I try to make a example data as follows:

set.seed(1)            # for reproducible example
x <- sample(100*20)
x <- matrix(x, nc = 20)     # 20 predictor
y <- 1 + 2*x[,1] + 3*x[,2] + 4*x[,3] + 5*x[,7] + 6*x[,8] + 7*x[,9] + rnorm(100)  # y depends on variables 1,2,3,7,8,9 only

df <- data.frame(y, as.matrix(x))

Now, I want to make a combination of 4 columns of x and keep all those combinations that the lm model has a R higher than 0.8

To make a model between Y and 4 variables of X , for example one can use

fit = lm(Y~.,data=df[,c(2:6)])

I want to have all combinations of 4 variables from these 20 columns that their R regression is higher than 0.8

Can someone please comment?

  • 1
    you should take a look at regsubset from package leaps
    – agenis
    Nov 4 '16 at 17:08
  • @agenis thanks, do you have any solution?
    – nik
    Nov 4 '16 at 17:52

Following my comment, I suggest using the leaps package that provides an algorithm to test in an exhaustive way every combination of variables of a model formula, and returns some indicators (R-squared, BIC, etc.).

You can treat the results to get the list of variables that suits your criteria (here I took 0.85 limit to get a smaller list of models). First, fit the model and specify the limit of 4 variables, and we will keep only the 20 best models (there are in total 19380 possible models of 4 variables...):

fit <- regsubsets(y~., df, nvmax=4, nbest=20)

Subset the output table (it's a boolean table with TRUE/FALSE for each variable kept inside the model) depending on the r-squared limit (it's stored in another output of the summary):

mytable <- data.frame(tail(summary(fit)$which, 20)[which(tail(summary(fit)$rsq, 20)>0.85), ])

Arrange it to get the variable names of the best models, in transposed format, the first one being the best one in R²:

output <- t(apply(mytable, 1, function(x) names(mytable)[x]))
####      [,1]           [,2] [,3] [,4] [,5] 
#### [1,] "X.Intercept." "X3" "X7" "X8" "X9" 
#### [2,] "X.Intercept." "X2" "X7" "X8" "X9" 
#### [3,] "X.Intercept." "X1" "X7" "X8" "X9" 
#### [4,] "X.Intercept." "X7" "X8" "X9" "X15"
#### [5,] "X.Intercept." "X4" "X7" "X8" "X9" 

If you need to use one of these models for a fit, you could retrieve the formula like this:

as.formula(paste("y ~ ", paste(output[1, -1], collapse=" + ")))
#### y ~ X3 + X7 + X8 + X9

Or simply using reformulate, thanks to @Ben Bolker 's suggestion:

reformulate(output[1, -1], response="y")

EDIT: modeling your data with lasso regression.

I use the script adapted from Hastie&Tishirani, and you must also load these helper functions here. I suggest first you get your hands on this technique. First I create the data and split a training set:

library(glmnet); set.seed(6)
train.ratio <- 0.75 
x      <- model.matrix(y~., df)[, -1]           
y      <- df$y
train.ind  <-   sample(1:nrow(x), floor(train.ratio * nrow(x)))
x.train    <-   x[ train.ind, ]; y.train    <-   y[ train.ind  ]
x.test     <-   x[-train.ind, ]; y.test     <-   y[-train.ind  ]
n          <-   nrow(x); n.train    <-   nrow(x.train); n.test     <-   nrow(x.test)

Then I do the model calibration and compute test error

grid <- 10^seq(4, -2, length=100) # increase range if needed

lasso.mod <- glmnet(x.train, y.train, alpha=1, lambda=grid) 
err.lasso <- 1/n.test * colSums((y.test - lasso.mod$a0[1] - x.test %*% lasso.mod$beta)^2)

Plot the different results

par(mfrow = c(2, 2))
frac.lasso <- plot.path(t(lasso.mod$beta), err = err.lasso)
plot.coef(t(lasso.mod$beta), lasso.mod$lambda, err.lasso)
plot.err(err.lasso, frac.lasso)
plot.err(err.lasso, lasso.mod$lambda)
par(mfrow = c(1, 1))

enter image description here Eventually find out what the best model is (cool, it's the same than previously! but different coefs).

best <- lasso.mod$beta[, which.min(err.lasso)]; best[best!=0]
####        X3        X7        X8        X9 
#### 0.2572322 1.4933962 1.7868181 2.4447500 

You can also ask all cases containing 4 variables (here they are the same, differ only the lambda value and coefs)

lasso.mod$beta[, which(colSums(lasso.mod$beta!=0)==4)]
  • 1
    don't forget ?reformulate, which is a slightly cleaner way to do your last step ...
    – Ben Bolker
    Nov 4 '16 at 18:06
  • @agenis thanks for your solution, would it also be possible to have the output with their R values for each set too ?
    – nik
    Nov 4 '16 at 18:14
  • I realized it was a solution to the wrong problem, that's why I deleted it ... I will undelete it but don't think it will be useful.
    – Ben Bolker
    Nov 4 '16 at 18:15
  • well it's one of the output of the summary function. you can do like this cbind(output, head(tail(summary(fit)$rsq, 20), nrow(output)))
    – agenis
    Nov 4 '16 at 18:20
  • @agenis sorry for trouble, I am getting into trouble, when i use more than 1000 variables, I get this error, do you know how to solve it Error in leaps.exhaustive(a, really.big) : Exhaustive search will be S L O W, must specify really.big=T In addition: Warning message: In leaps.setup(x, y, wt = wt, nbest = nbest, nvmax = nvmax, force.in = force.in, : 3000 linear dependencies found
    – nik
    Nov 4 '16 at 18:56

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.