lm(y~x1 + x2 -1) where `x1` is a continuous numerical variable and `x2` is a categorical factor variable with 4 levels. Is there a way to measure the "correlation" between the x1 variable and each level of the factor variable x2? By putting correlation into double quotes, I admit that I don't really know what is a good definition for the associatedness between a continuous variable and a specific level of the factor variable. Hopefully readers get my intuition. I mean that some levels of x2 may associated with x1 more actively than other levels of x2. Not knowing how to measure it, I am thinking of the following procedure: 1. run lm(y~x2 +1) 2. run lm(y~x2 + x1 -1) i.e. replace the intercept in "Step 1" by the continous variable x1 in "Step 2" and then see which beta (of associated factor level) changed most. My questions are: 1. Does my approach make sense? 2. How do I measure if a beta (of a specific associated factor level) changed and by how much? Is there a way to make fair comparison and draw some meaningful conclusions? Could anybody please shed some lights on me? Thanks a lot!