function best_control=choose_best_control(H_tilde,C,H_tilde0,k,apriori,regulator_parameters,candidates,compare_parameters) num_of_candidates=regulator_parameters.num_of_candidates; n_0=compare_parameters.n0; realization1=zeros(num_of_candidates,n_0); H0=add_H_tilde0(regulator_parameters,H_tilde); %generovani realizaci ztrat for i=1:num_of_candidates C(:,k)=candidates(:,i); for j=1:n_0 realization1(i,j)=generate_realization(apriori,H0,k,H_tilde,C,regulator_parameters); end end mean_values=mean(realization1,2); %RSSS if (compare_parameters.RSSS) h=compare_parameters.rinott; t=compare_parameters.student; variances=sum((realization1-mean_values*ones(1,n_0)).^2,2)/(n_0-1); W=t*sqrt((variances*ones(1,num_of_candidates)+ones(num_of_candidates,1)*variances')/n_0); pass=ones(num_of_candidates,1); %pass(i)=1 => i-ty kandidat jde do 2 faze for i=1:size(candidates) for j=1:size(candidates) if (mean_values(i)>mean_values(j)+max(0,W(i,j)-compare_parameters.delta)) %hledam minimum pass(i)=false; break; end end end if sum(pass)>1 %druha faze RSSS %sum(pass) for i=1:size(candidates) if (pass(i)) n_1=max(1,(-floor(-variances(i)*(h/compare_parameters.delta)^2))-n_0); n_1=min(100,n_1); realization2=zeros(1,n_1); C(index)=candidates(i); for j=1:n_1 realization2(j)=generate_realization(apriori,index,H_tilde,C,horizont); end mean_values(i)=mean_values(i)/(1+n_1/n_0)+mean(realization2)/(1+n_0/n_1); end end end end %volba kadnidata s nejmensi prumernou ztratou [min_val min_index]=min(mean_values); best_control=candidates(min_index); end