I am trying to implement the quantile regression process with a simple setup in Matlab. This page contains a description of the quantile regression as a linear program, and displays the appropriate matrices and vectors. I've tried to implement it in Matlab, but I do not get the correct last element of the bhat-vector. It should be around 1 but I get a very low value (<1e-10). Using another algorithm I have, I get a value of 1.0675. Where did I go wrong? I'm guessing A,b or f are wrong.
I have tried playing with optimset, but I don't think that is the problem. I think I've made a conversion mistake when going from math to code, I just can't see where.
% set seed rng(1); % set parameters n=30; tau=0.5; % create regressor and regressand x=rand(n,1); y=x+rand(n,1)/10; % number of regressors (1) m=size(x,2); % vektors and matrices for linprog f=[tau*ones(n,1);(1-tau)*ones(n,1);zeros(m,1)]; A=[eye(n),-eye(n),x; -eye(n),eye(n),-x; -eye(n),zeros(n),zeros(n,m); zeros(n),-eye(n),zeros(n,m)]; b=[y; y zeros(n,1); zeros(n,1)]; % get solution bhat=[u,v,beta] and exitflag (1=succes) [bhat,~,exflag]=linprog(f',A,b);