libsvm工具箱C++编程实践2

libsvm工具箱C++编程实践2

大家好,又见面了,我是全栈君,今天给大家准备了Idea注册码。

转载请注明出处  http://blog.csdn.net/u013491262/article/details/37344193   点击打开链接

上周因为皮肤有点过敏,去医院来来回回一周。

前几天去上海比完赛,拿了个银牌靠前 。遗憾总会有的。

 于是更新放慢了 。

这篇博客没有什么含金量,仅仅是拿heart_scale.txt这个文件的格式改了改部分代码,内容上没有什么。用到了一些C++的一些不太经常使用的知识点,也非常水。

希望会对须要的人有点帮助。

我的看法,选择MATLAB做svm的分类和C++或者其它没有什么太大的差别。

可能MATLAB编码上会微快,可是执行速度明显满了点,当然对于数据预处理的部分都差点儿相同。

#include "svm.h"
using namespace std ;

const int feature_size = 13 ;
const int train_size = 270 ;
svm_problem prob ;

void init_svm_problem(){
     prob.l = train_size ;
     prob.y = new double[train_size] ;
     prob.x = new svm_node* [train_size] ;
     svm_node *x_space = new svm_node[train_size*(1+feature_size)] ;
     freopen("heart_scale.txt" , "r" , stdin) ;
     double value ;
     int indx ;
     char   str[200]  ;
     string  s  ;
     int  row = -1  , i  =  -1  , t  ;
     while(gets(str)){
         istrstream  in(str) ;
         t = 0 ;
         while(in>>s){
             char *ch = (char *)s.c_str() ;
             if(strcmp(ch , "+1") == 0){
                   row++ ;
                   prob.y[row] = 1 ;
             }
             else  if(strcmp(ch , "-1") == 0){
                   row++ ;
                   prob.y[row] = -1 ;
             }
             else{
                   sscanf(ch , "%d:%lf" ,&indx , &value) ;
                   if(value != 0.0){
                        i++ ;
                        x_space[i].index = indx ;
                        x_space[i].value = value ;
                   }
                   if(t == 0) prob.x[row] = &x_space[i] ;
                   t++  ;
             }
          }
          i++ ;
          x_space[i].index = -1 ;
     }
}

svm_parameter param ;
void  init_svm_parameter(){
      param.svm_type = C_SVC;
      param.kernel_type = RBF;
      param.degree = 3;
      param.gamma = 0.0001;
      param.coef0 = 0;
      param.nu = 0.5;
      param.cache_size = 100;
      param.C = 13;
      param.eps = 1e-5;
      param.p = 0.1;
      param.shrinking = 1;
      param.probability = 0;
      param.nr_weight = 0;
      param.weight_label = NULL;
      param.weight = NULL;
}

const int test_size = 270 ;
double predict_lable[test_size] ;
double test_lable[test_size] ;

int  main(){
     int i , j  , indx ;
     double value ;
     char  str[200]  ;
     string s ;
     init_svm_problem() ;
     init_svm_parameter() ;
     if(param.gamma == 0) param.gamma = 0.5 ;
     svm_model* model = svm_train(&prob , &param) ;
     freopen("heart_scale.txt" , "r" , stdin) ;
     svm_node *test = new svm_node[13] ;
     for(i = 0 ; i < test_size ; i++){
          gets(str)  ;
          istrstream  in(str) ;
          j = -1 ;
          while(in>>s){
                 char *ch = (char *)s.c_str() ;
                 if(strcmp(ch , "+1") == 0)
                    test_lable[i] = 1 ;
                 else if(strcmp(ch , "-1") == 0)
                    test_lable[i] = -1 ;
                 else{
                     sscanf(ch , "%d:%lf" ,&indx , &value) ;
                     if(value != 0.0){
                            j++ ;
                            test[j].index = indx ;
                            test[j].value = value ;
                     }
                 }
          }
          j++ ;
          test[j].index = -1 ;
          predict_lable[i] = svm_predict(model , test) ;
     }
     int yes = 0 ;
     for(i = 0 ; i < test_size ; i++)
        if(test_lable[i] == predict_lable[i])  yes++ ;
     cout<<yes<<endl ;
     printf("%.2lf%%\n" , (0.0+yes)/test_size) ;
     return 0 ;
}

libsvm工具箱C++编程实践2

后文希望能研究出90% + 的数据处理算法。

heart_scal.txt 这个林教授官网上有,cadn上下载要积分,我做个善事吧。

+1 1:0.708333 2:1 3:1 4:-0.320755 5:-0.105023 6:-1 7:1 8:-0.419847 9:-1 10:-0.225806 12:1 13:-1 
-1 1:0.583333 2:-1 3:0.333333 4:-0.603774 5:1 6:-1 7:1 8:0.358779 9:-1 10:-0.483871 12:-1 13:1 
+1 1:0.166667 2:1 3:-0.333333 4:-0.433962 5:-0.383562 6:-1 7:-1 8:0.0687023 9:-1 10:-0.903226 11:-1 12:-1 13:1 
-1 1:0.458333 2:1 3:1 4:-0.358491 5:-0.374429 6:-1 7:-1 8:-0.480916 9:1 10:-0.935484 12:-0.333333 13:1 
-1 1:0.875 2:-1 3:-0.333333 4:-0.509434 5:-0.347032 6:-1 7:1 8:-0.236641 9:1 10:-0.935484 11:-1 12:-0.333333 13:-1 
-1 1:0.5 2:1 3:1 4:-0.509434 5:-0.767123 6:-1 7:-1 8:0.0534351 9:-1 10:-0.870968 11:-1 12:-1 13:1 
+1 1:0.125 2:1 3:0.333333 4:-0.320755 5:-0.406393 6:1 7:1 8:0.0839695 9:1 10:-0.806452 12:-0.333333 13:0.5 
+1 1:0.25 2:1 3:1 4:-0.698113 5:-0.484018 6:-1 7:1 8:0.0839695 9:1 10:-0.612903 12:-0.333333 13:1 
+1 1:0.291667 2:1 3:1 4:-0.132075 5:-0.237443 6:-1 7:1 8:0.51145 9:-1 10:-0.612903 12:0.333333 13:1 
+1 1:0.416667 2:-1 3:1 4:0.0566038 5:0.283105 6:-1 7:1 8:0.267176 9:-1 10:0.290323 12:1 13:1 
-1 1:0.25 2:1 3:1 4:-0.226415 5:-0.506849 6:-1 7:-1 8:0.374046 9:-1 10:-0.83871 12:-1 13:1 
-1 2:1 3:1 4:-0.0943396 5:-0.543379 6:-1 7:1 8:-0.389313 9:1 10:-1 11:-1 12:-1 13:1 
-1 1:-0.375 2:1 3:0.333333 4:-0.132075 5:-0.502283 6:-1 7:1 8:0.664122 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.333333 2:1 3:-1 4:-0.245283 5:-0.506849 6:-1 7:-1 8:0.129771 9:-1 10:-0.16129 12:0.333333 13:-1 
-1 1:0.166667 2:-1 3:1 4:-0.358491 5:-0.191781 6:-1 7:1 8:0.343511 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
-1 1:0.75 2:-1 3:1 4:-0.660377 5:-0.894977 6:-1 7:-1 8:-0.175573 9:-1 10:-0.483871 12:-1 13:-1 
+1 1:-0.291667 2:1 3:1 4:-0.132075 5:-0.155251 6:-1 7:-1 8:-0.251908 9:1 10:-0.419355 12:0.333333 13:1 
+1 2:1 3:1 4:-0.132075 5:-0.648402 6:1 7:1 8:0.282443 9:1 11:1 12:-1 13:1 
-1 1:0.458333 2:1 3:-1 4:-0.698113 5:-0.611872 6:-1 7:1 8:0.114504 9:1 10:-0.419355 12:-1 13:-1 
-1 1:-0.541667 2:1 3:-1 4:-0.132075 5:-0.666667 6:-1 7:-1 8:0.633588 9:1 10:-0.548387 11:-1 12:-1 13:1 
+1 1:0.583333 2:1 3:1 4:-0.509434 5:-0.52968 6:-1 7:1 8:-0.114504 9:1 10:-0.16129 12:0.333333 13:1 
-1 1:-0.208333 2:1 3:-0.333333 4:-0.320755 5:-0.456621 6:-1 7:1 8:0.664122 9:-1 10:-0.935484 12:-1 13:-1 
-1 1:-0.416667 2:1 3:1 4:-0.603774 5:-0.191781 6:-1 7:-1 8:0.679389 9:-1 10:-0.612903 12:-1 13:-1 
-1 1:-0.25 2:1 3:1 4:-0.660377 5:-0.643836 6:-1 7:-1 8:0.0992366 9:-1 10:-0.967742 11:-1 12:-1 13:-1 
-1 1:0.0416667 2:-1 3:-0.333333 4:-0.283019 5:-0.260274 6:1 7:1 8:0.343511 9:1 10:-1 11:-1 12:-0.333333 13:-1 
-1 1:-0.208333 2:-1 3:0.333333 4:-0.320755 5:-0.319635 6:-1 7:-1 8:0.0381679 9:-1 10:-0.935484 11:-1 12:-1 13:-1 
-1 1:-0.291667 2:-1 3:1 4:-0.169811 5:-0.465753 6:-1 7:1 8:0.236641 9:1 10:-1 12:-1 13:-1 
-1 1:-0.0833333 2:-1 3:0.333333 4:-0.509434 5:-0.228311 6:-1 7:1 8:0.312977 9:-1 10:-0.806452 11:-1 12:-1 13:-1 
+1 1:0.208333 2:1 3:0.333333 4:-0.660377 5:-0.525114 6:-1 7:1 8:0.435115 9:-1 10:-0.193548 12:-0.333333 13:1 
-1 1:0.75 2:-1 3:0.333333 4:-0.698113 5:-0.365297 6:1 7:1 8:-0.0992366 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:0.166667 2:1 3:0.333333 4:-0.358491 5:-0.52968 6:-1 7:1 8:0.206107 9:-1 10:-0.870968 12:-0.333333 13:1 
-1 1:0.541667 2:1 3:1 4:0.245283 5:-0.534247 6:-1 7:1 8:0.0229008 9:-1 10:-0.258065 11:-1 12:-1 13:0.5 
-1 1:-0.666667 2:-1 3:0.333333 4:-0.509434 5:-0.593607 6:-1 7:-1 8:0.51145 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.25 2:1 3:1 4:0.433962 5:-0.086758 6:-1 7:1 8:0.0534351 9:1 10:0.0967742 11:1 12:-1 13:1 
+1 1:-0.125 2:1 3:1 4:-0.0566038 5:-0.6621 6:-1 7:1 8:-0.160305 9:1 10:-0.709677 12:-1 13:1 
+1 1:-0.208333 2:1 3:1 4:-0.320755 5:-0.406393 6:1 7:1 8:0.206107 9:1 10:-1 11:-1 12:0.333333 13:1 
+1 1:0.333333 2:1 3:1 4:-0.132075 5:-0.630137 6:-1 7:1 8:0.0229008 9:1 10:-0.387097 11:-1 12:-0.333333 13:1 
+1 1:0.25 2:1 3:-1 4:0.245283 5:-0.328767 6:-1 7:1 8:-0.175573 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.458333 2:1 3:0.333333 4:-0.320755 5:-0.753425 6:-1 7:-1 8:0.206107 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.208333 2:1 3:1 4:-0.471698 5:-0.561644 6:-1 7:1 8:0.755725 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.541667 2:1 3:1 4:0.0943396 5:-0.557078 6:-1 7:-1 8:0.679389 9:-1 10:-1 11:-1 12:-1 13:1 
-1 1:0.375 2:-1 3:1 4:-0.433962 5:-0.621005 6:-1 7:-1 8:0.40458 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.375 2:1 3:0.333333 4:-0.320755 5:-0.511416 6:-1 7:-1 8:0.648855 9:1 10:-0.870968 11:-1 12:-1 13:-1 
-1 1:-0.291667 2:1 3:-0.333333 4:-0.867925 5:-0.675799 6:1 7:-1 8:0.29771 9:-1 10:-1 11:-1 12:-1 13:1 
+1 1:0.25 2:1 3:0.333333 4:-0.396226 5:-0.579909 6:1 7:-1 8:-0.0381679 9:-1 10:-0.290323 12:-0.333333 13:0.5 
-1 1:0.208333 2:1 3:0.333333 4:-0.132075 5:-0.611872 6:1 7:1 8:0.435115 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.166667 2:1 3:0.333333 4:-0.54717 5:-0.894977 6:-1 7:1 8:-0.160305 9:-1 10:-0.741935 11:-1 12:1 13:-1 
+1 1:-0.375 2:1 3:1 4:-0.698113 5:-0.675799 6:-1 7:1 8:0.618321 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:0.541667 2:1 3:-0.333333 4:0.245283 5:-0.452055 6:-1 7:-1 8:-0.251908 9:1 10:-1 12:1 13:0.5 
+1 1:0.5 2:-1 3:1 4:0.0566038 5:-0.547945 6:-1 7:1 8:-0.343511 9:-1 10:-0.677419 12:1 13:1 
+1 1:-0.458333 2:1 3:1 4:-0.207547 5:-0.136986 6:-1 7:-1 8:-0.175573 9:1 10:-0.419355 12:-1 13:0.5 
-1 1:-0.0416667 2:1 3:-0.333333 4:-0.358491 5:-0.639269 6:1 7:-1 8:0.725191 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.5 2:-1 3:0.333333 4:-0.132075 5:0.328767 6:1 7:1 8:0.312977 9:-1 10:-0.741935 11:-1 12:-0.333333 13:-1 
-1 1:0.416667 2:-1 3:-0.333333 4:-0.132075 5:-0.684932 6:-1 7:-1 8:0.648855 9:-1 10:-1 11:-1 12:0.333333 13:-1 
-1 1:-0.333333 2:-1 3:-0.333333 4:-0.320755 5:-0.506849 6:-1 7:1 8:0.587786 9:-1 10:-0.806452 12:-1 13:-1 
-1 1:-0.5 2:-1 3:-0.333333 4:-0.792453 5:-0.671233 6:-1 7:-1 8:0.480916 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:0.333333 2:1 3:1 4:-0.169811 5:-0.817352 6:-1 7:1 8:-0.175573 9:1 10:0.16129 12:-0.333333 13:-1 
-1 1:0.291667 2:-1 3:0.333333 4:-0.509434 5:-0.762557 6:1 7:-1 8:-0.618321 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.25 2:-1 3:1 4:0.509434 5:-0.438356 6:-1 7:-1 8:0.0992366 9:1 10:-1 12:-1 13:-1 
+1 1:0.375 2:1 3:-0.333333 4:-0.509434 5:-0.292237 6:-1 7:1 8:-0.51145 9:-1 10:-0.548387 12:-0.333333 13:1 
-1 1:0.166667 2:1 3:0.333333 4:0.0566038 5:-1 6:1 7:-1 8:0.557252 9:-1 10:-0.935484 11:-1 12:-0.333333 13:1 
+1 1:-0.0833333 2:-1 3:1 4:-0.320755 5:-0.182648 6:-1 7:-1 8:0.0839695 9:1 10:-0.612903 12:-1 13:1 
-1 1:-0.375 2:1 3:0.333333 4:-0.509434 5:-0.543379 6:-1 7:-1 8:0.496183 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.291667 2:-1 3:-1 4:0.0566038 5:-0.479452 6:-1 7:-1 8:0.526718 9:-1 10:-0.709677 11:-1 12:-1 13:-1 
-1 1:0.416667 2:1 3:-1 4:-0.0377358 5:-0.511416 6:1 7:1 8:0.206107 9:-1 10:-0.258065 11:1 12:-1 13:0.5 
+1 1:0.166667 2:1 3:1 4:0.0566038 5:-0.315068 6:-1 7:1 8:-0.374046 9:1 10:-0.806452 12:-0.333333 13:0.5 
-1 1:-0.0833333 2:1 3:1 4:-0.132075 5:-0.383562 6:-1 7:1 8:0.755725 9:1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.208333 2:-1 3:-0.333333 4:-0.207547 5:-0.118721 6:1 7:1 8:0.236641 9:-1 10:-1 11:-1 12:0.333333 13:-1 
-1 1:-0.375 2:-1 3:0.333333 4:-0.54717 5:-0.47032 6:-1 7:-1 8:0.19084 9:-1 10:-0.903226 12:-0.333333 13:-1 
+1 1:-0.25 2:1 3:0.333333 4:-0.735849 5:-0.465753 6:-1 7:-1 8:0.236641 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.333333 2:1 3:1 4:-0.509434 5:-0.388128 6:-1 7:-1 8:0.0534351 9:1 10:0.16129 12:-0.333333 13:1 
-1 1:0.166667 2:-1 3:1 4:-0.509434 5:0.0410959 6:-1 7:-1 8:0.40458 9:1 10:-0.806452 11:-1 12:-1 13:-1 
-1 1:0.708333 2:1 3:-0.333333 4:0.169811 5:-0.456621 6:-1 7:1 8:0.0992366 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.958333 2:-1 3:0.333333 4:-0.132075 5:-0.675799 6:-1 8:-0.312977 9:-1 10:-0.645161 12:-1 13:-1 
-1 1:0.583333 2:-1 3:1 4:-0.773585 5:-0.557078 6:-1 7:-1 8:0.0839695 9:-1 10:-0.903226 11:-1 12:0.333333 13:-1 
+1 1:-0.333333 2:1 3:1 4:-0.0943396 5:-0.164384 6:-1 7:1 8:0.160305 9:1 10:-1 12:1 13:1 
-1 1:-0.333333 2:1 3:1 4:-0.811321 5:-0.625571 6:-1 7:1 8:0.175573 9:1 10:-0.0322581 12:-1 13:-1 
-1 1:-0.583333 2:-1 3:0.333333 4:-1 5:-0.666667 6:-1 7:-1 8:0.648855 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.458333 2:-1 3:0.333333 4:-0.509434 5:-0.621005 6:-1 7:-1 8:0.557252 9:-1 10:-1 12:-1 13:-1 
-1 1:0.125 2:1 3:-0.333333 4:-0.509434 5:-0.497717 6:-1 7:-1 8:0.633588 9:-1 10:-0.741935 11:-1 12:-1 13:-1 
+1 1:0.208333 2:1 3:1 4:-0.0188679 5:-0.579909 6:-1 7:-1 8:-0.480916 9:-1 10:-0.354839 12:-0.333333 13:1 
+1 1:-0.75 2:1 3:1 4:-0.509434 5:-0.671233 6:-1 7:-1 8:-0.0992366 9:1 10:-0.483871 12:-1 13:1 
+1 1:0.208333 2:1 3:1 4:0.0566038 5:-0.342466 6:-1 7:1 8:-0.389313 9:1 10:-0.741935 11:-1 12:-1 13:1 
-1 1:-0.5 2:1 3:0.333333 4:-0.320755 5:-0.598174 6:-1 7:1 8:0.480916 9:-1 10:-0.354839 12:-1 13:-1 
-1 1:0.166667 2:1 3:1 4:-0.698113 5:-0.657534 6:-1 7:-1 8:-0.160305 9:1 10:-0.516129 12:-1 13:0.5 
-1 1:-0.458333 2:1 3:-1 4:0.0188679 5:-0.461187 6:-1 7:1 8:0.633588 9:-1 10:-0.741935 11:-1 12:0.333333 13:-1 
-1 1:0.375 2:1 3:-0.333333 4:-0.358491 5:-0.625571 6:1 7:1 8:0.0534351 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.25 2:1 3:-1 4:0.584906 5:-0.342466 6:-1 7:1 8:0.129771 9:-1 10:0.354839 11:1 12:-1 13:1 
-1 1:-0.5 2:-1 3:-0.333333 4:-0.396226 5:-0.178082 6:-1 7:-1 8:0.40458 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.125 2:1 3:1 4:0.0566038 5:-0.465753 6:-1 7:1 8:-0.129771 9:-1 10:-0.16129 12:-1 13:1 
-1 1:0.25 2:1 3:-0.333333 4:-0.132075 5:-0.56621 6:-1 7:-1 8:0.419847 9:1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.333333 2:-1 3:1 4:-0.320755 5:-0.0684932 6:-1 7:1 8:0.496183 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.0416667 2:1 3:1 4:-0.433962 5:-0.360731 6:-1 7:1 8:-0.419847 9:1 10:-0.290323 12:-0.333333 13:1 
+1 1:0.0416667 2:1 3:1 4:-0.698113 5:-0.634703 6:-1 7:1 8:-0.435115 9:1 10:-1 12:-0.333333 13:-1 
+1 1:-0.0416667 2:1 3:1 4:-0.415094 5:-0.607306 6:-1 7:-1 8:0.480916 9:-1 10:-0.677419 11:-1 12:0.333333 13:1 
+1 1:-0.25 2:1 3:1 4:-0.698113 5:-0.319635 6:-1 7:1 8:-0.282443 9:1 10:-0.677419 12:-0.333333 13:-1 
-1 1:0.541667 2:1 3:1 4:-0.509434 5:-0.196347 6:-1 7:1 8:0.221374 9:-1 10:-0.870968 12:-1 13:-1 
+1 1:0.208333 2:1 3:1 4:-0.886792 5:-0.506849 6:-1 7:-1 8:0.29771 9:-1 10:-0.967742 11:-1 12:-0.333333 13:1 
-1 1:0.458333 2:-1 3:0.333333 4:-0.132075 5:-0.146119 6:-1 7:-1 8:-0.0534351 9:-1 10:-0.935484 11:-1 12:-1 13:1 
-1 1:-0.125 2:-1 3:-0.333333 4:-0.509434 5:-0.461187 6:-1 7:-1 8:0.389313 9:-1 10:-0.645161 11:-1 12:-1 13:-1 
-1 1:-0.375 2:-1 3:0.333333 4:-0.735849 5:-0.931507 6:-1 7:-1 8:0.587786 9:-1 10:-0.806452 12:-1 13:-1 
+1 1:0.583333 2:1 3:1 4:-0.509434 5:-0.493151 6:-1 7:-1 8:-1 9:-1 10:-0.677419 12:-1 13:-1 
-1 1:-0.166667 2:-1 3:1 4:-0.320755 5:-0.347032 6:-1 7:-1 8:0.40458 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.166667 2:1 3:1 4:0.339623 5:-0.255708 6:1 7:1 8:-0.19084 9:-1 10:-0.677419 12:1 13:1 
+1 1:0.416667 2:1 3:1 4:-0.320755 5:-0.415525 6:-1 7:1 8:0.160305 9:-1 10:-0.548387 12:-0.333333 13:1 
+1 1:-0.208333 2:1 3:1 4:-0.433962 5:-0.324201 6:-1 7:1 8:0.450382 9:-1 10:-0.83871 12:-1 13:1 
-1 1:-0.0833333 2:1 3:0.333333 4:-0.886792 5:-0.561644 6:-1 7:-1 8:0.0992366 9:1 10:-0.612903 12:-1 13:-1 
+1 1:0.291667 2:-1 3:1 4:0.0566038 5:-0.39726 6:-1 7:1 8:0.312977 9:-1 10:-0.16129 12:0.333333 13:1 
+1 1:0.25 2:1 3:1 4:-0.132075 5:-0.767123 6:-1 7:-1 8:0.389313 9:1 10:-1 11:-1 12:-0.333333 13:1 
-1 1:-0.333333 2:-1 3:-0.333333 4:-0.660377 5:-0.844749 6:-1 7:-1 8:0.0229008 9:-1 10:-1 12:-1 13:-1 
+1 1:0.0833333 2:-1 3:1 4:0.622642 5:-0.0821918 6:-1 8:-0.29771 9:1 10:0.0967742 12:-1 13:-1 
-1 1:-0.5 2:1 3:-0.333333 4:-0.698113 5:-0.502283 6:-1 7:-1 8:0.251908 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.291667 2:-1 3:1 4:0.207547 5:-0.182648 6:-1 7:1 8:0.374046 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.0416667 2:-1 3:0.333333 4:-0.226415 5:-0.187215 6:1 7:-1 8:0.51145 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.458333 2:1 3:-0.333333 4:-0.509434 5:-0.228311 6:-1 7:-1 8:0.389313 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.166667 2:-1 3:-0.333333 4:-0.245283 5:-0.3379 6:-1 7:-1 8:0.389313 9:-1 10:-1 12:-1 13:-1 
+1 1:-0.291667 2:1 3:1 4:-0.509434 5:-0.438356 6:-1 7:1 8:0.114504 9:-1 10:-0.741935 11:-1 12:-1 13:1 
+1 1:0.125 2:-1 3:1 4:1 5:-0.260274 6:1 7:1 8:-0.0534351 9:1 10:0.290323 11:1 12:0.333333 13:1 
-1 1:0.541667 2:-1 3:-1 4:0.0566038 5:-0.543379 6:-1 7:-1 8:-0.343511 9:-1 10:-0.16129 11:1 12:-1 13:-1 
+1 1:0.125 2:1 3:1 4:-0.320755 5:-0.283105 6:1 7:1 8:-0.51145 9:1 10:-0.483871 11:1 12:-1 13:1 
+1 1:-0.166667 2:1 3:0.333333 4:-0.509434 5:-0.716895 6:-1 7:-1 8:0.0381679 9:-1 10:-0.354839 12:1 13:1 
+1 1:0.0416667 2:1 3:1 4:-0.471698 5:-0.269406 6:-1 7:1 8:-0.312977 9:1 10:0.0322581 12:0.333333 13:-1 
+1 1:0.166667 2:1 3:1 4:0.0943396 5:-0.324201 6:-1 7:-1 8:-0.740458 9:1 10:-0.612903 12:-0.333333 13:1 
-1 1:0.5 2:-1 3:0.333333 4:0.245283 5:0.0684932 6:-1 7:1 8:0.221374 9:-1 10:-0.741935 11:-1 12:-1 13:-1 
-1 1:0.0416667 2:1 3:0.333333 4:-0.415094 5:-0.328767 6:-1 7:1 8:0.236641 9:-1 10:-0.83871 11:1 12:-0.333333 13:-1 
-1 1:0.0416667 2:-1 3:0.333333 4:0.245283 5:-0.657534 6:-1 7:-1 8:0.40458 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:0.375 2:1 3:1 4:-0.509434 5:-0.356164 6:-1 7:-1 8:-0.572519 9:1 10:-0.419355 12:0.333333 13:1 
-1 1:-0.0416667 2:-1 3:0.333333 4:-0.207547 5:-0.680365 6:-1 7:1 8:0.496183 9:-1 10:-0.967742 12:-1 13:-1 
-1 1:-0.0416667 2:1 3:-0.333333 4:-0.245283 5:-0.657534 6:-1 7:-1 8:0.328244 9:-1 10:-0.741935 11:-1 12:-0.333333 13:-1 
+1 1:0.291667 2:1 3:1 4:-0.566038 5:-0.525114 6:1 7:-1 8:0.358779 9:1 10:-0.548387 11:-1 12:0.333333 13:1 
+1 1:0.416667 2:-1 3:1 4:-0.735849 5:-0.347032 6:-1 7:-1 8:0.496183 9:1 10:-0.419355 12:0.333333 13:-1 
+1 1:0.541667 2:1 3:1 4:-0.660377 5:-0.607306 6:-1 7:1 8:-0.0687023 9:1 10:-0.967742 11:-1 12:-0.333333 13:-1 
-1 1:-0.458333 2:1 3:1 4:-0.132075 5:-0.543379 6:-1 7:-1 8:0.633588 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.458333 2:1 3:1 4:-0.509434 5:-0.452055 6:-1 7:1 8:-0.618321 9:1 10:-0.290323 11:1 12:-0.333333 13:-1 
-1 1:0.0416667 2:1 3:0.333333 4:0.0566038 5:-0.515982 6:-1 7:1 8:0.435115 9:-1 10:-0.483871 11:-1 12:-1 13:1 
-1 1:-0.291667 2:-1 3:0.333333 4:-0.0943396 5:-0.767123 6:-1 7:1 8:0.358779 9:1 10:-0.548387 11:1 12:-1 13:-1 
-1 1:0.583333 2:-1 3:0.333333 4:0.0943396 5:-0.310502 6:-1 7:-1 8:0.541985 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:0.125 2:1 3:1 4:-0.415094 5:-0.438356 6:1 7:1 8:0.114504 9:1 10:-0.612903 12:-0.333333 13:-1 
-1 1:-0.791667 2:-1 3:-0.333333 4:-0.54717 5:-0.616438 6:-1 7:-1 8:0.847328 9:-1 10:-0.774194 11:-1 12:-1 13:-1 
-1 1:0.166667 2:1 3:1 4:-0.283019 5:-0.630137 6:-1 7:-1 8:0.480916 9:1 10:-1 11:-1 12:-1 13:1 
+1 1:0.458333 2:1 3:1 4:-0.0377358 5:-0.607306 6:-1 7:1 8:-0.0687023 9:-1 10:-0.354839 12:0.333333 13:0.5 
-1 1:0.25 2:1 3:1 4:-0.169811 5:-0.3379 6:-1 7:1 8:0.694656 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.125 2:1 3:0.333333 4:-0.132075 5:-0.511416 6:-1 7:-1 8:0.40458 9:-1 10:-0.806452 12:-0.333333 13:1 
-1 1:-0.0833333 2:1 3:-1 4:-0.415094 5:-0.60274 6:-1 7:1 8:-0.175573 9:1 10:-0.548387 11:-1 12:-0.333333 13:-1 
+1 1:0.0416667 2:1 3:-0.333333 4:0.849057 5:-0.283105 6:-1 7:1 8:0.89313 9:-1 10:-1 11:-1 12:-0.333333 13:1 
+1 2:1 3:1 4:-0.45283 5:-0.287671 6:-1 7:-1 8:-0.633588 9:1 10:-0.354839 12:0.333333 13:1 
+1 1:-0.0416667 2:1 3:1 4:-0.660377 5:-0.525114 6:-1 7:-1 8:0.358779 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
+1 1:-0.541667 2:1 3:1 4:-0.698113 5:-0.812785 6:-1 7:1 8:-0.343511 9:1 10:-0.354839 12:-1 13:1 
+1 1:0.208333 2:1 3:0.333333 4:-0.283019 5:-0.552511 6:-1 7:1 8:0.557252 9:-1 10:0.0322581 11:-1 12:0.333333 13:1 
-1 1:-0.5 2:-1 3:0.333333 4:-0.660377 5:-0.351598 6:-1 7:1 8:0.541985 9:1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.5 2:1 3:0.333333 4:-0.660377 5:-0.43379 6:-1 7:-1 8:0.648855 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.125 2:-1 3:0.333333 4:-0.509434 5:-0.575342 6:-1 7:-1 8:0.328244 9:-1 10:-0.483871 12:-1 13:-1 
-1 1:0.0416667 2:-1 3:0.333333 4:-0.735849 5:-0.356164 6:-1 7:1 8:0.465649 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.458333 2:-1 3:1 4:-0.320755 5:-0.191781 6:-1 7:-1 8:-0.221374 9:-1 10:-0.354839 12:0.333333 13:-1 
-1 1:-0.0833333 2:-1 3:0.333333 4:-0.320755 5:-0.406393 6:-1 7:1 8:0.19084 9:-1 10:-0.83871 11:-1 12:-1 13:-1 
-1 1:-0.291667 2:-1 3:-0.333333 4:-0.792453 5:-0.643836 6:-1 7:-1 8:0.541985 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.0833333 2:1 3:1 4:-0.132075 5:-0.584475 6:-1 7:-1 8:-0.389313 9:1 10:0.806452 11:1 12:-1 13:1 
-1 1:-0.333333 2:1 3:-0.333333 4:-0.358491 5:-0.16895 6:-1 7:1 8:0.51145 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:0.125 2:1 3:-1 4:-0.509434 5:-0.694064 6:-1 7:1 8:0.389313 9:-1 10:-0.387097 12:-1 13:1 
+1 1:0.541667 2:-1 3:1 4:0.584906 5:-0.534247 6:1 7:-1 8:0.435115 9:1 10:-0.677419 12:0.333333 13:1 
+1 1:-0.625 2:1 3:-1 4:-0.509434 5:-0.520548 6:-1 7:-1 8:0.694656 9:1 10:0.225806 12:-1 13:1 
+1 1:0.375 2:-1 3:1 4:0.0566038 5:-0.461187 6:-1 7:-1 8:0.267176 9:1 10:-0.548387 12:-1 13:-1 
-1 1:0.0833333 2:1 3:-0.333333 4:-0.320755 5:-0.378995 6:-1 7:-1 8:0.282443 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.208333 2:1 3:1 4:-0.358491 5:-0.392694 6:-1 7:1 8:-0.0992366 9:1 10:-0.0322581 12:0.333333 13:1 
-1 1:-0.416667 2:1 3:1 4:-0.698113 5:-0.611872 6:-1 7:-1 8:0.374046 9:-1 10:-1 11:-1 12:-1 13:1 
-1 1:0.458333 2:-1 3:1 4:0.622642 5:-0.0913242 6:-1 7:-1 8:0.267176 9:1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.125 2:-1 3:1 4:-0.698113 5:-0.415525 6:-1 7:1 8:0.343511 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 2:1 3:0.333333 4:-0.320755 5:-0.675799 6:1 7:1 8:0.236641 9:-1 10:-0.612903 11:1 12:-1 13:-1 
-1 1:-0.333333 2:-1 3:1 4:-0.169811 5:-0.497717 6:-1 7:1 8:0.236641 9:1 10:-0.935484 12:-1 13:-1 
+1 1:0.5 2:1 3:-1 4:-0.169811 5:-0.287671 6:1 7:1 8:0.572519 9:-1 10:-0.548387 12:-0.333333 13:-1 
-1 1:0.666667 2:1 3:-1 4:0.245283 5:-0.506849 6:1 7:1 8:-0.0839695 9:-1 10:-0.967742 12:-0.333333 13:-1 
+1 1:0.666667 2:1 3:0.333333 4:-0.132075 5:-0.415525 6:-1 7:1 8:0.145038 9:-1 10:-0.354839 12:1 13:1 
+1 1:0.583333 2:1 3:1 4:-0.886792 5:-0.210046 6:-1 7:1 8:-0.175573 9:1 10:-0.709677 12:0.333333 13:-1 
-1 1:0.625 2:-1 3:0.333333 4:-0.509434 5:-0.611872 6:-1 7:1 8:-0.328244 9:-1 10:-0.516129 12:-1 13:-1 
-1 1:-0.791667 2:1 3:-1 4:-0.54717 5:-0.744292 6:-1 7:1 8:0.572519 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.375 2:-1 3:1 4:-0.169811 5:-0.232877 6:1 7:-1 8:-0.465649 9:-1 10:-0.387097 12:1 13:-1 
+1 1:-0.0833333 2:1 3:1 4:-0.132075 5:-0.214612 6:-1 7:-1 8:-0.221374 9:1 10:0.354839 12:1 13:1 
+1 1:-0.291667 2:1 3:0.333333 4:0.0566038 5:-0.520548 6:-1 7:-1 8:0.160305 9:-1 10:0.16129 12:-1 13:-1 
+1 1:0.583333 2:1 3:1 4:-0.415094 5:-0.415525 6:1 7:-1 8:0.40458 9:-1 10:-0.935484 12:0.333333 13:1 
-1 1:-0.125 2:1 3:0.333333 4:-0.339623 5:-0.680365 6:-1 7:-1 8:0.40458 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.458333 2:1 3:0.333333 4:-0.509434 5:-0.479452 6:1 7:-1 8:0.877863 9:-1 10:-0.741935 11:1 12:-1 13:1 
+1 1:0.125 2:-1 3:1 4:-0.245283 5:0.292237 6:-1 7:1 8:0.206107 9:1 10:-0.387097 12:0.333333 13:1 
+1 1:-0.5 2:1 3:1 4:-0.698113 5:-0.789954 6:-1 7:1 8:0.328244 9:-1 10:-1 11:-1 12:-1 13:1 
-1 1:-0.458333 2:-1 3:1 4:-0.849057 5:-0.365297 6:-1 7:1 8:-0.221374 9:-1 10:-0.806452 12:-1 13:-1 
-1 2:1 3:0.333333 4:-0.320755 5:-0.452055 6:1 7:1 8:0.557252 9:-1 10:-1 11:-1 12:1 13:-1 
-1 1:-0.416667 2:1 3:0.333333 4:-0.320755 5:-0.136986 6:-1 7:-1 8:0.389313 9:-1 10:-0.387097 11:-1 12:-0.333333 13:-1 
+1 1:0.125 2:1 3:1 4:-0.283019 5:-0.73516 6:-1 7:1 8:-0.480916 9:1 10:-0.322581 12:-0.333333 13:0.5 
-1 1:-0.0416667 2:1 3:1 4:-0.735849 5:-0.511416 6:1 7:-1 8:0.160305 9:-1 10:-0.967742 11:-1 12:1 13:1 
-1 1:0.375 2:-1 3:1 4:-0.132075 5:0.223744 6:-1 7:1 8:0.312977 9:-1 10:-0.612903 12:-1 13:-1 
+1 1:0.708333 2:1 3:0.333333 4:0.245283 5:-0.347032 6:-1 7:-1 8:-0.374046 9:1 10:-0.0645161 12:-0.333333 13:1 
-1 1:0.0416667 2:1 3:1 4:-0.132075 5:-0.484018 6:-1 7:-1 8:0.358779 9:-1 10:-0.612903 11:-1 12:-1 13:-1 
+1 1:0.708333 2:1 3:1 4:-0.0377358 5:-0.780822 6:-1 7:-1 8:-0.175573 9:1 10:-0.16129 11:1 12:-1 13:1 
-1 1:0.0416667 2:1 3:-0.333333 4:-0.735849 5:-0.164384 6:-1 7:-1 8:0.29771 9:-1 10:-1 11:-1 12:-1 13:1 
+1 1:-0.75 2:1 3:1 4:-0.396226 5:-0.287671 6:-1 7:1 8:0.29771 9:1 10:-1 11:-1 12:-1 13:1 
-1 1:-0.208333 2:1 3:0.333333 4:-0.433962 5:-0.410959 6:1 7:-1 8:0.587786 9:-1 10:-1 11:-1 12:0.333333 13:-1 
-1 1:0.0833333 2:-1 3:-0.333333 4:-0.226415 5:-0.43379 6:-1 7:1 8:0.374046 9:-1 10:-0.548387 12:-1 13:-1 
-1 1:0.208333 2:-1 3:1 4:-0.886792 5:-0.442922 6:-1 7:1 8:-0.221374 9:-1 10:-0.677419 12:-1 13:-1 
-1 1:0.0416667 2:-1 3:0.333333 4:-0.698113 5:-0.598174 6:-1 7:-1 8:0.328244 9:-1 10:-0.483871 12:-1 13:-1 
-1 1:0.666667 2:-1 3:-1 4:-0.132075 5:-0.484018 6:-1 7:-1 8:0.221374 9:-1 10:-0.419355 11:-1 12:0.333333 13:-1 
+1 1:1 2:1 3:1 4:-0.415094 5:-0.187215 6:-1 7:1 8:0.389313 9:1 10:-1 11:-1 12:1 13:-1 
-1 1:0.625 2:1 3:0.333333 4:-0.54717 5:-0.310502 6:-1 7:-1 8:0.221374 9:-1 10:-0.677419 11:-1 12:-0.333333 13:1 
+1 1:0.208333 2:1 3:1 4:-0.415094 5:-0.205479 6:-1 7:1 8:0.526718 9:-1 10:-1 11:-1 12:0.333333 13:1 
+1 1:0.291667 2:1 3:1 4:-0.415094 5:-0.39726 6:-1 7:1 8:0.0687023 9:1 10:-0.0967742 12:-0.333333 13:1 
+1 1:-0.0833333 2:1 3:1 4:-0.132075 5:-0.210046 6:-1 7:-1 8:0.557252 9:1 10:-0.483871 11:-1 12:-1 13:1 
+1 1:0.0833333 2:1 3:1 4:0.245283 5:-0.255708 6:-1 7:1 8:0.129771 9:1 10:-0.741935 12:-0.333333 13:1 
-1 1:-0.0416667 2:1 3:-1 4:0.0943396 5:-0.214612 6:1 7:-1 8:0.633588 9:-1 10:-0.612903 12:-1 13:1 
-1 1:0.291667 2:-1 3:0.333333 4:-0.849057 5:-0.123288 6:-1 7:-1 8:0.358779 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
-1 1:0.208333 2:1 3:0.333333 4:-0.792453 5:-0.479452 6:-1 7:1 8:0.267176 9:1 10:-0.806452 12:-1 13:1 
+1 1:0.458333 2:1 3:0.333333 4:-0.415094 5:-0.164384 6:-1 7:-1 8:-0.0839695 9:1 10:-0.419355 12:-1 13:1 
-1 1:-0.666667 2:1 3:0.333333 4:-0.320755 5:-0.43379 6:-1 7:-1 8:0.770992 9:-1 10:0.129032 11:1 12:-1 13:-1 
+1 1:0.25 2:1 3:-1 4:0.433962 5:-0.260274 6:-1 7:1 8:0.343511 9:-1 10:-0.935484 12:-1 13:1 
-1 1:-0.0833333 2:1 3:0.333333 4:-0.415094 5:-0.456621 6:1 7:1 8:0.450382 9:-1 10:-0.225806 12:-1 13:-1 
-1 1:-0.416667 2:-1 3:0.333333 4:-0.471698 5:-0.60274 6:-1 7:-1 8:0.435115 9:-1 10:-0.935484 12:-1 13:-1 
+1 1:0.208333 2:1 3:1 4:-0.358491 5:-0.589041 6:-1 7:1 8:-0.0839695 9:1 10:-0.290323 12:1 13:1 
-1 1:-1 2:1 3:-0.333333 4:-0.320755 5:-0.643836 6:-1 7:1 8:1 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.5 2:-1 3:-0.333333 4:-0.320755 5:-0.643836 6:-1 7:1 8:0.541985 9:-1 10:-0.548387 11:-1 12:-1 13:-1 
-1 1:0.416667 2:-1 3:0.333333 4:-0.226415 5:-0.424658 6:-1 7:1 8:0.541985 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.0833333 2:1 3:0.333333 4:-1 5:-0.538813 6:-1 7:-1 8:0.267176 9:1 10:-1 11:-1 12:-0.333333 13:1 
-1 1:0.0416667 2:1 3:0.333333 4:-0.509434 5:-0.39726 6:-1 7:1 8:0.160305 9:-1 10:-0.870968 12:-1 13:1 
-1 1:-0.375 2:1 3:-0.333333 4:-0.509434 5:-0.570776 6:-1 7:-1 8:0.51145 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.0416667 2:1 3:1 4:-0.698113 5:-0.484018 6:-1 7:-1 8:-0.160305 9:1 10:-0.0967742 12:-0.333333 13:1 
+1 1:0.5 2:1 3:1 4:-0.226415 5:-0.415525 6:-1 7:1 8:-0.145038 9:-1 10:-0.0967742 12:-0.333333 13:1 
-1 1:0.166667 2:1 3:0.333333 4:0.0566038 5:-0.808219 6:-1 7:-1 8:0.572519 9:-1 10:-0.483871 11:-1 12:-1 13:-1 
+1 1:0.416667 2:1 3:1 4:-0.320755 5:-0.0684932 6:1 7:1 8:-0.0687023 9:1 10:-0.419355 11:-1 12:1 13:1 
-1 1:-0.75 2:-1 3:1 4:-0.169811 5:-0.739726 6:-1 7:-1 8:0.694656 9:-1 10:-0.548387 11:-1 12:-1 13:-1 
-1 1:-0.5 2:1 3:-0.333333 4:-0.226415 5:-0.648402 6:-1 7:-1 8:-0.0687023 9:-1 10:-1 12:-1 13:0.5 
+1 1:0.375 2:-1 3:0.333333 4:-0.320755 5:-0.374429 6:-1 7:-1 8:-0.603053 9:-1 10:-0.612903 12:-0.333333 13:1 
+1 1:-0.416667 2:-1 3:1 4:-0.283019 5:-0.0182648 6:1 7:1 8:-0.00763359 9:1 10:-0.0322581 12:-1 13:1 
-1 1:0.208333 2:-1 3:-1 4:0.0566038 5:-0.283105 6:1 7:1 8:0.389313 9:-1 10:-0.677419 11:-1 12:-1 13:-1 
-1 1:-0.0416667 2:1 3:-1 4:-0.54717 5:-0.726027 6:-1 7:1 8:0.816794 9:-1 10:-1 12:-1 13:0.5 
+1 1:0.333333 2:-1 3:1 4:-0.0377358 5:-0.173516 6:-1 7:1 8:0.145038 9:1 10:-0.677419 12:-1 13:1 
+1 1:-0.583333 2:1 3:1 4:-0.54717 5:-0.575342 6:-1 7:-1 8:0.0534351 9:-1 10:-0.612903 12:-1 13:1 
-1 1:-0.333333 2:1 3:1 4:-0.603774 5:-0.388128 6:-1 7:1 8:0.740458 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.0416667 2:1 3:1 4:-0.358491 5:-0.410959 6:-1 7:-1 8:0.374046 9:1 10:-1 11:-1 12:-0.333333 13:1 
-1 1:0.375 2:1 3:0.333333 4:-0.320755 5:-0.520548 6:-1 7:-1 8:0.145038 9:-1 10:-0.419355 12:1 13:1 
+1 1:0.375 2:-1 3:1 4:0.245283 5:-0.826484 6:-1 7:1 8:0.129771 9:-1 10:1 11:1 12:1 13:1 
-1 2:-1 3:1 4:-0.169811 5:-0.506849 6:-1 7:1 8:0.358779 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.416667 2:1 3:1 4:-0.509434 5:-0.767123 6:-1 7:1 8:-0.251908 9:1 10:-0.193548 12:-1 13:1 
-1 1:-0.25 2:1 3:0.333333 4:-0.169811 5:-0.401826 6:-1 7:1 8:0.29771 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.0416667 2:1 3:-0.333333 4:-0.509434 5:-0.0913242 6:-1 7:-1 8:0.541985 9:-1 10:-0.935484 11:-1 12:-1 13:-1 
+1 1:0.625 2:1 3:0.333333 4:0.622642 5:-0.324201 6:1 7:1 8:0.206107 9:1 10:-0.483871 12:-1 13:1 
-1 1:-0.583333 2:1 3:0.333333 4:-0.132075 5:-0.109589 6:-1 7:1 8:0.694656 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 2:-1 3:1 4:-0.320755 5:-0.369863 6:-1 7:1 8:0.0992366 9:-1 10:-0.870968 12:-1 13:-1 
+1 1:0.375 2:-1 3:1 4:-0.132075 5:-0.351598 6:-1 7:1 8:0.358779 9:-1 10:0.16129 11:1 12:0.333333 13:-1 
-1 1:-0.0833333 2:-1 3:0.333333 4:-0.132075 5:-0.16895 6:-1 7:1 8:0.0839695 9:-1 10:-0.516129 11:-1 12:-0.333333 13:-1 
+1 1:0.291667 2:1 3:1 4:-0.320755 5:-0.420091 6:-1 7:-1 8:0.114504 9:1 10:-0.548387 11:-1 12:-0.333333 13:1 
+1 1:0.5 2:1 3:1 4:-0.698113 5:-0.442922 6:-1 7:1 8:0.328244 9:-1 10:-0.806452 11:-1 12:0.333333 13:0.5 
-1 1:0.5 2:-1 3:0.333333 4:0.150943 5:-0.347032 6:-1 7:-1 8:0.175573 9:-1 10:-0.741935 11:-1 12:-1 13:-1 
+1 1:0.291667 2:1 3:0.333333 4:-0.132075 5:-0.730594 6:-1 7:1 8:0.282443 9:-1 10:-0.0322581 12:-1 13:-1 
+1 1:0.291667 2:1 3:1 4:-0.0377358 5:-0.287671 6:-1 7:1 8:0.0839695 9:1 10:-0.0967742 12:0.333333 13:1 
+1 1:0.0416667 2:1 3:1 4:-0.509434 5:-0.716895 6:-1 7:-1 8:-0.358779 9:-1 10:-0.548387 12:-0.333333 13:1 
-1 1:-0.375 2:1 3:-0.333333 4:-0.320755 5:-0.575342 6:-1 7:1 8:0.78626 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:-0.375 2:1 3:1 4:-0.660377 5:-0.251142 6:-1 7:1 8:0.251908 9:-1 10:-1 11:-1 12:-0.333333 13:-1 
-1 1:-0.0833333 2:1 3:0.333333 4:-0.698113 5:-0.776256 6:-1 7:-1 8:-0.206107 9:-1 10:-0.806452 11:-1 12:-1 13:-1 
-1 1:0.25 2:1 3:0.333333 4:0.0566038 5:-0.607306 6:1 7:-1 8:0.312977 9:-1 10:-0.483871 11:-1 12:-1 13:-1 
-1 1:0.75 2:-1 3:-0.333333 4:0.245283 5:-0.196347 6:-1 7:-1 8:0.389313 9:-1 10:-0.870968 11:-1 12:0.333333 13:-1 
-1 1:0.333333 2:1 3:0.333333 4:0.0566038 5:-0.465753 6:1 7:-1 8:0.00763359 9:1 10:-0.677419 12:-1 13:-1 
+1 1:0.0833333 2:1 3:1 4:-0.283019 5:0.0365297 6:-1 7:-1 8:-0.0687023 9:1 10:-0.612903 12:-0.333333 13:1 
+1 1:0.458333 2:1 3:0.333333 4:-0.132075 5:-0.0456621 6:-1 7:-1 8:0.328244 9:-1 10:-1 11:-1 12:-1 13:-1 
-1 1:-0.416667 2:1 3:1 4:0.0566038 5:-0.447489 6:-1 7:-1 8:0.526718 9:-1 10:-0.516129 11:-1 12:-1 13:-1 
-1 1:0.208333 2:-1 3:0.333333 4:-0.509434 5:-0.0228311 6:-1 7:-1 8:0.541985 9:-1 10:-1 11:-1 12:-1 13:-1 
+1 1:0.291667 2:1 3:1 4:-0.320755 5:-0.634703 6:-1 7:1 8:-0.0687023 9:1 10:-0.225806 12:0.333333 13:1 
+1 1:0.208333 2:1 3:-0.333333 4:-0.509434 5:-0.278539 6:-1 7:1 8:0.358779 9:-1 10:-0.419355 12:-1 13:-1 
-1 1:-0.166667 2:1 3:-0.333333 4:-0.320755 5:-0.360731 6:-1 7:-1 8:0.526718 9:-1 10:-0.806452 11:-1 12:-1 13:-1 
+1 1:-0.208333 2:1 3:-0.333333 4:-0.698113 5:-0.52968 6:-1 7:-1 8:0.480916 9:-1 10:-0.677419 11:1 12:-1 13:1 
-1 1:-0.0416667 2:1 3:0.333333 4:0.471698 5:-0.666667 6:1 7:-1 8:0.389313 9:-1 10:-0.83871 11:-1 12:-1 13:1 
-1 1:-0.375 2:1 3:-0.333333 4:-0.509434 5:-0.374429 6:-1 7:-1 8:0.557252 9:-1 10:-1 11:-1 12:-1 13:1 
-1 1:0.125 2:-1 3:-0.333333 4:-0.132075 5:-0.232877 6:-1 7:1 8:0.251908 9:-1 10:-0.580645 12:-1 13:-1 
-1 1:0.166667 2:1 3:1 4:-0.132075 5:-0.69863 6:-1 7:-1 8:0.175573 9:-1 10:-0.870968 12:-1 13:0.5 
+1 1:0.583333 2:1 3:1 4:0.245283 5:-0.269406 6:-1 7:1 8:-0.435115 9:1 10:-0.516129 12:1 13:-1 






版权声明:本文博客原创文章。博客,未经同意,不得转载。

版权声明:本文内容由互联网用户自发贡献,该文观点仅代表作者本人。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如发现本站有涉嫌侵权/违法违规的内容, 请发送邮件至 举报,一经查实,本站将立刻删除。

发布者:全栈程序员-用户IM,转载请注明出处:https://javaforall.cn/117290.html原文链接:https://javaforall.cn

【正版授权,激活自己账号】: Jetbrains全家桶Ide使用,1年售后保障,每天仅需1毛

【官方授权 正版激活】: 官方授权 正版激活 支持Jetbrains家族下所有IDE 使用个人JB账号...

(0)
blank

相关推荐

发表回复

您的电子邮箱地址不会被公开。

关注全栈程序员社区公众号