stats (version 3.3.3)

na.fail: Handle Missing Values in Objects

Description

These generic functions are useful for dealing with NAs in e.g., data frames. na.fail returns the object if it does not contain any missing values, and signals an error otherwise. na.omit returns the object with incomplete cases removed. na.pass returns the object unchanged.

Usage

na.fail(object, …)
na.omit(object, …)
na.exclude(object, …)
na.pass(object, …)

Arguments

object
an R object, typically a data frame
further arguments special methods could require.

Details

At present these will handle vectors, matrices and data frames comprising vectors and matrices (only). If na.omit removes cases, the row numbers of the cases form the "na.action" attribute of the result, of class "omit". na.exclude differs from na.omit only in the class of the "na.action" attribute of the result, which is "exclude". This gives different behaviour in functions making use of naresid and napredict: when na.exclude is used the residuals and predictions are padded to the correct length by inserting NAs for cases omitted by na.exclude.

References

Chambers, J. M. and Hastie, T. J. (1992) Statistical Models in S. Wadsworth & Brooks/Cole.

See Also

na.action; options with argument na.action for setting NA actions; and lm and glm for functions using these. na.contiguous as alternative for time series.

Examples

Run this code
DF <- data.frame(x = c(1, 2, 3), y = c(0, 10, NA))
na.omit(DF)
m <- as.matrix(DF)
na.omit(m)
stopifnot(all(na.omit(1:3) == 1:3))  # does not affect objects with no NA's
try(na.fail(DF))   #> Error: missing values in ...

options("na.action")

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