Hi @William29,
Welcome in the Community !
Working with fractional factorial design seems a good idea regarding the number of factors you have.
Concerning your question with your quality factor, here are some ideas, options and questions to help you :
- A simple and straightforward approach would be to consider the quality factor as a categorical factor, with various levels : Low, Acceptable, Good, High for example. Depending on the number of levels, using this factor as a categorical one may greatly increase the required number of runs in your design.
- As the quality may be linked to some type of order (see previously the list) or ranking (1st quality, 2nd quality, 3rd quality), you could also use a discrete numeric factor for this variable. You would have to "code" and order the quality levels as 1, 2, 3 or other numbers (as the "gaps" between various quality levels may not be equidistant/homogeneous).
- Finally, I would perhaps consider examining what is driving this quality variable. Are there measurements or numerical characteristics to estimate the quality level ? If yes, you could perhaps use these direct measurements information in your design as continuous factors (possibly covariates as you may not have full control over the possible measured values and related quality levels).
No matter which option(s) you choose, using the platform Custom Design will help you include various factors types (numeric continuous with categorical, discrete numeric and/or covariates). You will also have full flexibility on the assumed model complexity, and you may add centre points (and replicate runs if necessary/possible), and choose an acceptable number of runs.
Hope this first discussion starter 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)