Health, Security and Participation: A Structural Relationship Modeling among the Three Pillars of Active Ageing in China
Abstract
:1. Introduction
2. Literature Review
3. Research Design
3.1. Data Source
3.2. Model Framework and Variable Measurement
3.3. Models
4. Empirical Result Analysis
4.1. Descriptive Result Analysis
4.2. Base Model Estimation Results
4.3. Multiple-Group Comparisons Using SEM
4.3.1. Age Cohorts
4.3.2. Groups by Gender
5. Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Variables | Frequency | Percentage (%) |
---|---|---|
Gender | ||
male | 5528 | 48.02% |
female | 5983 | 51.98 |
Age | ||
60–64 | 3616 | 31.42% |
65–69 | 2399 | 20.84% |
70–74 | 1950 | 16.94% |
75–79 | 1690 | 14.68% |
80–84 | 1241 | 10.78% |
85+ | 614 | 5.34% |
Marital status | ||
married | 7449 | 64.79% |
widowed | 3855 | 33.53 |
divorced | 114 | 0.99% |
unmarried | 80 | 0.7% |
Education | ||
below primary school | 3949 | 34.33% |
primary school | 3545 | 30.82% |
high school | 3331 | 28.95 |
college and higher | 679 | 5.90% |
Identity | ||
rural | 5963 | 51.85% |
non-rural | 5537 | 48.15% |
Latent Variables | Indicator Variables and Their Measurement Questions |
---|---|
Health | SRH, self-rated health. The interviewed older people are asked what they think of their current health. The answer options are: very unhealthy, relatively unhealthy, general, relatively healthy or very healthy, with the values of 1, 2, 3, 4 or 5, respectively. This indicator is an ordered categorical variable. ADL, activities of daily living. Eleven questions are asked, including the following: can you make a call, tidy up, get dressed, take a bath, eat, take medicine, have urinary incontinence, have fecal incontinence, go to the toilet, move to the bed or chair and walk indoors? The answer options are: totally unable, need some help and need no help from others, which are assigned values of 1, 2 and 3, respectively; then, the 11 variables are summed to obtain the total score. It is a numerical variable. SCA, self-care ability. Nine questions were asked, including the following: can you go up and down stairs, have you ever fallen down, can you walk outside, take public transport, shop, manage your money, lift 10 kg, cook and do housework? The answer options are: cannot do it at all, need some help and do not need help from others, assigned values of 1, 2 and 3, respectively; then, the nine variables are summed to obtain the total score. It is a numerical variable. |
Security | SSI, social security income, including pension benefits for urban employees, pension benefits for urban residents, pension benefits for rural residents, social assistant benefits, advanced age allowance, home-based endowment service subsidy, one-child family subsidy and other government assistance. We sum these ten kinds of benefits to obtain the social security income of older people. It is a numerical variable. SPT, social preferential treatment for older people, including free bus passes, park tours and so on. The answer options are yes or no, which are assigned values of 0 or 1, respectively. It is a dummy variable. CAF, community activity facilities. Do you have any of the following venues or facilities in your community: aged activity room, fitness room, chess and card room, library, outdoor activity venue? The answer options are “yes” or “no”, which are assigned values of 1 or 0, respectively. The seven items are summed, and values of 0, 1, 2, 3, 4, 5 and 6 are obtained. Because there are only nine individuals with a value of 6, they are merged into 5. It is a numerical variable. |
Willingness | The questionnaire asked “do you think the following description is in line with your current situation?”: willingness to participate in community affairs, WCA; serve society, WSS; like to learn new knowledge, WLK; and obtain useful information, WOI. The answer options for these four questions are completely inconsistent, relatively inconsistent, general, relatively consistent and completely consistent. We set them as four ordinal variables with values of 1, 2, 3, 4 and 5. All three indicators are ordered categorical variables. |
Participation | PCA, participate in community voluntary activities. Older people are asked if they participated in the following eight activities in the past three months: community security patrol, caring for other older people, environmental protection, dispute resolution, accompanying chat, professional service or taking care of a neighbor’s children. The answer options for these questions are as follows: have participated in or never participated in, which are assigned values of 1 or 0, respectively. The answer results of the eight questions are summed up, and 0, 1, 2, 3, 4, 5 and 6 are obtained. The value of 0 stands for not participating in any of the above eight activities in the previous three months, and the other values stand for participating in 1, 2, 3, 4, 5 and 6 activities. Since there are only 10 and three individuals with values of 5 and 6, respectively, we combine the values of 5 and 6 into the category of 4. This indicator is an ordered categorical variable. PPW, participate in paid work. Are you currently engaged in paid work or activities? The answer options are yes or no, assigned as 1 or 0, respectively. It is a dummy variable. PLV, participate in local voting. Have you participated in the voting election of local residents’ committee or villagers’ committee in the past three years? The answer options are yes or no, which are assigned as 1 or 0, respectively. It is a dummy variable. |
Variables | N | Mean | SD | Min | Max |
---|---|---|---|---|---|
ADL | 11,377 | 31.93 | 2.690 | 11 | 33 |
SCA | 11,281 | 25.24 | 3.290 | 11 | 27 |
SRH | 11,311 | 3.210 | 1.110 | 1 | 5 |
WCA | 8538 | 2.930 | 1.460 | 1 | 5 |
WSS | 8532 | 2.960 | 1.340 | 1 | 5 |
WLK | 8592 | 2.930 | 1.370 | 1 | 5 |
WOI | 8552 | 3.240 | 1.310 | 1 | 5 |
PCA | 11,496 | 0.270 | 0.610 | 0 | 4 |
PLV | 11,488 | 0.460 | 0.500 | 0 | 1 |
PPW | 11,503 | 0.190 | 0.390 | 0 | 1 |
SPT | 11,479 | 0.290 | 0.460 | 0 | 1 |
CAF | 11,484 | 1.190 | 1.450 | 0 | 5 |
SSI | 11,511 | 1119 | 1434 | 0 | 14,400 |
Model | (1) | (2) | |
---|---|---|---|
Standard Error | OIM | Satorra–Bentler | |
A. Structural model | |||
Health→Participation | 0.1198 *** (10.14) | 0.1198 *** (14.58) | |
Health→Willingness | 0.6315 *** (16.53) | 0.6315 *** (16.87) | |
Security→Participation | −0.0001 *** (−16.53) | −0.0001 *** (−22.14) | |
Security→Willingness | 0.0002 *** (11.62) | 0.0002 *** (11.87) | |
Willingness→Participation | 0.0518 *** (7.31) | 0.0518 *** (10.37) | |
B. Measurement model | |||
Participation | PPW | 1.000 (.) | 1.000 (.) |
cons | 0.1995 *** (44.65) | 0.1995 *** (44.82) | |
PLV | 0.1501 *** (4.09) | 0.1501 *** (4.73) | |
cons | 0.4929 *** (88.51) | 0.4929 *** (88.51) | |
PCA | 0.2526 ** (2.20) | 0.2526 *** (5.48) | |
cons | 0.2960 *** (41.07) | 0.2960 *** (41.08) | |
Health | SRH | 1.000 (.) | 1.000 (.) |
cons | 3.3290 *** (277.91) | 3.3290 *** (277.90) | |
ADL | 2.6902 *** (32.17) | 2.6902 *** (17.93) | |
cons | 32.4645 *** (1862.10) | 32.4645 *** (1861.98) | |
SCA | 5.2608 *** (28.59) | 5.2608 *** (26.60) | |
cons | 25.9187 *** (980.61) | 25.9187 *** (980.55) | |
Willingness | WSS | 1.000 (.) | 1.000 (.) |
cons | 2.9728 *** (199.88) | 2.9728 *** (199.47) | |
WCA | 0.9473 *** (55.67) | 0.9473 *** (45.84) | |
cons | 2.9340 *** (180.55) | 2.9340 *** (180.27) | |
WLK | 0.7542 *** (34.25) | 0.7542 *** (45.28) | |
cons | 2.9412 *** (192.77) | 2.9412 *** (192.55) | |
WOI | 0.6009 *** (28.87) | 0.6009 *** (36.67) | |
cons | 3.2569 *** (223.04) | 3.2569 *** (222.85) | |
Security | SSI | 1.000 (.) | 1.000 (.) |
cons | 1335.6962 *** (79.89) | 1335.6962 *** (79.89) | |
SPT | 0.0002 *** (21.89) | 0.0002 *** (26.38) | |
cons | 0.3292 *** (62.90) | 0.3292 *** (62.90) | |
CAF | 0.0004 *** (19.67) | 0.0004 *** (22.67) | |
cons | 1.3208 *** (82.06) | 1.3208 *** (82.06) | |
C. Goodness-of-fit indices | N = 8061; ll = −201259.01; SRMR = 0.072; R2Willingness = 0.094; R2Participation = 0.332; R2total = 0.969 |
Model | (3) | (4) | (5) | (6) | (7) |
---|---|---|---|---|---|
Age Cohort | 60–64 | 65–69 | 70–74 | 75–79 | 80+ |
A. Structural Model | |||||
Health→Participation | 0.1598 *** (6.77) | 0.0748 *** (4.11) | 0.1049 *** (4.88) | 0.1045 *** (4.45) | 0.1145 *** (4.82) |
Health→Willingness | 0.3493 *** (2.98) | 0.5992 *** (4.43) | 0.7331 *** (5.83) | 0.9595 *** (8.69) | 0.6869 *** (10.67) |
Security→Participation | −0.0002 *** (−7.88) | −0.0001 *** (−6.51) | −0.0001 *** (−8.18) | −0.0001 *** (−6.51) | −0.0001 *** (−4.61) |
Security→Willingness | 0.0005 *** (7.18) | 0.0003 *** (8.35) | 0.0001 *** (4.09) | 0.0000 (0.18) | −0.0001 (−1.55) |
Willingness→Participation | 0.1082 *** (5.03) | 0.0715 *** (3.37) | 0.0439 *** (2.64) | 0.0236 ** (1.99) | 0.0093 (1.08) |
B. Measurement model | |||||
N | 3616 | 2399 | 1950 | 1690 | 1855 |
R2 | 0.977 | 0.963 | 0.965 | 0.972 | 0.972 |
Model | (8) | (9) |
---|---|---|
Gender cohort | Female | Male |
A. Structural model | ||
Health→Participation | 0.0693 *** (6.48) | 0.1068 *** (8.13) |
Health→Willingness | 0.6626 *** (12.33) | 0.7429 *** (11.10) |
Security→Participation | −0.0000 *** (−8.61) | −0.0001 *** (−9.43) |
Security→Willingness | 0.0002 *** (8.93) | 0.0001 *** (7.58) |
Willingness→Participation | 0.0267 *** (3.31) | 0.0515 *** (4.35) |
B. Measurement model | ||
N | 5945 | 5479 |
R2 | 0.993 | 0.988 |
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Yang, Y.; Meng, Y.; Dong, P. Health, Security and Participation: A Structural Relationship Modeling among the Three Pillars of Active Ageing in China. Int. J. Environ. Res. Public Health 2020, 17, 7255. https://doi.org/10.3390/ijerph17197255
Yang Y, Meng Y, Dong P. Health, Security and Participation: A Structural Relationship Modeling among the Three Pillars of Active Ageing in China. International Journal of Environmental Research and Public Health. 2020; 17(19):7255. https://doi.org/10.3390/ijerph17197255
Chicago/Turabian StyleYang, Yinan, Yingying Meng, and Pengtao Dong. 2020. "Health, Security and Participation: A Structural Relationship Modeling among the Three Pillars of Active Ageing in China" International Journal of Environmental Research and Public Health 17, no. 19: 7255. https://doi.org/10.3390/ijerph17197255
APA StyleYang, Y., Meng, Y., & Dong, P. (2020). Health, Security and Participation: A Structural Relationship Modeling among the Three Pillars of Active Ageing in China. International Journal of Environmental Research and Public Health, 17(19), 7255. https://doi.org/10.3390/ijerph17197255