Interpreting Mixed Model Analysis (Fixed and Simple Effects Table)
Posted: Tue Jul 09, 2024 6:29 am
Hello Jamovi Community,
My name is Burhan, and I am currently pursuing a master's degree in cognitive psychology and conducting my first research project.
I decided to analyze my experiment using a mixed model with 2 (between-subjects variables: condition 0 or 1) * 4 (disruption 0, 1, 2, or 3) * (3: time 0 early, 1 mid, 2 late) within-subjects.
Briefly about the experiment: participants are assigned to one of two conditions (0 or 1) based on a specific pre-phase condition. They then see some stimuli on the screen, some of which are coded as disruption 0-1-2 or 3. While participants watch these stimuli, they provide key-press data (0 no press or 1 press). The duration from the start to the end of the experiment is divided into three parts: early, mid, and late (0-1-2). We aim to see how these keypresses differ between the control group and the experimental condition at the relevant disruption points and whether this effect changes over time.
When setting up my mixed model, I assign subjects as random effects and the response as the dependent variable. I then enter the nominal variables condition, disruption, and time as factors.
Here, I share the drive link for my model analysis jamovi output PDF: https://drive.google.com/file/d/1TG8De7 ... sp=sharing
As the omnibus test output shows, I have significant effects for condition, disruption, and the interaction effect of conditiondisruptiontime category.
Later, since I am interested in group response comparison at specific manipulation points (and its relative change according to time), I look at the simple effects table. But there, although I see the effects that are observable on my plot, I do not know if I need to use a p-value correction for them? Because all those simple effect tests are valuable to me, and if I would do corrections, my effects are lost...
General questions about my analysis:
1-) Is my model structure correct for what I intend to test?
2-) Is it appropriate to look at the simple effects to see the changes in the comparisons I want according to the interaction results in the omnibus test?
3-) Are the comparisons in the simple effect corrected for p-value?
4-) If the simple effect comparisons are not corrected and I need to correct them, my effects may be lost due to conservativeness. In this case, is it possible for me to get the comparisons I want from the fixed effects parameter estimates table?
5-) Can I not see the effect size of my model for comparisons? Or which effect size should I report?
Thank you in advance for your patience and answers. If my work gets published one day, I would like to thank you again as well.
My name is Burhan, and I am currently pursuing a master's degree in cognitive psychology and conducting my first research project.
I decided to analyze my experiment using a mixed model with 2 (between-subjects variables: condition 0 or 1) * 4 (disruption 0, 1, 2, or 3) * (3: time 0 early, 1 mid, 2 late) within-subjects.
Briefly about the experiment: participants are assigned to one of two conditions (0 or 1) based on a specific pre-phase condition. They then see some stimuli on the screen, some of which are coded as disruption 0-1-2 or 3. While participants watch these stimuli, they provide key-press data (0 no press or 1 press). The duration from the start to the end of the experiment is divided into three parts: early, mid, and late (0-1-2). We aim to see how these keypresses differ between the control group and the experimental condition at the relevant disruption points and whether this effect changes over time.
When setting up my mixed model, I assign subjects as random effects and the response as the dependent variable. I then enter the nominal variables condition, disruption, and time as factors.
Here, I share the drive link for my model analysis jamovi output PDF: https://drive.google.com/file/d/1TG8De7 ... sp=sharing
As the omnibus test output shows, I have significant effects for condition, disruption, and the interaction effect of conditiondisruptiontime category.
Later, since I am interested in group response comparison at specific manipulation points (and its relative change according to time), I look at the simple effects table. But there, although I see the effects that are observable on my plot, I do not know if I need to use a p-value correction for them? Because all those simple effect tests are valuable to me, and if I would do corrections, my effects are lost...
General questions about my analysis:
1-) Is my model structure correct for what I intend to test?
2-) Is it appropriate to look at the simple effects to see the changes in the comparisons I want according to the interaction results in the omnibus test?
3-) Are the comparisons in the simple effect corrected for p-value?
4-) If the simple effect comparisons are not corrected and I need to correct them, my effects may be lost due to conservativeness. In this case, is it possible for me to get the comparisons I want from the fixed effects parameter estimates table?
5-) Can I not see the effect size of my model for comparisons? Or which effect size should I report?
Thank you in advance for your patience and answers. If my work gets published one day, I would like to thank you again as well.