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Barbara M' Fraumeni

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Title: Barbara M' Fraumeni


1
Muskie School of Public Service
Ph.D. Program in Public Policy
Implementation with a Categorical Approach
Barbara M. Fraumeni Muskie School of Public
Service, USM, Portland, ME the National Bureau
of Economic Research, USA China Center for Human
Capital and Labor Market Research Central
University of Finance and Economics Bejing, China
June 19, 2009
2
Restarting an Old Project
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Primary project objective is to streamline
  • But also to
  • Update Jorgenson-Fraumeni estimates
  • Put the project in production mode

3
Why Streamline?
Muskie School of Public Service
Ph.D. Program in Public Policy
  • To substantially reduce the time and data needed
    to construct Jorgenson-Fraumeni (J-F) human
    capital accounts
  • To facilitate use of commonly available data sets
  • To increase the likelihood that more countries
    will construct J-F accounts
  • Currently Australia, Canada, New Zealand, Norway,
    United Kingdom, United States, and Sweden have
    such accounts

4
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Comparable,
  • multi-country data sets
  • are the ultimate goal

5
Human Capital From Indicators Indexes to
Accounts (Fraumeni 2008)Data Starting Points
Muskie School of Public Service
Ph.D. Program in Public Policy
  • OECDs Education at a Glance
  • Lisbon Councils Human Capital Index
  • EU and WORLD KLEMS
  • Cao, Ho, Jorgenson, Ruoen, Ximing

6
Human Capital From Indicators Indexes to
Accounts (Fraumeni 2008)OECD
Muskie School of Public Service
Ph.D. Program in Public Policy
  • 30 member countries 6 partner countries
  • Many types of indicators
  • 500 pages, 150 tables
  • Educational attainment
  • Types relative levels of expenditures
  • Relative earnings by educational attainment
  • Vocational programs
  • Years in school
  • Underlying data is available

7
Human Capital From Indicators Indexes to
Accounts (Fraumeni 2008)Lisbon Council
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Exists for 13 EU countries and 12 Central
    Eastern European states
  • Human Capital Index as a source of perhaps useful
    data
  • Expenditures on formal education
  • Opportunity cost of
  • Parental education
  • Adult education
  • Learning on the job

8
Human Capital From Indicators Indexes to
Accounts (Fraumeni 2008)Lisbon Council
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Demography employment measure estimates the
    number of people who will be employed in 2030 by
    looking at economic, demographic, and migratory
    trends
  • Unknown if Lisbon Council data would be made
    available

9
Human Capital From Indicators Indexes to
Accounts (Fraumeni 2008)KLEMS
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Probably a source of categorical labor data on
  • Hours worked
  • Employees
  • Wages
  • Exist for about half of the EU countries
  • Other countries, such as
  • U.S.
  • Australia
  • Canada

10
China KLEX (CHJRX, forthcoming)
Muskie School of Public Service
Ph.D. Program in Public Policy
  • To be published in the June Review of Income and
    Wealth
  • Contact Yue Ximing of Renmin University
  • Productivity by industry and across all
    industries
  • Has all of the required labor data, however by
    broad age categories
  • 16-34
  • 35-54
  • Over 54

11
Desirable Properties of an Account
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Two of three volumes, values and prices
  • Common numeraire, such as a base currency
  • Related to a generally accepted macro measure
  • Include inputs and outputs
  • Complete system, internally externally

12
Desirable Properties of an Account
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Short-run
  • First Three Objectives
  • Longer-run
  • Last Two Objectives

13
Starting Points
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Construct human capital investment stocks
  • Formal education
  • Later
  • Informal vocational education
  • Training
  • Adult education

14
Starting PointsDemographic Information
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Population by age, sex, highest education level
    attained, and labor force participation
  • Population births immigrants emigrants
    deaths
  • Education at a Glance categories
  • Single year of age information when possible for
    all individuals lt25
  • Forward-looking survival rates

15
Starting PointsEducation
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Enrollment
  • Given categorical data, could be imputed by using
    a typical enrollment sequence
  • Similar to what the Canadians have done
  • Issues
  • All students might not start school at the same
    age
  • Drop-outs
  • Failure to advance
  • Skipping grades
  • Special education
  • Students going part-time
  • Advanced degrees

16
Starting PointsTime Use
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Minimum for broad categories
  • Work
  • School (homework time?)
  • Maintenance
  • Sleep
  • Leisure?
  • Second priority - child care
  • Third priority
  • Care of others
  • Health improvement/maintenance
  • Complete time use accounts

17
Valuation of Time
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Market
  • Wage rate
  • After-tax?
  • Nonmarket - ?

18
Valuation of TimeNonmarket
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Opportunity Cost
  • Marginal value of time?
  • Replacement cost
  • Generalist
  • Specialist
  • Quality-adjusted specialist?

19
Valuation of TimeNonmarket
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Zero value time?
  • Ignoring consumption value of primarily human
    capital investment activities?

20
Fraumeni Simplified MethodCan Categorical
Estimation Work?
Muskie School of Public Service
Ph.D. Program in Public Policy
21
Jorgenson-Fraumeni Data Required for Lifetime
Income
Muskie School of Public Service
Ph.D. Program in Public Policy
  • By sex, individual years of age, and education
    (either highest level attained by individual
    level or enrollment by individual level)
  • Population
  • Enrollment
  • Employment
  • Labor compensation
  • Hours of market work
  • Survival rates
  • All but survival rates are contemporary
    information

22
Equation Notation(categorical notation in
capital letters)
Muskie School of Public Service
Ph.D. Program in Public Policy
  • mi(s,a,E) lifetime market income
  • nmi(s,a,E) lifetime nonmarket income
  • ymi(s,A,E) yearly (current) market income
  • ynmi(s,A,E) yearly (current) nonmarket income
  • g real rate of growth in labor income
  • r discount rate
  • sr(s,A) survival rate to one year older
  • s sex
  • a(A) age, by single year of age, e.g., age 0, 1,
    2, ...74, 75
  • e(E) highest level of education attained, by
    individual level of education from grade 1, 2,
    ..., through at least one year of graduate school
  • older(OLDER) age 1, e.g., being one year older

23
Five Stages
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Stage 1 No school or work, ages 0-5
  • Stage 2 School, but no work, ages 6-15
  • Stage 3 School and work, ages 16-34
  • Stage 4 Work only, ages 35-74
  • Stage 5 Retirement, zero income

24
Equations for Ages 0-5
Muskie School of Public Service
Ph.D. Program in Public Policy
  • mi(s,a,E) sr(s,OLDER) mi(s,older,E)
    (1g)/(1r)
  • nmi(s,a,E) sr(s,OLDER) nmi(s,older,E)
    (1g)/(1r)
  • Where E1

25
Equations for Ages 0-5 Question
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Survival rate from birth to age 1 is normally
    lower than any other year

26
Equations for Ages 35-74
Muskie School of Public Service
Ph.D. Program in Public Policy
  • mi(s,a,E) ymi(s,A,E) sr(s,OLDER)
    mi(s,older,E) (1g)/(1r)
  • nmi(s,a,E) ynmi(s,A,E) sr(s,OLDER)
    nmi(s,older,E) (1g)/(1r)

27
What Is Yearly Nonmarket Income?
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Assumed 10 hours per day is spent sleeping and in
    maintenance
  • Assumed students spend 1600 hours per year in
    formal education activities
  • 14 hours per day available to go to school,
    perform market work and engage in nonmarket
    activities, including nonmarket work and leisure
  • Opportunity cost methodology is used to value
    nonmarket activities

28
Equations for Ages 35-74Backwards Recursive
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Using future known information creates a problem
    when the future is beyond the data availability
    period
  • However, a cohort approach can introduce business
    cycle effects

29
Equations for Ages 6-34
Muskie School of Public Service
Ph.D. Program in Public Policy
  • mi(s,a,E) ymi(s,A,E) sr (s,OLDER)
    senr(s,A,ENR) mi(s,older,E1)
  • (1 - senr(s,A,ENR)) mi(s,older,E)
  • (1g)/(1r)
  • nmi(s,a,E) ynmi(s,A,E) sr (s,OLDER)
    senr(s,A,ENR) nmi(s,older,E1)
  • (1 - senr(s,A,ENR)) nmi(s,older,E)
  • (1g)/(1r)

30
Equations for Ages 6-34
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Individuals do not move from to a higher age
    category to a higher education category
    necessarily at the same time
  • Tracking different number of years of discounting
    before lifetime income of higher education
    category is realized
  • Tracking different number of years of using a
    categorical survival rate

31
Jorgenson-FraumeniVolumes
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Translog indexes, where the weights are shares of
    lifetime income or investment
  • Volumes in the index are population or numbers of
    persons enrolled in school
  • For example
  • Lifetime income volume (year,s,a,e)
  • .5 share(year,s,a,e) share(year-1,s,a,e)
  • lnpopulation(year,s,a,e)
    lnpopulation(year-1,s,a,e)

32
Streamlining Issues
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Population needs to be imputed by single year of
    age population(s,a,E), during estimation
  • Enrollment questions in general
  • In what grade are individuals of certain ages
    enrolled?
  • Drop-outs who return to school
  • Undergraduate and graduate education

33
With Only Categorical Data
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Deriving population by individual year of age is
    critical
  • B(s) is the number of persons born (of age 0)
  • Pop(s,1,1) is categorical population for age
    category 1 (ages 0-5) and education category 1
    (grade 8 or less completed)
  • Population(s,a,1) is population by single year of
    age for education category 1 (grade 8 or less
    completed)
  • Sr(s,1) is the average one-year rate of survival
    of individuals in age category 1 (ages 0-5) t
  • B(s) ? age 0 population(s,0,1)
  • Sr(s,1)B(s) ? age 1 population(s,1,1)
  • Sr(s,1)2B(s) ? age 2 population(s,2,1)
  • Sr(s,1)3B(s) ? age 3 population(s,3,1)
  • Sr(s,1)4B(s) ? age 4 population(s,4,1)
  • Sr(s,1)5B(s) ? age 5 population(s,5,1)
  • Pop(s,1,1) S (n0 to 5) sr(s,1)n B(s) to be
    controlled

34
With Only Categorical DataEnrollment
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Population dating implications for enrollment
  • Drop-outs during the school year as opposed to at
    the end of the school year

35
With Only Categorical Data
Muskie School of Public Service
Ph.D. Program in Public Policy
  • General enrollment imputation questions
  • Are essentially all individuals enrolled at
    certain ages?
  • Are there certain points when not-enrolled
    changes?
  • Can then by assumption allocate students to
    certain grades (or not enrolled)
  • One grade or two grades choice
  • Controlling
  • Drop-outs never return?
  • Certain points when not enrolled changes?

36
Recent Papers
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Wei (2008 2 papers) for Australia, every 10
    years 1981-2001
  • Market only
  • Ages 18-65
  • Includes work experience investment
  • Linear combination of lifetime labor incomes of
    older cohorts between Census years
  • Greaker and Liu (2008) for Norway, 2006
  • Market only
  • Ages 15-67

37
Recent Papers
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Gu and Wong(2009) for Canada, 1970-2007
  • Market only
  • Ages 15-74
  • Christian (2009) for U.S., 1994-2006
  • Both market and nonmarket
  • Ages 0-80

38
Categorical Issues in Recent Papers
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Wei (2008) for Australia, every 10 years 1981-
    2001
  • Categories of educational qualifications
  • Single year of age information
  • Greaker and Liu (2008)
  • Enrollment by individual year of age, but by
    grade level categories
  • Labor force highest level of educational
    attainment by individual year of age by the same
    grade level categories
  • Data on left years to complete an education
    category determines number of years of
    discounting
  • Data on enrollment by individuals of any age

39
Categorical Issues in Recent Papers
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Gu and Wong (2009)
  • Population is by sex, single year of age, and by
    category of highest educational level completed
  • Enrollment by sex, single year of age (15-on),
    enrollment grade assumed
  • Christian (2009)
  • School age population (0-34) is by sex, single
    year of age and by individual grade enrolled from
    1994-on
  • Before 1993, population by individual number of
    years of education completed
  • From 1993-on, population by degrees or
    certifications achieved, detail imputed using
    enrollment data
  • Older population (35-80) is by sex, individual
    year of age, and category of highest education
    level attained

40
Christian (2009) Highest Level Attained
Imputation
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Uses historical enrollment data to impute highest
    individual grade level of education attained by
    individual grade level
  • Not enrolled characteristics for those under 18
    imputed from characteristics of those enrolled
  • Highest education level completed is current
    enrolled grade level minus one for those enrolled
    in high school or below

41
Christian (2009) Highest Level Attained
Imputation
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Those over 17 who are in the zero highest level
    of education attained category are assumed to
    remain in that category
  • Highest education level attained by individual
    grade levels for those over 17 who are in
    enrolled in college at the undergraduate level
    imputed from historical trends, then smoothed
    using a quadratic formula
  • Smoothing for those who highest level attained is
    undergraduate college
  • 3-year moving average
  • Smoothed enrollment rates capped at 95

42
Christian (2009) Highest Level Attained
Imputationfor Those in Graduate School
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Those with graduate degrees are ignored
  • Smoothing across age within years using a moving
    average across three consecutive ages
  • Smoothing done a total of 3 times, including
    after bounding and other adjustments

43
ChristianAging Investment in Education
Muskie School of Public Service
Ph.D. Program in Public Policy
  • A 17 year old in order to complete another year
    of education (say the 12th grade) must also age
    by one year to age 18
  • Alternatively, one can posit what the lifetime
    income difference would be for an 18 year old who
    has completed the 12th grade and one who has not

44
Christian - Dropouts Investment in Education
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Drop-outs do return with some probability for
    which there might be data
  • True particularly for college
  • If this is not taken into consideration, as it
    raises future lifetime income, then investment in
    education is larger than it would be otherwise
  • But assuming the maximum number of individuals
    continue on may counteract this effect

45
Christian Imputation Methodology???
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Christian

46
Migration
Muskie School of Public Service
Ph.D. Program in Public Policy
  • J-F Not dealt with
  • Gu and Wang Not dealt with
  • Christian Imputed, but really just a residual

47
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Institutional population not dealt with
  • Military was, but not in updates

48
Illustrativeand Preliminary Numbers
Muskie School of Public Service
Ph.D. Program in Public Policy
49
Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
52
Ph.D. Program in Public Policy
Muskie School of Public Service
53
Yearly Nonmarket IncomePer Capita Equation
Muskie School of Public Service
Ph.D. Program in Public Policy
  • ynmi(s,a,E)14752-hours(s,A,E)/pop(s,A,E)-1300
    senr(s,A,E) cmp(s,A,E) (1 tax)(1-taxam)

54
Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Ph.D. Program in Public Policy
Muskie School of Public Service
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Muskie School of Public Service
Ph.D. Program in Public Policy
61
Muskie School of Public Service
Ph.D. Program in Public Policy
62
Acknowledgements
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Mun Ho and other researchers associated with Dale
    Jorgenson
  • For the labor data base with categorical labor
    compensation, hours, and employees
  • Michael Christian of the University of Wisconsin
  • For 1990-2003 population (and enrollment rates)
    by single year of age and by individual level of
    highest educational level attained (individual
    level of enrollment)
  • Sarah Kopack, my Muskie School 10 hour per week
    Graduate Assistant
  • For pulling through when needed in spite of
    essentially not knowing how to use Excel as of
    early September

63
Christian (2009) results
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Gives a sense of what J-F new estimates might be
  • Total human capital stock
  • 1986 J-F (1992) 286 trillion
  • 1994 Christian (2009) about 425 trillion
  • 2006 Christian is 738 trillion
  • 2006 Christian size comparisons
  • Total is over 50 times GDP
  • Total is over 15 times nonhuman capital stock
  • Market is over 15 times GDP

64
Christian (2009) results
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Market comparisons
  • 2006 Christian 212 trillion
  • 2001 Fraumeni 117 trillion
  • Starts at age 16
  • Individuals never go to school in the future
  • Nonmarket shares for both Christian and J-F hover
    around 70

65
Christian (2009) results
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Gives a sense of what J-F new estimates might be
  • Total human capital stock
  • 1986 J-F (1992) 286 trillion
  • 1994 Christian (2009) about 425 trillion
  • Nonmarket shares for both Christian and J-F hover
    around 70

66
Christian (2009) results
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Rates of growth of total human capital stock
    volumes
  • 1948-1986 J-F 1.6
  • 1994-2006 Christian 1.1
  • Population growth differences
  • Nonhuman capital growing much more rapidly
  • 1948-1986 3.6
  • 1994-2006 2.6

67
Gu and Wong (2009) Results1970-2007
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Rates of growth of volumes
  • Human stock 1.7, nonhuman stock 2.8
  • Human investment .4, nonhuman investment 3.9
  • Contribution to growth in human capital stock
    volume
  • 1.5 due to growth in working-age population
  • .2 is due to rising educational levels
  • After early 80s
  • Education contributed .8
  • Aging reduced stock growth by .5

68
Gu and Wong (2009) Results1970-2007
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Ratio of human capital stock and investment to
    nonhuman capital stock and investment declines
    over time
  • Stock 5.6X in 1970, 4X in 2007
  • Investment 5.6X in 1971, 2X in 2007
  • Human capital stock relative to GDP
  • 16 times GDP in 1970
  • 11 times GDP in 2007

69
Greaker and Liu (2008) Results2006
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Human capital stock is 8 times GDP in 2006
  • Lots of attention paid to comparisons by
    educational level and by gender

70
Initial Steps Towards Human Capital Accounts for
all Countries
Muskie School of Public Service
Ph.D. Program in Public Policy
  • J-F market only
  • Formal education

71
Start With
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Turin joint Fondazione Giovanni Agnelli /OECD
    workshop in November 2008
  • Researcher from Norway, Gang Liu, will be working
    at OECD for 10 months as of Oct. 1 to work on
    human capital accounts
  • Proposal to OECD Committee meeting in June
  • Perhaps a discussion in connection with a
    European Foundation Centres Governing Council
    and Management Committee meeting
  • China Center for Human Capital and Labor Market
    Research project Great news!

72
Longer-term Objectives
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Inputs and outputs
  • Parents, teachers, schools, books and other
    educational materials, social capital
  • Quality adjusted
  • Students (covered)
  • Full nonmarket account
  • Investment in health
  • Educating, nurturing, caring for others
  • Embodied within an experimental set of GDP
    accounts

73
Longer-term ObjectivesOther than Formal Education
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Early childhood education
  • Vocational training
  • On- and off-the-job training
  • Adult education
  • Informal education

74
Longer-term ObjectivesVery Long-term
Muskie School of Public Service
Ph.D. Program in Public Policy
  • Mobility
  • Opportunity

75
Timetable Proposed in Turin
Muskie School of Public Service
Ph.D. Program in Public Policy
  • J-F for comparability across countries
  • J-F for 5 additional countries within 18 months
  • Gather again in Turin
  • J-F market accounts for most, if not all, OECD
    countries within 5 years
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