scholarly journals Misspecification and flexible random effect distributions in logistic mixed effects models applied to panel survey data

2016 ◽  
Author(s):  
Louise Marquart-Wilson
Author(s):  
Aiko Wagner ◽  
Elena Werner

This chapter examines the effect of TV debates on political knowledge conditioned by the media context. We argue that TV debates take place in a wider media context and the extent of citizens’ learning processes about issue positions depends also on the informational context in general. We test four hypotheses: while the first three hypotheses concern the conditional impact of media issue coverage and debate content, the last hypothesis addresses the differences between incumbent and challenger. Using media content analyses and panel survey data, our results confirm the hypotheses that (1) when an issue is addressed in a TV debate, viewers tend to develop a perception of the parties’ positions on this issue, but (2) only if this issue has not been addressed extensively in the media beforehand. This learning effect about parties’ positions is bigger for the opposition party.


2009 ◽  
Vol 14 (4) ◽  
pp. 400-412 ◽  
Author(s):  
Paul P. Biemer ◽  
Sharon L. Christ ◽  
Christopher A. Wiesen

2017 ◽  
Vol 20 (4) ◽  
pp. 334-348
Author(s):  
Hansoo Lee ◽  
Jae-Mook Lee

This study examines the effects of viewing televised debates on political engagement. Voters consume information while viewing television debates, which can affect political engagement in a positive manner. Examining the effects of debates on political engagement, we analyze panel survey data from the 2012 Korean presidential election. According to the results, voters who view more televised debates are more likely to search for information and discuss political issues with others. The results provide evidence that viewing televised debates tends to enhance civic engagement.


2021 ◽  
pp. 146144482110478
Author(s):  
Homero Gil de Zúñiga ◽  
Manuel Goyanes

Prior scholarship has consistently shown that informed citizens tend to better understand government actions, expectations, and priorities, potentially mitigating radicalism such as partaking in illegal protest. However, the role of social media may prove this relationship to be challenging, with an increasingly pervasive use of applications such as WhatsApp for information and mobilization. Findings from a two-wave US panel survey data show that WhatsApp news is negatively associated to political knowledge and positively associated to illegal protest. Less politically knowledgeable citizens also tend to engage in illegal protest more frequently. Results also suggest an influential role of political knowledge in mediating the effects of WhatsApp news over illegal protests. Those who consume more news on WhatsApp tend to know less about politics which, in turn, positively relates to unlawful political protest activities. This study suggests that WhatsApp affordances provide fertile paths to nurture illegal political protest participation.


2015 ◽  
Vol 35 (6) ◽  
pp. 883-894 ◽  
Author(s):  
Jinsong Chen ◽  
Lei Liu ◽  
Ya-Chen T. Shih ◽  
Daowen Zhang ◽  
Thomas A. Severini

2018 ◽  
Author(s):  
Van Rynald T Liceralde ◽  
Peter C. Gordon

Power transforms have been increasingly used in linear mixed-effects models (LMMs) of chronometric data (e.g., response times [RTs]) as a statistical solution to preempt violating the assumption of residual normality. However, differences in results between LMMs fit to raw RTs and transformed RTs have reignited discussions on issues concerning the transformation of RTs. Here, we analyzed three word-recognition megastudies and performed Monte Carlo simulations to better understand the consequences of transforming RTs in LMMs. Within each megastudy, transforming RTs produced different fixed- and random-effect patterns; across the megastudies, RTs were optimally normalized by different power transforms, and results were more consistent among LMMs fit to raw RTs. Moreover, the simulations showed that LMMs fit to optimally normalized RTs had greater power for main effects in smaller samples, but that LMMs fit to raw RTs had greater power for interaction effects as sample sizes increased, with negligible differences in Type I error rates between the two models. Based on these results, LMMs should be fit to raw RTs when there is no compelling reason beyond nonnormality to transform RTs and when the interpretive framework mapping the predictors and RTs treats RT as an interval scale.


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