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Is Casual Employment a Bridge or a Trap

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Title: Is Casual Employment a Bridge or a Trap


1
Is Casual Employment a Bridge or a Trap?
  • Jenny Chalmers,
  • National Drug and Alcohol Research Centre
  • University of New South Wales
  • C. Jeffrey Waddoups,
  • Department of Economics
  • University of Nevada Las Vegas

2
Definition of Casual Employment
  • Casual Work form of employment in which workers
    do not have access to annual leave, paid sick
    leave, paid public holidays, notice of dismissal,
    and redundancy pay
  • ABS Definition (used in HILDA and our study)
    employees without access to either paid holiday
    or paid sick leave.

3
Background
  • The incidence of casual employment has increased
    from 16.0 percent in 1985 to 26.9 percent in 2006
  • Benefits and costs associated with increased
    incidence of casual employment .
  • Reduced opportunity for meaningful on-the-job
    human capital development
  • Reduced opportunity for career advancement
  • Flexibility in the labour market, a potential
    benefit in a dynamic market economy.
  • Flexibility for workers to meet household
    obligations

4
Background
  • The debate is not unique to Australia. As
    nations labour markets liberalise, questions
    about the trade-offs between flexibility and job
    quality naturally arise.
  • For example, Farber (1999) in the U.S., Natti
    (1993) in the Nordic countries, Booth, Fancesconi
    and Frank (2002) on the UK, Chalmers and Kalb
    (2001) and Gaston and Timcke (1999), Productivity
    Commission (2006) in Australia.

5
Research Questions
  • We use HILDA to address nature and determinants
    of mobility from casual employment
  • Does time spent in casual employment increase
    (bridge) or decrease (trap) the likelihood of
    transition to permanent employment?
  • Although casual employment is too complex to be
    characterised as wholly a bridge or a trap,
    we can still assess aspects of mobility that are
    consistent with the two metaphors.

6
If Casual Employment is a Bridge, then one
would expect to see
  • Job training
  • Development of work discipline
  • Development of networks to enhance mobility to
    permanent job
  • The above should result in increasing probability
    of exit to permanent employment as tenure in
    casual employment increases.

7
Public Policy If Bridge
  • If casual employment takes on the trappings of a
    bridge, having relatively large numbers of jobs
    without standard entitlements or protections is
    not particularly costly to society, suggesting
    policy intervention less likely to be warranted.

8
If Casual Employment is a Trap, then one would
expect to see
  • Involuntary employment in sub-standard jobs
  • Perhaps development of negative human
    capital(scarring)
  • Little or no relevant training
  • Negative signals about potential productivity to
    employers offering permanent jobs
  • The above should result in reduced probability of
    transition to permanent jobs with increased
    tenure in casual employment

9
Public Policy if Trap
  • If casual employment acts like a trap, having
    relatively large numbers of casual jobs would be
    relatively costly to society, which indicates
    that policy intervention to limit casual
    employment is more attractive.

10
Description of the Data
  • HILDA
  • Four Waves 2001 2004
  • Employees (not self-employed) in all four years
  • Ages 15- 64 in 2001.
  • Contain observations on all relevant variables
  • Two Samples
  • Sample One observe those who report casual
    employment in 2001.
  • Sample Two observe those that commence casual
    spell in 2002.

11
Sample One Casual in 2001
  • Sample one
  • Casual in 2001 (left truncation, we do not know
    how long workers were in casual employment before
    2001).
  • Count the number of periods in a casual job
    starting in 2001.
  • Example if casual in 2001, casual in 2002, then
    permanent in 2003, it implies two periods (years)
    of casual
  • Reporting once per year implies unobserved
    transitions could have occurred

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Sample Two Started Casual Spell in 2002
  • Sample Two
  • Started casual spell in 2002.
  • Originate from non-employment or permanent
  • No left truncation, but fewer years to observe
    mobility

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Accelerated Failure Time (AFT) Model
ln (ti) Xiß ei
  • tduration in casual spell
  • Xvector of covariates
  • ßa vector of parameters
  • ea vector of error terms
  • Error terms assumed to be distributed as a
    Weibull and log-logistic

23
Weibull and Log-Logistic
  • Weibull restricts hazard (conditional
    probability of exit from casual) to be
    monotonically increasing or decreasing
  • Log-Logistic Allows for increasing then
    decreasing hazard (inverted U-shaped)

24
Shape of Hazard Bridge or Trap
  • An increasing hazard suggests that probability of
    exit at time t, given survival until time t, is
    increasing (Bridge)
  • A decreasing hazard suggests that probability of
    exit at time t, given survival until time t, is
    decreasing (Trap)

25
Covariates in an AFT Model
  • Model controls for variables generally thought to
    affect labour market outcomes (human capital,
    etc).
  • Covariates essentially shift the hazard, and
    either
  • accelerate the time to failure if a negative
    value (a shorter duration in casual)
  • or
  • Decelerate the time to failure if a positive
    value (a longer duration in casual)

26
Estimated Models
  • STATAs STREG used to estimate Models
  • Predicted Durations
  • Sample 1 Med3.4 years, Mean5.1years
  • Sample 2 Med2.9 years, Mean4.0 years

27
Parameter Estimates
  • Statistically Significant Estimates,
  • Tenure with current employer ()
  • Part-Time ()
  • Female (, Weibull sample 2)
  • Children ages 0-4 (-, Sample 2)
  • Married (-, sample 1)
  • Large Employer (-, Weibull sample 1)
  • To casual from permanent (-, only relevant to
    Sample 2)
  • Model Specific parameters (Weibull p,
    Log-logistic gamma)

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Other Results
  • Interacted a dummy variable controlling for
    female with tenure, part-time, married, and
    children dummies.
  • Only statistically sig. result (Sample 1,
    children ages 0-4, sign was negative).

33
Which is Preferred, Weibull or Log-Logistic?
  • Akaike Information Criterion
  • AIC -2(Log-likelihood) 2(kc),
  • knumber of covariates
  • cnumber of model-specific paramters
  • the model with the lower value of the AIC is
    preferred model.

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Conclusions
  • Duration in casual jobs explained by
    circumstances of present employment (tenure with
    current employer, part-time)
  • Do not observe whether this is a sign of relative
    comfort with casual employment, or involuntary
    lack of mobility
  • Duration also explained by household
    circumstances
  • Marriage and young children linked with a
    decrease in duration
  • No apparent systematic use of casual employment
    for flexibility in attending to household duties.
    In fact household duties correlated with
    permanent employment.

36
Conclusions
  • Roughly 40 percent of casuals in 2001 who
    reported employment all four years did not make a
    transition to permanent work.
  • Over 50 percent of casuals who commenced a casual
    spell in 2002 still reported casual employment in
    2004.
  • Roughly 60 percent (sample 1)and 50 percent
    (sample 2) do make the transition.
  • It is still difficult to determine whether a
    casual spell facilitated, or delayed, such a
    transition.

37
Conclusions
  • Inverted U-shaped hazard suggests that the length
    of time in casual decreases probability of exit.
  • Question about whether this is because of
    trapping or unobserved heterogeneity.
  • On its face, casual employment would seem too
    complex to characterize as wholly a bridge or a
    trap, and our mixed results confirm such
    intuition.
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