In linguistics, the "interesting words" are call
open class words.
And the task you are referring to is not really a chunking/parsing task. You are looking for some sort of tagger/annotator/labeller to tag each word to see whether it is "interesting" or not.
If you approach your task as a sequence labelling task, then the sentence
John Edward Grey started running now that he knows he is fat will be tagged as such:
So anything tagged with
B means a beginning of your "interesting" chunk and
the subsequent word tagged with
O will be the end of the "interesting" chunk or
it can also end up with a subsequent
B to label the end of the previous "interesting" chunk and the start of a new "interesting" chunk.
What is interesting or not?
Actually what is interesting or not depends on what is your ultimate aim of the task, to me, I would have said that
started running is an "interesting" chunk because it started modifies the infinitive meaning or
running to give it a
begin action modality.
Closed class vs Open class words
If you have in mind what are the non-interesting words, then i suggest you build a dictionary of that and then run a sequence labeling script to detect those not in the dictionary of close class words.
Machine learning Approach
Another approach is to perform machine learning classification task where you have already pre-annotated a sample data of what is interesting and what is not. Then you identify some classification features and run the classification to automatically tag the data with