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Here is the cpp file that I sourced with sourceCpp:

#include <RcppArmadillo.h>
// [[Rcpp::depends(RcppArmadillo)]]

using namespace Rcpp;

// [[Rcpp::export]]
List mylm(NumericVector yr, NumericMatrix Xr) {

    int n = Xr.nrow(), k = Xr.ncol();

    arma::mat X(Xr.begin(), n, k, false);       // reuses memory and avoids extra copy
    arma::colvec y(yr.begin(), yr.size(), false);

    arma::colvec coef = arma::solve(X, y);      // fit model y ~ X
    arma::colvec resid = y - X*coef;            // residuals

    double sig2 = arma::as_scalar( arma::trans(resid)*resid/(n-k) );
                                                // std.error of estimate
    arma::colvec stderrest = arma::sqrt( sig2 * arma::diagvec( arma::inv(arma::trans(X)*X)) );

    return Rcpp::List::create(
        Rcpp::Named("coefficients") = coef,
        Rcpp::Named("stderr")       = stderrest
    ) ;

}

(The code is taken from the answer of @Romain François to this question: Using `sourceCpp` to compile `fastLm`)

Then in R:

sourceCpp('b.cpp')
set.seed(1)
x = matrix(rnorm(100), 25, 4)
y = rnorm(25)
mylm(y, x)
summary(lm(y~x))

mylm(y, x)
# $coefficients
#           [,1]
# [1,]  0.068978
# [2,]  0.117632
# [3,] -0.029917
# [4,] -0.168648
# 
# $stderr
#         [,1]
# [1,] 0.17970
# [2,] 0.24312
# [3,] 0.15138
# [4,] 0.21266

summary(lm(y~x))

# Call:
# lm(formula = y ~ x)
# 
# Residuals:
#    Min     1Q Median     3Q    Max 
# -0.869 -0.487 -0.271  0.410  1.831 
# 
# Coefficients:
#             Estimate Std. Error t value Pr(>|t|)
# (Intercept)   0.1122     0.1718    0.65     0.52
# x1            0.0499     0.1845    0.27     0.79
# x2            0.1076     0.2470    0.44     0.67
# x3           -0.0435     0.1549   -0.28     0.78
# x4           -0.1750     0.2158   -0.81     0.43
# 
# Residual standard error: 0.835 on 20 degrees of freedom
# Multiple R-squared:  0.054,     Adjusted R-squared:  -0.135 
# F-statistic: 0.285 on 4 and 20 DF,  p-value: 0.884
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2  
That is basiscally a verbatim copy of our code without giving credit. Not cool. –  Dirk Eddelbuettel Nov 17 '13 at 20:34
    
:) i did give credit in the title. Anyways, now I have added the source of this code. It's really helpful. –  qed Nov 17 '13 at 21:32
1  
It is almost worse now as you implicate the package in an error that is entirely due to your misunderstanding. Go and look at the corresponding C++ and R files in RcppArmadillo. Makes more sense that taking code from Romain's answer out of context. –  Dirk Eddelbuettel Nov 18 '13 at 0:20
    
Thanks for the suggestion. I didn't mean to implicate there is any error, I am just trying to understand something quite new to me, both c++ and Rcpp. –  qed Nov 18 '13 at 20:39

1 Answer 1

up vote 7 down vote accepted

By default, R's lm fits a model with an intercept even if the design matrix you pass does not include an initial column of ones. So you'll see the following are identical:

lm(y ~ x - 1)
mylm(y, x)

If you want the 'regular' model, you need to modify your design matrix to have a first column of all 1s:

lm(y ~ x)
mylm(y, cbind(1, x))

will give identical results.

share|improve this answer
1  
Correct. Also you do need to take the intercept into account when computing the R2 and adjR2. See the summary methods for FastLm() in RcppArmadillo, RcppGSL, and RcppEigen. –  Dirk Eddelbuettel Nov 17 '13 at 20:33
    
Indeed, if the all-1 column were inserted in R, the results would be identical, but if I do this: arma::mat allOne(n, 1, arma::fill::ones); X.insert_cols(0, allOne); , there is still some difference between R and RcppArmadillo results. –  qed Nov 18 '13 at 20:37
    
You may want to consider the fact that the source package has a unit test validating at each build / upload that the results are in fact the same, see the file runit.fastLm.R. If you get different results, you may still be doing something wrong. –  Dirk Eddelbuettel Nov 18 '13 at 20:47
    
ok, I sourced the unit test file and yes, all tests passed, but I am trying to tweak the fastLm function a little bit, i.e. instead of using cbind(1, X) in R, I tried to use the insert_cols function in armadillo, but these two approaches so far give slightly different results, so I am a bit confused. –  qed Nov 18 '13 at 21:01

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