Hello @MANOVALogKoala1,
Could you please describe which platform do you use (I guess "Fit Model" for detecting main effects and interactions, and "Fit Y by X" for ANOVA ?) ? It may also be wiser to add "0" in your control source, so that your control group is not considered as "missing value" (and stop you from looking at the control results in the different platforms).
- For the platform "Fit Model" I don't have enough informations about the modeling options you have chosen, but a good start would be to test if your block effect is significant or not through the "Mixed Model" personality. You can add a column property in your "Block column" by adding the "Design role" : blocking, and changing the data type from numeric continuous to numeric nominal. Then, you list your effect : N rate, N source and N rate x N source, and you add your "Block" column as a "Random Effect".
When you launch the analysis, you should have this screen (see Mixed_model_test image). Looking at the Wald p-value, your blocking parameter doesn't look significant, so it may be removed in further analysis (for example in relaunching the "Fit Model" platform with different personality, like Standard Least Squares (JMP) or Generalized Regression (JMP Pro) with the correct response distribution in the "Distribution" option (in your test data, response distribution looks like Weibull distribution).
- For the platform "Fit Y by X" (ANOVA), you have the choice depending on your goal :
- If your goal is to compare effect of source vs. a control source 0, then you can choose Dunnett's test, which will only compare each candidate source with the control group 0. It will not do comparisons between candidate sources.
- If your goal is to compare each source effect depending on the response, then Tukey may be appropriate (see image).
Be careful in your analysis with "Fit Y by X", as Tukey or Dunnett tests are parametric tests, so you need to verify three assumptions in your data : independence of observations, normality (or close to normality), and equal variances. Here, looking at the test data, equal variances might not be respected (that might be due to low samples sizes), and you have only an approximate normality when looking at Normal Quantile Plot. To have more confidence in your statistical testing, I would recommend using non-parametrical tests : Steel with Control (non-parametric equivalent to Dunnett) or Steel-Dwass, All Pairs (non parametric equivalent to Tukey test).
I hope it will help you,
Victor GUILLER
L'Oréal Data & Analytics
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)