It depends a lot on what approach you take. I personally would try and solve this looking at what role a word plays in a sentence and what is the context carried forward. Based on the POS tags, try and map subject-verb-object model. Once you have subject and objects identified you can build a simple context carry forward rule system to achieve what you want.
Based on the tags below:
[('John', 'NNP'), ('Smith', 'NNP'), ('talks', 'VBZ'), ('about', 'IN'), ('the', 'DT'), ('EU.', 'NNP'), ('He', 'NNP'), ('likes', 'VBZ'), ('the', 'DT'), ('family', 'NN'), ('of', 'IN'), ('nations', 'NNS'), ('.', '.')]
You can create chunks:
[['noun_type', 'John', 'Smith'], ['verb_type', 'talks'], ['in_type', 'about'], ['noun_type', 'the', 'EU']]
[['noun_type', 'He'], ['verb_type', 'likes'], ['noun_type', 'the', 'family'], ['in_type', 'of'], ['noun_type', 'nations']]
Once you have these chunks, parse them left to right putting them in
Now based on this, you know what is the context carry forward.
e.g.: "He" means the subject is getting carry forward. "It" means the object (this is a very basic example. You can build a robust rule based systems for patterns.) I have tried many approaches in past and this one gave me best results.
I hope I helped.