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Eldad Davidov, Holger Steinmetz, Peter Schmidt University of Gießen / Germany

With or without constraints? An empirical comparison of two approaches to estimate interaction effects in the theory of planned behavior. Eldad Davidov, Holger Steinmetz, Peter Schmidt University of Gießen / Germany Fan Yang - Wallentin University of Uppsala / Sweden. Outline.

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Eldad Davidov, Holger Steinmetz, Peter Schmidt University of Gießen / Germany

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  1. With or without constraints? An empirical comparison of two approaches to estimate interaction effects in the theory of planned behavior Eldad Davidov, Holger Steinmetz, Peter Schmidt University of Gießen / Germany Fan Yang-Wallentin University of Uppsala / Sweden

  2. Outline • Introduction • Goals • Data and measurements • Results • Summary and conclusions

  3. Introduction 1 • Many social psychological models postulate interaction effects • The most often applied one is the Theory of Reasoned Action (TRA; Ajzen & Fishbein, 1980) or in its newer form the Theory of Planned Behavior (TPB; Ajzen 1991) • The theory implies interaction effects • Van der Putte & Hoogstraten (1997): First test of the TRA in an SEM framework – but without interaction effects

  4. The Theory of Planned Behavior-TPB (Ajzen) Strength of beliefs about consequences x Evaluations of the Outcome Attitude towards the behavior Strength of beliefs about expectations x Motivation to comply Intention Behavior Subjective Norm Strength of beliefs about control factors x Evaluation of these control factors Perceived Behavioral Control (PBC)

  5. The Theory of Planned Behavior-TPB (Ajzen) Strength of beliefs about consequences x Evaluations of the Outcome Attitude towards The behavior Strength of beliefs about expectations x Motivation to comply Intention Behavior Subjective Norm Strength of beliefs about control factors x Evaluation of these control factors Perceived Behavioral Control (PBC)

  6. The Theory of Planned Behavior-TPB (Ajzen) Strength of beliefs about consequences x Evaluations of the Outcome Attitude towards The behavior Strength of beliefs about expectations x Motivation to comply Intention Behavior Subjective Norm Strength of beliefs about control factors x Evaluation of these control factors Perceived Behavioral Control (PBC)

  7. Introduction 2 • Generally, very few tests of interaction effects of TPB variables with real data. • For these few applications, there are no systematic accounts except for the meta-analyses in Yang-Wallentin, Schmidt, Davidov and Bamberg 2003. There was inconclusive evidence. • Behavioral research seldom use the sophisticated methods to test interaction effects with latent variables. • There are several methods to test an interaction between latent variables in SEM  Which method should one use?

  8. Goals • We compare two methods to test interaction effects: • The “constrained approach” (Jöreskog &Yang, 1996) and • the “unconstrained approach” (Marsh, Wen, & Hau, 2004) There are other methods but we focus on these two. • The constrained method is the first developed approach but complicated to use • The unconstrained is new and easy to use: it simply drops the constraints except for the following: • The means of the additive latent predictors are fixed to zero • The mean of the product term equals the covariance between the additive latent predictors • The unconstrained has only been evaluated with simulation studies – not with real data yet.

  9. Data Study • Real data from a theory-driven field study • Explanation of travel mode choice • Sample (N = 913) representative for the population in Frankfurt / Germany

  10. Measures Intention: “My intention to use public transport rather than the car for everyday purposes here in Frankfurt in the next weeks is … • … small – large” (rating 1 to 5) • … improbable – probable” (rating 1 to 5) • “I intend to use public transport rather than the car for everyday purposes here in Frankfurt in the next weeks (improbable-probable ) (1 to 5) Perceived behavioral control (PBC): • “It would be impossible-possible for me to use public transportation in Frankfurt… (ranging from 1 (not possible) to 5 (possible)) • “I am sure that I can use public transport rather than the car for everyday purposes here in Frankfurt in the next weeks …(ranging from 1 (not sure) to 5 (sure)) Behavior:Percentage of public transport use from the total use (car and public transport)

  11. Procedure Data • Centering predictor items • Creating product indicators • Calculating covariance matrix, asymptotic covariance matrix and mean vector • Robustified maximum likelihood (RML) Model A (Constrained approach, Jöreskog & Yang, 1996) • Various non-linear constraints involving item intercepts, error variances, factor loadings and latent variances Model B (Unconstrained approach; Marsh, Wen, & Hau, 2004) • The means of latent intention and PBC are 0 (k1 / k2 = 0) • The mean of the latent product term equals the covariance between both latent predictors (k3 = f12)

  12. PBC1 PBC 1.0 PBC2 Int1 1.0 Intention Behavior 1.0 % use Int2 Int3 PBC1Int1 1.0 IntPBC PBC1Int2 PBC1Int3 Model specification CO - - - - only unconstrained approach

  13. Results Note. SBc2 = Satorra-Bentler corrected c2

  14. Summary • In both approaches, we found a similar and significant interaction effect. • The additive effects differed. • This result may depend on the concrete data we used (pbc2 lacked discriminant validity). Therefore, we will replicate the model with two different real data sets. • Since the unconstrained approach is much more easy to use for the applied researcher, one can use it - but caution is still needed. • Since the simulation results are restricted to the specific setting, applications with real data can give additional information. In our case, 2 conditions have not been studied: - correlations higher than .40 between predictors - error covariances Future simulation studies should take this into account. 6) A full test of TPB with all of the interaction effects specified seems to be more feasible with the unconstrained approach

  15. Thank you very much for your attention!!!!

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