the program, all 50 states began to participate

68
OES
The OES Program
  • In 1996, the following changes were made
  • Sample increased to be the largest of any
    employer survey
  • Wage rates were added for all states sub-state
    areas
  • All industries surveyed each year, rather than
    every 3rd year

69
OES Staffing Estimates
  • Employment by occupation is tallied for each
    industry sector
  • Staffing ratios are developed representing each
    occupations share of each industry sectors
    employment

70
OES Wage Rate Estimates
  • Data tallied by wage ranges
  • Wage-rate averages generated using weighted
    system of averaging
  • Prior-year data aged using the Employer Cost
    Index

71
OES Limitations
  • Since it is voluntary, low response rates can
    make it less reliable in some industry sectors
  • Estimates for sub-state areas dependent on
    sample size and response rates
  • Wages are tallied by range
  • Sample size limits state area industry detail
    in many cases

72
Recent Program Changes
  • Conversion to new SOC codes
  • Change in sampling frequency of certainty units
    (large employers)
  • Cognitive analysis of survey forms, to assist in
    edits
  • Asking employers for data in other quarters
    (split survey)

73
OES Chronology
  • Surveys done in Spring and Fall
  • Data processed all year long
  • New estimates released annually
  • Data do not undergo revisions or benchmarking
    once released

74
Occupational Employment Statistics
Any Questions?
75
State and Area Occupational Projections
  • A very important byproduct of the OES data
  • NOT a BLS funded project
  • Money comes from Employment Training
    Administrationanother branch of the US
    Department of Labor

76
State Area Occupational Projections
  • Produces both the INDPRJ and IOMATRIX data sets
  • Short-term up to 2 years
  • Long-term roughly 10 years
  • In some states unit may also be responsible for
    occupational wage data
  • Substate areas vary widely from state to state

77
Projections Chronology
  • New data sets now released twice a year
  • Short term and long term projections not
    necessarily released at same time
  • Release times vary widely from state to state
  • Data are not subject to benchmark revisions

78
The fourth BLS program is
LAUS
which stands for ________________________________
Local Area Unemployment Statistics
79
Just what is LAUS?
  • The name can be misleading since it deals with
    more than just unemployment data, such as the
    often-quoted unemployment rate.
  • The Local Area Unemployment Statistics program is
    a multi-layered process that produces labor
    force, employed and unemployed estimates by place
    of residence

80
What does the LAUS program produce?
  • Estimates of total civilian labor force,
    employed, unemployed and unemployment rate for
    all states, MSAs, counties, and other similar
    areas, adjusted to place of residence

81
Betcha didnt know
  • Estimation method varies depending on the type of
    geography
  • U.S. data comes directly from the monthly Current
    Population Survey
  • Statewide data (since 1986) comes from a
    regression model developed by BLS
  • County level data are apportioned out of the
    statewide data using a handbook method

82
Why do methods vary?
  • CPS allows for more detailed information at the
    national level, such as data by gender, race, age
    group, etc.
  • CPS was used for larger states at one time, but
    trend was erratic and regression model was
    instituted in late 1980s
  • Regression models are not reliable for smaller
    areas, such as counties and cities

83
Sub-state LAUS Estimates
  • Handbook method used to apportion out county
    level estimates from statewide totals
  • Population-claims method used where possible for
    estimates of larger cities
  • Census-share method used for smaller cities and
    sub-county estimates when claims data are not
    available

84
How do LAUS estimates differ from others?
  • Includes agricultural workers, self employed and
    others excluded by CES QCEW
  • CES QCEW estimate JOBS at work site LAUS
    estimates PEOPLE at place of residence

85
LAUS Limitations
  • Limited statistical measures of reliability
  • Handbook methodology assumes local areas follow
    national trends
  • Estimates for employment are probably more
    accurate than for unemployment
  • No detailed data, such as gender, age, etc.

86
Recent Program Changes
  • Major changes in methodology
  • Many cities and MSAs altered or added
  • Many areas changed significantly
  • Error in BLS provided software has led to delays
  • Break in series between 1999 and 2000 due to
    changes

87
LAUS Chronology
  • Data produced monthly
  • Current month is PRELIMINARY, previous month
    is REVISED
  • Entire calendar year data set is benchmarked
    and revised ANNUALLY
  • Benchmark revisions may include prior years, also

88
Local Area Unemployment Statistics
Any Questions?
89
Last
(but not necessarily least)
we come to
the MLS Program
90
Mass Layoff Statistics
  • Began life as PMLPC in the early 80s
  • Intent was to track serious layoffs and closings
    by industry using UI claims data
  • Not very useful for Rapid Response
  • Good post-occurrence analytical tool
  • Many states dont have enough activity to publish
    data

91
BLS Programs
Any Questions?
92
Okay..That covers the BLS generated stuff..
What about all the other data sets in the ALMIS
DB?
93
Other data sets
  • Occupational licensing data Sources vary by
    state
  • Census data (www.census.gov)
  • Most can be downloaded in Excel format
  • State data center can be helpful
  • Training provider and completer data Sources
    vary by state

94
Other data sets
  • Income data downloadable from BEA web site.
  • Crosswalk tables Direct from National Crosswalk
    Data Center in Iowa
  • Employer database provided via contract with
    InfoUSA updates automatic
  • URL links to other states

95
Okay I dig the data now, but how do I keep it
all straight without going postal and doing
something crazy?
96
Fair question...
and it leads to our last module..
Avoiding Heartburn
97
Top Three Tips
  1. Get a handle on Benchmarking procedures
  2. Understand the data flow
  3. Understand the BLS vs ETA issues

98
To elaborate...
  • Know the timing of data sets from BLS
  • Know who provides, when and in what format
  • Dont be blind-sided by revisions

99
Benchmarking
  • Know the time frame for benchmarking for CES and
    LAUS
  • Understand the scope
  • Double check data to insure it is the most
    current benchmark

100
BLS vs ETA
  • Realize they dont like each other very much
  • Understand the turf wars
  • Dont expect them to cooperate and make your life
    easier

101
Almost done
Any Questions?
102
Th-th-th-thats all folks!
103
Applause !!
104
For further assistance contact
Bill McNeece Special Projects LMI Department
- MS Department of
Employment Security Phone 601
321 6249 E-mail bmcneece_at_mdes.ms.gov NO EXTRA
CHARGE !!
Write a Comment
User Comments (0)
About PowerShow.com