Effect of Long-Term Absenteeism on the Operating Revenues, Productivity, and Employment of Enterprises
Abstract
:1. Introduction
1.1. Definition and Explanation of Concepts
1.2. Operating Revenues and Productivity as a Function of Long-Term Absenteeism
1.3. Employment as a Function of Long-Term Absenteeism and the Mediating Role of Operating Revenues
2. Methodology
2.1. Data and Context
2.2. Variables
3. Results
3.1. Testing H1a, H1b, and H2
3.2. Testing H3 and H4
4. Discussion
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
1 | We cannot rule out the suggested positive association between long-term absenteeism and non-absent productivity because capital investment output in the short term may be constant or decrease at a lower rate than the share of employees not long-term absent. However, if this were the case, the above reasoning concerning decreasing overall productivity at an increasing rate as a function of absenteeism would be unlikely, but shortly we show that the empirics are consistent with what we argued. Also, we later show that the non-absent productivity increases at an increasing rate due to long-term absenteeism. It rules out the argument concerning capital investments output in the short term being constant or decreasing at a lower rate than the share of employees not being long-term absent. |
2 | Assuming one employee received 50k NOK in government compensation due to long-term absenteeism and the wages apart from that were 450k NOK, and the other received 30k NOK in government compensation and the wages apart from that were 570k, the average share of long-term absenteeism would be ((50k/(50k + 450k)) + (30k/(30k + 570k)))/2 = (0.10 + 0.05)/2 = 0.075, i.e., 7.5%. |
3 | When testing H1a, H1b, and H2, we cannot rule out reverse causality. To account for this, we applied in unreported models the dynamic two-step Arellano-Bover/Blundell-Bond GMM panel regression with instrumental variables reporting heteroscedasticity bias-corrected (wc) robust standard errors (Arellano and Bover 1995; Blundell and Bond 1998; Windmeijer 2005). Stata code used to test H1a, H1b, and H2, is xtabond2 L(0/2).y x1 x1_sq L(0/1).x2 i.year, gmm(L2.y x1 x1_sq L.x2 z1 z1_sq z2 Z2_sq, lag(1 .) collapse) two robust (for details, see Li et al. 2021; Roodman 2009). y is the dependent variable, x1 the share of absenteeism, x2 enterprise size in employees, i.year, year dummies, z1 the share of female employees, and z2 the average education level. *_sq means squared values. The code shows that the independent- and control variables are treated as endogenous regressors. The statistical conclusions concerning H1a, H1b, and H2 are the same as we report in Table 1. The model specification, however, is different, and the reason is because of the “trial and error” procedure to identify models with valid instrumental variables that generate non-significant post-estimation tests (for a practical discussion, please see Li et al. 2021). Also, the statistical conclusion concerning H3 is the same when using the dynamic two-step Arellano-Bover/Blundell-Bond GMM panel regression with instrumental variables. Still, we had to omit the z1 z1_sq z2 Z2_sq instruments as the model otherwise failed to generate non-significant postestimation tests. Upon request, we can provide statistical details that also include post-estimation tests. |
4 | The high absolute values of the average age variable may indicate an issue with multicollinearity, and omitting the square term returns a positive linear effect taking the value of 0.330 (p < 0.01) in Models 1 and 2 and 0.348 (p < 0.01) in Model 3. Omitting the square term of average education similarly induces a positive linear effect taking the value of 0.331 (p < 0.01) in Models 1 and 2 and 0.334 (p < 0.01) in Model 3. The hypothesized effects are not altered when removing these mentioned square terms. |
5 | Replicating Model 1 (Table 2) using the dynamic two-step Arellano-Bover/Blundell-Bond GMM panel regression with instrumental variables reporting heteroscedasticity bias-corrected (wc) robust standard errors gives a substantially similar result concerning long-term absenteeism at t−1 as an independent variable. The Stata code we use is xtabond2 L(0/2).y L.x1 i.year, gmm(L2.y L.(x1 z1 z2), lag(1 .) collapse) two robust, which generates valid non-significant post estimates. Upon request, we can provide statistical details that also include post-estimation tests. |
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Model 1 | Model 2 | Model 3 | |
---|---|---|---|
Dependent variable at t | Operating revenues | Productivity, all empl. | Productivity, non-abs. ekv. |
Dependent variable at t−1 | 0.396 *** | 0.396 *** | 0.391 *** |
(0.075) | (0.075) | (0.075) | |
Prop. of absenteeism at t | −0.040 *** | −0.040 *** | 0.057 *** |
(0.011) | (0.011) | (0.011) | |
Prop. of absenteeism sq. at t | −0.003 ** | −0.003 ** | 0.005 *** |
(0.001) | (0.001) | (0.001) | |
Prop. of fem. empl. at t | −0.032 | −0.032 | −0.032 |
(0.054) | (0.054) | (0.054) | |
Prop. of fem. empl. sq. at t | −0.003 | −0.003 | −0.003 |
(0.009) | (0.009) | (0.009) | |
Av. education at t | −10.37 | −10.37 | −10.50 |
(10.19) | (10.19) | (10.20) | |
Av. education sq. at t | 0.506 | 0.506 | 0.544 |
(0.391) | (0.391) | (0.392) | |
Av. age at t | 70.27 * | 70.27 * | 70.02 * |
(30.34) | (30.34) | (30.32) | |
Av. age sq. at t | −0.949 * | −0.949 * | −0.914 * |
(0.455) | (0.455) | (0.453) | |
Enterprise size in empl. at t | 0.400 *** | −0.600 *** | −0.600 *** |
(0.049) | (0.049) | (0.049) | |
Enterprise size in empl. at t−1 | −0.013 ** | 0.308 *** | 0.304 *** |
(0.004) | (0.077) | (0.076) | |
Year dummies included | Yes | Yes | Yes |
Model 1 | Model 2 | |
---|---|---|
Dependent variable at t−1 | 0.922 *** | 0.699 *** |
(0.047) | (0.027) | |
Prop. of absenteeism at t−1 | −0.013 *** | −0.009 *** |
(0.002) | (0.002) | |
Operating revenues at t−1 | 0.170 *** | |
(0.024) | ||
Year dummies included | Yes | Yes |
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Aarstad, J.; Kvitastein, O.A. Effect of Long-Term Absenteeism on the Operating Revenues, Productivity, and Employment of Enterprises. Adm. Sci. 2023, 13, 156. https://doi.org/10.3390/admsci13060156
Aarstad J, Kvitastein OA. Effect of Long-Term Absenteeism on the Operating Revenues, Productivity, and Employment of Enterprises. Administrative Sciences. 2023; 13(6):156. https://doi.org/10.3390/admsci13060156
Chicago/Turabian StyleAarstad, Jarle, and Olav Andreas Kvitastein. 2023. "Effect of Long-Term Absenteeism on the Operating Revenues, Productivity, and Employment of Enterprises" Administrative Sciences 13, no. 6: 156. https://doi.org/10.3390/admsci13060156
APA StyleAarstad, J., & Kvitastein, O. A. (2023). Effect of Long-Term Absenteeism on the Operating Revenues, Productivity, and Employment of Enterprises. Administrative Sciences, 13(6), 156. https://doi.org/10.3390/admsci13060156