| Literature DB >> 34855829 |
Hadi Sam Nariman1,2, Lan Anh Nguyen Luu3, Márton Hadarics4.
Abstract
Using the 9th round of European Social Survey (ESS), we explored the relationship between Europeans' basic values and their attitudes towards immigrants. Employing a latent class analysis (LCA), we classified the respondents based on three items capturing the extent to which participants would support allowing three groups of immigrants to enter and live in their countries: immigrants of same ethnic groups, immigrants of different ethnic groups, and immigrants from poorer countries outside Europe. Four classes of Europeans with mutually exclusive response patterns with respect to their inclusive attitudes towards immigrants were found. The classes were named Inclusive (highly inclusive), Some (selective), Few (highly selective), and Exclusive (highly exclusive). Next, using a network technique, a partial correlation network of 10 basic human values was estimated for each class of participants. The four networks were compared to each other based on three network properties namely: global connectivity, community detection, and assortativity coefficient. The global connectivity (the overall level of interconnections) between the 10 basic values was found to be mostly invariant across the four networks. However, results of the community detection analysis revealed a more complex value structure among the most inclusive class of Europeans. Further, according to the assortativity analysis, as expected, for the most inclusive Europeans, values with similar motivational backgrounds were found to be interconnected most strongly to one another. We further discussed the theoretical and practical implications of our findings.Entities:
Mesh:
Year: 2021 PMID: 34855829 PMCID: PMC8638986 DOI: 10.1371/journal.pone.0260624
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Schwartz value circle depicting the relations between 10 values and several value groupings [35,40].
Sample sizes and descriptive statistics for age and gender by country.
| Country |
| % Females | |
|---|---|---|---|
| Austria | 2416 | 54.1 | 52.2 (17.5) |
| Belgium | 1689 | 50.8 | 49.1 (18.5) |
| Bulgaria | 1949 | 54.1 | 55.7 (16.9) |
| Cyprus | 760 | 52.9 | 54.8 (18.3) |
| Czechia | 2356 | 55.9 | 49.3 (17.3) |
| Estonia | 1843 | 56.3 | 51.7 (18.6) |
| Finland | 1674 | 51.2 | 52.1 (18.2) |
| France | 1928 | 54.5 | 53.2 (18.4) |
| Germany | 2258 | 49 | 50.8 (18.3) |
| Hungary | 1603 | 57 | 51.7 (18.0) |
| Ireland | 2140 | 52.6 | 52.6 (17.4) |
| Italy | 2 617 | 52.8 | 51.9 (18.9) |
| Netherlands | 1569 | 50.4 | 50.2 (17.8) |
| Norway | 1308 | 44.6 | 48.4 (17.5) |
| Poland | 1416 | 52.4 | 48.8 (18.1) |
| Serbia | 1962 | 51.5 | 54.0 (17.5) |
| Slovenia | 1260 | 53.8 | 50.4 (18.1) |
| Switzerland | 1440 | 49.7 | 48.7 (18.1) |
| United Kingdom | 2135 | 54.7 | 52.9 (18.1) |
Note. M and SD indicate mean and standard deviation respectively.
Model fit comparisons from 2-class to 6-class model solutions.
| Number of classes | AIC | BIC | entropy | VLMR ( |
|---|---|---|---|---|
| 2 | 223449 | 223610 | .89 | < .001 |
| 3 | 200344 | 200589 | .92 | < .001 |
|
|
|
|
|
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| 5 | 190519 | 190933 | .79 | .06 |
| 6 | 190429 | 190928 | .74 | .81 |
Note. AIC and BIC decrease as the model fit improves.
The probabilities of the participants’ responses on their inclusive towards immigrants by class membership.
| Indicatior Variables | Class | ||||
|---|---|---|---|---|---|
| Inclusive | Some | Few | Exclusive | ||
| imsmetn | |||||
| Allow many |
| 16% | 7% | 4% | |
| Allow some | 2% |
| 35% | 14% | |
| Allow a few | 0% | 2% |
| 25% | |
| Allow none | 0% | 0% | 1% |
| |
| imdfetn | |||||
| Allow many |
| 1% | 0% | 0% | |
| Allow some | 5% |
| 4% | 0% | |
| Allow a few | 0% | 6% |
| 3% | |
| Allow none | 0% | 1% | 7% |
| |
| impcntr | |||||
| Allow many |
| 3% | 1% | 0% | |
| Allow some | 15% |
| 10% | 3% | |
| Allow a few | 2% | 15% |
| 8% | |
| Allow none | 1% | 2% | 14% |
| |
Note. imsmetn = Allow many/few immigrants of same race/ethnic group as majority; imdfetn = Allow many/few immigrants of different race/ethnic group from majority; impcntr = Allow many/few immigrants from poorer countries outside Europe.
Results of multinomial logistic regressions for predicting class membership by the covariates (Inclusive class as the reference category).
| Variables | Exclusive | Few | Some |
|---|---|---|---|
| Political Interest | .24 | .08 | -.02 |
| Political Ideology | .28 | .25 | .15 |
| Imbgeco | -.68 | -.41 | -.21 |
| Imueclt | -.49 | -.38 | -.22 |
| Imwbcnt | -.50 | -.35 | -.17 |
| Gender | -.17 | -.24 | -.18 |
| Age | .03 | .03 | .02 |
| Education | -.08 | -.03 | -.006 |
| Security | -.32 | -.29 | -.22 |
| Conformity | -.15 | -.05 | .001 |
| Tradition | -.11 | -.13 | -.10 |
| Benevolence | .26 | .26 | .13 |
| Universalism | .93 | .67 | .40 |
| Self-direction | .09 | .06 | .04 |
| Stimulation | -.02 | -.02 | -.006 |
| Hedonism | -.03 | -.03 | .03 |
| Achievement | -.08 | -.07 | -.08 |
| Power | -.07 | -.06 | -.03 |
Note.
*** = p < .001
** = p < .01
* = p < .05. imbgeco = immigration is good or bad for economy; imueclt = whether immigration undermines or enriches culture; imwbcnt = immigration makes the country better or worse place to live.
Fig 2Partial correlation networks estimated for the 4 classes found in the LCA.
Red lines depict negative partial correlations, and the green lines represent positive partial correlations. Node with the same color belong to the same community. The thickness of the lines represents the magnitude of the correlation coefficients. SD = Self-Direction; ST = Stimulation; HE = Hedonism; AC = Achievement; PO = Power; SE = Security; CO = Conformity; TR = Tradition; BE = Benevolence; UN = Universalism.