I have been trying to use the dependency parse trees generated by CMU's TurboParser. It works flawlessly. The problem, however, is that there is very little documentation. I need to precisely understand the output of their parser. For example, the sentence "I solved the problem with statistics." generates the following output:
1 I _ PRP PRP _ 2 SUB 2 solved _ VBD VBD _ 0 ROOT 3 the _ DT DT _ 4 NMOD 4 problem _ NN NN _ 2 OBJ 5 with _ IN IN _ 2 VMOD 6 statistics _ NNS NNS _ 5 PMOD 7 . _ . . _ 2 P
I haven't found any documentation that can help understand what the various columns stand for, and how the indices in the second-last column (2, 0, 4, 2, ... ) are created. Also, I have no idea why there are two columns devoted to part-of-speech tags. Any help (or link to external documentation) will be of great help.
P.S. If you want to try out their parser, here is their online demo.
P.P.S. Please do not suggest using Stanford's dependency parse output. I am interested in linear programming algorithms, which is not what Stanford's NLP system does.