I think bag of words is too simple for my task. I want some to include positional information of a word in feature vector. For example "good" is the second from the end, etc.
In most cases we use bigrams or trigrams of words as features: it carries most of the word order information in the sentence, while being much less sparse than positional information for each word.
For instance for the sentence
And you can leave your existing BOW features as well.
Moreover, if you use a discriminative model, you can add any feature that seems to be relevant to your task, even if this feature is not independent from your existing features.
Obviously the goal is always to find the right balance between information and sparsity... it depends on your dataset, you have to experiment !