R中的多标签分类

时间:2016-01-17 22:41:13

标签: r machine-learning knn multilabel-classification

我有一个包含28个变量(13个标签和15个功能)的训练数据集。具有15个功能的测试数据集,我必须根据这些功能预测此测试数据集的标签。我为所有13个标签单独制作了KNN分类器。

是否有可能将所有这13个单独的标签KNN分类器组合成一个单一的多标签分类器?

我目前的单一标签代码:

library(class)
train_from_train <- train[1:600,2:16] 
target_a_train_from_train <- train[1:600,17] 
test_from_train <- train[601:800,2:16]
target_a_test_from_train <- train[601:800,17] 
knn_pred_a <-knn (train = train_from_train, test = test_from_train, cl= target_a_train_from_train, k = 29) 
table(knn_pred_a, target_a_test_from_train)
mean(knn_pred_a != target_a_test_from_train) 
knn_pred_a_ON_TEST <-knn (train = train[,2:16], test = test[2:16], cl= train[,17], k = 29) 
knn_pred_a_ON_TEST

我搜索互联网并且mldr包似乎是一种选择,但我无法根据自己的需要进行调整。

1 个答案:

答案 0 :(得分:2)

您可以使用包ARNN进行此操作。但是,据我所知,这并不完全正确。

library(RANN)
library(reshape2)

####
## generate some sample data and randomize order
iris.knn <- iris[sample(1:150,150),]
#add a second class
iris.knn["Class2"] <- iris.knn[,5]=="versicolor"
iris.knn$org.row.id <- 1:nrow(iris.knn)
train <- iris.knn[1:100,]
test <- iris.knn[101:150,]
##
#####
## get nearest neighbours
nn.idx <- as.data.frame(nn2(train[1:4],query=test[1:4],k=4)$nn.idx)
## add row id
nn.idx$test.row.id <- test$rowid

#classes and row id
multiclass.vec <- data.frame(row.id=1:150,iris.knn[,5:6])
#1 row per nearest neighbour
melted <-melt(nn.idx,id.vars="row.id")
merged <- merge(melted,multiclass.vec, by.x = "value",by.y="org.row.id")
#aggrgate a single class
aggregate(merged$Species, list(merged$row.id), function(x) names(which.max(table(x))))

 #### aggregate for all classes
 all.classes <- melt(merged[c(2,4,5)],id.vars = "row.id")
 fun.agg <- function(x) {
               if(length(x)==0){
                 ""  #<-- default value adaptation might be needed.
               }else{
                 names(which.max(table(x)))
               }
 }
 dcast(all.classes,row.id~variable, fun.aggregate=fun.agg,fill=NULL)

我只针对一个班级进行了聚合。对所有类并行执行此步骤将需要另一个熔解操作,并且会使代码变得非常混乱。