Macquarie University at BioASQ 5b -- Query-based Summarisation Techniques for Selecting the Ideal Answers

WS 2017 Diego Moll{\'a}

Macquarie University{'}s contribution to the BioASQ challenge (Task 5b Phase B) focused on the use of query-based extractive summarisation techniques for the generation of the ideal answers. Four runs were submitted, with approaches ranging from a trivial system that selected the first $n$ snippets, to the use of deep learning approaches under a regression framework... (read more)

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