Mercurial > hg > camir-aes2014
view toolboxes/SVM-light/src/svm_hideo.c @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
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date | Tue, 10 Feb 2015 15:05:51 +0000 |
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/***********************************************************************/ /* */ /* svm_hideo.c */ /* */ /* The Hildreth and D'Espo solver specialized for SVMs. */ /* */ /* Author: Thorsten Joachims */ /* Date: 02.07.02 */ /* */ /* Copyright (c) 2002 Thorsten Joachims - All rights reserved */ /* */ /* This software is available for non-commercial use only. It must */ /* not be modified and distributed without prior permission of the */ /* author. The author is not responsible for implications from the */ /* use of this software. */ /* */ /***********************************************************************/ # include <math.h> # include "svm_common.h" /* solve the quadratic programming problem minimize g0 * x + 1/2 x' * G * x subject to ce*x = ce0 l <= x <= u The linear constraint vector ce can only have -1/+1 as entries */ /* Common Block Declarations */ long verbosity; # define PRIMAL_OPTIMAL 1 # define DUAL_OPTIMAL 2 # define MAXITER_EXCEEDED 3 # define NAN_SOLUTION 4 # define ONLY_ONE_VARIABLE 5 # define LARGEROUND 0 # define SMALLROUND 1 /* /////////////////////////////////////////////////////////////// */ # define DEF_PRECISION 1E-5 # define DEF_MAX_ITERATIONS 200 # define DEF_LINDEP_SENSITIVITY 1E-8 # define EPSILON_HIDEO 1E-20 # define EPSILON_EQ 1E-5 double *optimize_qp(QP *, double *, long, double *, LEARN_PARM *); double *primal=0,*dual=0; long precision_violations=0; double opt_precision=DEF_PRECISION; long maxiter=DEF_MAX_ITERATIONS; double lindep_sensitivity=DEF_LINDEP_SENSITIVITY; double *buffer; long *nonoptimal; long smallroundcount=0; long roundnumber=0; /* /////////////////////////////////////////////////////////////// */ void *my_malloc(); int optimize_hildreth_despo(long,long,double,double,double,long,long,long,double,double *, double *,double *,double *,double *,double *, double *,double *,double *,long *,double *,double *); int solve_dual(long,long,double,double,long,double *,double *,double *, double *,double *,double *,double *,double *,double *, double *,double *,double *,double *,long); void linvert_matrix(double *, long, double *, double, long *); void lprint_matrix(double *, long); void ladd_matrix(double *, long, double); void lcopy_matrix(double *, long, double *); void lswitch_rows_matrix(double *, long, long, long); void lswitchrk_matrix(double *, long, long, long); double calculate_qp_objective(long, double *, double *, double *); double *optimize_qp(qp,epsilon_crit,nx,threshold,learn_parm) QP *qp; double *epsilon_crit; long nx; /* Maximum number of variables in QP */ double *threshold; LEARN_PARM *learn_parm; /* start the optimizer and return the optimal values */ /* The HIDEO optimizer does not necessarily fully solve the problem. */ /* Since it requires a strictly positive definite hessian, the solution */ /* is restricted to a linear independent subset in case the matrix is */ /* only semi-definite. */ { long i,j; int result; double eq,progress; roundnumber++; if(!primal) { /* allocate memory at first call */ primal=(double *)my_malloc(sizeof(double)*nx); dual=(double *)my_malloc(sizeof(double)*((nx+1)*2)); nonoptimal=(long *)my_malloc(sizeof(long)*(nx)); buffer=(double *)my_malloc(sizeof(double)*((nx+1)*2*(nx+1)*2+ nx*nx+2*(nx+1)*2+2*nx+1+2*nx+ nx+nx+nx*nx)); (*threshold)=0; for(i=0;i<nx;i++) { primal[i]=0; } } if(verbosity>=4) { /* really verbose */ printf("\n\n"); eq=qp->opt_ce0[0]; for(i=0;i<qp->opt_n;i++) { eq+=qp->opt_xinit[i]*qp->opt_ce[i]; printf("%f: ",qp->opt_g0[i]); for(j=0;j<qp->opt_n;j++) { printf("%f ",qp->opt_g[i*qp->opt_n+j]); } printf(": a=%.10f < %f",qp->opt_xinit[i],qp->opt_up[i]); printf(": y=%f\n",qp->opt_ce[i]); } if(qp->opt_m) { printf("EQ: %f*x0",qp->opt_ce[0]); for(i=1;i<qp->opt_n;i++) { printf(" + %f*x%ld",qp->opt_ce[i],i); } printf(" = %f\n\n",-qp->opt_ce0[0]); } } result=optimize_hildreth_despo(qp->opt_n,qp->opt_m, opt_precision,(*epsilon_crit), learn_parm->epsilon_a,maxiter, /* (long)PRIMAL_OPTIMAL, */ (long)0, (long)0, lindep_sensitivity, qp->opt_g,qp->opt_g0,qp->opt_ce,qp->opt_ce0, qp->opt_low,qp->opt_up,primal,qp->opt_xinit, dual,nonoptimal,buffer,&progress); if(verbosity>=3) { printf("return(%d)...",result); } if(learn_parm->totwords < learn_parm->svm_maxqpsize) { /* larger working sets will be linear dependent anyway */ learn_parm->svm_maxqpsize=maxl(learn_parm->totwords,(long)2); } if(result == NAN_SOLUTION) { lindep_sensitivity*=2; /* throw out linear dependent examples more */ /* generously */ if(learn_parm->svm_maxqpsize>2) { learn_parm->svm_maxqpsize--; /* decrease size of qp-subproblems */ } precision_violations++; } /* take one round of only two variable to get unstuck */ if((result != PRIMAL_OPTIMAL) || (!(roundnumber % 31)) || (progress <= 0)) { smallroundcount++; result=optimize_hildreth_despo(qp->opt_n,qp->opt_m, opt_precision,(*epsilon_crit), learn_parm->epsilon_a,(long)maxiter, (long)PRIMAL_OPTIMAL,(long)SMALLROUND, lindep_sensitivity, qp->opt_g,qp->opt_g0,qp->opt_ce,qp->opt_ce0, qp->opt_low,qp->opt_up,primal,qp->opt_xinit, dual,nonoptimal,buffer,&progress); if(verbosity>=3) { printf("return_srd(%d)...",result); } if(result != PRIMAL_OPTIMAL) { if(result != ONLY_ONE_VARIABLE) precision_violations++; if(result == MAXITER_EXCEEDED) maxiter+=100; if(result == NAN_SOLUTION) { lindep_sensitivity*=2; /* throw out linear dependent examples more */ /* generously */ /* results not valid, so return inital values */ for(i=0;i<qp->opt_n;i++) { primal[i]=qp->opt_xinit[i]; } } } } if(precision_violations > 50) { precision_violations=0; (*epsilon_crit)*=10.0; if(verbosity>=1) { printf("\nWARNING: Relaxing epsilon on KT-Conditions (%f).\n", (*epsilon_crit)); } } if((qp->opt_m>0) && (result != NAN_SOLUTION) && (!isnan(dual[1]-dual[0]))) (*threshold)=dual[1]-dual[0]; else (*threshold)=0; if(verbosity>=4) { /* really verbose */ printf("\n\n"); eq=qp->opt_ce0[0]; for(i=0;i<qp->opt_n;i++) { eq+=primal[i]*qp->opt_ce[i]; printf("%f: ",qp->opt_g0[i]); for(j=0;j<qp->opt_n;j++) { printf("%f ",qp->opt_g[i*qp->opt_n+j]); } printf(": a=%.30f",primal[i]); printf(": nonopti=%ld",nonoptimal[i]); printf(": y=%f\n",qp->opt_ce[i]); } printf("eq-constraint=%.30f\n",eq); printf("b=%f\n",(*threshold)); printf(" smallroundcount=%ld ",smallroundcount); } return(primal); } int optimize_hildreth_despo(n,m,precision,epsilon_crit,epsilon_a,maxiter,goal, smallround,lindep_sensitivity,g,g0,ce,ce0,low,up, primal,init,dual,lin_dependent,buffer,progress) long n; /* number of variables */ long m; /* number of linear equality constraints [0,1] */ double precision; /* solve at least to this dual precision */ double epsilon_crit; /* stop, if KT-Conditions approx fulfilled */ double epsilon_a; /* precision of alphas at bounds */ long maxiter; /* stop after this many iterations */ long goal; /* keep going until goal fulfilled */ long smallround; /* use only two variables of steepest descent */ double lindep_sensitivity; /* epsilon for detecting linear dependent ex */ double *g; /* hessian of objective */ double *g0; /* linear part of objective */ double *ce,*ce0; /* linear equality constraints */ double *low,*up; /* box constraints */ double *primal; /* primal variables */ double *init; /* initial values of primal */ double *dual; /* dual variables */ long *lin_dependent; double *buffer; double *progress; /* delta in the objective function between before and after */ { long i,j,k,from,to,n_indep,changed; double sum,bmin=0,bmax=0; double *d,*d0,*ig,*dual_old,*temp,*start; double *g0_new,*g_new,*ce_new,*ce0_new,*low_new,*up_new; double add,t; int result; double obj_before,obj_after; long b1,b2; double g0_b1,g0_b2,ce0_b; g0_new=&(buffer[0]); /* claim regions of buffer */ d=&(buffer[n]); d0=&(buffer[n+(n+m)*2*(n+m)*2]); ce_new=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2]); ce0_new=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n]); ig=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m]); dual_old=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n]); low_new=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n+(n+m)*2]); up_new=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n+(n+m)*2+n]); start=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n+(n+m)*2+n+n]); g_new=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n+(n+m)*2+n+n+n]); temp=&(buffer[n+(n+m)*2*(n+m)*2+(n+m)*2+n+m+n*n+(n+m)*2+n+n+n+n*n]); b1=-1; b2=-1; for(i=0;i<n;i++) { /* get variables with steepest feasible descent */ sum=g0[i]; for(j=0;j<n;j++) sum+=init[j]*g[i*n+j]; sum=sum*ce[i]; if(((b1==-1) || (sum<bmin)) && (!((init[i]<=(low[i]+epsilon_a)) && (ce[i]<0.0))) && (!((init[i]>=( up[i]-epsilon_a)) && (ce[i]>0.0))) ) { bmin=sum; b1=i; } if(((b2==-1) || (sum>=bmax)) && (!((init[i]<=(low[i]+epsilon_a)) && (ce[i]>0.0))) && (!((init[i]>=( up[i]-epsilon_a)) && (ce[i]<0.0))) ) { bmax=sum; b2=i; } } /* in case of unbiased hyperplane, the previous projection on */ /* equality constraint can lead to b1 or b2 being -1. */ if((b1 == -1) || (b2 == -1)) { b1=maxl(b1,b2); b2=maxl(b1,b2); } for(i=0;i<n;i++) { start[i]=init[i]; } /* in case both example vectors are linearly dependent */ /* WARNING: Assumes that ce[] in {-1,1} */ add=0; changed=0; if((b1 != b2) && (m==1)) { for(i=0;i<n;i++) { /* fix other vectors */ if(i==b1) g0_b1=g0[i]; if(i==b2) g0_b2=g0[i]; } ce0_b=ce0[0]; for(i=0;i<n;i++) { if((i!=b1) && (i!=b2)) { for(j=0;j<n;j++) { if(j==b1) g0_b1+=start[i]*g[i*n+j]; if(j==b2) g0_b2+=start[i]*g[i*n+j]; } ce0_b-=(start[i]*ce[i]); } } if((g[b1*n+b2] == g[b1*n+b1]) && (g[b1*n+b2] == g[b2*n+b2])) { /* printf("euqal\n"); */ if(ce[b1] == ce[b2]) { if(g0_b1 <= g0_b2) { /* set b1 to upper bound */ /* printf("case +=<\n"); */ changed=1; t=up[b1]-init[b1]; if((init[b2]-low[b2]) < t) { t=init[b2]-low[b2]; } start[b1]=init[b1]+t; start[b2]=init[b2]-t; } else if(g0_b1 > g0_b2) { /* set b2 to upper bound */ /* printf("case +=>\n"); */ changed=1; t=up[b2]-init[b2]; if((init[b1]-low[b1]) < t) { t=init[b1]-low[b1]; } start[b1]=init[b1]-t; start[b2]=init[b2]+t; } } else if(((g[b1*n+b1]>0) || (g[b2*n+b2]>0))) { /* (ce[b1] != ce[b2]) */ /* printf("case +!\n"); */ t=((ce[b2]/ce[b1])*g0[b1]-g0[b2]+ce0[0]*(g[b1*n+b1]*ce[b2]/ce[b1]-g[b1*n+b2]/ce[b1]))/((ce[b2]*ce[b2]/(ce[b1]*ce[b1]))*g[b1*n+b1]+g[b2*n+b2]-2*(g[b1*n+b2]*ce[b2]/ce[b1]))-init[b2]; changed=1; if((up[b2]-init[b2]) < t) { t=up[b2]-init[b2]; } if((init[b2]-low[b2]) < -t) { t=-(init[b2]-low[b2]); } if((up[b1]-init[b1]) < t) { t=(up[b1]-init[b1]); } if((init[b1]-low[b1]) < -t) { t=-(init[b1]-low[b1]); } start[b1]=init[b1]+t; start[b2]=init[b2]+t; } } if((-g[b1*n+b2] == g[b1*n+b1]) && (-g[b1*n+b2] == g[b2*n+b2])) { /* printf("diffeuqal\n"); */ if(ce[b1] != ce[b2]) { if((g0_b1+g0_b2) < 0) { /* set b1 and b2 to upper bound */ /* printf("case -!<\n"); */ changed=1; t=up[b1]-init[b1]; if((up[b2]-init[b2]) < t) { t=up[b2]-init[b2]; } start[b1]=init[b1]+t; start[b2]=init[b2]+t; } else if((g0_b1+g0_b2) >= 0) { /* set b1 and b2 to lower bound */ /* printf("case -!>\n"); */ changed=1; t=init[b1]-low[b1]; if((init[b2]-low[b2]) < t) { t=init[b2]-low[b2]; } start[b1]=init[b1]-t; start[b2]=init[b2]-t; } } else if(((g[b1*n+b1]>0) || (g[b2*n+b2]>0))) { /* (ce[b1]==ce[b2]) */ /* printf("case -=\n"); */ t=((ce[b2]/ce[b1])*g0[b1]-g0[b2]+ce0[0]*(g[b1*n+b1]*ce[b2]/ce[b1]-g[b1*n+b2]/ce[b1]))/((ce[b2]*ce[b2]/(ce[b1]*ce[b1]))*g[b1*n+b1]+g[b2*n+b2]-2*(g[b1*n+b2]*ce[b2]/ce[b1]))-init[b2]; changed=1; if((up[b2]-init[b2]) < t) { t=up[b2]-init[b2]; } if((init[b2]-low[b2]) < -t) { t=-(init[b2]-low[b2]); } if((up[b1]-init[b1]) < -t) { t=-(up[b1]-init[b1]); } if((init[b1]-low[b1]) < t) { t=init[b1]-low[b1]; } start[b1]=init[b1]-t; start[b2]=init[b2]+t; } } } /* if we have a biased hyperplane, then adding a constant to the */ /* hessian does not change the solution. So that is done for examples */ /* with zero diagonal entry, since HIDEO cannot handle them. */ if((m>0) && ((fabs(g[b1*n+b1]) < lindep_sensitivity) || (fabs(g[b2*n+b2]) < lindep_sensitivity))) { /* printf("Case 0\n"); */ add+=0.093274; } /* in case both examples are linear dependent */ else if((m>0) && (g[b1*n+b2] != 0 && g[b2*n+b2] != 0) && (fabs(g[b1*n+b1]/g[b1*n+b2] - g[b1*n+b2]/g[b2*n+b2]) < lindep_sensitivity)) { /* printf("Case lindep\n"); */ add+=0.078274; } /* special case for zero diagonal entry on unbiased hyperplane */ if((m==0) && (b1>=0)) { if(fabs(g[b1*n+b1]) < lindep_sensitivity) { /* printf("Case 0b1\n"); */ for(i=0;i<n;i++) { /* fix other vectors */ if(i==b1) g0_b1=g0[i]; } for(i=0;i<n;i++) { if(i!=b1) { for(j=0;j<n;j++) { if(j==b1) g0_b1+=start[i]*g[i*n+j]; } } } if(g0_b1<0) start[b1]=up[b1]; if(g0_b1>=0) start[b1]=low[b1]; } } if((m==0) && (b2>=0)) { if(fabs(g[b2*n+b2]) < lindep_sensitivity) { /* printf("Case 0b2\n"); */ for(i=0;i<n;i++) { /* fix other vectors */ if(i==b2) g0_b2=g0[i]; } for(i=0;i<n;i++) { if(i!=b2) { for(j=0;j<n;j++) { if(j==b2) g0_b2+=start[i]*g[i*n+j]; } } } if(g0_b2<0) start[b2]=up[b2]; if(g0_b2>=0) start[b2]=low[b2]; } } /* printf("b1=%ld,b2=%ld\n",b1,b2); */ lcopy_matrix(g,n,d); if((m==1) && (add>0.0)) { for(j=0;j<n;j++) { for(k=0;k<n;k++) { d[j*n+k]+=add*ce[j]*ce[k]; } } } else { add=0.0; } if(n>2) { /* switch, so that variables are better mixed */ lswitchrk_matrix(d,n,b1,(long)0); if(b2 == 0) lswitchrk_matrix(d,n,b1,(long)1); else lswitchrk_matrix(d,n,b2,(long)1); } if(smallround == SMALLROUND) { for(i=2;i<n;i++) { lin_dependent[i]=1; } if(m>0) { /* for biased hyperplane, pick two variables */ lin_dependent[0]=0; lin_dependent[1]=0; } else { /* for unbiased hyperplane, pick only one variable */ lin_dependent[0]=smallroundcount % 2; lin_dependent[1]=(smallroundcount+1) % 2; } } else { for(i=0;i<n;i++) { lin_dependent[i]=0; } } linvert_matrix(d,n,ig,lindep_sensitivity,lin_dependent); if(n>2) { /* now switch back */ if(b2 == 0) { lswitchrk_matrix(ig,n,b1,(long)1); i=lin_dependent[1]; lin_dependent[1]=lin_dependent[b1]; lin_dependent[b1]=i; } else { lswitchrk_matrix(ig,n,b2,(long)1); i=lin_dependent[1]; lin_dependent[1]=lin_dependent[b2]; lin_dependent[b2]=i; } lswitchrk_matrix(ig,n,b1,(long)0); i=lin_dependent[0]; lin_dependent[0]=lin_dependent[b1]; lin_dependent[b1]=i; } /* lprint_matrix(d,n); */ /* lprint_matrix(ig,n); */ lcopy_matrix(g,n,g_new); /* restore g_new matrix */ if(add>0) for(j=0;j<n;j++) { for(k=0;k<n;k++) { g_new[j*n+k]+=add*ce[j]*ce[k]; } } for(i=0;i<n;i++) { /* fix linear dependent vectors */ g0_new[i]=g0[i]+add*ce0[0]*ce[i]; } if(m>0) ce0_new[0]=-ce0[0]; for(i=0;i<n;i++) { /* fix linear dependent vectors */ if(lin_dependent[i]) { for(j=0;j<n;j++) { if(!lin_dependent[j]) { g0_new[j]+=start[i]*g_new[i*n+j]; } } if(m>0) ce0_new[0]-=(start[i]*ce[i]); } } from=0; /* remove linear dependent vectors */ to=0; n_indep=0; for(i=0;i<n;i++) { if(!lin_dependent[i]) { g0_new[n_indep]=g0_new[i]; ce_new[n_indep]=ce[i]; low_new[n_indep]=low[i]; up_new[n_indep]=up[i]; primal[n_indep]=start[i]; n_indep++; } for(j=0;j<n;j++) { if((!lin_dependent[i]) && (!lin_dependent[j])) { ig[to]=ig[from]; g_new[to]=g_new[from]; to++; } from++; } } if(verbosity>=3) { printf("real_qp_size(%ld)...",n_indep); } /* cannot optimize with only one variable */ if((n_indep<=1) && (m>0) && (!changed)) { for(i=n-1;i>=0;i--) { primal[i]=init[i]; } return((int)ONLY_ONE_VARIABLE); } if((!changed) || (n_indep>1)) { result=solve_dual(n_indep,m,precision,epsilon_crit,maxiter,g_new,g0_new, ce_new,ce0_new,low_new,up_new,primal,d,d0,ig, dual,dual_old,temp,goal); } else { result=PRIMAL_OPTIMAL; } j=n_indep; for(i=n-1;i>=0;i--) { if(!lin_dependent[i]) { j--; primal[i]=primal[j]; } else { primal[i]=start[i]; /* leave as is */ } temp[i]=primal[i]; } obj_before=calculate_qp_objective(n,g,g0,init); obj_after=calculate_qp_objective(n,g,g0,primal); (*progress)=obj_before-obj_after; if(verbosity>=3) { printf("before(%.30f)...after(%.30f)...result_sd(%d)...", obj_before,obj_after,result); } return((int)result); } int solve_dual(n,m,precision,epsilon_crit,maxiter,g,g0,ce,ce0,low,up,primal, d,d0,ig,dual,dual_old,temp,goal) /* Solves the dual using the method of Hildreth and D'Espo. */ /* Can only handle problems with zero or exactly one */ /* equality constraints. */ long n; /* number of variables */ long m; /* number of linear equality constraints */ double precision; /* solve at least to this dual precision */ double epsilon_crit; /* stop, if KT-Conditions approx fulfilled */ long maxiter; /* stop after that many iterations */ double *g; double *g0; /* linear part of objective */ double *ce,*ce0; /* linear equality constraints */ double *low,*up; /* box constraints */ double *primal; /* variables (with initial values) */ double *d,*d0,*ig,*dual,*dual_old,*temp; /* buffer */ long goal; { long i,j,k,iter; double sum,w,maxviol,viol,temp1,temp2,isnantest; double model_b,dist; long retrain,maxfaktor,primal_optimal=0,at_bound,scalemaxiter; double epsilon_a=1E-15,epsilon_hideo; double eq; if((m<0) || (m>1)) perror("SOLVE DUAL: inappropriate number of eq-constrains!"); /* printf("\n"); for(i=0;i<n;i++) { printf("%f: ",g0[i]); for(j=0;j<n;j++) { printf("%f ",g[i*n+j]); } printf(": a=%.30f",primal[i]); printf(": y=%f\n",ce[i]); } */ for(i=0;i<2*(n+m);i++) { dual[i]=0; dual_old[i]=0; } for(i=0;i<n;i++) { for(j=0;j<n;j++) { /* dual hessian for box constraints */ d[i*2*(n+m)+j]=ig[i*n+j]; d[(i+n)*2*(n+m)+j]=-ig[i*n+j]; d[i*2*(n+m)+j+n]=-ig[i*n+j]; d[(i+n)*2*(n+m)+j+n]=ig[i*n+j]; } if(m>0) { sum=0; /* dual hessian for eq constraints */ for(j=0;j<n;j++) { sum+=(ce[j]*ig[i*n+j]); } d[i*2*(n+m)+2*n]=sum; d[i*2*(n+m)+2*n+1]=-sum; d[(n+i)*2*(n+m)+2*n]=-sum; d[(n+i)*2*(n+m)+2*n+1]=sum; d[(n+n)*2*(n+m)+i]=sum; d[(n+n+1)*2*(n+m)+i]=-sum; d[(n+n)*2*(n+m)+(n+i)]=-sum; d[(n+n+1)*2*(n+m)+(n+i)]=sum; sum=0; for(j=0;j<n;j++) { for(k=0;k<n;k++) { sum+=(ce[k]*ce[j]*ig[j*n+k]); } } d[(n+n)*2*(n+m)+2*n]=sum; d[(n+n)*2*(n+m)+2*n+1]=-sum; d[(n+n+1)*2*(n+m)+2*n]=-sum; d[(n+n+1)*2*(n+m)+2*n+1]=sum; } } for(i=0;i<n;i++) { /* dual linear component for the box constraints */ w=0; for(j=0;j<n;j++) { w+=(ig[i*n+j]*g0[j]); } d0[i]=up[i]+w; d0[i+n]=-low[i]-w; } if(m>0) { sum=0; /* dual linear component for eq constraints */ for(j=0;j<n;j++) { for(k=0;k<n;k++) { sum+=(ce[k]*ig[k*n+j]*g0[j]); } } d0[2*n]=ce0[0]+sum; d0[2*n+1]=-ce0[0]-sum; } maxviol=999999; iter=0; retrain=1; maxfaktor=1; scalemaxiter=maxiter/5; while((retrain) && (maxviol > 0) && (iter < (scalemaxiter*maxfaktor))) { iter++; while((maxviol > precision) && (iter < (scalemaxiter*maxfaktor))) { iter++; maxviol=0; for(i=0;i<2*(n+m);i++) { sum=d0[i]; for(j=0;j<2*(n+m);j++) { sum+=d[i*2*(n+m)+j]*dual_old[j]; } sum-=d[i*2*(n+m)+i]*dual_old[i]; dual[i]=-sum/d[i*2*(n+m)+i]; if(dual[i]<0) dual[i]=0; viol=fabs(dual[i]-dual_old[i]); if(viol>maxviol) maxviol=viol; dual_old[i]=dual[i]; } /* printf("%d) maxviol=%20f precision=%f\n",iter,maxviol,precision); */ } if(m>0) { for(i=0;i<n;i++) { temp[i]=dual[i]-dual[i+n]+ce[i]*(dual[n+n]-dual[n+n+1])+g0[i]; } } else { for(i=0;i<n;i++) { temp[i]=dual[i]-dual[i+n]+g0[i]; } } for(i=0;i<n;i++) { primal[i]=0; /* calc value of primal variables */ for(j=0;j<n;j++) { primal[i]+=ig[i*n+j]*temp[j]; } primal[i]*=-1.0; if(primal[i]<=(low[i])) { /* clip conservatively */ primal[i]=low[i]; } else if(primal[i]>=(up[i])) { primal[i]=up[i]; } } if(m>0) model_b=dual[n+n+1]-dual[n+n]; else model_b=0; epsilon_hideo=EPSILON_HIDEO; for(i=0;i<n;i++) { /* check precision of alphas */ dist=-model_b*ce[i]; dist+=(g0[i]+1.0); for(j=0;j<i;j++) { dist+=(primal[j]*g[j*n+i]); } for(j=i;j<n;j++) { dist+=(primal[j]*g[i*n+j]); } if((primal[i]<(up[i]-epsilon_hideo)) && (dist < (1.0-epsilon_crit))) { epsilon_hideo=(up[i]-primal[i])*2.0; } else if((primal[i]>(low[i]+epsilon_hideo)) &&(dist>(1.0+epsilon_crit))) { epsilon_hideo=(primal[i]-low[i])*2.0; } } /* printf("\nEPSILON_HIDEO=%.30f\n",epsilon_hideo); */ for(i=0;i<n;i++) { /* clip alphas to bounds */ if(primal[i]<=(low[i]+epsilon_hideo)) { primal[i]=low[i]; } else if(primal[i]>=(up[i]-epsilon_hideo)) { primal[i]=up[i]; } } retrain=0; primal_optimal=1; at_bound=0; for(i=0;(i<n);i++) { /* check primal KT-Conditions */ dist=-model_b*ce[i]; dist+=(g0[i]+1.0); for(j=0;j<i;j++) { dist+=(primal[j]*g[j*n+i]); } for(j=i;j<n;j++) { dist+=(primal[j]*g[i*n+j]); } if((primal[i]<(up[i]-epsilon_a)) && (dist < (1.0-epsilon_crit))) { retrain=1; primal_optimal=0; } else if((primal[i]>(low[i]+epsilon_a)) && (dist > (1.0+epsilon_crit))) { retrain=1; primal_optimal=0; } if((primal[i]<=(low[i]+epsilon_a)) || (primal[i]>=(up[i]-epsilon_a))) { at_bound++; } /* printf("HIDEOtemp: a[%ld]=%.30f, dist=%.6f, b=%f, at_bound=%ld\n",i,primal[i],dist,model_b,at_bound); */ } if(m>0) { eq=-ce0[0]; /* check precision of eq-constraint */ for(i=0;i<n;i++) { eq+=(ce[i]*primal[i]); } if((EPSILON_EQ < fabs(eq)) /* && !((goal==PRIMAL_OPTIMAL) && (at_bound==n)) */ ) { retrain=1; primal_optimal=0; } /* printf("\n eq=%.30f ce0=%f at-bound=%ld\n",eq,ce0[0],at_bound); */ } if(retrain) { precision/=10; if(((goal == PRIMAL_OPTIMAL) && (maxfaktor < 50000)) || (maxfaktor < 5)) { maxfaktor++; } } } if(!primal_optimal) { for(i=0;i<n;i++) { primal[i]=0; /* calc value of primal variables */ for(j=0;j<n;j++) { primal[i]+=ig[i*n+j]*temp[j]; } primal[i]*=-1.0; if(primal[i]<=(low[i]+epsilon_a)) { /* clip conservatively */ primal[i]=low[i]; } else if(primal[i]>=(up[i]-epsilon_a)) { primal[i]=up[i]; } } } isnantest=0; for(i=0;i<n;i++) { /* check for isnan */ isnantest+=primal[i]; } if(m>0) { temp1=dual[n+n+1]; /* copy the dual variables for the eq */ temp2=dual[n+n]; /* constraints to a handier location */ for(i=n+n+1;i>=2;i--) { dual[i]=dual[i-2]; } dual[0]=temp2; dual[1]=temp1; isnantest+=temp1+temp2; } if(isnan(isnantest)) { return((int)NAN_SOLUTION); } else if(primal_optimal) { return((int)PRIMAL_OPTIMAL); } else if(maxviol == 0.0) { return((int)DUAL_OPTIMAL); } else { return((int)MAXITER_EXCEEDED); } } void linvert_matrix(matrix,depth,inverse,lindep_sensitivity,lin_dependent) double *matrix; long depth; double *inverse,lindep_sensitivity; long *lin_dependent; /* indicates the active parts of matrix on input and output*/ { long i,j,k; double factor; for(i=0;i<depth;i++) { /* lin_dependent[i]=0; */ for(j=0;j<depth;j++) { inverse[i*depth+j]=0.0; } inverse[i*depth+i]=1.0; } for(i=0;i<depth;i++) { if(lin_dependent[i] || (fabs(matrix[i*depth+i])<lindep_sensitivity)) { lin_dependent[i]=1; } else { for(j=i+1;j<depth;j++) { factor=matrix[j*depth+i]/matrix[i*depth+i]; for(k=i;k<depth;k++) { matrix[j*depth+k]-=(factor*matrix[i*depth+k]); } for(k=0;k<depth;k++) { inverse[j*depth+k]-=(factor*inverse[i*depth+k]); } } } } for(i=depth-1;i>=0;i--) { if(!lin_dependent[i]) { factor=1/matrix[i*depth+i]; for(k=0;k<depth;k++) { inverse[i*depth+k]*=factor; } matrix[i*depth+i]=1; for(j=i-1;j>=0;j--) { factor=matrix[j*depth+i]; matrix[j*depth+i]=0; for(k=0;k<depth;k++) { inverse[j*depth+k]-=(factor*inverse[i*depth+k]); } } } } } void lprint_matrix(matrix,depth) double *matrix; long depth; { long i,j; for(i=0;i<depth;i++) { for(j=0;j<depth;j++) { printf("%5.2f ",(double)(matrix[i*depth+j])); } printf("\n"); } printf("\n"); } void ladd_matrix(matrix,depth,scalar) double *matrix; long depth; double scalar; { long i,j; for(i=0;i<depth;i++) { for(j=0;j<depth;j++) { matrix[i*depth+j]+=scalar; } } } void lcopy_matrix(matrix,depth,matrix2) double *matrix; long depth; double *matrix2; { long i; for(i=0;i<(depth)*(depth);i++) { matrix2[i]=matrix[i]; } } void lswitch_rows_matrix(matrix,depth,r1,r2) double *matrix; long depth,r1,r2; { long i; double temp; for(i=0;i<depth;i++) { temp=matrix[r1*depth+i]; matrix[r1*depth+i]=matrix[r2*depth+i]; matrix[r2*depth+i]=temp; } } void lswitchrk_matrix(matrix,depth,rk1,rk2) double *matrix; long depth,rk1,rk2; { long i; double temp; for(i=0;i<depth;i++) { temp=matrix[rk1*depth+i]; matrix[rk1*depth+i]=matrix[rk2*depth+i]; matrix[rk2*depth+i]=temp; } for(i=0;i<depth;i++) { temp=matrix[i*depth+rk1]; matrix[i*depth+rk1]=matrix[i*depth+rk2]; matrix[i*depth+rk2]=temp; } } double calculate_qp_objective(opt_n,opt_g,opt_g0,alpha) long opt_n; double *opt_g,*opt_g0,*alpha; { double obj; long i,j; obj=0; /* calculate objective */ for(i=0;i<opt_n;i++) { obj+=(opt_g0[i]*alpha[i]); obj+=(0.5*alpha[i]*alpha[i]*opt_g[i*opt_n+i]); for(j=0;j<i;j++) { obj+=(alpha[j]*alpha[i]*opt_g[j*opt_n+i]); } } return(obj); }