添加链接
link管理
链接快照平台
  • 输入网页链接,自动生成快照
  • 标签化管理网页链接

I've trained a Linear Regression model with R caret. I'm now trying to generate a confusion matrix and keep getting the following error:

Error in confusionMatrix.default(pred, testing$Final): the data and reference factors must have the same number of levels

EnglishMarks <- read.csv("E:/Subject Wise Data/EnglishMarks.csv",

header=TRUE)

inTrain<-createDataPartition(y=EnglishMarks$Final,p=0.7,list=FALSE)

training<-EnglishMarks[inTrain,]

testing<-EnglishMarks[-inTrain,]

predictionsTree <- predict(treeFit, testdata)

confusionMatrix(predictionsTree, testdata$catgeory)

modFit<-train(Final~UT1+UT2+HalfYearly+UT3+UT4,method="lm",data=training)

pred<-format(round(predict(modFit,testing)))

confusionMatrix(pred,testing$Final)

The error occurs when generating the confusion matrix. T he levels are the same on both objects. I can’t figure out what the problem is. Their structure and levels are given below. They should be the same. Any help would be greatly appreciated as its making me cracked!!

> strpred)

chr[1:148] " 85"" 84"" 87"" 65" "88" "84" "82" "84" "65" "78" "78" "88" "85" "86" "77" ...

> str(testing$Final)

int [1:148] 88 85 86 70 85 85 79 85 62 77 ...

> levels(pred)

NULL

> levels(testing$Final)

NULL

  • Whenever you try to build a confusion matrix, make sure that both the true values and the prediction values are of “factor” data-type.

    Here both pred and testing$Final must be of datatype factor. Here testing$Final is of type int, convert it to factor and then build the confusion matrix.

    confusionMatrix(factor(pred, levels=1:490), factor(testing$final, levels=1:490))

    We have to keep in mind that both levels should be the same.

    table(factor(pred, levels=min(test):max(test)), factor(test, levels=min(test):max(test)))// table is name the confusion matrix

    It should give you exactly the same confusion matrix as with the function.

    You can also read the Artificial Intelligence Tutorial and join AI Course to get a sparkling start for your AI journey.

    If you want to make your career in Artificial Intelligence then go through this video:

    Data Science Interview Questions | Devops Interview Questions | Salesforce Interview Questions | Java Interview Questions | Selenium Interview Questions | Cyber Security Interview Questions | Azure Interview Questions | Power Bi Interview Questions | Software Testing Interview Questions | Data Analyst Interview Questions