qualityTools (1.55)

1 user

Statistical Methods for Quality Science.


Contains methods associated with the Define, Measure, Analyze, Improve and Control (i.e. DMAIC) cycle of the Six Sigma Quality Management methodology.It covers distribution fitting, normal and non-normal process capability indices, techniques for Measurement Systems Analysis especially gage capability indices and Gage Repeatability (i.e Gage RR) and Reproducibility studies, factorial and fractional factorial designs as well as response surface methods including the use of desirability functions. Improvement via Six Sigma is project based strategy that covers 5 phases: Define - Pareto Chart; Measure - Probability and Quantile-Quantile Plots, Process Capability Indices for various distributions and Gage RR Analyze i.e. Pareto Chart, Multi-Vari Chart, Dot Plot; Improve - Full and fractional factorial, response surface and mixture designs as well as the desirability approach for simultaneous optimization of more than one response variable. Normal, Pareto and Lenth Plot of effects as well as Interaction Plots; Control - Quality Control Charts can be found in the 'qcc' package. The focus is on teaching the statistical methodology used in the Quality Sciences.

Maintainer: Thomas Roth
Author(s): Thomas Roth

License: GPL-2

Uses: MASS, Rsolnp
Reverse depends: qcr

Released over 4 years ago.

19 previous versions



  (0 votes)


  (0 votes)

Log in to vote.


No one has written a review of qualityTools yet. Want to be the first? Write one now.

Related packages: AlgDesign, BHH2, BsMD, GroupSeq, SensoMineR, agricolae, blockTools, conf.design, crossdes, desirability, experiment, granova, lhs, qtlDesign, tgp, FrF2, dfcrm, DoE.base, EngrExpt, ez(20 best matches, based on common tags.)

Search for qualityTools on google, google scholar, r-help, r-devel.

Visit qualityTools on R Graphical Manual.