Employment outcomes in non metropolitan labour markets: individual and regional labour market factors.
Baum, Scott ; Bill, Anthea ; Mitchell, William F. 等
ABSTRACT: There has been a growing awareness that the issue of
labour market disadvantage is substantially greater than merely
considering unemployment and the ability to find a job. There is an
increasing literature that points to the advantages of considering a
broader concept which accounts for those people who are traditionally
unemployed, but also individuals who are under-employed and those who
are sub-unemployed or discouraged workers. Taking multi-level survey and
census data for Australian non-metropolitan regions this paper applies a
broad employability framework to an understanding of labour
underutilisation which presents the risk of underutilisation as a
function of individual characteristics, personal circumstances and the
impact of local labour market characteristics. The analysis finds that
the risk of labour underutilisation in non-metropolitan regions is
associated with a range of individual characteristics and circumstances
together with the characteristics of the local labour market. The
findings indicate that policy designed to address issues of labour
underutilisation needs to focus on both supply and demand-sides of the
labour market in order to be effective.
1. INTRODUCTION
There can be little doubt that questions regarding employment
adequacy have been at the forefront of research that has dealt with
questions of socio-economic disadvantage at a regional level.
Researchers from various academic disciplines as well as practitioners
and policy makers are interested in understanding the drivers of
economic performance and labour market outcomes in nonmetropolitan
regions and have been interested in the ways in which disparities in
labour market outcomes develop between competing regions. Almost
universally the key indicator of labour market outcomes has been the
rate or level of unemployment. Some time ago Clogg (1979, 2) argued that
[i]t is difficult indeed to conceive of another socioeconomic
statistic that has been more influential in public policy debate, more
critical in the shaping of modern political cleavage, or more central to
social scientific theory about the socioeconomic order.
Regional scientists have focused on, among other things,
understanding how unemployment hot spots and cold spots develop, how
regional unemployment disparities persist in the face of changing
economic circumstances and the association between unemployment and
other indicators of socio-economic disadvantage (Brown and Sessions,
1997; Badinger and Url, 2002; Lawson and Dwyer, 2002; Trendle, 2002;
Pes-Bazo et al, 2005; Sunley et al, 2006).
Despite the currency given to unemployment rates in understanding
the labour market and socio-economic health of regions and the people
that live in them it is generally agreed that the assumptions
underpinning traditional conceptions of unemployment are becoming less
valid as the boundaries between work, inadequate work and non-work have
become increasingly fluid (Beck, 1992; Dooley and Catalano, 2003). A
stylised view of labour markets now includes reference to increasing
casualisation of jobs and a rise in part-time employment, a growth in
so-called good jobs and bad jobs, an increase in the reference period
for long-term unemployment and a more complex picture of occupation and
employment mobility that may also include periods of marginal labour
market attachment. In short this increasingly fluid picture is no longer
just a divide between employment and unemployment but is now
increasingly multi-dimensional resulting in other avenues of labour
resource wastage that are not captured by the unemployment rate.
In the face of these changing employment dynamics, the broader
concept of labour underutilisation is seen as increasingly important for
articulating a wide range of employment hardship and disadvantage
(Jensen et al, 1999; Carter, 1982; Clogg, 1979; Hauser, 1974). Defining
labour underutilisation moves beyond the narrow notion of unemployment
to include other types of inadequate employment or other forms of
dislocation from the labour market. It includes individuals who want to
work but are excluded from official unemployment statistics because they
are not actively seeking employment, and it also includes individuals
who are not working full time but would like to work more hours. Within
broader definitions it also may include individuals who are working full
time or part time voluntarily but who receive very low wages (working
poor) and those who are employed in jobs that are classified as low
skilled relative to the individual's qualifications.
While an understanding of trends in labour underutilisation provide
a useful overview of the problem this paper moves beyond this to
concentrate on understanding the broad range of factors that are
associated with the risk of labour underutilisation at the individual
level. There is a significant body of evidence illustrating that certain
social groups and individuals are more vulnerable to underutilisation
(Wooden, 1993; Acoss, 2003; Wilkins, 2004; Flynn, 2003; De Anda, 1994;
De Jong and Madamba, 2001; Soltero, 1996; Zhou, 1993; Nord, 1989). Early
work by Wooden (1993) identified that the individuals characterised as
underutilised were more likely to be female, aged less than 25 years of
age, un-married and to be from a non-English speaking background (NESB).
The likelihood of being underutilised was also higher for those working
in less skilled occupations and for those working in the recreation and
personal services and construction industries. The more recent work by
Wilkins (2004) expands these findings illustrating that for males and
females, part-time underutilisation is higher among younger than older
respondents, respondents who are single and who have low levels of human
capital, although for females part-time underutilisation is also high
for those aged 35 to 44 years and for respondents in couple families
with dependent children. There is also a notable, although insignificant
difference between indigenous males and other males. For full-time
underutilisation, males aged 25 to 34 years were more likely to be
underutilised, while for both males and females there was a higher
incidence of full-time underutilisation for those from a non-English
speaking background. An early US study by Nord (1989) reflects these
findings suggesting that human capital and age are among the important
factors driving the probability of an individual being underutilised.
Jensen and Slack (2000) report that the risk of labour underutilisation
is strongly related to age, with a u-shaped relationship--those aged
18-24 years having highest risk with the risk falling but increases
again among those who are nearing retirement age (55-64)--but is also
higher for females, respondents from an Hispanic or Native American
background, respondents who were unmarried and those with low education.
While much of the research into labour underutilisation have used an
aggregate measure of underutilisation (i.e. underemployment versus
adequately employed) others have identified the important differences
that may arise when different states of labour underutilisation are
considered. Using a disaggregated measure of labour underutilisation
that includes low hours and low wages Flynn (2003) identifies important
gender, age and race factors associated with labour underutilisation. Of
significance are the gendered differences that exist in labour market
outcomes with women more likely to suffer low pay and men more likely to
suffer low hours
Critically, these individual supply-side factors are often taken to
be the main drivers of labour underutilisation and are taken as the
evidence base for policy development. However, equally important are the
range of other contextual factors, including aggregate labour demand
characteristics, which impact on labour market outcomes. Early research
by Nord (1989) specifically considers the importance of broader labour
market demand characteristics on labour underutilisation. By including
the level of service employment in the local area and the labour force
participation rate Nord finds that net of individual characteristics the
risk of labour underutilisation is significantly associated with these
two demand-side characteristics. In the more recent paper by Flynn
(2003), labour market demand variables accounting for the availability
of jobs in services and manufacturing were included, with the findings
suggesting that net of the range of individual level factors the
aggregate labour demand characteristics were important in explaining the
risk of marginal employment outcomes. Using regional proxies for labour
market demand differences Jensen et al. (1999) find an association
between these proxies and transitions into and out of states of
underutilisation, net of individual level characteristics. The use of
regional proxies have been also applied in Australian research with the
recent work by Wilkins (2003) finding that the incidence of full-time
underutilisation is marginally higher in major cities than in other
areas.
Set within this context this paper acknowledges the need to
consider issues of employment adequacy from a wider viewpoint and
extends the analysis of labour market disadvantage in non-metropolitan
Australia by considering the wider notion of labour underutilisation,
rather than simply unemployment. Moreover, encouraged by the need to
provide broader understandings of labour underutilisation, this paper
suggests a holistic model of labour market outcomes within Australian
non-metropolitan labour markets. Specifically the paper uses individual
and aggregate level data and applies multinomial logit models to
consider the association between labour underutilisation and a range of
individual and contextual factors. The analysis allows us to consider
the multilevel nature of labour underutilisation risk and provides a
useful broad framework with which to consider appropriate policy
responses. In what follows we first consider the individual and
contextual issues associated with understanding the risk of labour
underutilisation before discussing in detail the methods and data
adopted for the analysis. Following this we present the findings from
our analysis, before undertaking a discussion of the implications of our
analysis.
2. LABOUR UNDERUTILISATION RISK: INDIVIDUAL AND CONTEXTUAL ISSUES
As a genre of broader labour market research, the study of labour
underutilisation can be understood from a range of conceptual approaches
developed across a number of social science disciplines. Often these
approaches are piecemeal, focusing on narrowly defined drivers and
processes. However, there has been an increasing movement towards
utilising a broader framework focusing on aspects of employability.
While various definitions have been applied, including those narrowly
focused on simple supply side characteristics only, a more holistic
definition of employability would include:
the capability to move into and within labour markets and to
realise potential through sustainable and accessible employment. For the
individual, employability depends on: the knowledge and skills they
possess, and their attitudes; the way personal attributes are presented
in the labour market; the environmental and social context within which
work is sought; and the economic context within which work is sought.
(DHFETE, 2002, p. 7)
A broad employability context therefore includes both supply side
characteristics and demand side characteristics of the labour market.
Heuristically, the broad employability framework resembles the
model shown in Figure 1 with individual labour market outcomes seen as a
function of three interrelated factors including individual and personal
circumstances and external or contextual factors (McQuaid and Lindsay,
2005; see also Galster and Killen, 1995). The first two relate to
individual and personal circumstances and are thought of as labour
supply factors. The third set of factors are considered largely external
to the individual and can be seen as representing a broad range of
contextual factors including those characteristic of labour market
demand (McQuaid, 2006).
[FIGURE 1 OMITTED]
Individual characteristics, both malleable and indelible, that
includes skills and attributes such as basic education, transferable
skills, demographic characteristics, health and well-being, job seeking
skills and an individual's level of adaptability and mobility.
Ascribed and achieved personal characteristics, such as education both
formal and learned job skills, social status, age etc are often included
in models attempting to understand labour market outcomes and impact on
labour underutilisation risk by the effect on the perceived and real
opportunity structure but also though aspirations and preferences. In
particular, the 'operations of the opportunity structure
objectively vary greatly across individuals, depending on their personal
characteristics and how these characteristics are evaluated by the
markets and institutions operative in the individual's place of
residence' (Galster and Killen, 1995, p. 14; see also Little and
Bradley, 2005). We would therefore expect that in addition health and
wellbeing such as long-term disabilities or other illness may affect the
ability to do certain jobs or to be employed at all, as does an
individual's job seeking behaviour and knowledge which may act to
funnel information about known jobs (possibly in connection with an
individuals social networks) and hence have a direct impact on an
individual's opportunity structure and eventual employment
outcomes. Lastly, adaptability and mobility refers to the extent to
which an individual is willing to change/adapt to meet changing labour
market conditions or in some cases be geographically mobile (McQuaid and
Lindsay, 2005).
Personal circumstances include many socio-economic contextual
factors which generally relate to an individual's social, family
and household circumstances. Family background can also impact on an
individual's opportunity structure via the impact of personal
characteristics of the individual, but also through the impact of social
networks and social capital of parents and other intergenerational effects which impact on social capital more generally (Case and Katz,
1991). Importantly, the impact that social networks might have on an
individual's employment outcomes is widely discussed and includes
the impact on perceived and real opportunity structures and individual
aspirations and preferences (Buck, 2001; Elliott, 1999). Following a
'network model' Buck (2001) suggests that an individual's
links into social and interpersonal networks provide critical
information and support that are important to understanding eventual
employment and other social outcomes. In situations where social
networks are not widely developed, and this is often compounded by
residential concentrations in disadvantaged neighbourhoods or
localities, job search including information regrading employment
opportunities are thought to be less effective and hence are associated
with negative individual employment outcomes.
The impact of local or regional resources or local context effects
is most often related to the quality, quantity and diversity of
institutions at a neighbourhood or local level. It refers to 'the
array of markets and institutions that provide the potential means of
social mobility within which an individual may interact, such as labour,
housing and financial markets, schools and the social welfare and
criminal justice systems' (Galster, 2002, p. 6). McQuaid and
Lindsay (2005) refer to these context effects as a range of external
factors that include local labour market demand and enabling support
factors such as local jobs policies. Importantly for our understanding
of labour underutilisation the spatial organisation of metropolitan
labour market opportunities is important. Although researchers such as
Buck (2001) question whether local labour demand can be considered as a
source of local or regional contextual effect, others including Green
(1996), Noble and Smith (1996), Gould and Fieldhouse (1997), Jargosky
(1997), Flynn (2003) and Sunley et al. (2006) all point to its necessary
inclusion in an analysis of individual labour market outcomes.
Significantly 'there is no such thing as a national labour market,
but rather a complex geographical mosaic of overlapping local and
sub-national labour markets' (Sunley et al, 2006, p. 43) which will
have differential effects on individual's opportunity structures
and hence on employment outcomes. In situations where local labour
markets do not provide sufficient quality jobs for all who want to work,
we can expect to see a direct impact on labour underutilisation either
through increases in unemployment or sub-unemployment, or through an
increase in the numbers of people who are working part-time and would
like more hours.
3. METHODS AND DATA
3.1 Methods
The investigation of the impacts and associations of individual
behaviour and outcomes has, as pointed out by Galster (2003), assumed
several methodological guises with the focus often being on the best way
to account for data that is hierarchical or composed of indicators taken
at different levels of measurement. In the case of the current research
we are faced with data measured at the individual level together with
data measured at a broader regional labour market level. In order to
consider the issues raised in this paper we ran a series of multivariate
logit models which take into account the clustering of observations at
the level of the local labour market region. This provides us with a
modelling technique that produces robust outcomes in the face of the two
level structure of our data. Prior to fitting the final set of models
several alternative approaches were considered including the fitting of
multilevel models that specifically take into account the hierarchical
nature of the data (Goldstein, 2003). While this type of approach has
become increasingly popular, it was not used in the final analysis as
initial modelling suggested that, with reference to the data set and
sample we use, no additional benefit is gained by fitting a multilevel
model versus a standard multi-variate model accounting for clustering.
We estimate a range of multi-nominal logit models with individual
respondents placed in one of four categories depending on responses to a
range of questions regarding their employment situation. The four
categories used are:
* Adequately employed-Employed persons who do not fit the
categories below, including those that are working part-time
voluntarily;
* Involuntarily part-time- persons who are working part-time, but
would like to work more hours (under-employed);
* Unemployed; Persons not working but actively looking for work;
and
* Sub-unemployed (Discouraged worker, also known as hidden
unemployed); persons not working and not looking for work, who would
take a job if one became available. The models are built up in several
stages:
* Model 1: individual level predictors, showing differences in
labour underutilisation risk between respondents with different
socio-economic and demographic characteristics;
* Model 2: Model 1 plus the addition of predictors accounting for
personal circumstances, showing the added difference of personal
circumstances on labour underutilisation risk; and
* Model 3: Model 2 plus the addition of local labour market
predictors, showing the added difference of local labour market demand
conditions on labour underutilisation risk.
3.2 Data
The main data used in this paper has come from the Household,
Income and Labour Dynamics in Australia (HILDA) survey and aggregate
level data from the Australian Bureau of Statistics (ABS). The HILDA
survey is a broad social and economic survey conducted annually which
contains information on employment, individual socio-economic
characteristics and household/family characteristics. It also contains
identifiers to allow broad spatial characteristics (such as labour
market or local area available from census data and labour force
surveys) to be considered. This current paper considers the first wave
of the HILDA survey (2001) with subsequent papers considering
longitudinal outcomes. The wave one survey file contains a total of
around 19,000 respondents. A reduced data set is used in this paper
which includes individuals defined as either adequately employed,
involuntarily working part-time, unemployed of discouraged and who are
living outside the metropolitan regions. This reduced data set includes
3813 individuals.
The dependent variable used in this paper is defined above. The
individual level predictor variables are developed with regard to the
availability of data and the framework presented in the previous section
and are similar to those used elsewhere in micro-level studies of
employment outcomes (Caspi et al, 1998; Dujardin, 2006; Le and Miller,
1999; Beggs and Chapman, 1988; Brooks and Volker, 1985; Harris, 1996,
Dex and McCulloch, 1997; Flynn, 2003). We have included the following
independent variables. AGE2544: Age 25 to 44 years (1 if aged 25 to 44,
0 otherwise), AGE4564: Age 45 to 64 years (1 if aged 45 to 64, 0
otherwise), GENDER (1 if female, 0 if male), DEGREE: Education at
university level (1 if yes, 0 otherwise), POST_SECOND: Education beyond
high school but not university (1 if yes, 0 otherwise), MARRIED: Marital
status (1 if currently married, 0 otherwise), ATSI: Indigenous
Australian background (1 if ATSI, 0 otherwise), DISABLE: Self reported
disability or long term health issue (1 if have disability, 0
otherwise), ENG_PROF: Self reported English proficiency (1 if poor very/
poor English, 0 otherwise) and SINGLE: Single parent (1 if single
parent, 0 otherwise).
Two predictor variables were included to account for the impact of
family background and personal circumstances. One, PAR_UN measured the
impact of parental employment (employed role model/parent in childhood-
1 if no employed adult role model/parent, 0 otherwise), while the other,
PAR_OS, accounts for the ethnic background of parents (parent country of
birth- 1 if one or both parents born in NESB country, 0 otherwise). In
addition to family background, the HILDA data allows us to include
proxies for the impact of social networks on labour underutilisation.
While we experimented with a range of possible measures we include only
one in the analysis presented in this paper. An index, SOC_NET,
accounting for an individual's social networks is included to
account for the potential impact that social networks may play in labour
underutilisation and was developed using responses to questions relating
to the extent to which individuals had contact with friends and
colleagues. (1)
We model the effects of regional labour markets by considering
Local Government Areas, with data available from the Australian Bureau
of Statistics 2001 and 1991 census data. Six variables are included in
the analysis. Employment growth is considered to be an important
determinant of the robustness of labour demand. Two components of
employment growth are included in the model. Using shift-share analysis
(See Mitchell and Carlson, 2003a and 2003b) to decompose regional
employment growth into industry mix employment growth effects (LGA_IM)
and region-specific employment growth effects (LGA_RS). The LGA_IM
variable captures the share of regional employment growth that can be
attributed to the local industry mix and reflects the degree to which an
industry is specialising in industries that are either fast growing or
slow growing nationally. A region that has a lot of industries that are
fast growing will have a positive LGA_IM whereas a region with a
concentration of industries that are slow-growing (or declining)
nationally will have a negative LGA_IM. LGA_RS captures the growth or
decline in industry employment due to local factors. Several studies
have indicated the impact that significant shares of manufacturing
employment may have on regional unemployment. Gregory and Hunter (1995)
have documented the very significant and disproportionate impact of
deindustrialisation on employment population ratios for males in low
socio-economic status urban areas. We include the percentage share of
employment in manufacturing within the local government area (LGA_MAN)
to account for this impact. We also include a measure of the share of
employment within the service sector (LGA_SERV) to account for the
likely impact of labour demand in this sector, especially on part-time
employment. The percentage of people with certificate or tertiary
education is included as a measure of the region's aggregate human
capital (LGA_EDUC) and has been shown to impact on regional labour
market outcomes (Glaeser and Shapiro, 2001). While the impact may vary
it might be hypothesised that a region with highly skilled labour force
may have more success in attracting firms thereby providing increased
regional labour demand. The final regional variable included is the
level of population change in the local government area (LGA_PC) which
accounts for changing population dynamics on potential labour market
outcomes.
4. LABOUR UNDERUTILISATION IN NON-METROPOLITAN LABOUR MARKETS
To explore the associations between the range of predictors and
labour underutilisation in a meaningful way we fit a series of
multinomial logit models using the four categories of employment
outcome. We build models in three stages as described in the section
above. The results of the three separate models are presented in Tables
1 to 3. The tables contain the regression coefficient, robust Z-scores
and the relative risk ratio for each category of labour underutilisation
relative to adequate employment. In all cases values on the relative
risk ratio above one indicate that higher values of the explanatory
variable increase the predicted probability of being in the particular
category of labour underutilisation, compared to being adequately
employed. Coefficients less than one indicate the opposite.
4.1 Individual Level Predictor Model
We begin by modelling only the individual level predictors. The
first subsection of Table 1 report the result for the relative risk of
being involuntarily employed part-time versus adequately employed. An
analysis of Table 1 reveals that the coefficients on the age variables
are significant at the 1 percent level. Older cohorts are significantly
less likely to be involuntarily part time compared with being adequately
employed. The coefficients of the two education variables are
significant and largely reflect existing studies. Having a higher degree
or above, or some form of post-secondary education is associated with a
reduced risk of being employed involuntarily part-time. Importantly the
significant gender variable suggests that females are more likely to be
classified as involuntary part-time and similarly being a single parent
has an increased relative risk. Being currently married reduces the
relative risk of being involuntarily employed part-time. The variable
indicating indigenous background (ATSI) is included so as to account for
the impact of racial disadvantage associated with employment outcomes.
The ATSI variable is mildly significant and suggests that the risk of
involuntary part-time employment is higher for individuals from an
indigenous background. Having a disability typically restricts the job
opportunities available to an individual and consequently the
coefficient on the variable accounting for the presence of a long-term
disability is positive and significant.
The second category of labour underutilisation is unemployed versus
adequately employed, with the outcomes for this category reported in the
second subsection of Table 1. Largely the significant variables reflect
the vast amount of research exists which purports to understand
supply--side factors that predict unemployment. The two age variables
are significantly related to the relative risk of unemployment with
negative coefficients in both cases. The education coefficients are also
negatively associated with unemployment illustrating the expected
inverse relationship between negative labour market outcomes and
increasing levels of education. The ATSI variable is highly significant
and suggests that the risk of unemployment is a significant issue for
individuals from an indigenous background. The variable
'disability' had the expected significant positive association
with unemployment. The two variables currently married and single parent
are both significant and not surprisingly reflect opposite impacts.
Being currently married is associated with a reduced relative risk of
being unemployed, while being a single parent is associated with an
increased relative risk of being unemployed. The results on both of
these variables concur with previous studies of unemployment risk.
The final subsection of Table 1 presents the results for the final
category of labour underutilisation, sub-unemployed or discouraged
workers. The two age variables are significantly related to the relative
risk of sub-unemployment with negative coefficients in both cases. The
two variables accounting for education are again significant reflecting
the negative association between human capital and the risk of
underemployment generally. The gender variable has a significant
coefficient and indicates that like the category of involuntary
part-time workers, females are more likely to be sub-unemployed or a
discouraged worker. The variable ATSI is positively associated with the
relative risk of sub-unemployment. As with the previous categories of
labour underutilisation the variable accounting for disability is
positive and significant. As with the variables associated with
unemployment the 2 variables currently married and single parent are
both significant and reflect opposite impacts. Being currently married
is associated with a reduced relative risk of being sub-unemployed,
while being a single parent is associated with an increased relative
risk of being sub-unemployed.
4.2 Individual and Personal Circumstances Predictor Model
Table 2 presents the outcomes of the multinomial logit model
including the individual and personal circumstances predictors. Adding
the predictors accounting for aspects of personal circumstances changes
the individual level predictor variables only marginally.
The first sub-section of Table 2 contains the results for the
sub-category involuntary part-time versus adequately employed. Only one
of the personal circumstances predictors was significant. The variable
'parents born overseas' is significant at the 5 percent level
and suggests that respondents whose parents were born in an non-English
speaking country were at a higher risk of being involuntarily employed
part-time.
The second sub-section of Table 2 presents the results for the
category unemployment versus adequately employed. All three variables
accounting for personal circumstances are significant. The variable
PAR_UN accounts for the presence of positive work role models in a
respondent's childhood household. The positive coefficient on this
variable indicates that the presence of positive role models is
important to labour market outcomes and situations where such role
models are absent are associated with a higher relative risk of
unemployment. In line with an increasing amount of research looking at
the role of personal contacts and labour market outcomes the social
networks variable is negative suggesting that the often hypothesised
association between unemployment and weak social networks is supported
in this case.
The results for the final sub-category of labour underutilisation
are presented in the bottom sub-section of Table 2. For the category of
sub-unemployed or discouraged worker the signs of the coefficients are
similar to those for the previous unemployment category, with the
addition of a significant outcome on the predictor accounting for
parental birthplace. The positive coefficient on the variable accounting
for having parents in paid employment during childhood indicates that
the presence of positive role models is also important for understanding
the relative risk of being sub-unemployed or a discouraged worker. The
significant coefficient on the variable accounting for parental country
of birth indicates that having parents born in a non-English speaking
country is associated with an increased relative risk of being
sub-unemployed or a discouraged worker. Finally the social networks
variable is negative suggesting that the relative risk of being
sub-unemployed or a discouraged worker is higher in the presence of
weaker social networks.
4.3 Individual, Personal Circumstances and Local Labour Market
Predictor Model
The final multinomial logit model includes all three levels of
predictors, with the results reported in Table 3. The addition of the
local labour market predictors only result in a minor change in the
magnitude of the individual level and personal circumstances level
predictors. The direction of the association remains unchanged.
The results for the category involuntary part-time employment are
presented in the first sub-section on the left of Table 3. Only one of
the regional labour market predictors is significant. The predictor
LGASERV is positive and weakly significant at the 10 percent level
suggesting that regional labour markets with greater shares of
employment in service industries will increase the individual risk of
being employed part-time involuntarily.
The results for the second category labour underutilisation
(unemployment versus adequately employed) are presented in the second
sub-section on the right of Table 3. Three of the regional labour market
predictors are significant in this case. There is a significant (at the
10 percent level) and positive association between the share of
manufacturing employment in a regional labour market and an increased
risk of individual unemployment. Interestingly, there is a positive
association between the level of population growth in a region and the
risk of unemployment. Finally the predictor accounting for the regional
shift effect is significant and has a negative coefficient suggesting
that regions which are encountering positive regional growth effects act
to reduce the relative-risk of unemployment.
Finally the results for the third category of labour
underutilisation, sub-unemployed or discouraged workers, are presented
in the bottom sub-section of Table 3. As with unemployment there is a
significant association between the level of population growth in a
region and the risk of sub-unemployment. The positive coefficient
suggests that the risk of being sub-unemployed is greater in regions
with higher rates of population growth. The predictor accounting for the
regional shift effect is significant and has a negative coefficient
suggesting that regions which are encountering positive regional growth
effects act to reduce the relative-risk of sub-unemployment.
5. DISCUSSION AND CONCLUSION
This paper sets out an analysis of labour underutilisation in
Australian non-metropolitan labour markets using a combination of data
from the first wave of the Household, Income and Labour Dynamics in
Australia (HILDA) survey and aggregate employment data from the 2001
Australian Census of Population and Housing. Acknowledging that there
exists a range of frameworks within which to place issues surrounding
labour underutilisation, we cast the research conducted in this paper in
terms of a model that considers labour underutilisation risk as a
function of broadly defined employability concepts. The employability
framework used in this paper follows earlier work by McQuaid and Lindsay
(2005) and others and considers employability to be:
the capability to move into and within labour markets and to
realise potential through sustainable and accessible employment. For the
individual, employability depends on: the knowledge and skills they
possess, and their attitudes; the way personal attributes are presented
in the labour market; the environmental and social context within which
work is sought; and the economic context within which work is sought.
(DHFETE, 2002, p. 7)
In this case labour underutilisation, defined here as involuntary
part-time employment, unemployment and sub-unemployment or discouraged
workers, is a function of a range of individual level characteristics
together with contextual effects that include personal circumstances
such as social networks and family background and the impacts of
regional labour market demand characteristics.
It is not surprising, given the established literature dealing with
labour underutilisation to find that individual characteristics such as
human capital, gender, age and race are implicated in the risk of labour
underutilisation. Being in an older age cohort, having high formal
qualifications or currently being married universally reduces the risk
of labour underutilisation. Against this being a single parent, having a
disability or being from an Aboriginal or Torres Strait Islander (ATSI)
background acts to increase the risk across all categories of labour
underutilisation. Reflecting the gendered nature of labour market
engagement, being female is associated with an increased risk of being
employed involuntarily part-time and being sub-unemployed or a
discouraged worker.
While the inclusion of the individual predictors in the models
provides validation for existing research, it is the variables
accounting for personal circumstances and regional labour market context
that are perhaps the most interesting. Researchers such as Wilson (1987)
have persuasively argued that household and family dynamics are
important to understanding disadvantage in labour markets net of other
factors. Social capital, the role models and social/employment networks
imbued by parents impact on the life chances of children and these
impacts are likely to have significant impact even into adulthood (Caspi
et al, 1998; McClelland et al, 1998; Pech and McCoull, 1999). Parental
employment engagement background was a significant influence on
unemployment and sub-unemployment risk, while parental country of birth
impacted on the risk of being involuntarily working part-time and being
sub-unemployed.
Apart from issues surrounding intergenerational transfers of
disadvantage, captured by whether the respondent's parents were
working, our model suggests that individuals who have narrower social
networks have a higher risk of some forms of labour underutilisation
than those with wider social networks. There has been significant work
on the impact that social networks have on employment outcomes and our
findings support the suggestion that 'social isolation impedes
individual success in the labour market because it denies residents
informal job contacts that are critical not only for finding jobs but
good jobs that promote prolonged labour force attachment' (Elliott,
1999, p. 200). In particular the social network variable exerted a
significant impact on the risk of being unemployed or sub-unemployed.
The final level at which our framework acts on individual labour
market outcomes is through the impact of regional labour market
processes. Although much existing research tends to ignore the impact of
these demand-side factors, focusing only on the narrower supply-side
influences, we have illustrated the important impact that aggregate
demand variables may have. It is clear that those regional labour
markets which have job deficiencies result in an increase in the risk of
negative labour market outcomes, in our case labour underutilisation, at
the individual level net of other characteristics. This is a similar
message to that presented by researchers including Green and Owen
(1998), Turok and Edge (1999), Turok and Webster (1998) and Sunley et
al. (2006). Deficiencies in jobs may be measured in a number of ways and
the variables included in this paper suggested that while the general
strength of the local labour market is important (i.e. as suggested by
the regional shift predictor), it is also important to consider the
types of jobs available. Hence the predictor accounting for the regional
shift effect suggests that local and regional conditions driving jobs
growth (i.e. local jobs growth program) are important net of individual
level employability as are the sectors in which jobs are found. Those
regions with old economy sectors which are often characterised by
relatively large shares of manufacturing have often been identified as
having potentially weaker labour markets, while some regions that are
characterised by significant service sector jobs may have their own set
of labour market problems. The upshot is that these regional labour
market conditions act to ration the supply of adequate employment and
interact with individual employability in negative ways. Finally, an
important aspect of regional development, population change, was seen as
having an impact on the relative risk of both unemployment and
sub-unemployment. Although further modelling is required using
longitudinal data, there does appear to be some support for arguments
that link regional population growth to potential negative labour market
outcomes as population in-migration outstrips jobs growth and less
skills or employable workers get bumped down (Bill and Mitchell, 2006).
Returning to consider the broad employability framework set out in
the beginning of this paper, it would appear that given the available
data and the sample we have utilised a broad understanding of labour
underutilisation that takes into account both individual level,
supply-side factors and more aggregate contextual factors is indeed a
useful approach. Importantly the approach provides a useful framework
for considering policy, especially as it relates to attempts to improve
employment outcomes across groups in society and across spatially
distinct communities. In several industrialised countries the emphasis
of government policy on combating labour market disadvantage is to
improve personal employment prospects by introducing schemes which focus
on the employment assets of the individual job seeker that are
increasingly neo-liberal in their approach. However, improving the
employability of individuals is, in itself insufficient and to a large
extent simply reshuffles the existing queue for the available jobs. A
more sustainable and successful approach is likely to include also
improving the available job opportunities and considering other
contextual effects. This is clearly what the broader employability
framework aims to achieve. Within Australia and elsewhere labour market
policies which ignore the need for this broader approach remain a
significant impediment to ensuring that available workers are employed
in the most efficient manner. Until these deficiencies are properly
addressed the wasted human resources that are reflected in joblessness
and more broadly labour underutilisation will remain a significant
social problem.
ACKNOWLEDGEMENTS
The research was funded by an Australian Research Council discovery
Grant 'Spatially Integrated Social Science Analysis: Australia at
the New Millennium' DP0208102. This paper uses unconfidentialised
unit record file from the Household, Income and Labour Dynamics in
Australia (HILDA) survey. The HILDA Project was initiated and is funded
by the Commonwealth Department of Family and Community Services (FaCS)
and is managed by the Melbourne Institute of Applied Economic and Social
Research (MIAESR). The findings and views reported in this paper,
however are those of the authors and should not be attributed to either
FaCS or the MIAESR.
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Scott Baum
Associate Professor, Urban Research Program, Griffith School of
Environment, Griffith
University, Nathan QLD 4111
Anthea Bill
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of Newcastle,
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William F. Mitchell
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(1) The social network index was constructed by considering the
main components from a PCA of questions coded on a five point Likert
scale. The questions included in the index are: People don't come
to visit me as often as I would like; I often need help from other
people but can't get it; I don't have anyone I can confide in;
I have no one to lean on in times of trouble; I often feel very lonely.
Table 1. Multinomial Logit Results, Individual Level Predictors
and Disaggregated Labour Underutilisation
Involuntary part-time
[beta] Robust z scores Exp [beta]
AGE2544 -0.491 ** 3.32 0.612
AGE4564 -0.769 ** 4.60 0.464
GENDER 0.825 ** 6.79 2.282
ATSI 0.579 + 1.78 1.784
ENG_PROF 0.757 0.64 2.132
DISABLE 0.467 ** 3.12 1.596
MARRIED -0.607 ** 4.91 0.545
SINGLE 0.606 ** 3.47 1.833
DEGREE -0.716 ** 3.17 0.489
POST_SECOND -0.366 ** 2.60 0.693
CONSTANT -1.641
Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.399 * 2.37 0.671
AGE4564 -0.407 * 2.14 0.666
GENDER -0.009 0.07 0.991
ATSI 1.209 ** 3.48 3.352
ENG_PROF 1.923 1.56 6.844
DISABLE 0.765 ** 5.42 2.148
MARRIED -1.435 ** 8.25 0.238
SINGLE 0.649 ** 3.58 1.914
DEGREE -1.382 ** 3.98 0.251
POST_SECOND -0.492 ** 3.00 0.611
CONSTANT -1.440
Sub-Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.847 ** (5.34) 0.429
AGE4564 -1.006 ** (5.91) 0.366
GENDER 0.943 ** (7.60) 2.567
ATSI 1.211 ** (4.22) 3.356
ENG_PROF 0.422 (0.27) 1.525
DISABLE 1.029 ** (7.08) 2.798
MARRIED -0.477 ** (3.47) 0.620
SINGLE 0.877 ** (5.75) 2.403
DEGREE -1.376 ** (6.54) 0.253
POST_SECOND -0.708 ** (4.57) 0.493
CONSTANT -1.388
Notes: Log pseudo-likelihood = -3087.038; + significant at 10%;
* significant at 5%; ** significant at 1%
Table 2. Multinomial Logit Results, Individual Level Predictors,
Personal Circumstances and Disaggregated Labour Underutilisation
Involuntary part-time
[beta] Robust z scores Exp [beta]
AGE2544 -0.379 * 2.38 0.685
AGE4564 -0.655 ** 3.66 0.520
GENDER 0.840 ** 6.95 2.316
ATSI 0.629 + 1.94 1.875
ENG_PROF 0.326 0.27 1.386
DISABLE 0.505 ** 3.32 1.657
MARRIED -0.540 ** 4.29 0.583
SINGLE 0.680 ** 3.77 1.973
DEGREE -0.688 ** 3.05 0.502
POST_SECOND -0.349 ** 2.48 0.705
SOC-NET -0.023 0.40 0.977
PAR-OS 0.462 ** 3.16 1.588
PAR-UN 0.129 0.46 1.137
CONSTANT -1.884
Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.444 * 2.51 0.641
AGE4564 -0.414 * 2.10 0.661
GENDER 0.024 0.18 1.024
ATSI 1.127 ** 3.14 3.087
ENG_PROF 1.874 1.59 6.512
DISABLE 0.736 ** 5.17 2.088
MARRIED -1.415 ** 7.83 0.243
SINGLE 0.592 ** 3.20 1.808
DEGREE -1.369 ** 3.95 0.254
POST_SECOND -0.502 ** 3.06 0.605
SOC-NET -0.185 ** 2.93 0.831
PAR-OS -0.013 0.06 0.988
PAR-UN 0.557 * 2.14 1.746
CONSTANT -1.466
Sub-Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.775 ** 4.51 0.461
AGE4564 -0.911 ** 5.07 0.402
GENDER 0.981 ** 7.59 2.668
ATSI 1.217 ** 4.26 3.376
ENG_PROF -0.023 0.02 0.977
DISABLE 1.051 ** 7.12 2.862
MARRIED -0.388 ** 2.81 0.678
SINGLE 0.926 ** 5.91 2.526
DEGREE -1.338 ** 6.43 0.262
POST_SECOND -0.695 ** 4.52 0.499
SOC-NET -0.150 ** 2.94 0.860
PAR-OS 0.464 ** 2.82 1.591
PAR-UN 0.434 * 2.04 1.543
CONSTANT -1.648
Notes: Log pseudo-likelihood = -3068.8651; + significant at 10%;
* significant at 5%; ** significant at 1%
Table 3. Multinomial Logit Results, Individual Level Predictors,
Personal Circumstances, Local labour Market Effects and Disaggregated
Labour Underutilisation
Involuntary part-time
[beta] Robust z scores Exp [beta]
AGE2544 -0.428 ** 2.60 0.652
AGE4564 -0.675 ** 3.70 0.509
GENDER 0.837 ** 6.93 2.308
ATSI 0.684 * 2.12 1.982
ENG_PROF 0.364 0.31 1.439
DISABLE 0.501 ** 3.25 1.650
MARRIED -0.502 ** 4.09 0.606
SINGLE 0.667 ** 3.63 1.949
DEGREE -0.755 ** 3.32 0.470
POST_SECOND -0.401 ** 2.83 0.669
SOC_NET -0.019 0.33 0.981
PAR_OS 0.465 ** 3.13 1.592
PAR_UN 0.161 0.58 1.174
LGA_MAN -0.003 0.22 0.997
LGA_SERV 0.054 + 1.78 1.056
LGA_EDUC 0.008 0.34 1.008
LGA_PC 0.027 1.45 1.027
LGA_IM -2.537 0.90 0.079
LGA_RS -2.162 1.59 0.115
CONSTANT -3.504 ** 4.20
Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.500 ** 2.77 0.606
AGE4564 -0.446 * 2.26 0.640
GENDER 0.013 0.10 1.013
ATSI 1.192 ** 3.26 3.294
ENG_PROF 1.969 + 1.70 7.161
DISABLE 0.734 ** 5.19 2.084
MARRIED -1.405 ** 7.61 0.245
SINGLE 0.552 ** 2.88 1.736
DEGREE -1.388 ** 3.94 0.250
POST_SECOND -0.540 ** 3.27 0.583
SOC_NET -0.175 ** 2.71 0.840
PAR_OS -0.055 0.27 0.947
PAR_UN 0.544 * 2.02 1.723
LGA_MAN 0.034 + 1.69 1.035
LGA_SERV 0.047 1.37 1.048
LGA_EDUC -0.032 1.07 0.969
LGA_PC 0.049 ** 2.69 1.050
LGA_IM -4.202 1.12 0.015
LGA_RS -4.229 * 2.35 0.015
CONSTANT -2.623 * 2.44
Sub-Unemployed
[beta] Robust z scores Exp [beta]
AGE2544 -0.841 ** 4.69 0.431
AGE4564 -0.944 ** 5.12 0.389
GENDER 0.979 ** 7.58 2.663
ATSI 1.282 ** 4.39 3.605
ENG_PROF 0.089 0.06 1.093
DISABLE 1.038 ** 7.12 2.823
MARRIED -0.362 * 2.57 0.696
SINGLE 0.911 ** 5.75 2.486
DEGREE -1.377 ** 6.44 0.252
POST_SECOND -0.740 ** 4.91 0.477
SOC_NET -0.144 ** 2.72 0.865
PAR_OS 0.441 ** 2.68 1.554
PAR_UN 0.453 * 2.14 1.573
LGA_MAN 0.004 0.21 1.004
LGA_SERV 0.008 0.29 1.009
LGA_EDUC -0.007 0.22 0.993
LGA_PC 0.050 ** 3.10 1.052
LGA_IM -2.997 0.94 0.050
LGA_RS -3.857 * 2.48 0.021
CONSTANT -2.309 * 2.42
Notes: Log pseudo-likelihood = -3042.1562; + significant at 10%;
* significant at 5%; ** significant at 1%