The Effect of Health on Labour Supply of Rural Elderly People in China—An Empirical Analysis Using CHARLS Data
Abstract
:1. Introduction
2. Model, Estimation Method, and Data
2.1. Models and Estimation Method
2.1.1. Regression Models
2.1.2. Endogeneity and Econometric Approaches
2.2. Data Sources and Variable Definitions
2.2.1. Data Sources
2.2.2. Variable Definition and Description
3. The Empirical Results
3.1. Health and LFP of the Rural Elderly People
3.1.1. Health and the Overall LFP in all Employments
3.1.2. Health and the Type of LFP
3.2. Health and Working Time of the Rural Elderly People
3.2.1. Health and Overall Working Time
3.2.2. Health and Working Time among Different Types of Employment
3.3. The Gender and Age Differences of the Health Effect
3.3.1. Differences in LFP
3.3.2. Differences in Working Time
4. Conclusions
- (1)
- Health has a significantly positive impact on the overall probability of LFP. With other conditions constant, the LFP probability would increase by 8.72 per cent, on average, marginally with improvements in health.
- (2)
- In the sub-divided employment types, health has a significantly positive influence on the probability of LFP in agricultural employment, off-farm employment, and off-farm self-employment. The marginal effect from improvement in health across these three types employments are 2.10 per cent, 15.59 per cent and 10.74 per cent, respectively, reflecting a stronger impact on LFP in off-farm employment than it in agricultural employment.
- (3)
- With regards to working time, health improvements have a significant increasing effect. Holding other factors constant, the marginal effect of health is, on average, 149.2 h per year (about 18.65 days).
- (4)
- In the sub-divided employment types, health is insignificant for working time in all three types of employment.
- (5)
- From the gender comparison on LFP, we believe that the health condition changes can significantly affect the LFP of rural male and female elders. As far as the degree of impact is concerned, health effects on the LFP for non-agricultural employment are significantly greater in males than in females, while the impacts on males in agricultural employment and non-agricultural self-employment are slightly less than those on females.
- (6)
- From the gender comparison on labour time, health has a strong positive effect on overall working time, and the influence on males is significantly larger than females. However, in the sub-divided employment types, this effect of health becomes insignificant in both male and female groups.
- (7)
- From the age comparison on LFP, improvements in health have a positive impact on overall LFP which increases with age. However, for agricultural employment, even though good health leads to a higher possibility of LFP, the marginal impact is negative when individuals are 65 years old or younger and positive when they are older than 65 years old. For off-farm employment and off-farm self-employment, good health corresponds with a higher probability of LFP in these two types of employment and the marginal effect from health improvements all experience an inverse U-type process that rises at first and then decreases with increases in age.
- (8)
- From the age comparison on labour time, health has a significant impact on overall working time when rural individuals are less than 66 years old and its impact increases with age. However, in the sub-divided employment types, this impact becomes insignificant in all age groups.
Author Contributions
Funding
Conflicts of Interest
Appendix A
Variable Name | Definitions | Value Description |
---|---|---|
Disab (1–5) | has this type of functional disability: (1) physical disability, (2) brain damage (or mental retardation), (3) blindness (or semi-blindness), (4) paralysis (or semi-squatting), (5) dumbness (or severe stuttering) | 0 no, 1 yes |
Chronic (1–14) | has chronic disease: (1) high blood pressure, (2) dyslipidaemia, (3) diabetes or elevated blood sugar, (4) malignant tumours such as cancer, (5) chronic lung disease, (6) liver disease, (7) heart disease, (8) stroke, (9) kidney disease, (10) stomach or digestive diseases, (11) emotional and mental problems, (12) memory-related diseases, (13) arthritis or rheumatism, (14) asthma | 0 no, 1 yes |
bodypains | has any pain or discomfort in the body | 0 no, 1 yes |
otherdisease | has other diseases (in addition to disability and chronic diseases) | 0 no, 1 yes |
adls (1–12) | the difficulty level of completing this activity: (1) 1 km running or jogging, (2) standing sedentarily, (3) climbing stairs, (4) bending, knees or squat, (5) stretching along the arm, (6) lifting 5 kg weights, (7) picking up a small coin from a table, (8) housework, (9) cooking (10) going to shops to buy groceries, (11) managing money, (12) taking medicine | 1 has no difficulty, 2 has little difficulty and can complete, 3 has more difficulty and needing help, 4 cannot complete |
cesd | the mean value of Center for Epidemiologic Studies Depression Scale (CES-D) | has 3 degrees (1–3) in each scale: the greater the value, the higher degree of psychological depression |
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Variable Name | Definitions | Value Description | Mean | S.D. | ||
---|---|---|---|---|---|---|
Labour supply | ||||||
employ | has LFP | 0 no, 1 yes | 0.712 | 0.453 | ||
employsup | what type of LFP | 0 not work, 1 agricultural production, 2 non-agricultural employment, 3 non-agricultural self-employment | 1.060 | 0.888 | ||
worktime | annual total working hours | 1459.536 | 1183.822 | |||
agrtime | annual working hours in agriculture | 1209.436 | 1057.804 | |||
nagretime | annual working hours in off-farm employment | 1848.092 | 1151.901 | |||
snagrtime | annual working hours in off-farm self-employment | 1983.734 | 1471.852 | |||
Health | ||||||
sah | self-assessed health | 1 very good, 2 good, 3 fair, 4 poor, 5 very poor | 2.967 | 0.991 | ||
psah | one-period lagged LHSI | 2.981 | 0.744 | |||
Other variables | ||||||
age | age | 61.303 | 9.627 | |||
agesq | square of age | 3850.721 | 124.024 | |||
gender | gender | 1 male, 2 female | 1.531 | 0.499 | ||
edu | educational level | 1 illiterate, 2 literate, 3 elementary school, 4 junior high school, 5 high school or secondary school, 6 college and above | 1.813 | 1.191 | ||
marry | has spouse | 0 no or never married, 1 yes | 0.855 | 0.352 | ||
ifpension | has pension | 0 no, 1 yes | 0.781 | 0.414 | ||
ifland | has farmland/aquaculture water | 0 no, 1 yes | 0.397 | 0.489 | ||
landarea | total area of farmland and aquaculture water | 4.676 | 49.216 | |||
ifmachine | has agricultural machinery | 0 no, 1 yes | 0.620 | 0.485 | ||
pexp | household consumption per capita | 4559.975 | 13,440.03 | |||
nagrincr | the proportion of off-farm income | 0.878 | 1.095 | |||
region | regional dummy variable | 1 Western, 2 North-eastern, 3 Central, 4 Eastern | 2.597 | 1.184 |
Variables | Logit Regression | Multinomial Logit Regression | |||
---|---|---|---|---|---|
(1) Benchmark Regression | (2) Overall Supply | (3) Agricultural Employment | (4) Non-Agricultural Employment | (5) Non-Agricultural Self-Employment | |
sah/psah | −0.345 *** | −0.604 *** | −0.494 *** | −0.901 *** | −0.793 *** |
(0.0281) | (0.0357) | (0.0373) | (0.0515) | (0.0661) | |
age | 1.218 *** | 1.457 *** | 1.999 *** | 3.381 *** | −0.453 |
(0.355) | (0.372) | (0.390) | (0.626) | (0.685) | |
agesq | −0.159 *** | −0.175 *** | −0.199 *** | −0.382 *** | −0.0517 |
(0.0279) | (0.0292) | (0.0306) | (0.0518) | (0.0561) | |
gender= 2 | −0.860 *** | −0.795 *** | −0.428 *** | −1.599 *** | −1.248 *** |
(0.0568) | (0.0589) | (0.0626) | (0.0758) | (0.0947) | |
edu= 2 | 0.0702 | 0.0820 | 0.0960 | 0.0781 | 0.112 |
(0.0780) | (0.0816) | (0.0851) | (0.108) | (0.137) | |
edu= 3 | −0.121 | −0.122 | −0.155 * | −0.00223 | −0.0816 |
(0.0828) | (0.0854) | (0.0904) | (0.106) | (0.134) | |
edu= 4 | −0.0291 | −0.0801 | −0.192 * | 0.0390 | 0.0911 |
(0.0989) | (0.102) | (0.109) | (0.118) | (0.143) | |
edu= 5 | −0.337 ** | −0.472 *** | −0.635 *** | −0.436 ** | −0.154 |
(0.157) | (0.160) | (0.176) | (0.187) | (0.220) | |
edu= 6 | −0.155 | −0.0758 | −0.451 | -0.387 | 0.158 |
(0.530) | (0.591) | (0.668) | (0.671) | (0.709) | |
marry= 1 | 0.379 *** | 0.326 *** | 0.468 *** | −0.000523 | 0.337 ** |
(0.0813) | (0.0846) | (0.0900) | (0.122) | (0.164) | |
ifpension= 1 | 0.186 *** | 0.198 *** | 0.230 *** | 0.130 | 0.204 * |
(0.0639) | (0.0666) | (0.0708) | (0.0845) | (0.108) | |
ifland= 1 | 0.623 *** | 0.644 *** | 0.874 *** | 0.121 | 0.335 *** |
(0.0615) | (0.0637) | (0.0672) | (0.0812) | (0.101) | |
ifmachine= 1 | 0.620 *** | 0.643 *** | 0.763 *** | 0.476 *** | 0.228 ** |
(0.0621) | (0.0644) | (0.0684) | (0.0825) | (0.103) | |
pexp(×10−4) | −0.369 ** | −0.360 ** | −1.04 *** | −0.443 * | 0.435 * |
(1.79 × 10−5) | (1.83 × 10−5) | (2.56 × 10−5) | (2.60 × 10−5) | (2.31 × 10−5) | |
nagrincr | −0.401 *** | −0.391 *** | −0.567 *** | 0.00153 | −0.357 *** |
(0.0759) | (0.0792) | (0.0719) | (0.0434) | (0.121) | |
region= 2 | −0.879 *** | −0.909 *** | −0.880 *** | −0.938 *** | −0.756 *** |
(0.0959) | (0.0992) | (0.103) | (0.138) | (0.165) | |
region= 3 | −0.274 *** | −0.325 *** | −0.421 *** | 0.0416 | −0.167 |
(0.0680) | (0.0710) | (0.0729) | (0.0934) | (0.115) | |
region= 4 | −0.343 *** | −0.520 *** | −0.839 *** | 0.206 ** | −0.238 ** |
(0.0713) | (0.0756) | (0.0798) | (0.0958) | (0.120) | |
cons | 0.949 | 0.370 | −2.985 ** | −4.155 ** | 5.671 *** |
(1.123) | (1.173) | (1.231) | (1.872) | (2.071) | |
LR Chi2 | 1788.61 *** | 1655.47 *** | 3495.12 *** |
Variables | Heckman | BFG | ||
---|---|---|---|---|
(1) Overall | (2) Agricultural Employment | (3) Non-Agricultural Employment | (4) Non-Agricultural Self-Employment | |
psah | −149.2 *** | 32.27 | 114.77 | −96.12 |
(31.28) | (54.56) | (155.65) | (263.05) | |
age | 256.4 | 651.61 | −1329.44 | −3533.97 * |
(265.1) | (453.52) | (1594.70) | (1937.36) | |
agesq | −40.98 * | −57.76 | 147.69 | 288.46 ** |
(22.80) | (35.51) | (138.44) | (142.96) | |
gender= 2 | −268.8 *** | −148.63 | 718.41 ** | 494.09 |
(42.56) | (98.37) | (302.41) | (466.48) | |
edu= 2 | 0.0149 | 58.54 | −151.47 * | 272.70 |
(45.21) | (45.77) | (91.43) | (165.45) | |
edu= 3 | −45.48 | 14.85 | −91.8899 | 101.55 |
(45.80) | (48.36) | (80.67) | (151.00) | |
edu= 4 | 34.93 | 41.96 | −65.94 | 197.38 |
(48.81) | (63.59) | (98.84) | (201.89) | |
edu= 5 | 193.8 ** | 165.12 | 177.49 | 528.42 * |
(82.22) | (103.80) | (156.52) | (272.11) | |
edu= 6 | 115.2 | −374.30 | 340.01 | 348.70 |
(258.4) | (362.26) | (470.69) | (717.07) | |
ifpension= 1 | −72.55 * | −72.2121 | −77.20 | 19.54 |
(38.64) | (46.90) | (86.06) | (169.35) | |
Landarea | 0.197 | 0.9342 *** | −0.29 | 0.27 |
(0.229) | (0.32) | (0.30) | (1.02) | |
ifmachine= 1 | 31.66 | 147.90 *** | −205.84 | −429.78 ** |
(35.60) | (49.36) | (136.89) | (195.54) | |
Pexp | 0.00111 | −0.003 | 0.001 | 0.007 |
(0.001) | (0.002) | (0.004) | (0.007) | |
region= 2 | −199.7 *** | −145.34 ** | −61.05 | 261.43 |
(65.10) | (72.09) | (186.15) | (258.21) | |
region= 3 | −161.3 *** | −219.33 *** | −250.99 *** | −117.80 |
(38.83) | (41.98) | (94.08) | (151.04) | |
region= 4 | 47.65 | −138.61 ** | −318.284 ** | −314.70 |
(44.98) | (62.10) | (153.95) | (204.85) | |
Cons | 1784.4 ** | −270.86 | 5498.16 | 7664.64 ** |
(767.3) | (1617.3) | (5358.2) | (3657.3) | |
Wald Chi2/F test | 20.45 *** | 6.74 *** | 4.61 *** | 1.96 ** |
Groups | (1) Overall | (2) Agricultural Employment | (3) Non-Agricultural Employment | (4) Non-Agricultural Self-Employment | ||||
---|---|---|---|---|---|---|---|---|
Coefficient | ME | Coefficient | ME | Coefficient | ME | Coefficient | ME | |
male | −0.812 *** | −0.0874 | −0.669 *** | 0.0160 | −1.140 *** | −0.0926 | −0.918 *** | −0.0118 |
female | −0.487 *** | −0.0869 | −0.401 *** | −0.0192 | −0.728 *** | −0.0455 | −0.770 *** | −0.0236 |
45–50 | −0.544 *** | −0.0521 | −0.418 *** | 0.0293 | −0.777 *** | −0.0718 | −0.629 *** | −0.0126 |
51–55 | −0.598 *** | −0.0668 | −0.446 *** | 0.0262 | −0.751 *** | −0.0544 | −0.878 *** | −0.0399 |
56–60 | −0.713 *** | −0.0943 | −0.531 *** | 0.0337 | −1.157 *** | −0.1079 | −1.041 *** | −0.0225 |
61–65 | −0.567 *** | −0.0871 | −0.453 *** | 0.0016 | −0.997 *** | −0.0875 | −0.559 *** | −0.0035 |
66–70 | −0.710 *** | −0.1267 | −0.621 *** | −0.0469 | −1.019 *** | −0.0544 | −1.053 *** | −0.0270 |
>70 | −0.522 *** | −0.1109 | −0.512 *** | −0.0891 | −0.692 *** | −0.0170 | −0.414 ** | −0.0045 |
Labor Time | (1) Overall | (2) Agricultural Employment | (3) Non-Agricultural Employment | (4) Non-Agricultural Self-Employment |
---|---|---|---|---|
Male | −163.4 *** | −48.13 | 36.68 | 44.06 |
Female | −106.9 ** | 56.94* | −24.98 | −321.5 |
45–50 | −192.8 ** | −23.77 | 149.2 | 61.97 |
51–55 | −205.5 *** | 30.1 | 13.28 | 107.6 |
56–60 | −254.9 *** | 36.85 | 239.1 | 542.7 |
61–65 | −200.0 *** | −32.28 | −124.7 | −180.5 |
66–70 | −84.75 | 90.24 | −471.8 * | −2287 |
>70 | 19.6 | 33.68 | 209.1 | −87.65 |
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Jiang, J.; Huang, W.; Wang, Z.; Zhang, G. The Effect of Health on Labour Supply of Rural Elderly People in China—An Empirical Analysis Using CHARLS Data. Int. J. Environ. Res. Public Health 2019, 16, 1195. https://doi.org/10.3390/ijerph16071195
Jiang J, Huang W, Wang Z, Zhang G. The Effect of Health on Labour Supply of Rural Elderly People in China—An Empirical Analysis Using CHARLS Data. International Journal of Environmental Research and Public Health. 2019; 16(7):1195. https://doi.org/10.3390/ijerph16071195
Chicago/Turabian StyleJiang, Jinqi, Wanzhen Huang, Zhenhua Wang, and Guangsheng Zhang. 2019. "The Effect of Health on Labour Supply of Rural Elderly People in China—An Empirical Analysis Using CHARLS Data" International Journal of Environmental Research and Public Health 16, no. 7: 1195. https://doi.org/10.3390/ijerph16071195
APA StyleJiang, J., Huang, W., Wang, Z., & Zhang, G. (2019). The Effect of Health on Labour Supply of Rural Elderly People in China—An Empirical Analysis Using CHARLS Data. International Journal of Environmental Research and Public Health, 16(7), 1195. https://doi.org/10.3390/ijerph16071195