Paper ID: 2112.13432

New Methods & Metrics for LFQA tasks

Suchismit Mahapatra, Vladimir Blagojevic, Pablo Bertorello, Prasanna Kumar

Long-form question answering (LFQA) tasks require retrieving the documents pertinent to a query, using them to form a paragraph-length answer. Despite considerable progress in LFQA modeling, fundamental issues impede its progress: i) train/validation/test dataset overlap, ii) absence of automatic metrics and iii) generated answers not being "grounded" in retrieved documents. This work addresses every one these critical bottlenecks, contributing natural language inference/generation (NLI/NLG) methods and metrics that make significant strides to their alleviation.

Submitted: Dec 26, 2021