manylm is used to fit multivariate linear models
to high-dimensional data, such as multivariate abundance data in ecology.
This is the base model-fitting function - see plot.manylm for 
assumption checking, and anova.manylm or summary.manylm 
for significance testing.manylm(
   formula, data=NULL,  subset=NULL, weights=NULL, 
   na.action=options("na.action"),  method="qr", model=FALSE, 
   x=TRUE, y=TRUE, qr=TRUE, singular.ok=TRUE, contrasts=NULL, 
   offset, test="LR" , cor.type= "I", shrink.param=NULL, 
   tol=1.0e-5, ...)"formula" (or one that
    can be coerced to that class): a symbolic description of the
    model to be fitted. The details of model specification are given
    under Details.as.data.frame to a data frame) containing
    the variables in the model.  If not found in data, the
    variables are taken from environment(formulNULL or a numeric vector.
    If non-null, weighted least squares is used with weights
    weights (that is, minimizing sum(weights*e^2)NAs.  The default is set by
    the na.action setting of options, and is
    na.fail if that is unset.  The method = "qr" is supported; method = "model.frame" returns
    the model frame (the same as with model = TRUE, see below).TRUE the corresponding
    components of the fit (the model frame, the model matrix, the
    response, the QR decomposition) are returned.FALSE (the default in S but
    not in R) a singular fit is an error.contrasts.arg
    of model.matrix.default.NULL or a numeric vector of
    length either one or equal to the number of cases.
    One or NULL = no test
This parameter is merely stored in manylm, and will be used as the default value of cor.type in subsequent functiocor.type="shrink". This parameter will be used as the default value of shrink.param in subsequent functions for inference.manylm returns an object of c("manylm", "mlm", "lm") for multivariate
 formula response and of of class c("lm") for univariate response.
A manylm object is a list containing at least the following components:(t(x)%*%x).test argument supplied.cor.type argument supplied.resample argument supplied.nBoot argument supplied.terms object used.assign and 
  (unless not requested) qr relating to the linear
  fit, for use by extractor functions such as summary.manylm.manylm are specified symbolically. For details on this 
  compare the details section of lm and formula. If the formula 
  includes an offset, this is evaluated and subtracted from the 
  response.   
See model.matrix for some further details. The terms in
  the formula will be re-ordered so that main effects come first,
  followed by the interactions, all second-order, all third-order and so
  on: to avoid this pass a terms object as the formula (see
  aov and demo(glm.vr) for an example). 
A formula has an implied intercept term.  To remove this use either
  y ~ x - 1 or y ~ 0 + x.  See formula for
  more details of allowed formulae. 
manylm calls the lower level function manylm.fit 
  or manylm.wfit for the actual numerical computations. 
  For programming only, you may consider doing likewise. 
All of weights, subset and offset are evaluated
  in the same way as variables in formula, that is first in
  data and then in the environment of formula.
For details on arguments related to hypothesis testing (such as cor.type
  and resample) see summary.manylm or
  anova.manylm.anova.manylm, summary.manylm, plot.manylmdata(spider)
spiddat <- log(spider$abund+1)
spiddat <- mvabund(spiddat)
X <- spider$x
lm.spider <- manylm(spiddat~X)
lm.spider
#Then use the plot function for diagnostic plots, and use anova or summary to
#evaluate significance of different model terms.Run the code above in your browser using DataLab