亚洲欧美第一页_禁久久精品乱码_粉嫩av一区二区三区免费野_久草精品视频

? 歡迎來到蟲蟲下載站! | ?? 資源下載 ?? 資源專輯 ?? 關于我們
? 蟲蟲下載站

?? svm_learn.c

?? SVM Light的多分類源代碼
?? C
?? 第 1 頁 / 共 5 頁
字號:

  printf("Constructing %ld rank constraints...",totpair); fflush(stdout);
  docdiff=(DOC **)my_malloc(sizeof(DOC)*totpair);
  target=(double *)my_malloc(sizeof(double)*totpair); 
  greater=(long *)my_malloc(sizeof(long)*totpair); 
  lesser=(long *)my_malloc(sizeof(long)*totpair); 

  k=0;
  for(i=0;i<totdoc;i++) {
    for(j=i+1;j<totdoc;j++) {
      if(docs[i]->queryid == docs[j]->queryid) {
	cost=(docs[i]->costfactor+docs[j]->costfactor)/2.0;
	if(rankvalue[i] > rankvalue[j]) {
	  if(kernel_parm->kernel_type == LINEAR)
	    docdiff[k]=create_example(k,0,0,cost,
				      sub_ss(docs[i]->fvec,docs[j]->fvec));
	  else {
	    flow=copy_svector(docs[j]->fvec);
	    flow->factor=-1.0;
	    flow->next=NULL;
	    fhigh=copy_svector(docs[i]->fvec);
	    fhigh->factor=1.0;
	    fhigh->next=flow;
	    docdiff[k]=create_example(k,0,0,cost,fhigh);
	  }
	  target[k]=1;
	  greater[k]=i;
	  lesser[k]=j;
	  k++;
	}
	else if(rankvalue[i] < rankvalue[j]) {
	  if(kernel_parm->kernel_type == LINEAR)
	    docdiff[k]=create_example(k,0,0,cost,
				      sub_ss(docs[i]->fvec,docs[j]->fvec));
	  else {
	    flow=copy_svector(docs[j]->fvec);
	    flow->factor=-1.0;
	    flow->next=NULL;
	    fhigh=copy_svector(docs[i]->fvec);
	    fhigh->factor=1.0;
	    fhigh->next=flow;
	    docdiff[k]=create_example(k,0,0,cost,fhigh);
	  }
	  target[k]=-1;
	  greater[k]=i;
	  lesser[k]=j;
	  k++;
	}
      }
    }
  }
  printf("done.\n"); fflush(stdout);

  /* need to get a bigger kernel cache */
  if(*kernel_cache) {
    kernel_cache_size=(*kernel_cache)->buffsize*sizeof(CFLOAT)/(1024*1024);
    kernel_cache_cleanup(*kernel_cache);
    (*kernel_cache)=kernel_cache_init(totpair,kernel_cache_size);
  }

  /* must use unbiased hyperplane on difference vectors */
  learn_parm->biased_hyperplane=0;
  pairmodel=(MODEL *)my_malloc(sizeof(MODEL));
  svm_learn_classification(docdiff,target,totpair,totwords,learn_parm,
			   kernel_parm,(*kernel_cache),pairmodel,NULL);

  /* Transfer the result into a more compact model. If you would like
     to output the original model on pairs of documents, see below. */
  alpha=(double *)my_malloc(sizeof(double)*totdoc); 
  for(i=0;i<totdoc;i++) {
    alpha[i]=0;
  }
  for(i=1;i<pairmodel->sv_num;i++) {
    alpha[lesser[(pairmodel->supvec[i])->docnum]]-=pairmodel->alpha[i];
    alpha[greater[(pairmodel->supvec[i])->docnum]]+=pairmodel->alpha[i];
  }
  model->supvec = (DOC **)my_malloc(sizeof(DOC *)*(totdoc+2));
  model->alpha = (double *)my_malloc(sizeof(double)*(totdoc+2));
  model->index = (long *)my_malloc(sizeof(long)*(totdoc+2));
  model->supvec[0]=0;  /* element 0 reserved and empty for now */
  model->alpha[0]=0;
  model->sv_num=1;
  for(i=0;i<totdoc;i++) {
    if(alpha[i]) {
      model->supvec[model->sv_num]=docs[i];
      model->alpha[model->sv_num]=alpha[i];
      model->index[i]=model->sv_num;
      model->sv_num++;
    }
    else {
      model->index[i]=-1;
    }
  }
  model->at_upper_bound=0;
  model->b=0;	       
  model->lin_weights=NULL;
  model->totwords=totwords;
  model->totdoc=totdoc;
  model->kernel_parm=(*kernel_parm);
  model->loo_error=-1;
  model->loo_recall=-1;
  model->loo_precision=-1;
  model->xa_error=-1;
  model->xa_recall=-1;
  model->xa_precision=-1;

  free(alpha);
  free(greater);
  free(lesser);
  free(target);

  /* If you would like to output the original model on pairs of
     document, replace the following lines with '(*model)=(*pairmodel);' */
  for(i=0;i<totpair;i++)
    free_example(docdiff[i],1);
  free(docdiff);
  free_model(pairmodel,0);
}


/* The following solves a freely defined and given set of
   inequalities. The optimization problem is of the following form:

   min 0.5 w*w + C sum_i C_i \xi_i
   s.t. x_i * w > rhs_i - \xi_i

   This corresponds to the -z o option. */

void svm_learn_optimization(DOC **docs, double *rhs, long int
			    totdoc, long int totwords, 
			    LEARN_PARM *learn_parm, 
			    KERNEL_PARM *kernel_parm, 
			    KERNEL_CACHE *kernel_cache, MODEL *model,
			    double *alpha)
     /* docs:        Left-hand side of inequalities (x-part) */
     /* rhs:         Right-hand side of inequalities */
     /* totdoc:      Number of examples in docs/label */
     /* totwords:    Number of features (i.e. highest feature index) */
     /* learn_parm:  Learning paramenters */
     /* kernel_parm: Kernel paramenters */
     /* kernel_cache:Initialized Cache of size 1*totdoc, if using a kernel. 
                     NULL if linear.*/
     /* model:       Returns solution as SV expansion (assumed empty before called) */
     /* alpha:       Start values for the alpha variables or NULL
	             pointer. The new alpha values are returned after 
		     optimization if not NULL. Array must be of size totdoc. */
{
  long i,*label;
  long misclassified,upsupvecnum;
  double loss,model_length,example_length;
  double maxdiff,*lin,*a,*c;
  long runtime_start,runtime_end;
  long iterations,maxslackid,svsetnum;
  long *unlabeled,*inconsistent;
  double r_delta_sq=0,r_delta,r_delta_avg;
  long *index,*index2dnum;
  double *weights,*slack,*alphaslack;
  CFLOAT *aicache;  /* buffer to keep one row of hessian */

  TIMING timing_profile;
  SHRINK_STATE shrink_state;

  runtime_start=get_runtime();
  timing_profile.time_kernel=0;
  timing_profile.time_opti=0;
  timing_profile.time_shrink=0;
  timing_profile.time_update=0;
  timing_profile.time_model=0;
  timing_profile.time_check=0;
  timing_profile.time_select=0;
  kernel_cache_statistic=0;

  learn_parm->totwords=totwords;

  /* make sure -n value is reasonable */
  if((learn_parm->svm_newvarsinqp < 2) 
     || (learn_parm->svm_newvarsinqp > learn_parm->svm_maxqpsize)) {
    learn_parm->svm_newvarsinqp=learn_parm->svm_maxqpsize;
  }

  init_shrink_state(&shrink_state,totdoc,(long)MAXSHRINK);

  label = (long *)my_malloc(sizeof(long)*totdoc);
  unlabeled = (long *)my_malloc(sizeof(long)*totdoc);
  inconsistent = (long *)my_malloc(sizeof(long)*totdoc);
  c = (double *)my_malloc(sizeof(double)*totdoc);
  a = (double *)my_malloc(sizeof(double)*totdoc);
  lin = (double *)my_malloc(sizeof(double)*totdoc);
  learn_parm->svm_cost = (double *)my_malloc(sizeof(double)*totdoc);
  model->supvec = (DOC **)my_malloc(sizeof(DOC *)*(totdoc+2));
  model->alpha = (double *)my_malloc(sizeof(double)*(totdoc+2));
  model->index = (long *)my_malloc(sizeof(long)*(totdoc+2));

  model->at_upper_bound=0;
  model->b=0;	       
  model->supvec[0]=0;  /* element 0 reserved and empty for now */
  model->alpha[0]=0;
  model->lin_weights=NULL;
  model->totwords=totwords;
  model->totdoc=totdoc;
  model->kernel_parm=(*kernel_parm);
  model->sv_num=1;
  model->loo_error=-1;
  model->loo_recall=-1;
  model->loo_precision=-1;
  model->xa_error=-1;
  model->xa_recall=-1;
  model->xa_precision=-1;

  r_delta=estimate_r_delta(docs,totdoc,kernel_parm);
  r_delta_sq=r_delta*r_delta;

  r_delta_avg=estimate_r_delta_average(docs,totdoc,kernel_parm);
  if(learn_parm->svm_c == 0.0) {  /* default value for C */
    learn_parm->svm_c=1.0/(r_delta_avg*r_delta_avg);
    if(verbosity>=1) 
      printf("Setting default regularization parameter C=%.4f\n",
	     learn_parm->svm_c);
  }

  learn_parm->biased_hyperplane=0; /* learn an unbiased hyperplane */

  learn_parm->eps=0.0;      /* No margin, unless explicitly handcoded
                               in the right-hand side in the training
                               set.  */

  for(i=0;i<totdoc;i++) {    /* various inits */
    docs[i]->docnum=i;
    a[i]=0;
    lin[i]=0;
    c[i]=rhs[i];       /* set right-hand side */
    unlabeled[i]=0;
    inconsistent[i]=0;
    learn_parm->svm_cost[i]=learn_parm->svm_c*learn_parm->svm_costratio*
      docs[i]->costfactor;
    label[i]=1;
  }
  if(learn_parm->sharedslack) /* if shared slacks are used, they must */
    for(i=0;i<totdoc;i++)     /*  be used on every constraint */
      if(!docs[i]->slackid) {
	perror("Error: Missing shared slacks definitions in some of the examples.");
	exit(0);
      }
      
  /* compute starting state for initial alpha values */
  if(alpha) {
    if(verbosity>=1) {
      printf("Computing starting state..."); fflush(stdout);
    }
    index = (long *)my_malloc(sizeof(long)*totdoc);
    index2dnum = (long *)my_malloc(sizeof(long)*(totdoc+11));
    weights=(double *)my_malloc(sizeof(double)*(totwords+1));
    aicache = (CFLOAT *)my_malloc(sizeof(CFLOAT)*totdoc);
    for(i=0;i<totdoc;i++) {    /* create full index and clip alphas */
      index[i]=1;
      alpha[i]=fabs(alpha[i]);
      if(alpha[i]<0) alpha[i]=0;
      if(alpha[i]>learn_parm->svm_cost[i]) alpha[i]=learn_parm->svm_cost[i];
    }
    if(kernel_parm->kernel_type != LINEAR) {
      for(i=0;i<totdoc;i++)     /* fill kernel cache with unbounded SV */
	if((alpha[i]>0) && (alpha[i]<learn_parm->svm_cost[i]) 
	   && (kernel_cache_space_available(kernel_cache))) 
	  cache_kernel_row(kernel_cache,docs,i,kernel_parm);
      for(i=0;i<totdoc;i++)     /* fill rest of kernel cache with bounded SV */
	if((alpha[i]==learn_parm->svm_cost[i]) 
	   && (kernel_cache_space_available(kernel_cache))) 
	  cache_kernel_row(kernel_cache,docs,i,kernel_parm);
    }
    (void)compute_index(index,totdoc,index2dnum);
    update_linear_component(docs,label,index2dnum,alpha,a,index2dnum,totdoc,
			    totwords,kernel_parm,kernel_cache,lin,aicache,
			    weights);
    (void)calculate_svm_model(docs,label,unlabeled,lin,alpha,a,c,
			      learn_parm,index2dnum,index2dnum,model);
    for(i=0;i<totdoc;i++) {    /* copy initial alphas */
      a[i]=alpha[i];
    }
    free(index);
    free(index2dnum);
    free(weights);
    free(aicache);
    if(verbosity>=1) {
      printf("done.\n");  fflush(stdout);
    }   
  } 

  /* removing inconsistent does not work for general optimization problem */
  if(learn_parm->remove_inconsistent) {	  
    learn_parm->remove_inconsistent = 0;
    printf("'remove inconsistent' not available in this mode. Switching option off!"); fflush(stdout);
  }

  /* caching makes no sense for linear kernel */
  if(kernel_parm->kernel_type == LINEAR) {
    kernel_cache = NULL;   
  } 

  if(verbosity==1) {
    printf("Optimizing"); fflush(stdout);
  }

  /* train the svm */
  if(learn_parm->sharedslack)
    iterations=optimize_to_convergence_sharedslack(docs,label,totdoc,
				     totwords,learn_parm,kernel_parm,
				     kernel_cache,&shrink_state,model,
				     a,lin,c,&timing_profile,
				     &maxdiff);
  else
    iterations=optimize_to_convergence(docs,label,totdoc,
				     totwords,learn_parm,kernel_parm,
				     kernel_cache,&shrink_state,model,
				     inconsistent,unlabeled,
				     a,lin,c,&timing_profile,
				     &maxdiff,(long)-1,(long)1);
  
  if(verbosity>=1) {
    if(verbosity==1) printf("done. (%ld iterations)\n",iterations);

    misclassified=0;
    for(i=0;(i<totdoc);i++) { /* get final statistic */
      if((lin[i]-model->b)*(double)label[i] <= 0.0) 
	misclassified++;
    }

    printf("Optimization finished (maxdiff=%.5f).\n",maxdiff); 

    runtime_end=get_runtime();
    if(verbosity>=2) {
      printf("Runtime in cpu-seconds: %.2f (%.2f%% for kernel/%.2f%% for optimizer/%.2f%% for final/%.2f%% for update/%.2f%% for model/%.2f%% for check/%.2f%% for select)\n",
        ((float)runtime_end-(float)runtime_start)/100.0,
        (100.0*timing_profile.time_kernel)/(float)(runtime_end-runtime_start),
	(100.0*timing_profile.time_opti)/(float)(runtime_end-runtime_start),
	(100.0*timing_profile.time_shrink)/(float)(runtime_end-runtime_start),
        (100.0*timing_profile.time_update)/(float)(runtime_end-runtime_start),
        (100.0*timing_profile.time_model)/(float)(runtime_end-runtime_start),
        (100.0*timing_profile.time_check)/(float)(runtime_end-runtime_start),
        (100.0*timing_profile.time_select)/(float)(runtime_end-runtime_start));
    }
    else {
      printf("Runtime in cpu-seconds: %.2f\n",
	     (runtime_end-runtime_start)/100.0);
    }
  }
  if((verbosity>=1) && (!learn_parm->skip_final_opt_check)) {
    loss=0;
    model_length=0; 
    for(i=0;i<totdoc;i++) {
      if((lin[i]-model->b)*(double)label[i] < c[i]-learn_parm->epsilon_crit)
	loss+=c[i]-(lin[i]-model->b)*(double)label[i];
      model_length+=a[i]*label[i]*lin[i];
    }
    model_length=sqrt(model_length);
    fprintf(stdout,"Norm of weight vector: |w|=%.5f\n",model_length);
  }
  
  if(learn_parm->sharedslack) {
    index = (long *)my_malloc(sizeof(long)*totdoc);
    index2dnum = (long *)my_malloc(sizeof(long)*(totdoc+11));
    maxslackid=0;
    for(i=0;i<totdoc;i++) {    /* create full index */
      index[i]=1;
      if(maxslackid<docs[i]->slackid)
	maxslackid=docs[i]->slackid;
    }

?? 快捷鍵說明

復制代碼 Ctrl + C
搜索代碼 Ctrl + F
全屏模式 F11
切換主題 Ctrl + Shift + D
顯示快捷鍵 ?
增大字號 Ctrl + =
減小字號 Ctrl + -
亚洲欧美第一页_禁久久精品乱码_粉嫩av一区二区三区免费野_久草精品视频
精品一区二区综合| 欧美在线视频日韩| 一区二区三区电影在线播| 欧美一区二区三区电影| 一本色道久久综合狠狠躁的推荐| 日韩精品欧美精品| 成人免费小视频| 久久只精品国产| 欧美日韩精品福利| 色综合色综合色综合色综合色综合| 久久国产婷婷国产香蕉| 亚洲国产人成综合网站| 中文字幕在线观看不卡视频| 日韩欧美亚洲国产精品字幕久久久| 欧美在线视频日韩| 色一区在线观看| 成人高清免费观看| 国产不卡一区视频| 蜜臀a∨国产成人精品| 亚洲图片欧美一区| 亚洲免费观看在线观看| 国产清纯白嫩初高生在线观看91 | 中文在线一区二区| 日韩欧美国产一区二区三区| 欧美视频精品在线| 在线亚洲一区二区| 99这里只有久久精品视频| 国产成人亚洲精品狼色在线| 美女网站一区二区| 日韩成人伦理电影在线观看| 午夜精彩视频在线观看不卡| 亚洲国产成人va在线观看天堂| 亚洲视频在线观看一区| 中文字幕一区二区不卡| 国产精品国产a| 国产精品成人免费在线| 国产精品久久看| 国产精品久久久久久久久动漫| 国产精品久久夜| 国产精品亲子伦对白| 国产欧美日韩在线视频| 欧美韩国日本不卡| 亚洲欧洲av一区二区三区久久| 国产精品久久久久久久浪潮网站| 日本一区二区三级电影在线观看| 亚洲国产精品成人久久综合一区| 国产欧美精品在线观看| 中文字幕av一区二区三区高| 亚洲欧美日韩系列| 亚洲一线二线三线久久久| 亚洲福利视频一区| 久久精品999| 大胆亚洲人体视频| 91久久免费观看| 欧美电影一区二区三区| 日韩美女视频一区二区在线观看| 欧美精品一区二| 亚洲国产精品成人久久综合一区| 国产精品久久久久久久蜜臀 | 亚洲国产一区二区在线播放| 午夜精品久久久久久久久久| 美女脱光内衣内裤视频久久网站| 国产精品综合av一区二区国产馆| 成人午夜激情片| 91极品视觉盛宴| 欧美一区二区三区男人的天堂| 国产亚洲精品精华液| 最近日韩中文字幕| 图片区日韩欧美亚洲| 精品一区二区免费看| 成人免费视频一区二区| 欧美日韩精品欧美日韩精品 | 欧美日韩国产色站一区二区三区| 欧美精品vⅰdeose4hd| 国产午夜精品一区二区三区视频| 一区二区三区在线视频观看58| 婷婷六月综合网| 高清不卡在线观看| 欧美日韩成人一区| 国产精品网站在线| 日韩高清中文字幕一区| 成人午夜电影久久影院| 欧美丰满嫩嫩电影| 国产精品久久三| 美女视频一区二区| 91国产福利在线| 日本一区二区三区久久久久久久久不 | 亚洲精品一二三区| 精品午夜一区二区三区在线观看| 色婷婷av久久久久久久| 欧美精品一区二区三区久久久| 亚洲精品美腿丝袜| 国产精品亚洲人在线观看| 欧美性videosxxxxx| 久久久精品免费免费| 亚洲妇熟xx妇色黄| a美女胸又www黄视频久久| 日韩精品一区二区三区四区视频| 亚洲免费视频中文字幕| 丰满放荡岳乱妇91ww| 日韩免费观看高清完整版| 亚洲伦理在线精品| 韩国成人福利片在线播放| 欧美日韩亚洲丝袜制服| 中文字幕亚洲电影| 国产精品996| 日韩欧美中文一区二区| 亚洲成av人片一区二区梦乃| va亚洲va日韩不卡在线观看| xvideos.蜜桃一区二区| 免费三级欧美电影| 欧美狂野另类xxxxoooo| 一区二区久久久| 99久久精品免费看| 国产欧美一区二区精品婷婷| 精品一区中文字幕| 日韩一级片网站| 免费黄网站欧美| 911精品国产一区二区在线| 一个色在线综合| 99精品视频在线观看免费| 久久免费精品国产久精品久久久久| 日韩av一级片| 欧美精品777| 亚洲成av人片观看| 在线观看www91| 亚洲一卡二卡三卡四卡| 91国偷自产一区二区三区观看| 国产清纯白嫩初高生在线观看91| 国产精品91一区二区| 国产亚洲自拍一区| 国产精品亚洲专一区二区三区 | 久久草av在线| 精品久久人人做人人爰| 老司机精品视频一区二区三区| 91精品一区二区三区久久久久久| 日韩精品免费专区| 日韩欧美中文字幕一区| 国内精品伊人久久久久av一坑 | 日韩理论片网站| 91久久一区二区| 日韩国产欧美在线视频| 日韩一区二区三区av| 久久精品国产精品亚洲精品| 精品播放一区二区| 国产精品18久久久久久vr| 久久久久久久久蜜桃| 成人精品免费网站| 亚洲欧美日韩人成在线播放| 欧洲亚洲精品在线| 日本欧美在线观看| 久久夜色精品一区| 91在线免费播放| 亚洲h精品动漫在线观看| 欧美一级一级性生活免费录像| 国产在线乱码一区二区三区| 国产精品二区一区二区aⅴ污介绍| 99久久精品国产麻豆演员表| 亚洲成av人片www| 久久综合网色—综合色88| 成人免费毛片app| 亚洲一区二三区| 精品国产一二三区| 99久久夜色精品国产网站| 亚洲综合色自拍一区| 欧美一二三区在线| 成人黄色电影在线| 亚洲成人777| 国产日产欧美精品一区二区三区| 色视频欧美一区二区三区| 日韩av中文在线观看| 国产精品国产三级国产| 欧美老年两性高潮| 成人免费黄色大片| 日韩精品电影在线| 中文字幕不卡一区| 日韩一区二区视频| gogo大胆日本视频一区| 日本免费在线视频不卡一不卡二| 国产三级精品三级在线专区| 欧美影片第一页| 国产福利一区二区三区视频在线| 日韩一区在线播放| 亚洲精品在线免费观看视频| 91老师国产黑色丝袜在线| 美女国产一区二区三区| 综合久久国产九一剧情麻豆| 日韩一区二区免费视频| 色国产精品一区在线观看| 狠狠色综合播放一区二区| 亚洲综合偷拍欧美一区色| 国产精品天美传媒沈樵| 日韩免费在线观看| 欧美中文一区二区三区| www.综合网.com| 久久99精品久久只有精品| 亚洲午夜电影在线| 中文字幕一区在线观看| 久久久久久毛片| 日韩精品一区二区在线观看|