Every year, many employees leave the armed forces voluntarily at rates that have been characterised as too high (Heilman et al. 2009; Svendsen et al. 2020). This rate of turnover has severe consequences because expertise and knowledge are produced internally within the armed forces at high expenses. The primary consequence of turnover in the armed forces is that it weakens operational capacity as resources are diverted from operations to support education (Lillekvelland and Strand 2015). Because of this, identifying the causes of turnover in the armed forces has received a great deal of research attention. Multiple causes have been identified (Weiss et al. 2001), and job satisfaction has received the most attention. There is, however, a paucity of studies that attempt to explain the relative contribution of factors (Weiss et al. 2001), which are needed to guide efforts to decrease turnover. In addition, the military profession has some unique features that influence turnover intentions and make traditional cost–benefit and job satisfaction models less useful (Weiss et al. 2001). Early models of turnover in the armed forces focused exclusively on work influences and neglected important non-work influences such as work–life conflict (Holt et al. 2007). This failure to consider non-work influences is precarious in the armed forces context because service members commute more, are separated from their families for long periods and experience more marital strain (Wood et al. 1995; Hogan and Furst Seifert 2010) compared to those in other occupations. In addition, the military is more than a workplace. For many, it constitutes a way of life and a strong social identity, and service members are more embedded than civilians (Holt et al. 2007). As such, job embeddedness and work–life conflict may thus be a better predictor of turnover than job satisfaction and pay incentives in the armed forces context (Brorson 2008).
Beyond the armed forces, the available research emphasises job satisfaction, organisational commitment and job opportunities as important factors (Hom et al. 2017). Studies from other branches of operative service, such as police, have found that organisational commitment is a stronger predictor of turnover than job satisfaction (Allisey et al. 2014; Annel et al. 2019). Existing evidence also indicates that most previous research efforts have demonstrated limited ability to predict turnover (Campion 1991). Embeddedness theory is a complementary approach designed to fill this gap and provide a more solid foundation for understanding intra- and interpersonal processes that produce turnover (Mitchell et al. 2001). The overall aim of this study is to apply job embeddedness theory and work-life conflict, predictability and flexible hours to determine their relative impact on turnover intentions within the armed forces context using an overall model of turnover mechanisms. Its purpose is to provide both an informative case and actionable knowledge that can be used to guide interventions.
Job embeddedness refers to the collection of forces that influence employee retention (Mitchell et al. 2001). Embeddedness theory posits that turnover is a product of both work and non-work factors that combine to embed individuals within a group, organisation or workplace (William Lee et al. 2014). The theory describes organisational fit, links and sacrifice as a web of employee retention and posits and that it can account for turnover variance not explained by traditional job satisfaction models (Jiang et al. 2012). Organisational fit refers to the perceived compatibility within the organisation. Organisational links refer to both work and community-based social bonds, and sacrifice is the perceived cost by leaving a job (Mitchell et al. 2001). The current study measures embeddedness using Mitchell’s et al. (2001) theoretical definition of job embeddedness as a multi-factorial measure that includes both formative and reflective components relating to links, fit and sacrifice. Although global reflective measures of job embeddedness have been put forward (Crossley et al. 2007), the current study follows Mackenzie’s (2005) recommendation of utilising a composite formative model of embeddedness. The distinction is important and has practical implications for predicting turnover intentions in the current study because organisational embeddedness and community embeddedness do not share a common latent factor. As such, the current study subscribes to a view of embeddedness where the factors are treated as having separate and distinct consequences. This approach has the advantage of theoretical and conceptual richness but lacks the statistical opportunities of a reflective measure.
The purpose of the study is to investigate the associations between the components of job embeddedness and turnover intentions and their effects on turnover intentions, along with work-life conflict and predictability, but not to evaluate the relationships between latent embeddedness factors. In the current study, the original wording of organisational sacrifice (Mitchell et al. 2001) is referred to as career prospects to ease interpretation. The internal meaning of the construct is unchanged and refers to the sacrifice or loss represented by changing jobs and thereby removing oneself from career prospects within the armed forces. The current study also separates organisational fit and community fit into two distinct factors in line with the on-the-job and off-the-job original framing within the theory (Mitchell et al. 2001). Both career prospects and organisational fit are considered reflective as they tap a set of attitudes and beliefs, while organisational links and community fit are considered formative.
Hypothesis 1 (H1) states that
Hypothesis 2 states (H2) that
Hypothesis 3 (H3) states that
Hypothesis 4 (H4) states that
In addition to embeddedness, work–life conflict and predictability are also highly relevant as predictors of turnover intentions within the armed forces (Wadsworth and Southwell 2011). We hypothesised that
Lastly, we evaluate the hypothesis that the option of having flexible, or variable hours, increases predictability, which, in turn, decreases turnover intentions via the relationship stipulated earlier. Hypothesis 7 (H7) states that
In addition to the hypotheses, the study also attempt so answer the research question
A cross-sectional design with stratified sampling was applied for this study. Potential respondents in the Royal Norwegian Navy were divided into groups of personnel category, age, gender, commuters and non-commuters, marital status, educational level, parental status and affiliations. A total of 1,736 NCOs and officers from the Norwegian Fleet and Norwegian Coast Guard were invited to participate in this study. Conscripts, civilians, hired consultants, retired personnel on short-term contracts and apprentices were excluded from this study due to their irrelevant employment status. The survey was administered electronically, and 465 completed the questionnaire, resulting in a 27% response rate. All pre-defined stratums achieved a satisfactory response rate. As such the results are deemed to be representative of the Royal Norwegian Navy. To ensure privacy, data on organisational affiliation, gender and age were excluded from further studies after checking representativeness. The sample characteristics are presented in Table 1. As expected, COs have longer service length and more education. They are also more likely to be married, have children and commute. These differences highlight how divergent turnover mechanisms may operate for the two personnel groups.
Sample characteristics stratified on officer commission
NCOs | COs ( | |||
---|---|---|---|---|
Mean | SD | Mean | SD | |
Education level* | 2.74 | 0.94 | 4.25 | 0.51 |
Service length* | 2.25 | 1.26 | 3.49 | 1.30 |
Living alone (%) | 44 | 22 | ||
Children (%) | 35 | 66 | ||
Weekly commute (%)’ | 17 | 23 |
Scales 1-5.
Commutes to and from the workplace during the workweek. COs, commissioned officers; NCOs, non-commissioned officers.
Turnover intentions were measured with the turnover intention scale (TIS-6) (Bothma and Roodt 2013) but were adapted to reflect turnover intentions to leave the armed forces. Example items include
The work-life conflict was measured with six items from the work-family conflict scale (Mansour and Mohanna 2018) and the work-leisure conflict scale (Wong and Lin 2007). Preliminary factor analysis revealed that the indicators were best represented by a single factor as work-family and work-leisure were highly correlated. Items were scored on a 5-point Likert scale ranging from 1
Predictability items were developed from scales inspired by Golden et al. (2006) and measured with the following four indicators: 1: ‘
The job embeddedness measure was based on the scale developed by Mitchell et al. (2001). For the purposes of the study, the authors translated the items to Norwegian and adapted 16 items to fit in an armed forces context. Example items include ‘
Lastly, the participants answered demographic questions regarding service length (
Firstly, a multi-group latent factor measurement model was used to determine the measurement model fit and evaluate measurement equivalence between COs and NCOs. The latent factors included in the model were organisational fit, career prospects, turnover intentions, work-life conflict and predictability. Secondly, a baseline model where factor loadings (metric) were allowed to vary freely across groups was used. The model included all the study’s latent factors and indicators, and covariance parameters between all latent factors, as well as a covariance parameter between two indicators of work-life conflict, based on similar wording
The baseline measurement model showed acceptable fit to the data (Hu and Bentler 1999): a comparative fit index (CFI) of 0.950, a root mean square error of approximation (RMSEA) of 0.052, a standardised root mean square residual (SRMR) of 0.058 and a Bayesian information criterion (BIC) of 27051. Constraining factor loadings to be equal across commissioned and non-commissioned personnel resulted in a small reduction in model fit (CFI: 0.948, RMSEA: 0.053, SRMR: 0.065, BIC: 27,090), resulting in statistically significant differences between the constrained and the unconstrained model (χ2 (19) = 30.66,
The multi-group structural equation modeling (SEM) framework was also used to test the hypotheses. The SEM has the advantage of assessing relationships of latent error-free constructs, and the multi-group function allows the analyses to be conducted groupwise in one parsimonious model (Bollen and Hoyle 2012). As such, evidence for and against a hypothesis can be evaluated for each personnel group separately, in addition to differences between the groups in structural paths, covariance paths and measurements. All models included covariance parameters between exogeneous variables, and there were no covariance parameters between error terms of endogenous structural variables. We used a specify–test–respecify procedure, where the theoretical embeddedness model with work–life conflict and predictability was tested first and then evaluated. We used modification indices on the original model to identify missing parameters and respecified with an alternative model. The original model regresses turnover intentions on the four embeddedness factors as well as predictability and work–life conflict as direct effects. In addition, the model includes indirect effects of predictability on turnover intentions via work–life conflict as well as an indirect effect of flexible hours on work–life conflict via predictability. The models were estimated using maximum likelihood. The indirect effects were calculated using the medsem package (Mehmetoglu 2018) to obtain confidence intervals. The results are based on the Zhao et al. (2010) approach to mediation using Monte Carlo simulation and decompose the indirect effect as a percentage of the total effect. The estimation of indirect effects was done with separate samples. We used the multi-group function to determine differential effects between the two groups and path coefficients between groups were tested with χ2 Wald tests to determine differential effects. Thus, the current study contains both confirmatory elements with hypothesis testing, but also two exploratory elements regarding the research question of differential effects and the relative impact of factors on turnover intentions. Initial data inspection revealed that many indicators were did not show normality. Because of this, all SEM models used the Satorra and Bentler (1988) estimator. The dataset was complete as all participants completed the entire survey. All analyses were conducted using Stata v.16 (StataCorp 2019).
The descriptive statistics stratified based on officer commission can be viewed in Table 2. The descriptive statistics confirmed that commissioned and NCOs differ in embeddedness, turnover intentions and flexible hours. These differences are consistent with the notion that COs are more embedded within the armed forces. However, both groups experience about the same level of work–life conflict. The most notable differences are in career prospects and turnover intentions, where COs enjoy higher career prospects and lower turnover intentions. The descriptive statistics also revealed that NCOs vary considerably in their career prospects and community fit, showing that the group is more heterogeneous than the commissioned personnel group. The overall sample means turnover intention reveals that Royal Norwegian Navy personnel are, on average, neutral to the prospect of leaving the armed forces. Evidence of considerable turnover intentions was also observed in answer to the question ‘How often do you consider leaving the armed forces’, where 14% answered
Descriptive statistics and correlations stratified on officer commission. Correlations above the diagonal represents COs (N = 224), and correlations below the diagonal represents NCOs (N = 241)
Variable | Means (SD) | Bivariate correlations | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
NCOs | COs | 1. | 2. | 3. | 4. | 5. | 6. | 7. | 8. | |
1. Turnover intentions | 3.19 (0.82) | 2.87 (0.74) | − | 0.41** | −0.10 | −0.43** | −0.19** | −0.50** | −0.57** | −0.13 |
2. Work–life conflict | 3.31 (0.91) | 3.34 (0.92) | 0.52** | − | −0.22** | −0.58** | 0.08 | −0.16* | −0.22** | −0.06 |
3. Flexible hours | 2.86 (1.45) | 3.21 (1.41) | −0.21** | −0.25** | − | 0.14* | −0.06 | 0.13* | −0.04 | −0.06 |
4. Predictability | 2.79 (1.03) | 3.12 (1.07) | −0.42** | −0.55** | 0.13* | − | −0.08 | 0.22* | 0.30** | 0.19** |
5. Organisational links | 2.67 (0.65) | 2.86 (0.56) | 0.01 | 0.18** | −0.11 | −0.18** | − | 0.29** | 0.19** | 0.21** |
6. Organisational fit | 3.88 (0.60) | 4.03 (0.59) | −0.42** | −0.25** | 0.09 | 0.18** | 0.14* | − | 0.44** | 0.18** |
7. Career prospects | 2.43 (0.93) | 2.90 (0.78) | −0.71** | −0.43** | 0.16* | 0.37** | −0.01 | 0.44** | − | 0.17* |
8. Community-fit | 3.64 (0.91) | 3.94 (0.69) | −0.24** | −0.12 | −0.06 | 0.18** | 0.10 | 0.19** | 0.22** | − |
All variables are scaled 1-–5.
p < 0.05.
p < 0.01.
COs, commissioned officers; NCOs, non-commissioned officers.
Before evaluating the parameters of the model and testing hypotheses, we evaluated the global model fit of two structural models in both sub-samples. We fit the original a priori model and a respecified model with modifications to the original model. Modification indices revealed that the original model was lacking a structural parameter linking career prospects to predictability. We did not originally include an effect of career prospects on predictabilitybased on theory, but the strength of the relationship and improved model fit strongly suggested its inclusion. The theoretical implication is that service members with higher career prospects also show more predictable work schedules. This may be due to a number of reasons, and the relationship is likely bidirectional in nature. The addition of the parameter of the model contributes to a new indirect effect of career prospects on turnover intentions via predictability. The respecified model thus posits that having positive career prospects gives more predictability, which, in turn, reduces turnover intentions.
The model fit of the original and the respecified model can be viewed in Table 3. The results showed that the original model did not achieve adequate model fit. By contrast, the respecified model achieved satisfactory model fit for COs on all fit indicators. For NCOs and the total sample, the results showed acceptable fit in all indicators, except CFI, which was slightly lower than the recommended cut-off (Hu and Bentler 1999). In all, we regard the respecified model as reasonably consistent with the data and adequate to test the hypotheses.
Global fit of SEM models for COs, NCOs and the full sample
Model | Sub-sample | df | χ2 | CFI | RMSEA | SRMR | BIC |
---|---|---|---|---|---|---|---|
Original model | COs | 309 | 500 | 0.937 | 0.053 | 0.106 | 14624 |
Respecified model | COs | 308 | 476 | 0.951 | 0.045 | 0.067 | 14606 |
Original model | NCOs | 309 | 609 | 0.914 | 0.064 | 0.146 | 16183 |
Respecified model | NCOs | 308 | 575 | 0.927 | 0.060 | 0.084 | 16115 |
Original model | Total | 309 | 771 | 0.931 | 0.057 | 0.123 | 30592 |
Respecified model | Total | 308 | 707 | 0.943 | 0.053 | 0.062 | 30534 |
BIC, Bayesian information criterion; CFI, comparative fit index; COs, commissioned officers; NCOs, non-commissioned officers; RMSEA, root mean square error of approximation; SRMR, standardised root mean square residual.
The standardised path coefficients from the multi-group SEM can be seen in Figure 1. Measurement coefficients can be viewed in Table 4. The results support the view that COs and NCOs share most, but not all, turnover mechanisms, and the multi-group SEM model showed acceptable fit. Overall, the predicted mechanisms explained approximately 70% of the variation in turnover intentions for both groups. The results showed a small, but significant, association between organisational links and turnover intentions for COs, but not for NCOs, partly confirming Hypothesis 1. The same pattern of results was found for organisational fit on turnover intentions, partly confirming Hypothesis 2. Hypothesis 3 states that career prospects predict turnover intentions. This hypothesis applies for both COs and NCOs, and an association of notable effect size was found in both groups. The link was larger for NCOs and accounted for most of the explained variance in turnover intentions in this group. The results did not support any relationship with community fit in either group, disconfirming Hypothesis 4. The χ2 tests of group differences in embeddedness coefficients did not support significant overall differences in structural paths between COs and NCOs, indicating that the same turnover mechanisms exist for both commissioned and non-commissioned personnel.
Fig. 1.
Standardized effects from the respecified multi-group model of turnover intentions with job embeddedness and work-life conflict as predictors.

Standardised covariance and measurement coefficients from multi-group SEM for officers
Covariance paths | Officers | NCOs |
---|---|---|
β (SE) | β (SE) | |
Organisational fit - organisational links | 0.28**(0.07) | 0.15*(0.07) |
Organisational fit - career prospects | 0.55**(0.06) | 0.53**(0.06) |
Organisational fit - community fit | 0.22**(0.07) | 0.24**(0.07) |
Organisational links - career prospects | 0.21**(0.07) | 0.01 (0.06) |
Organisational links - community fit | 0.23**(0.06) | 0.13*(0.06) |
Career prospects - community fit | 0.17*(0.07) | 0.25**(0.07) |
Measurement coefficients’ | ||
Turnover intentions 1 | 0.60 (0.05) | 0.62 (0.04) |
Turnover intentions 2 | 0.70 (0.04) | 0.76 (0.03) |
Turnover intentions 3 | 0.62 (0.05) | 0.67 (0.04) |
Turnover intentions 4 | 0.75 (0.04) | 0.82 (0.03) |
Turnover intentions 5 | 0.58 (0.05) | 0.62 (0.04) |
Turnover intentions 6 | 0.74 (0.04) | 0.61 (0.04) |
Organisational fit 1 | 0.57 (0.05) | 0.46 (0.06) |
Organisational fit 2 | 0.88 (0.03) | 0.88 (0.04) |
Organisational fit 3 | 0.73 (0.04) | 0.74 (0.04) |
Career prospects 1 | 0.85 (0.03) | 0.84 (0.02) |
Career prospects 2 | 0.85 (0.03) | 0.88 (0.02) |
Career prospects 3 | 0.62 (0.05) | 0.79 (0.03) |
Career prospects 4 | 0.57 (0.05) | 0.65 (0.04) |
Career prospects 5 | 0.70 (0.04) | 0.81 (0.03) |
Work-life conflict 1 | 0.67 (0.04) | 0.65 (0.04) |
Work-life conflict 2 | 0.69 (0.04) | 0.72 (0.03) |
Work-life conflict 3 | 0.73 (0.04) | 0.76 (0.03) |
Work-life conflict 4 | 0.91 (0.03) | 0.85 (0.02) |
Work-life conflict 5 | 0.91 (0.02) | 0.88 (0.02) |
Work-life conflict 6 | 0.84 (0.02) | 0.80 (0.03) |
Predictability 1 | 0.85 (0.02) | 0.75 (0.03) |
Predictability 2 | 0.92 (0.02) | 0.92 (0.02) |
Predictability 3 | 0.84 (0.02) | 0.86 (0.02) |
Predictability 4 | 0.64 (0.04) | 0.62 (0.04) |
p < 0.05.
p < 0.01.
All measurement coefficients <0.01.
NCOs, non-commissioned officers.
The covariance coefficients are presented in Table 4. The two groups showed different covariance parameters (χ2 (13) = 31.02,
The results from the multi-group SEM supported Hypothesis 5 and showed that work-life conflict predicted turnover intentions for both COs and NCOs. The size of the effect was approximately equal between groups, lower than career prospects and smaller than organisational fit for COs. The results also supported the hypothesis that predictability is negatively associated with turnover intentions. Furthermore, the results from the test of indirect effect of predictability on turnover intentions via work-life conflict was significant for both NCOs (β = -0.14, SE = 0.04, Z = -03.34,
The objective of this study was to determine predictors of turnover intentions and their relative importance for commissioned and non-commissioned personnel within the Royal Norwegian Navy within a job embeddedness framework. Overall, the results are encouraging as most of the variance in turnover intentions is explained by the model that has acceptable goodness of fit. As such, the results support job embeddedness theory (Mitchell et al. 2001) and confirms that organisational links and fit as well as career prospects are associated with reduced turnover intentions. The main addition to the study’s original framing of embeddedness was the inclusion of a parameter between career prospects and predictability, in the respecified model. This specification is in line with insights from conservation of resources (COR) theory (Hobfoll 2001), and Zhang and colleges (2021) have argued that job embeddedness reflects an employee’s resource status. In this view, a predictable work schedule is a resource and commodity for both commissioned and non-commissioned personnel. Personell who experience accruing this resource may experience more positive attitudes towards their careers. A second interpretation is that more-embedded personnel who report a more positive career outlook spend less time planning and pursuing potential job alternatives, leading to a more predictable work schedule (Harunavamwe et al. 2020). A third explanation is that personnel who view their career prospect as less favourable elicit a negative reaction from superiors, which leads to reduced predictability in scheduling work plans. In support of this, evidence suggests that less-embedded personnel are less likely to put effort into their employment and are less engaged (Jia et al. 2020). In time, this may lead to supervisors giving more-embedded service members the most predictable work schedules as a reward and incentive to stay in the organisation.
The results of the current study confirmed the presence of notable turnover intentions within the Royal Norwegian Navy, especially for NCOs. The results showed that commissioned and non-commissioned personnel shared the most important determinants of turnover intentions, but some differences were found. Overall, the results partly confirm the hypothesis that job embeddedness predicts turnover intentions. For COs, career prospects organisational fit and organisational links were negatively associated with turnover intentions, confirming then findings of previous research (Strand 2019). The results did not support the hypothesis of community fit as a predictor of turnover intentions for either personnel group. This may be due to the interaction of having to move for work. Service members are likely to move several times in their careers (Heen 2012). Being embedded within a community likely leads to positive embeddedness and low turnover if the service members can be stationed in a work location for long periods. Alternatively, community embeddedness can lead to increased turnover rates if the job requires a geographical relocation. This may explain the lack of association between community fit and turnover intentions in the results.
Career prospects were found to be the only embeddedness factor associated with turnover intentions for NCOs. The predictive power of career prospects is notably large and explains much of the variation in turnover intentions for NCOs. Career prospects are also the most substantial predictor of turnover intentions for COs but are closely followed by organisational fit and work-life conflict. The significant relationship between work-life conflict and turnover intentions differs from previous research (Heilmann et al. 2009) and requires an explanation. One possibility is conceptual differences in the work-life conflict. The preliminary factor analysis showed that work-life conflict and work-family conflict were best conceptualised as a single factor, while the aforementioned research did not find this relationship and only focused on work-family conflict. The discrepant findings may indicate that the relationship between work-life conflict and turnover intentions is more strongly related to the non-family conflict.
The results also suggest that the relationships between the embeddedness factors are not of the same magnitude in the two personnel groups. The main difference was that organisational links were not as clearly associated with the other embeddedness factors for NCOs. Taken together, the results suggest that embeddedness is not as meaningful as a theoretical concept for NCOs. In this group, only career prospects predicted turnover intentions, and the embeddedness factors were less correlated overall than the embeddedness correlations for COs.
The current study also hypothesised that predictability would have direct as well as indirect effects on turnover intentions and that one of the mechanisms would be to reduce work-life conflict. On predictability, the results supported the hypotheses for both groups and showed complete mediation via work-life conflict for COs and partially mediated for NCOs. Partial mediation indicates that there is likely one or more unknown mechanisms under which predictability affects turnover intentions for NCOs. The study also finds that flexible hours predict a decrease in work-life conflict for both groups. This effect was not due to an increase in predictability. Because of this, we propose that the function of flexible hours is primarily to ease work-life conflict, but not by making work more predictable. Although the results showed a relationship between flexible hours and predictability at work for COs, the strength of the relationship does not support the presence of an indirect effect, and no relationship was found for NCOs.
The results point to differential targets for interventions aimed at reducing turnover for COs and NCOs and are summarised in Table 5. For NCOs, interventions to reduce turnover intentions should be aimed at increasing career prospects within the armed forces. The strength of the relationship observed here shows the largest potential for turnover intention reductions. Secondary objectives are attempts to increase predictability to reduce work-life conflict. Reducing work-life conflict would likely be directly beneficial for all service members but may be impractical due to operational and strategic factors. Efforts could instead be aimed at increasing predictability. For NCOs, the results of the current study suggest that this will, in turn, reduce work-life conflict.
Priority list for targets for interventions to reduce turnover NCOs and COs in the armed forces
Priority | NCOs | COs |
---|---|---|
1 | Career prospects | Career prospects |
2 | Work-life conflict | Predictability |
3 | Predictability | Organisational fit |
4 | Flexible hours | Work-life conflict |
5 | - | Organisational links |
6 | - | Flexible hours |
Priority based on the strength of structural path coefficients from multi-group SEM.
COs, commissioned officers, NCOs, non-commissioned officers.
The results for COs also point to career prospects as the most important factor, in predicting turnover intentions, but not to the same extent as NCOs. For COs, organisational fit represents another notable predictor of turnover intentions and could be a practical target for interventions. This could entail efforts to increase workplace cohesion and consider organisational fit in placements. The association between organisational links and turnover intentions means that this also could be the target of interventions for COs, but the small nature of the relationship shows that other factors may be better candidates for these efforts. Officers are also negatively impacted by work-life conflict, and increasing predictability may reduce both work-life conflict and turnover intentions. For COs, the overall relationship between predictability and turnover intentions is smaller than career prospects. The significant direct effect indicates that there are unaccounted mechanisms under which predictability affects turnover intentions, in addition to the indirect effect via a work–life conflict. Because of this, predictability is an important target for possible interventions for COs. Flexible hours are a candidate for this, but the effect is small, and other options to increase predictability should be explored. It should be noted that the list of targets for interventions to reduce turnover is not an exhaustive list. A notable portion of variance in turnover intentions was not explained by the study’s predictors.
It should be noted that these findings are likely influenced by survivor bias (Simundic 2013), where unsatisfied personnel leave the armed forces before becoming established in their career and social life. However, the partial overlap between the findings of the current study and the results of studies that ask personnel why they left the armed forces (Fors Brandebo and Lundell 2018), implying some of the same mechanisms of turnover. Nevertheless, the study utilises a cross-sectional dataset. As such, there are several limitations to the inferences that can be made. Without temporal control, we cannot rule out alternative models where turnover intentions cause embeddedness; work–life conflict and low predictability cannot be ruled out. Future research would do well to remedy this by measuring predictors at one time point and measuring changes in turnover intentions from one time point to the next. An autoregressive cross-lagged design would be particularly well-suited to ruling out competing common method models as well as the temporally reverse effect of turnover intentions on embeddedness and work–life conflict. In addition, there are likely some other factors that cause or interact with turnover intentions that are not accounted for. This is especially likely for the NCO results where model fit was worse. Future research should attempt to uncover a better model for predicting NCO turnover intentions. As previously mentioned, the results are also likely partly the product of survivor bias, and a complete understanding of why service members choose to quit cannot be obtained without a complete sample of both personnel who have not ended their career in the armed forces, and personnel who has. Lastly, the study is limited by the lack of actual turnover data. Although there is some debate regarding the relationship between turnover intentions and actual turnover (Cohen et al. 2016), recent evidence by Wong et al. (2021) suggests that the two are closely related. Because of this, turnover intentions are the natural starting point as they predict who is likely to end their career in the armed forces. Nevertheless, some research indicates that the turnover intentions to actual turnover link may be different for COs and NCOs (Strand 2019). As such, subsequent research would benefit from follow-up of actual turnover rates.
The results have implications for other branches of the armed forces and operational personnel in general. Many of the same organisational processes and mechanisms exist beyond the sample of this study, and the results are likely generalisable within this context. It should be noted, however, that differences in organisational cultures and conditions may lead to different results.
By applying a job embeddedness approach, this study confirmed that service members who are embedded within the Royal Norwegian Armed Forces have less turnover intentions. For COs, embeddedness means having positive career prospects, perceiving oneself as a good fit within the organisation as well as having many organisational links. For NCOs, it means having positive career prospects. In addition, both personnel groups’ turnover intentions showed notable associations with work–life conflict, and both flexible hours and a predictable work schedule were associated with a reduction in work–life conflict. Turnover of military personnel is an important limitation to operational capacity (Weiss et al. 2001), and the results of the current study can be used in discussion on which processes to target with interventions.
Fig. 1.

Descriptive statistics and correlations stratified on officer commission. Correlations above the diagonal represents COs (N = 224), and correlations below the diagonal represents NCOs (N = 241)
Variable | Means (SD) | Bivariate correlations | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
NCOs | COs | 1. | 2. | 3. | 4. | 5. | 6. | 7. | 8. | |
1. Turnover intentions | 3.19 (0.82) | 2.87 (0.74) | − | 0.41 |
−0.10 | −0.43 |
−0.19 |
−0.50 |
−0.57 |
−0.13 |
2. Work–life conflict | 3.31 (0.91) | 3.34 (0.92) | 0.52 |
− | −0.22 |
−0.58 |
0.08 | −0.16 |
−0.22 |
−0.06 |
3. Flexible hours | 2.86 (1.45) | 3.21 (1.41) | −0.21 |
−0.25 |
− | 0.14 |
−0.06 | 0.13 |
−0.04 | −0.06 |
4. Predictability | 2.79 (1.03) | 3.12 (1.07) | −0.42 |
−0.55 |
0.13 |
− | −0.08 | 0.22 |
0.30 |
0.19 |
5. Organisational links | 2.67 (0.65) | 2.86 (0.56) | 0.01 | 0.18 |
−0.11 | −0.18 |
− | 0.29 |
0.19 |
0.21 |
6. Organisational fit | 3.88 (0.60) | 4.03 (0.59) | −0.42 |
−0.25 |
0.09 | 0.18 |
0.14 |
− | 0.44 |
0.18 |
7. Career prospects | 2.43 (0.93) | 2.90 (0.78) | −0.71 |
−0.43 |
0.16 |
0.37 |
−0.01 | 0.44 |
− | 0.17* |
8. Community-fit | 3.64 (0.91) | 3.94 (0.69) | −0.24 |
−0.12 | −0.06 | 0.18 |
0.10 | 0.19 |
0.22 |
− |
Standardised covariance and measurement coefficients from multi-group SEM for officers (N = 224) and NCOs (N = 241)
Covariance paths | Officers | NCOs |
---|---|---|
β (SE) | β (SE) | |
Organisational fit - organisational links | 0.28 |
0.15 |
Organisational fit - career prospects | 0.55 |
0.53 |
Organisational fit - community fit | 0.22 |
0.24 |
Organisational links - career prospects | 0.21 |
0.01 (0.06) |
Organisational links - community fit | 0.23 |
0.13 |
Career prospects - community fit | 0.17 |
0.25 |
Measurement coefficients’ | ||
Turnover intentions 1 | 0.60 (0.05) | 0.62 (0.04) |
Turnover intentions 2 | 0.70 (0.04) | 0.76 (0.03) |
Turnover intentions 3 | 0.62 (0.05) | 0.67 (0.04) |
Turnover intentions 4 | 0.75 (0.04) | 0.82 (0.03) |
Turnover intentions 5 | 0.58 (0.05) | 0.62 (0.04) |
Turnover intentions 6 | 0.74 (0.04) | 0.61 (0.04) |
Organisational fit 1 | 0.57 (0.05) | 0.46 (0.06) |
Organisational fit 2 | 0.88 (0.03) | 0.88 (0.04) |
Organisational fit 3 | 0.73 (0.04) | 0.74 (0.04) |
Career prospects 1 | 0.85 (0.03) | 0.84 (0.02) |
Career prospects 2 | 0.85 (0.03) | 0.88 (0.02) |
Career prospects 3 | 0.62 (0.05) | 0.79 (0.03) |
Career prospects 4 | 0.57 (0.05) | 0.65 (0.04) |
Career prospects 5 | 0.70 (0.04) | 0.81 (0.03) |
Work-life conflict 1 | 0.67 (0.04) | 0.65 (0.04) |
Work-life conflict 2 | 0.69 (0.04) | 0.72 (0.03) |
Work-life conflict 3 | 0.73 (0.04) | 0.76 (0.03) |
Work-life conflict 4 | 0.91 (0.03) | 0.85 (0.02) |
Work-life conflict 5 | 0.91 (0.02) | 0.88 (0.02) |
Work-life conflict 6 | 0.84 (0.02) | 0.80 (0.03) |
Predictability 1 | 0.85 (0.02) | 0.75 (0.03) |
Predictability 2 | 0.92 (0.02) | 0.92 (0.02) |
Predictability 3 | 0.84 (0.02) | 0.86 (0.02) |
Predictability 4 | 0.64 (0.04) | 0.62 (0.04) |
Global fit of SEM models for COs, NCOs and the full sample
Model | Sub-sample | df | χ2 | CFI | RMSEA | SRMR | BIC |
---|---|---|---|---|---|---|---|
Original model | COs | 309 | 500 | 0.937 | 0.053 | 0.106 | 14624 |
Respecified model | COs | 308 | 476 | 0.951 | 0.045 | 0.067 | 14606 |
Original model | NCOs | 309 | 609 | 0.914 | 0.064 | 0.146 | 16183 |
Respecified model | NCOs | 308 | 575 | 0.927 | 0.060 | 0.084 | 16115 |
Original model | Total | 309 | 771 | 0.931 | 0.057 | 0.123 | 30592 |
Respecified model | Total | 308 | 707 | 0.943 | 0.053 | 0.062 | 30534 |
Priority list for targets for interventions to reduce turnover NCOs and COs in the armed forces
Priority | NCOs | COs |
---|---|---|
1 | Career prospects | Career prospects |
2 | Work-life conflict | Predictability |
3 | Predictability | Organisational fit |
4 | Flexible hours | Work-life conflict |
5 | - | Organisational links |
6 | - | Flexible hours |
Sample characteristics stratified on officer commission
NCOs |
COs ( |
|||
---|---|---|---|---|
Mean | SD | Mean | SD | |
Education level |
2.74 | 0.94 | 4.25 | 0.51 |
Service length |
2.25 | 1.26 | 3.49 | 1.30 |
Living alone (%) | 44 | 22 | ||
Children (%) | 35 | 66 | ||
Weekly commute (%)’ | 17 | 23 |
Advanced education for NCMs’ professional career development: a conclusive experience? Siting military base camps through an MCDA framework On proxy war: A multipurpose tool for a multipolar world Examining the roots of turnover intentions in the Royal Norwegian Navy, the role of embeddedness, work-life conflict and predictability A quantitative analysis of the impact or consequences of the US Coast Guard and Maritime Transportation Act of 2006