References
- American Supplier Institute (1998). Robust Designs Using Taguchi Methods, ASI Press, Livonia, MI.
- Chambers, J. M. and Hastie, T. J. (1992). Statistical Models in S. Wadsworth and Brooks, Pacific Grove, CA.
- Cox, D. R. and Reid, N. (1987). “Parameter Orthogonality and Approximate Inference”. Journal of the Royal Statistical Society B 49, pp. 1–39.
- Dobson, A. J. (1990). An Introduction to Generalized Linear Models. Chapman and Hall, New York, NY.
- Lee, Y. and Nelder, J. A. (1998). “Generalized Linear Models for the Analysis of Quality-Improvement Experiments”. The Canadian Journal of Statistics 26, pp. 95–105.
- Lee, Y. and Nelder, J. A. (2003). “Robust Design via Generalized Linear Models”. The Journal of Quality Technology 35, pp. 2–12.
- Lunani, M.; Nair, V. N.; and wasserman, G. S. (1997). “Graphical Methods for Robust Design with Dynamic Characteristics”. Journal of Quality Technology 29, pp. 327–338.
- McCullagh, P. and Nelder, J. A. (1989). Generalized Linear Models 2nd ed. Chapman and Hall, London, UK.
- Miller, A. (2002). “Analysis of Parameter Design Experiments for Signal-Response Systems”. Journal of Quality Technology 34, pp. 139–151.
- Miller, A. and Wu, C. F. J. (1996). “Parameter Design for Signal-Response Systems: A Different Look at Taguchi's Dynamic Parameter Design”. Statistical Science 11, pp. 122136.
- Nair, V.; Abraham, B.; MacKay, J.; Box, G.; Lorenzen, T.; Lucas, J.; Myers, R.; Vining, G.; Nelder, J.; Phadke, M.; Sacks, J.; Welch, W.; Shoemaker, A.; Kwok, T.; Taguchi, S.; Wu, J. (1992). “Taguchi's Parameter Design: A Panel Discussion”. Technometrics 34, pp. 127–159.
- Nair, V.; Taam, W.; and Ye, K. Q. (2002). “Analysis of Functional Responses From Robust Design Studies”. Journal of Quality Technology 34, pp. 355–370.
- Nelder, J. A. and Lee, Y. (1991). “Generalized Linear Models for the Analysis of Taguchi-Type Experiments”. Applied Stochastic Models and Data Analysis 7, pp. 107–120.
- Nelder, J. A. and Pregibon, D. (1987). “An Extended Quasi-likelihood Function”. Biometrika 74, pp. 221–32.
- SAS Institute Inc. (1999). SAS version 8.01, Cary, NC.
- Taguchi, G. (1991a). Taguchi Methods, Signal-to-Noise Ratio for Quality Evaluation, Vol. 1. American Supplier Institute Press, Dearborn, MI.
- Taguchi, G. (1991b). Taguchi Methods, Signal-to-Noise Ratio for Quality Evaluation, Vol. 3. American Supplier Institute Press, Dearborn, MI.
- Wu, C. F. J. and Hamada, M. (2000). Experiments: Planning, Analysis and Parameter Design Optimization. John Wiley, New York, NY.