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Hmisc (version 5.2-1)

biVar: Bivariate Summaries Computed Separately by a Series of Predictors

Description

biVar is a generic function that accepts a formula and usual data, subset, and na.action parameters plus a list statinfo that specifies a function of two variables to compute along with information about labeling results for printing and plotting. The function is called separately with each right hand side variable and the same left hand variable. The result is a matrix of bivariate statistics and the statinfo list that drives printing and plotting. The plot method draws a dot plot with x-axis values by default sorted in order of one of the statistics computed by the function.

spearman2 computes the square of Spearman's rho rank correlation and a generalization of it in which x can relate non-monotonically to y. This is done by computing the Spearman multiple rho-squared between (rank(x), rank(x)^2) and y. When x is categorical, a different kind of Spearman correlation used in the Kruskal-Wallis test is computed (and spearman2 can do the Kruskal-Wallis test). This is done by computing the ordinary multiple R^2 between k-1 dummy variables and rank(y), where x has k categories. x can also be a formula, in which case each predictor is correlated separately with y, using non-missing observations for that predictor. biVar is used to do the looping and bookkeeping. By default the plot shows the adjusted rho^2, using the same formula used for the ordinary adjusted R^2. The F test uses the unadjusted R2.

spearman computes Spearman's rho on non-missing values of two variables. spearman.test is a simple version of spearman2.default.

chiSquare is set up like spearman2 except it is intended for a categorical response variable. Separate Pearson chi-square tests are done for each predictor, with optional collapsing of infrequent categories. Numeric predictors having more than g levels are categorized into g quantile groups. chiSquare uses biVar.

Usage

biVar(formula, statinfo, data=NULL, subset=NULL,
      na.action=na.retain, exclude.imputed=TRUE, ...)

# S3 method for biVar print(x, ...)

# S3 method for biVar plot(x, what=info$defaultwhat, sort.=TRUE, main, xlab, vnames=c('names','labels'), ...)

spearman2(x, ...)

# S3 method for default spearman2(x, y, p=1, minlev=0, na.rm=TRUE, exclude.imputed=na.rm, ...)

# S3 method for formula spearman2(formula, data=NULL, subset, na.action=na.retain, exclude.imputed=TRUE, ...)

spearman(x, y)

spearman.test(x, y, p=1)

chiSquare(formula, data=NULL, subset=NULL, na.action=na.retain, exclude.imputed=TRUE, ...)

Value

spearman2.default (the function that is called for a single x, i.e., when there is no formula) returns a vector of statistics for the variable.

biVar, spearman2.formula, and chiSquare return a matrix with rows corresponding to predictors.

Arguments

formula

a formula with a single left side variable

statinfo

see spearman2.formula or chiSquare code

data, subset, na.action

the usual options for models. Default for na.action is to retain all values, NA or not, so that NAs can be deleted in only a pairwise fashion.

exclude.imputed

set to FALSE to include imputed values (created by impute) in the calculations.

...

other arguments that are passed to the function used to compute the bivariate statistics or to dotchart3 for plot.

na.rm

logical; delete NA values?

x

a numeric matrix with at least 5 rows and at least 2 columns (if y is absent). For spearman2, the first argument may be a vector of any type, including character or factor. The first argument may also be a formula, in which case all predictors are correlated individually with the response variable. x may be a formula for spearman2 in which case spearman2.formula is invoked. Each predictor in the right hand side of the formula is separately correlated with the response variable. For print or plot, x is an object produced by biVar. For spearman and spearman.test x is a numeric vector, as is y. For chiSquare, x is a formula.

y

a numeric vector

p

for numeric variables, specifies the order of the Spearman rho^2 to use. The default is p=1 to compute the ordinary rho^2. Use p=2 to compute the quadratic rank generalization to allow non-monotonicity. p is ignored for categorical predictors.

minlev

minimum relative frequency that a level of a categorical predictor should have before it is pooled with other categories (see combine.levels) in spearman2 and chiSquare (in which case it also applies to the response). The default, minlev=0 causes no pooling.

what

specifies which statistic to plot. Possibilities include the column names that appear with the print method is used.

sort.

set sort.=FALSE to suppress sorting variables by the statistic being plotted

main

main title for plot. Default title shows the name of the response variable.

xlab

x-axis label. Default constructed from what.

vnames

set to "labels" to use variable labels in place of names for plotting. If a variable does not have a label the name is always used.

Author

Frank Harrell
Department of Biostatistics
Vanderbilt University
fh@fharrell.com

Details

Uses midranks in case of ties, as described by Hollander and Wolfe. P-values for Spearman, Wilcoxon, or Kruskal-Wallis tests are approximated by using the t or F distributions.

References

Hollander M. and Wolfe D.A. (1973). Nonparametric Statistical Methods. New York: Wiley.

Press WH, Flannery BP, Teukolsky SA, Vetterling, WT (1988): Numerical Recipes in C. Cambridge: Cambridge University Press.

See Also

combine.levels, varclus, dotchart3, impute, chisq.test, cut2.

Examples

Run this code
x <- c(-2, -1, 0, 1, 2)
y <- c(4,   1, 0, 1, 4)
z <- c(1,   2, 3, 4, NA)
v <- c(1,   2, 3, 4, 5)

spearman2(x, y)
plot(spearman2(z ~ x + y + v, p=2))

f <- chiSquare(z ~ x + y + v)
f

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