| Literature DB >> 29481556 |
Barbara Barbosa Neves1, Jaime R S Fonseca2, Fausto Amaro2, Adriano Pasqualotti3.
Abstract
Older adults (aged 65+) are still less likely to adopt the Internet when compared to other age groups, although their usage is increasing. To explore the societal effects of Internet usage, scholars have been using social capital as an analytical tool. Social capital pertains to the resources that are potentially available in one's social ties. As the Internet becomes a prominent source of information, communication, and participation in industrialized countries, it is critical to study how it affects social resources from an age-comparative perspective. Research has found a positive association between Internet use and social capital, though limited attention has been paid to older adults. Studies have also found a positive association between social capital and wellbeing, health, sociability, and social support amongst older adults. However, little is known about how Internet usage or lack thereof relates to their social capital. To address this gap, we used a mixed-methods approach to examine the relationship between Internet usage and social capital and whether and how it differs by age. For this, we surveyed a representative sample of 417 adults (18+) living in Lisbon, Portugal, of which 118 are older adults. Social capital was measured through bonding, bridging, and specific resources, and analyzed with Latent Class Modeling and logistic regressions. Internet usage was measured through frequency and type of use. Fourteen follow-up semi-structured interviews helped contextualize the survey data. Our findings show that social capital decreased with age but varied for each type of Internet user. Older adults were less likely to have a high level of social capital; yet within this age group, frequent Internet users had higher levels than other users and non-users. On the one hand, the Internet seems to help maintain, accrue, and even mobilize social capital. On the other hand, it also seems to reinforce social inequality and accumulated advantage (known as the Matthew effect).Entities:
Mesh:
Year: 2018 PMID: 29481556 PMCID: PMC5826529 DOI: 10.1371/journal.pone.0192119
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Sample characteristics (%, aged 18+).
| Female | 54.1 | |
| Male | 45.7 | |
| 18–34 | 24.4 | |
| 35–44 | 14.6 | |
| 45–64 | 32.5 | |
| 65+ | 28.2 | |
| Single | 28.5 | |
| Married/De facto | 54.1 | |
| Divorced/Separated | 6.2 | |
| Widowed | 11 | |
| One-Person Household | 17 | |
| Couple without children | 24.2 | |
| Nuclear family | 42.3 | |
| Other | 16.3 | |
| Employed | 56 | |
| Unemployed | 4.1 | |
| Student | 9.6 | |
| Retired | 26.1 | |
| Housewife | 2.9 | |
| No education | 1.7 | |
| Less than secondary education | 57.9 | |
| Secondary education | 23.4 | |
| University degree | 13.6 | |
| Master/PhD | 2.9 |
Note: Total percentages may not add up to 100, owing to rounding errors or missing values.
Dimensions and indicators of social capital.
| 1. Three items of the |
| 2. Number of close relatives |
| 3. Frequency of contact (Face-to-face/Telephone/Mobile phone/Internet; 1 = daily; 2 = at least once a week; 3 = at least once a month; 4 = rarely/never) |
| 4. Number of close friends |
| 5. Frequency of contact (Face-to-face/Telephone/Mobile phone/Internet; 1 = daily; 2 = at least once a week; 3 = at least once a month; 4 = rarely/never) |
| 1. Three items of the |
| 2. |
| 3. |
| 1. Do you know anyone who…? (Items from the |
Types and Internet use by age groups.
| Types & Internet Use | Age Groups (% within age group) | |||
|---|---|---|---|---|
| 18–34 | 35–44 | 45–64 | 65+ | |
| Non-user | 1 | 9.8 | 38.2 | 85 |
| Light-user | 2 | 1.6 | 4.4 | 3.4 |
| Moderate-user | 8.8 | 19.7 | 16.9 | 8.5 |
| Heavy-user | 88.2 | 68.9 | 40.4 | 7.6 |
| Emails | 68.3 | 80.4 | 78.6 | 72.7 |
| Uses IM | 57.4 | 39.3 | 25 | 27.3 |
| Uses SNSs | 42.6 | 19.6 | 22.6 | 13.6 |
Frequencies of bonding and bridging sub-scales (%).
| Bonding1 | Bonding2 | Bonding3 | Bridging1 | Bridging2 | Bridging3 | |
|---|---|---|---|---|---|---|
| Strongly disagree | 3.6 | 1.4 | 0.4 | 1.4 | 1 | 1.4 |
| Disagree | 17.3 | 19.2 | 7.9 | 4.8 | 17.5 | 7.9 |
| Neither agree, nor disagree | 10 | 20.6 | 5.8 | 13.2 | 38.4 | 24.8 |
| Agree | 61.4 | 51.1 | 74.6 | 69.8 | 37.1 | 56 |
| Strongly Agree | 7.7 | 7.7 | 11.3 | 10.8 | 6 | 9.9 |
Note: Bonding1 –“I do not know people well enough to get them to do anything important”. (Reversed)
Bonding2 –“When I feel lonely, there are several people I can talk to”.
Bonding3 –“If I need any help to solve my problems, I know several people available to help me”.
Bridging1 –“Interacting with people makes me interested in different ideas”
Bridging2 –“Interacting with people makes me feel connected to the bigger picture”
Bridging3 –“Interacting with people makes me want to try new things”
Model parameters’ estimates of social capital.
| Overall Probability | Class 1 | Class 2 |
|---|---|---|
| Class size | 0.6985 | 0.3015 |
| Low | 0.4517 | |
| High | 0.036 | |
| Low | 0.346 | |
| Medium | 0.2317 | |
| High | 0.0666 | |
| Yes | 0.2424 | |
| No | 0.3766 |
Note: The entries in bold refer to the categories that best characterise each class.
Profile of social capital.
| High (70%) | Low (30%) | |
|---|---|---|
| High | Low | |
| Medium; High | Low | |
| Yes | No |
Logit coefficients of the logistic regression model of social capital.
| S.E. | Wald | df | Sig. | Exp(B) | ||
|---|---|---|---|---|---|---|
| Age*Internet | 10.477 | 3 | 0.015 | |||
| Age by Internet(1) | -0.017 | 0.007 | 5.958 | 1 | 0.015 | 0.983 |
| Age by Internet(2) | -0.046 | 0.016 | 7.911 | 1 | 0.005 | 0.955 |
| Age by Internet(3) | -0.010 | 0.010 | 0.932 | 1 | 0.334 | 0.990 |
| Marital status | 10.552 | 3 | 0.015 | |||
| Marital status(1) | 3.552 | 1.168 | 9.252 | 1 | 0.002 | 34.866 |
| Marital status(2) | 0.173 | 0.812 | 0.045 | 1 | 0.831 | 1.189 |
| Marital status(3) | 1.197 | 0.824 | 2.111 | 1 | 0.146 | 3.310 |
| Household | 12.881 | 3 | 0.005 | |||
| Household(1) | -2.129 | 0.648 | 10.799 | 1 | 0.001 | 0.119 |
| Household(2) | -0.614 | 0.724 | 0.720 | 1 | 0.396 | 0.541 |
| Household(3) | -0.012 | 0.721 | 0.000 | 1 | 0.987 | 0.988 |
| Constant | 2.115 | 0.709 | 8.894 | 1 | 0.003 | 8.293 |
Notes:
I. The model is significant (G2 (9) = 80.830; p ≤ 0.001) and fits the data well, according to the Hosmer and Lemeshow test (x2HL (7) = 5.850, p = 0.577). The pseudo R-squares are: R2N = 34%, R2CS = 21%. This fitted model classified correctly 85 per cent of the cases: sensitivity was 97.9 per cent and specificity was 29.5 per cent, which shows that the classification of this fitted model was proportionally higher than a classification obtained by chance. Despite the relatively low specificity, the ROC Curve analysis presents an excellent discriminant capacity (ROC c = 0.812; p ≤ 0.001).
II. Variables
- Internet(1) = Non-user; Internet(2) = Light user; Internet(3) = Moderate user; Baseline = Heavy user.
- Marital status(1) = Single; Marital status(2) = Married/De facto; Marital status(3) = Divorced/Separated; Baseline = Widowed.
- Household(1) = One-person households; Household(2) = Couples without children; Household(3) = Couples with children; Baseline = Other household type.
Fig 1Mean predicted probabilities of social capital by age group and Internet usage.
Types of Internet use & sociodemographics (interviewees).
| Pseudonym | Gender | Age | Education | Occupation | |
|---|---|---|---|---|---|
| Guinaldo | M | 63 | Undergraduate degree | Lawyer | |
| Clara | F | 60 | Graduate degree (Ph.D.) | Pediatrician | |
| Susete | F | 54 | Secondary education | Housewife | |
| João Nuno | M | 67 | Secondary education | Retired (former IT technician) | |
| Francisca | F | 31 | Graduate degree (Ph.D.) | Lecturer | |
| Cassandra | F | 26 | Undergraduate degree | Artist | |
| Daniel | M | 31 | Undergraduate degree | Journalist | |
| Paulo | M | 75 | Secondary education | Retired (former bank clerk) | |
| Pedro Lopes | M | 45 | Undergraduate degree | Flight attendant | |
| Maria | F | 67 | Undergraduate degree | Retired (former jurist) | |
| Marina | F | 39 | Secondary education | Assistant in a day care center | |
| Irene | F | 85 | Secondary education | Retired (former public servant) | |
| Sara | F | 74 | Primary education | Retired (former housewife) | |
| Fernando Jorge | M | 83 | Primary education | Retired (former construction worker) |