| lsfit {base} | R Documentation | 
The least squares estimate of b in the model
y = X b + e
is found.lsfit(x, y, wt, intercept=TRUE, tolerance=1e-07, yname=NULL)
x | 
a matrix whose rows correspond to cases and whose columns correspond to variables. | 
y | 
the responses, possibly matrix valued if you want to fit multiple left hand sides. | 
wt | 
an optional vector of weights for performing weighted least squares. | 
intercept | 
whether or not an intercept term should be used. | 
tolerance | 
the tolerance to be used in the matrix decomposition. | 
yname | 
an unused parameter for compatibility. | 
If weights are specified then a weighted least squares is performed
with the weight given to the jth case specified by the jth
entry in wt.
If any observation has a missing value in any field, that observation is removed before the analysis is carried out. This can be quite inefficient if there is a lot of missing data.
The implementation is via a modification of the LINPACK subroutines which allow for multiple left-hand sides.
coef | 
the least squares estimates of the coefficients in the model (stated below). | 
residuals | 
residuals from the fit. | 
intercept | 
indicates whether an intercept was fitted. | 
qr | 
the QR decomposition of the design matrix. | 
lm which usually is preferable;
ls.print, ls.diag.
##-- Using the same data as the lm(.) example: lsD9 <- lsfit(x = codes(gl(2,10)), y = weight) ls.print(lsD9)