1 / 56

Eldad Davidov Together with Peter Schmidt and Shalom Schwartz (1st study), and with Jaak Billiet and Peter Schmidt (2nd

Bringing Values Back In: A Multiple Group Comparison with 20 Countries Using the European Social Survey 2003 Measurement, causes and consequences To be Presented in Lugano, QMSS, 24.08.06. Eldad Davidov

heba
Télécharger la présentation

Eldad Davidov Together with Peter Schmidt and Shalom Schwartz (1st study), and with Jaak Billiet and Peter Schmidt (2nd

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Bringing Values Back In:A Multiple Group Comparison with 20 Countries Using the European Social Survey 2003 Measurement, causes and consequencesTo be Presented in Lugano, QMSS, 24.08.06 Eldad Davidov Together with Peter Schmidt and Shalom Schwartz (1st study), and with Jaak Billiet and Peter Schmidt (2nd study)

  2. Why bringing values? • Weber; • Socio demographic variables may affect values, and values may affect attitudes and behavior. So values may be the black box in between. • This mediation can be different in different societies.

  3. Outline • 1) Theory and research questions. • 2) Data from European Social Survey –ESS and items. • 3) Results and conclusions • Invariance issues • Possibilities to compare value means • Causes • Consequences

  4. Questions We Want To Answer: • 1) How many values from the theory do we find in Europe? • 2) Can we compare the values across the countries? • 3) How are values that we find influenced by social demographic variables: gender, education and age? • 4) Do values affect attitudes towards foreigners, in particular allowing foreigners into the country and granting them rights?

  5. 1) Theory • Schwartz‘s measurement theory of values was first introduced in 1992. The theory describes universals in the content and the structure of individual values. It was measured previously by 10 distinct values and 40 items. The values are:

  6. The values: • Achievement (AC) Hedonism (HE) • Power (PO) Stimulation (ST) • Security (SEC) Self-Direction (SD) • Conformity (CO) Universalism (UN) • Tradition (TR) Benevolence (BE)

  7. Some values are closer to other values, and some values may oppose one another. For example, tradition may oppose hedonism. • Close values are expected to correlate positively and opposing values are expected to correlate negatively or not at all. • The 10 values create a continuum, which can be expressed graphically.

  8. Figure 1: Structural relations among the 10 values and the four higher values (see Devos, Spini, & Schwartz, 2002).

  9. In empirical studies values from adjacent types may intermix rather than emerge in clearly distinct regions. So in empirical studies it may happen that we will not find always ten distinct values.

  10. 2) The Data • The data we use is the first round of the European Social Survey on values, collected in 2003. It provides for the first time the opportunity to test Schwartz‘s value theory with representative and comparable across countries population surveys. Previously the theory had been tested by student surveys, or by representative data which was not comparable across countries.

  11. 20 Countries (2 Missing) • 20 countries: 1-AT (Austria), 2-BE (Belgium), 3-CH (Switzerland), 4-CZ (Czech Republic), 5-DE (Germany), 6-DK (Denmark), 7-ES (Spain), 8-FI (Finland), 9-FR (France), 10-GB (Great Britain), 11-GR (Greece), 12-HU (Hungary), 13-IE (Ireland), 14-IL (Israel), 15-IT(Italy, missing), 16-LU (Luxemburg, missing), 17-NL (Netherlands), 18-NO (Norway), 19-PL (Poland), 20-PT (Portugal), 21-SE (Sweden), 22-SL (Slovenia).

  12. The 21 ESS Items for Each Value • 1)      Power (PO): • Imprich/po1:Important to be rich, have money and expensive things. • Iprspot/po2: Important to get respect from others • 2)      Achievement (AC): • Ipshabt/ac1: Important to show abilities and be admired. • Ipsuces/ac2: Important to be successful and that people recognize achievements

  13. 3)      Hedonism (HE): • Ipgdtim/he1: Important to have a good time • Impfun/he2: Important to seek fun and things that give pleasure • 4)      Stimulation (ST): • Impdiff/st1: Important to try new and different things in life • Ipadvnt/st2: Important to seek adventures and have an exciting life

  14. 5)      Self-Direction (SD): • Ipcrtiv/sd1: Important to think new ideas and being creative • Impfree/sd2: Important to make own decisions and be free • 6)      Universalism (UN): • Ipeqopt/un1: Important that people are treated equally and have equal opportunities • Ipudrst/un2: Important to understand different people • Impenv/un3: Important to care for nature and environment

  15. 7)      Benevolence (BE): • Iphlppl/be1: Important to help people and care for others well-being • Iplylfr/be2: Important to be loyal to friends and devote to close people • 8)      Tradition (TR): • Ipmodst/tr1: Important to be humble and modest, not draw attention • Imptrad/tr2: Important to follow traditions and customs

  16. 9)      Conformity (CO): • Ipfrule/co1: Important to do what is told and follow rules • Ipbhprp/co2: Important to behave properly • 10) Security (SEC): • Impsafe/sec1: Important to live in secure and safe surroundings • Ipstrgv/sec2: Important that government is strong and ensures safety

  17. The range of the items Now I will briefly describe some people. Please listen to each description and tell me how much each person is or is not like you. • 1  Very much like me • 2  Like me • 3  Somewhat like me • 4  A little like me • 5  Not like me • 6  Not like me at all • 7  Refusal • 8  Don't know • 9  No answer

  18. 3) Descriptive Results of Items • The range of items across countries is not very large, but there are nevertheless differences. • In practice, social scientists often compare on the item level. Therefore, let’s look at some countries.

  19. Greece for example gives a clear picture: it has the highest scores for the values achievement, security, tradition, stimulation, universalism, power.

  20. How do other Mediterranean countries do? • Israel for example scores most highly in Europe only for two values- power and stimulation. • Spain for example scores most highly in Europe in three values- universalism, benevolence and tradition. So geography does not tell us the whole story.

  21. How is Germany doing? • In the middle golden way. Values tend to score around the average and there are no extreme items. • And Switzerland? • Switzerland is strongest in self-direction, hedonism and universalism, and weakest in conformity.

  22. However, Scandinavia tells us a different story. • Sweden for example has the lowest scores for universalism, benevolence, security and conformity. Maybe people know that the state takes care of the people so they do not feel the need to do it themselves. • Norway has the lowest scores for universalism, security and also self-direction. • So at least for some Scandinavian countries geography and social system have a similar story to tell.

  23. We would like to compare countries also on the value level, and not only on the item level as we are doing here. In such a way we can control for measurement error. • In order to be able to compare the means of the values (which are the constructs here), we first have to make sure the values mean the same thing all over Europe. • Ensuring that values mean the same can be done by showing measurement invariance, that the indicators are related to the values equally in all the countries.

  24. 3) Data Analysis 1) Twenty separate analyses for each country. 2) A multiple sample analysis of all 20 countries together.

  25. 1 • At first we computed 20 correlation matrices for each country separately using pairwise deletion for missing values (see Browne 1994 and Schafer and Graham 2002, which demonstrate why pairwise is better than listwise and adequate if there is no more than 5% missing values). • The correlations ranged from negative values for indicators belonging to constructs, which are theoretically apart in the map of indicators, to highly positive values for adjacent value constructs and for indicators belonging to the same construct.

  26. 1 • Then we tested the theory for each country separately. In all countries some constructs correlated too highly. In order to solve the problem of non positive definite matrices caused, we had to unify such constructs. • As a result we identified 5-8 values in the 20 countries

  27. 2 • Then we ran the simultanuous analysis for 20 countries

  28. Again we had to unify constructs correlating too highly causing non positive definite matrices. We ended up with identifying 7 values • The constructs unified were Power and Achievement, Conformity and Tradition, and Universalism and Benevolence

  29. Finally, according to modification indices, in order to improve the model five items intended to measure particular value constructs also had significant, negative, secondary loadings on motivationally opposed value constructs

  30. Answer to first Question • In simple words- we found a model which works for all the 20 European countries (configural invariance). • But- we have a model which has only 7 values and not 10.

  31. In order to answer the second question on differences in values between countries, we have to test for metric (measurement) invariance. Metric invariance will guarantee that the values mean the same over the 20 European countries

  32. Measurement Invariance: Equal factor loadings across groups Group A Group B dB11 Item a dA11 lB11=1 Item a lA11=1 fB11 k B1 fA11 k A1 B1 A1 lB21 lA21 dB22 dA22 Item b Item b lB31 lA31 Item c Item c dB33 dA33 fB21 fA21 dB44 dA44 Item d Item d lB42=1 lA42=1 B2 A2 lB52 lA52 Item e Item e dB55 dA55 lB62 lA62 fB22 k B2 fA22 k A2 dB66 dA66 Item f Item f

  33. Steps in testing for Measurement Invariance • Configural Invariance • Metric Invariance • Scalar Invariance • Invariance of Factor Variances • Invariance of Factor Covariances • Invariance of latent Means • Invariance of Unique Variances

  34. Steps in testing for Measurement Invariance • Configural Invariance • Metric Invariance • Equal factor loadings • Same scale units in both groups • Presumption for the comparison of latent means • Scalar Invariance • Invariance of Factor Variances • Invariance of Factor Covariances • Invariance of latent Means • Invariance of Unique Variances

  35. Full vs. Partial Invariance • Concept of ‘partial invariance’ introduced by Byrne, Shavelson & Muthén (1989) • Procedure • Constrain complete matrix • Use modification indices to find non-invariant parameters and then relax the constraint • Compare with the unrestricted model • Steenkamp & Baumgartner (1998): Two indicators with invariant loadings and intercepts are sufficient for mean comparisons • One of them can be the marker + one further invariant item

  36. We constrained the loadings of all items on the seven factors to be the same in each of the 20 countries • Fit indices suggest a reasonable fit for this model too, a fit sufficient not to reject the model (RMR=0.08, NFI=0.89, CFI=0.91, RMSEA=0.01 and PCLOSE=1.0)

  37. To conclude: we found also metric invariance: items are related to values equally in the different countries. • Therefore at least statistically comparing the means of the values across countries is substantially meaningful (to be sure we should do cognitive pretests in different countries, but we do not have them) • According to results of the invariance test, factor covariances vary considerably across countries

  38. The next test is scalar invariance. To guarantee scalar invariance, we have to set the intercepts to be equal across groups. • The global fit measures suggest we should reject this model. • Implication: Means of values cannot be compared meaningfully across groups. • Prospects for future possibilities to compare latent means (Little et al. 2006).

  39. In a new study (work in progress) we test effects of Gender, education and age on values According to Kohn/Schoenbach (1993) : • people with higher education  more self directed • people with higher education  less conformist According to Steinmetz, Schmidt, Tina-Booh and Wieczorek (in progress) • men  less universalist, and score higher on power in Germany According to Heyder, 2003 and dissertation (in progress) • Higher age  more conformist

  40. Gender 7 Values: Power and achievement Security Conformity and tradition Universalism and benevolence Self-Direction Stimulation Hedonism Education Age

  41. Men Power and Achievement Security Conformity and Tradition Universalism and Benevolence Self-Direction Stimulation Hedonism Higher Education Power and Achievement Security Conformity and Tradition Universalism and Benevolence Self-Direction Stimulation Hedonism Older Age Power and Achievement Security Conformity and Tradition Universalism and Benevolence Self-Direction Stimulation Hedonism Muslim Power and Achievement Security Conformity and Tradition Universalism and Benevolence Self-Direction Stimulation Hedonism Results Dark blue: for all countries higher, light blue:for most countries higher Dark gray: for all countries lower, light italic gray: for most lower Green: effects in different directions in differernt countries.

  42. In a new study…(work in progress) • We argue that values are more stable than attitudes (Ajzen/Fishbein, Eagly/Chaiken 1993) • This justifies using values to explain attitudes and opinions • Our intention is to explain two latent variables from the ESS 2003: Allowing immigrants into the country and Conditions to allow immigrants into the country

  43. Indicators • Allow into country is measured by 4 indicators: • D5: Allow many/few immigrants of different race/ethnic group from majority • D7: Allow many/few immigrants from poorer countries in Europe • D8: Allow many/few immigrants from richer countries outside Europe • D9: Allow many/few immigrants from poorer countries outside Europe • Scale: 1=allow many, 4=allow none

  44. Indicators 2 • Conditions to allow was measured by two indicators: • D10: Qualification for immigration: good educational qualifications • D16: Qualification for immigration: work skills needed in country • Scale: 0=extremely unimportant, 10=extremely important

More Related