I have a data frame of multiple dependent variables called dependents and another data frame consisting of explanatory variables called explanatory. I want to regress each variable in dependents on all of the explanatory variables. However, whatever I do I keep getting (each time different) mistakes. I created a simpler version of my problem below:

dependents <- structure(list(exp1 = c(1,2,3), 
                             exp2 = c(4,5,6),
                             exp3 = c(7,8,9)),
                             .Names = c("exp1", "exp2", "exp3"),
                             class = "data.frame", row.names = c(NA, -3L))

explanatory <- structure(list(var1 = c(1,2,3), 
                              var2 = c(4,5,6),
                              var3 = c(7,8,9)),
                             .Names = c("var1", "var2", "var3"),
                             class = "data.frame", row.names = c(NA, -3L))

I tried the following codes:

engel <- lm(dependents ~ exp_variables )

engel <- lm(colnames(dependents) ~ colnames(exp_variables))

engel <- lapply(colnames(dependents), function(x) {
         fit <- lm(paste(x,'~',colnames(exp_vars),collapse = "+")})

reg_data = cbind(dependents, exp_variables)
engel <- lm(dependents ~ exp_variables, data = reg_data )

reg_data = cbind(dependents, exp_variables)
engel <- lm(colnames(dependents) ~ colnames(exp_variables), data = reg_data )

engel <- lapply(dependents, function(x) {
         fit <- lm(paste(x,'~',exp_vars,collapse = "+")})

reg_data = cbind(dependents, exp_variables)
engel <- lapply(dependents, function(x) {
         fit <- lm(paste(x,'~',exp_vars,collapse = "+"), data=reg_data)})

reg_data = cbind(dependents, exp_variables)
engel <- lapply(colnames(dependents), function(x) {
         fit <- lm(paste(x,'~',colnames(exp_vars),collapse = "+"), data=reg_data)})

Can somebody please tell me what is the correct way to code this regression?

Many thanks in advance.

up vote 1 down vote accepted

Your first attempt was great except that you should have provided matrices rather than data frames:

lm(as.matrix(dependents) ~ as.matrix(explanatory))

That, however, is for the case when explanatory doesn't include any factors. In the case of factors you could use

lm(as.matrix(dependents) ~ -1 + model.matrix(~ ., data = explanatory))

where I have -1 as not to have two intercepts as model.matrix is going to create one column for it too. Of course there is always an option to be more straightforward and use, say, lapply:

lapply(dependents, function(y) lm(y ~ ., data = cbind(y = y, explanatory)))

which is actually perhaps even best as you can clearly control the formula of each model and the names of the regressors are nicely preserved.

  • Thanks for your response. I tried your suggestion with my original data and got this error: Error in [[<-.data.frame(*tmp*, i, value = c(4817L, 4817L, 4817L, : replacement has 122620 rows, data has 6131 My dependents data frame has 6131 rows, 19 columns, while my explanatory data frame have 6131 rows 20 columns – Elif Cansu Akoğuz Dec 7 at 11:10
  • @ElifCansuAkoğuz, what are dim(dependents) and dim(explanatory) in your case? – Julius Vainora Dec 7 at 11:12
  • My dependents data frame has 6131 rows, 19 columns, while my explanatory data frame have 6131 rows 20 columns. – Elif Cansu Akoğuz Dec 7 at 11:14
  • @ElifCansuAkoğuz, hard to say, something must be going on with the data. You would need to upload it somewhere for me to help. As you can see, my answer does work with your simple minimal example. – Julius Vainora Dec 7 at 11:17
  • I unfortunately can not upload the data because it is shared confidentially. However, do you think the issue might be due to the fact that I have some categorical and ordinal variables, along with integer and numeric ones, in my explanatory data? – Elif Cansu Akoğuz Dec 7 at 11:21

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