In this thesis, we investigated the relevance, faithfulness, and succinctness aspects of Long Form Question Answering (LFQA). LFQA aims to generate an in-depth, paragraph-length answer for a given question, to help bridge the gap between real scenarios and the existing open-domain QA models which can only extract short-span answers. LFQA is quite challenging and under-explored. Few works have been done to build an effective LFQA system. It is even more challenging to generate a good-quality long-form answer relevant to the query and faithful to facts, since a considerable amount of redundant, complementary, or contradictory information will be contained in the retrieved documents. Moreover, no prior work has been investigated to generate succinct answers. We are among the first to research the LFQA task. We pioneered the research direction to improve the answer quality in terms of 1) query-relevance, 2) answer faithfulness, and 3) answer succinctness.
翻译:在这一论文中,我们研究了长质问答(LFQA)的关联性、忠诚性和简洁性。LFQA的目的是为某个问题提供一个深入的、段落长的答案,以帮助弥合真实情景与现有的开放面的QA模型之间的差距,这些模型只能抽出短质的答案。LFQA具有相当大的挑战性和探索不足。为建立一个有效的LFQA系统而做的工作很少。由于检索到的文件将包含大量冗余、互补或相互矛盾的信息,因此产生一个高质量的长质回答就更具挑战性了。此外,以前没有调查过任何工作来得出简明的答案。我们是第一个研究LFQA任务的国家之一。我们开创了研究方向,以提高回答质量:(1) 询问相关性,(2) 回答忠诚性,(3) 回答简洁性。