Function | Purpose Statement |
---|---|
Analyzes a balanced complete experimental design for a fixed, random, or mixed model. | |
Analyzes a balanced incomplete block design or a balanced lattice design. | |
Computes the sample autocorrelation function of a stationary time series. | |
Returns a character given its ASCII value | |
Produces population and cohort life tables. | |
Performs an Anderson‑Darling test for normality. | |
Evaluates the cumulative distribution function of the one‑sided Kolmogorov‑Smirnov goodness‑of‑fit D+ or D− test statistic based on continuous data for one sample. | |
Evaluates the cumulative distribution function of the Kolmogorov‑Smirnov goodness‑of‑fit D test statistic based on continuous data for two samples | |
Analyzes a Latin square design. | |
Evaluates the lognormal cumulative probability distribution function. | |
This function evaluates the inverse of the lognormal cumulative probability distribution function. | |
Evaluates the lognormal probability density function. | |
Retrieves machine constants. | |
Evaluates Mill's ratio (the ratio of the ordinate to the upper tail area of the standardized normal distribution). | |
Analyzes a completely nested random model with possibly unequal numbers in the subgroups. | |
Evaluates the normal probability density function. | |
Evaluates the standard normal (Gaussian) cumulative distribution function. | |
Evaluates the inverse of the standard normal (Gaussian) cumulative distribution function. | |
Analyzes a balanced n‑way classification model with fixed effects. | |
Analyzes a one‑way classification model with covariates. | |
Analyzes a one‑way classification model. | |
Calculates the rational power spectrum for an ARMA model. | |
Computes method of moments estimates of the autoregressive parameters of an ARMA model. | |
Analyzes a randomized block design or a two‑way balanced design. | |
Automatically identifies time series outliers, determines parameters of a multiplicative seasonal ARIMA (p,0,q) × (0,d,0)s model, and produces forecasts that incorporate the effects of outliers whose effects persist beyond the end of the series. | |
Automatic selection and fitting of a multivariate autoregressive time series model using Akaike’s Multivariate Final Prediction Error (MFPE) criteria. | |
Automatic selection and fitting of a univariate autoregressive time series model using Akaike’s Final Prediction Error (FPE) criteria. | |
Automatic selection and fitting of a multivariate autoregressive time series model. | |
Estimates structural breaks in non‑stationary univariate time series. | |
Automatic selection and fitting of a multivariate autoregressive time series model. |