Browse > Article
http://dx.doi.org/10.5351/KJAS.2020.33.1.087

Applications of R package for statistical engineering  

Jang, Dae-Heung (Department of Statistics, Pukyong National University)
Publication Information
The Korean Journal of Applied Statistics / v.33, no.1, 2020 , pp. 87-105 More about this Journal
Abstract
Statistical engineering contains the design of experiments, quality control/management, and reliability engineering. R is a free software environment for statistical computing and graphics that is supported by the R Foundation for Statistical Computing. R package has many functions and libraries for statistical engineering. We can use R package as a useful tool for statistical engineering. This paper shows the applications of R package for statistical engineering and suggests a R Task View for statistical engineering.
Keywords
statistical engineering; R package; design of experiments; quality control/ management; reliability engineering;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Wilkinson, L. (2005). The Grammar of Graphics, Springer, New York.
2 Williams, G. J. (2017). The Essentials of Data Science, CRC Press, New York.
3 Boehmke, B. C. (2016). Data Wrangling, Springer, New York.
4 Baumer, B. S., Kaplan, D. T., and Horton, N. J. (2017). Modern Data Science with R, CRC Press, New York.
5 Cano, E. L., Moguerza, J. M., and Corcoba, M. P. (2015). Quality Control with R, Springer, New York.
6 Cano, E. L., Moguerza, J. M., and Redchuk, A. (2012). 2. Six Sigma with R, Springer, New York.
7 Jones, B. and Nachtsheim, C. J. (2011). A class of three-level designs for definitive screening in the presence of second-order effects, Journal of Quality Technology, 43, 1-15.   DOI
8 Jones, B. and Nachtsheim, C. J. (2013). Definitive screening designs with added two-level categorical factors, Journal of Quality Technology, 45, 121-129.   DOI
9 Juan, E. M. S., Edra, E. V., Sales, J. M., Lustre, A. O., and Resurreccion, A. V. A. (2006). Utilization of peanut fines in the optimization of peanut polvoron using mixture response methodology, International Journal of Food Science and Technology, 41, 768-774.   DOI
10 Lawson, J. (2015). Design and Analysis of Experiments with R, CRC Press, New York.
11 Qiu, P. (2014). Introduction to Statistical Process Control, CRC Press, New York.
12 Montgomery, D. C. (2013a). Design and Analysis of Experiments (8th ed), John Wiley, Singapore.
13 Montgomery, D. C. (2013b). Introduction to Statistical Quality Control (7th ed), John Wiley, New York.
14 Na, J. H. (2017). R Data Mining, Free Academy, Seoul.