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The impact of job loss on family dissolution

The impact of job loss on family dissolution. Silvia Mendolia & Denise Doiron UNSW - School of Economics. Australian Conference of Economists 1 October 2008. Objectives of the paper. To examine the impact of job loss on the probability of divorce

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The impact of job loss on family dissolution

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  1. The impact of job loss on family dissolution Silvia Mendolia & Denise DoironUNSW - School of Economics Australian Conference of Economists 1 October 2008

  2. Objectives of the paper • To examine the impact of job loss on the probability of divorce • To further our understanding of possible transmission channels: • Financial stress from the negative income shock • Psychological stress • Additional information on individual traits and revision of expectations on future value of match • Policy implications: Policies aimed at reducing the earnings’ shock from job losses may alleviate the former problem but they will be less effective if the latter impact is the main one

  3. Motivation and Background • Most of the previous literature focuses on costs of job displacements in terms of future employment probabilities and lost earnings. In these papers, family composition is ignored or treated as exogenous • Some of these papers distinguish different types of job losses (see Arulampalam, EJ 2001) and focus on the impact of layoffs vs. plant closure (see Gibbons and Katz, 1991 and Stevens, JLE 1997) • Recently, a few studies have taken a broader view of the impacts of job loss • Examples: Ercolani and Jenkins (1999) and Stephens (2004) study adjustments of wives’ labour supply; Clark and Oswald (1994) and Sullivan and von Wachter (2006) look at impacts on well-being and health • Only a few studies have looked at possible impacts on the probability of divorce: Jensen and Smith (1990), Kraft (2001), Charles and Stephens (2004), Eliason (2004) and Blekesaune (2008). Results to date are inconsistent

  4. Economic models of divorce • Mostly derived from the pioneering work of Becker (1973, 1974) • The family is an expected utility maximizing unit • Two general causes for separation: • Meeting of a new partner with expected joint utility greater than the current match • “Surprises” may change initial expectations about the partner’s characteristics (see Weis and Willis, 1997) or alter the value of the partnership.

  5. The role of job loss in the decision to separate or divorce • Job losses can create immediate earning shocks that reduce the relative benefits of marriage/cohabitation. This generally relies on the job loss being unexpected • Job losses may impose pecuniary and non-pecuniary stress on the relationship • Job losses may also act as signals of the future monetary and non-monetary benefits of the match • One would not expect such effects in the case of exogenous job losses as exogenous displacements contain no information on the quality of the partner

  6. Jensen and Smith (JPE, 1990) use a Danish data set and show that the probability of divorce increases following a man’s job loss (contemporaneous effect). Charles and Stephens (JLE, 2004) use the PSID and show an increase in the probability of divorce following a husband’s job loss from layoffs (not from plant closure). This suggests a significant signalling effect. Eliason (2004) uses a Swedish panel and finds a significant negative impact on family stability caused by displacements due to a factory closure. This suggests a strong impact from the earnings’ shock. Kraft (Kyklos, 2001) uses the GSOEP 1987–1996 and show that a longer spell of husband’s unemployment increases the risk of separation. Blekesaune (2008) uses the BHPS and shows that the probability of family dissolution increases after a man’s job loss, through a significant decrease in partner’s financial satisfaction Results to date are few and contradictory regarding the transmission’s channels of the shock Previous literature on job loss and divorce

  7. Key points of this paper • Analysis of the causal effect of job loss on family dissolution, focusing on involuntary husband’s job displacement • Information on the reason for ending the employment spell is used, in order to control for possible job loss endogeneity • Analysis of multiple transmission channels, including the income shock, the psychological effect and the signalling role

  8. Data – British Household Panel Survey • The BHPS: • A nationally representative sample of the UK population, recruited mostly in 1991 • An indefinite life panel survey; the longitudinal sample consists of members of the original households and their natural descendants • A rich source of information on demographic and household composition, employment and family characteristics • The family history data set: combination of retrospective histories and panel information. • We focus on couples in which men are aged 16-65 and in paid employment • Our analysis sample: 6,100 couples (40,662 observations)

  9. Variable definition: divorce and marriage • This information is derived from the family history dataset • Marriage includes cohabitation • If the two partners cohabitate before marriage, we consider the cohabitation starting date as the union starting date • Divorce includes separation • If there is a separation before the divorce, the date of separation is considered as the union end date • If a union ends, the partners are subsequently dropped from the analysis sample • We include marriages starting during the survey and second and later marriages • A sensitivity analysis is conducted in order to compare stock and flow samples including partnerships that began before/after the start of the survey (1991)

  10. Variable definition: job loss • This information is derived from the work history dataset and the single waves job history file • In the first version of our model, we use one single job loss variable, including dismissals, redundancies and temporary job endings • Then, in order to investigate the different roles of job loss we use information on the reason for ending the employment spell • We consider involuntary job losses. These are separated by type: dismissals, redundancies and temporary job endings

  11. Previous literature has not directly addressed the issue of potential job loss endogeneity. Previous papers’ explanations include: the timing of the events and the use of panel data (see Jensen and Smith, JPE 1990, Kraft, Kylos 2001, Charles and Stephens, JLE 2004 and Blakesaune 2008) the distinction between layoffs and plant closure (see Eliason, 2004 and Charles and Stephens, JLE 2004) The information about plant closure is not available in the BHPS Previous literature using the BHPS has relied on the distinction between different types of job loss (see Arulampalam, 2001) and the link with industry’s workforce growth rate (see Borland et al. 1999) Variable definition: exogenous job losses (1/3)

  12. Variable definition: exogenous job losses (2/3) • Arulampalam (EJ, 2001) investigates re-employment probabilities and future earnings (using BHPS 1991-1997) and finds that redundancy is less stigmatising than other job losses. • We use redundancies as an exogenous measure of job loss • UK employment law allows three reasons for redundancy: • total cessation of the employer's business (whether permanently or temporarily), • cessation of business at the employee’s workplace • reduction in the number of workers required to do a particular job • In a redundancy situation, workers should be selected fairly, using objective criteria, and consultation rights apply in case of collective redundancies • Workers are entitled to receive redundancy payment if their tenure is greater than 2 years

  13. Previous literature using the BHPS (see Borland et al. and Taylor and Booth, 1996) has argued that the institutional system often blurs the distinction between redundancy and dismissal and that there is a risk of recall bias Borland et al (1996) distinguish between displaced workers from industries with increasing/decreasing employment in an attempt to enforce some exogeneity over the cause of job loss To minimize the likelihood of measurement error (respondents declaring redundancies in the case of dismissals) we also separate redundancies in industries with declining employment only Variable definition: exogenous job losses (3/3)

  14. Transmission channels of the shock • Job loss can affect the family dissolution through more than one channel: • The negative income shock • The psychological stress and subsequent increase in family conflicts • The signaling effect regarding partner’s characteristics • Redundancies will capture a negative income shock and a limited psychological stress • Temporary job endings will capture a negative income shock and a stronger psychological stress, due to the nature of the contract and marginal labour market attachment usually associated. These factors are also likely to have some signaling effect • Dismissals can be correlated with characteristics of the partner that also reduce the value or quality of the match. The impact of dismissals will capture effects from the negative earnings shock, the strongest psychological shock and possibly a signaling impact • The possibility of reverse causality is alleviated by considering job losses occurring in the year prior to the divorce

  15. We analyse the size of the income shock as an indication of effect coming from different types of job loss People experiencing a dismissal experience the highest income shock with respect to the previous year (around 8%) People experiencing a redundancy have a lower shock (this is also because of redundancy payments) and their subsequent earnings (one year after job loss) are also higher People experiencing a temporary job ending have the lowest income shock (around 3%) and they are more likely to achieve wage gains one or two years after the shock These findings are consistent with previous literature on these topics (see Arulampalam, EJ 2001 and Borland et al. 1999) Income shock from different job losses

  16. Variable definition: other variables • Couples are characterised by their “match quality” at the start of the relationship and this is an important predictor of the future stability of their union • We include differences between ages and education levels to capture the initial quality of the match • Income, education and the number of children are included to represent costs and benefits of the dissolution

  17. Job loss in the analysis sample

  18. Divorce rate in the analysis sample • About 2% of marriages and cohabitations are dissolved each year • Couples who experience job losses have a slightly higher divorce rate • The incidence of dissolution trends downwards over the length of the union

  19. Duration of marriages in the analysis sample • The percentage of short partnerships (less than 5 years) is high in both samples • Couples with job loss experience don’t have idiosyncratically lower levels of durability

  20. The model • Discrete time proportional hazards models • hij = 1-exp{-exp{Xij’β + λj}} i=1,…..N, j=1,….Ti • h is the hazard rate: the probability of divorce at duration j conditional on the marriage having survived until j-1. • X includes job losses, education levels, income, number of children, woman’s employment status differences in age and education between partners. • λj is the baseline hazard which may depend on the duration j. Various specifications of λj are estimated . • Specifications of h containing unobserved time-invariant individual-specific effects (modeled as Gamma distributed) are also estimated. Flow and stock samples of marriages are treated separately to check for selection effects.

  21. The results are stable across different specification of the model: We start by estimating a discrete logistic duration model and a discrete complementary log-log model We consider several alternative when choosing a functional form of the baseline hazard (linearly depending on years of marriage, depending on years squared and cubic) Then we incorporate unobserved heterogeneity (modelled as Gamma distributed) The first specification of the model includes one job loss variable. Then, we distinguish between redundancies, dismissals and temporary job ending A separate model is estimated including redundancies in declining industries, dismissals and temporary job endings Results

  22. Job loss significantly increases the probability of family dissolution Results Note: Standard error in parentheses. Sample size: 40,662 observations. + significant at 10%; * significant at 5%; ** significant at 1%. The baseline hazard linearly depends on years of marriage in this specification of the model. Similar results are found with other specifications. Coefficients are transformed to relative risk format. Standard errors are similarly transformed.

  23. Results • Job losses affect family dissolution through more than one channel: a negative income shock imposes stress on the relationship (redundancies) and new information is revealed regarding the valueof the match(temporary job endings and dismissals). • Note: Standard error in parentheses. Sample size: 40,662 observations. + significant at 10%; * significant at 5%; ** significant at 1%. The baseline hazard linearly depends on years of marriage in this specification of the model. Similar results are found with other specifications. Coefficients are transformed to relative risk format. Standard errors are similarly transformed.

  24. Other results • We also estimate a model in which redundancy and dismissals are grouped and separated from temporary job endings. The results are stable and confirm the existence of a signaling effect • The longer the partners have been together, the smaller the divorce probability: the hazard rate decreases over time. • Household non labour income decreases the probability of family dissolution. • The probability of divorce increases with the number of dependent children in the household. • Women in paid employment are less likely to divorce • Differences in age between partners (>8 years) increase the probability of divorce.

  25. Other results, Cont’d. • Separate estimation is conducted on the stock and flow samples (partnerships that begin before/after the start of the survey): • Older couples are more likely to divorce after a redundancy. They are more affected by the income shock. Signaling effect captured by dismissals is likely to be less relevant. • Younger couples are more likely to divorce after a dismissal as the signalling effect is more important. The income shock is less important in this sample, as there is a higher percentage of double-earners couples

  26. Conclusion • Job loss may affect marital stability through multiple channels: • a negative income shock • a psychological shock • a signal which leads to revised expectations on the spouse’s fitness as a partner • We find evidence of multiple channels of transmission: • The redundancy coefficient captures the first 2 elements • The effect of dismissals is higher and this is consistent with the hypothesis of an impact of job loss as a signal of future match quality

  27. Extensions • Further analysis of the transmission channels, focusing on financial expectations and general life satisfaction • Consideration of the role of social support and separating the impact of job loss in high unemployment areas • Consideration of the impact of job loss on children well being • Consideration of the impact of the female partner’s job loss

  28. Thank you!

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