Hello everybody
In the scope of my master's thesis, I should analyse a mixed ANOVA. I study postural control of children and adults during different surface conditions. The test procedure was the following: all participants, divided into age groups (16 children and 17 adults), stood on 4 balance boards of different difficulty. I went for a mixed ANOVA, with age group and surface condition as fixed effects and participant as random effect.
When checking the assumptions, the following problems appeared:
1) The residuals were not normally distributed. Transforming the data (log) solved this, but then I'm unsure about the quality of the conclusions. I have read about ANOVA's being robust and not to worry too much about this, is that right?
(Note: First, I ran a fit model (personality: mixed model), then I saved the residuals. Afterwards, the residuals were analyzed for distribution.)
2) When checking for homoscedasticity, this also appeared to be violated. When checking this for the data (without transformation), the next graph was found. I concluded this assumption to be violated.
When checking this for the Log(data) (with transformation), the next graph was found. I'm not sure about this one... This seems to be okay, but I'm still unsure about the transformation.
So right now, I'm not sure about how to handle these assumptions. Should I stick with the transformation, use another correction, or just rely on the robustness of an ANOVA?
Could you help me out with this one?
Thank you in advance!
P.S.: I'm not very confident using JMP and statistical models, so it would be nice if you replied using rather simple language.