r语言中,for循环运行比较慢

for(i in 1:1000){
print(i^2)
}

补充:r语言:for循环使用小结

基本结构展示:

vals =c(5,6,7)
for(v in vals){
  print(v)
}
#即把大括号里的内容对vals里的每一个值都循环run一遍

实例展示:

1. paste() 命令是把几个字符连接起来

如paste(“a”,”b”,”c”,sep=” “)得到的就是“a b c”,在次基础上写如下for loop:

partnumber = c(1,2,5,78)
for(i in partnumber){
 print(paste("participant number",i, sep = " ")) 
}
#就可以得到一串参与者号码,根据上面给定的几个值, 从"participant number 1" 到"participant number 8" 

2. 双重loop

partnumber = c(1,2,5,78)
institution =c("cancer center", "rmh", "florey")
for(i in partnumber){
  for(j in institution){
  print(paste("participant number",i,", institution",j,sep = " "))
}
}
# 先对j循环,后对i循环,得到如下结果
[1] "participant number 1 , institution cancer center"
[1] "participant number 1 , institution rmh"
[1] "participant number 1 , institution florey"
[1] "participant number 2 , institution cancer center"
[1] "participant number 2 , institution rmh"
[1] "participant number 2 , institution florey"
[1] "participant number 5 , institution cancer center"
[1] "participant number 5 , institution rmh"
[1] "participant number 5 , institution florey"
[1] "participant number 78 , institution cancer center"
[1] "participant number 78 , institution rmh"
[1] "participant number 78 , institution florey"
# 两个loop的话,output得放最中心的loop里面,如果只要要第一层loop,就放在靠外一层括号里面,第二层括号就保留最后的一个值

3. 数据库实例演示

titanic=read.csv("https://goo.gl/4gqsnz")  #从网络读取数据<0.2, 0.2-0.6还是>0.6。

目的:看不同舱位(pclass)和不同性别(sex)的人的生存率是

a<- sort(unique(pclass))   #sort可以把类别按大小顺序排,unique()命令是把分类变量的种类提取出来
b<- sort(unique(sex))
for(i in a){ 
  for(j in b){
   if(mean(survived[pclass==i&sex==j])<0.2){
    print(paste("for class",i,"sex",j,"mean survival is less than 0.2"))
  } else if (mean(survived[pclass==i&sex==j])>0.6){
    print(paste("for class",i,"sex",j,"mean survival is more than 0.6"))
  } else {
    print(paste("for class",i,"sex",j,"mean survival is between 0.2 and 0.6"))} 
  }  
}

结果如下:

[1] “for class 1 sex female mean survival is more than 0.6”

[1] “for class 1 sex male mean survival is between 0.2 and 0.6”

[1] “for class 2 sex female mean survival is more than 0.6”

[1] “for class 2 sex male mean survival is less than 0.2”

[1] “for class 3 sex female mean survival is between 0.2 and 0.6”

[1] “for class 3 sex male mean survival is less than 0.2”

补充:r语言for循环批量生成变量,并且赋值

看代码~

rm(list=ls())
data <- read.table("ms_identified_information.txt",header = t,sep = "\t",quote="",na.strings = "",row.names = 1,comment.char = "")
name1 <- paste("h1299",sep = "_",c(1:3))
name2 <- paste("metf",sep = "_",c(1:3))
name3 <- paste("oemetf",sep = "_",c(1:3))
name <- data.frame(name1,name2,name3)
mean.data=data.frame(row.names(data))
for (i in 1:3){
  tmp <- subset(data,select = as.vector.factor(name[,i])) #筛选特定的样本
  mean_ <- as.data.frame(apply(tmp, 1, mean)) #行求平均值
  //assign()功能就是对变量进行赋值如i=1时,df1=mean_
  //把三次结果组合起来
  mean.data <- cbind.data.frame(mean.data,assign(paste("df", i, sep=""), mean_))
  //这里没有体现出变量,实际上生成了df1,df2,df3结果
}
colnames(mean.data) <- c("id","h1299","metf","oemetf")
write.table(mean.data,file="ms_mean.xls",row.names = false,sep = "\t",na="")

以上为个人经验,希望能给大家一个参考,也希望大家多多支持www.887551.com。如有错误或未考虑完全的地方,望不吝赐教。