0

This question already has an answer here:

I have COCOMO dataset and want to find the predicted values of the Actual effort (ACT_EFFORT variable). The COCOMO dataset have 60 instances , so how can I find and compare the estimated values predicted by Linear regression model with actual values of the effort in the dataset.

data=read.arff("cocomo.arff")
set.seed(100)  
 trainingRowIndex <- sample(1:nrow(data), 0.8*nrow(data))  # row indices for training data
 training <- data[trainingRowIndex, ]  # model training data
 test  <- data[-trainingRowIndex, ]   # test data
 M <- lm(ACT_EFFORT~., data=training)

I dont know after this step, how to calculate the "effort" predicted with the actual values in all instances?

marked as duplicate by MrFlick r Nov 28 '18 at 20:54

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • fitted(M) will give you the predicted values. resid(M) will give the different between predicted and observed values. See the respective help pages for these functions for more info. – MrFlick Nov 28 '18 at 20:53
  • It does not solved my problem.. I want , for example, the predicted output variable values with each and every actual output value in the dataset. Moreover, when I write predict (M, training) it works for training data but when I write predict (M, test), it gives me error. – Khan Nov 29 '18 at 8:21
  • It still not clear to me how that is any different thank getting the fifteen valises. Nor is it clear what error you are getting. Try providing a more clear reproducible example with sample input and desired output to make it easier to help you. stackoverflow.com/questions/5963269/… – MrFlick Nov 29 '18 at 14:07
  • I run this code : resid(model) and it gives me result like the following. How it works, is it the difference between the actual and estimated value? The results is: -1.497136e-13 6.300754e-15 1.157604e-13 -2.817854e+02 -1.495900e+01 – Khan Dec 3 '18 at 13:17