Technologies /Analytics / Statistics

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Statistical Analysis with SAS/STAT® Software

Providing the foundation for SAS' analytic intelligence

Features

Analysis of variance

  • Balanced and unbalanced designs; multivariate analysis of variance and repeated measurements; linear and nonlinear mixed models.

Mixed models

  • Linear mixed models.
  • Nonlinear mixed models.
  • Generalize linear mixed models.

Regression

  • Least squares regression with nine model selection techniques, including stepwise regression.
  • Diagnostic measures.
  • Robust regression; Loess regression.
  • Nonlinear regression and quadratic response surface models.
  • Partial least squares.

Categorical data analysis

  • Contingency tables and measures of association.
  • Logistic regression and log linear models; generalized linear models.
  • Bioassay analysis.
  • Generalized estimating equations.
  • Weighted least squares regression.
  • Exact methods.

Bayesian analysis

  • Bayesian modeling and inference for generalized linear models, accelerated life failure models, Cox regression models and piecewise exponential models.
  • General procedure fits Bayesian models with arbitrary priors and likelihood functions.

Multivariate analysis

  • Factor analysis; principal components; canonical correlation and discriminate analysis; path analysis; structural equations.

Survival analysis

  • Comparison of survival distributions; accelerated failure time models; proportional hazards models.

Psychometric analysis

  • Multidimensional scaling; conjoint analysis with variable transformations; correspondence analysis.

Cluster analysis

  • Hierarchical clustering of multivariate data or distance data; disjoint clustering of large data sets; nonparametric clustering with hypothesis tests for the number of clusters.

Nonparametric analysis

  • Nonparametric analysis of variance. Exact probabilities computed for many nonparametric statistics.
  • Kruskal-Wallis, Wilcoxon-Mann-Whitney and Friedman tests.
  • Other rank tests for balanced or unbalanced one-way or two-way designs.

Survey data analysis

  • Sample selection; descriptive statistics and t-tests; linear and logistic regression; frequency table analysis.

Multiple imputation for missing values

  • Regression and propensity scoring for monotone missing patterns.
  • MCMC method for arbitrary missing patterns.
  • Combine results for statistically valid inferences.

Study planning

  • Power and Sample Size application provides interface for computation of sample sizes and characterization of power for t-tests, confidence intervals, linear models, tests of proportions and rank tests for survival analysis.

Download the complete SAS/STAT Fact Sheet.

 

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