I´m trying to fit a model on a categorical variable (3 levels = low, mid, high) using 10 also categorical variables (all same scale 1 thru 10). I run Recursive feature elimination (RFE) with random forest and result is that ALL variables have a similar importance (~10% each). I was expecting a dominating variable but this is not the case. How can this be interpreted? Should I try modeling differently or this is just the nature of the data?

PS:I ran a corr matrix and all 10 features have low correlation levels with the target variable. If this is the case should I expect that there's no variable that dominates importance given the low levels of correlation?