ABSTRACT:
Community question answering (cQA) services have gained
popularity over the past years. It not only allows community members to post
and answer questions but also enables general users to seek information from a
comprehensive set of well-answered questions. However, existing cQA forums
usually provide only textual answers, which are not informative enough for many
questions. In this paper, we propose a scheme that is able to enrich textual
answers in cQA with appropriate media data. Our scheme consists of three
components: answer medium selection, query generation for multimedia search,
and multimedia data selection and presentation. This approach automatically
determines which type of media information should be added for a textual
answer. It then automatically collects data from the web to enrich the answer.
By processing a large set of QA pairs and adding them to a pool, our approach
can enable a novel multimedia question answering (MMQA) approach as users can find
multimedia answers by matching their questions with those in the pool.
Different from a lot of MMQA research efforts that attempt to directly answer
questions with image and video data, our approach is built based on community-contributed
textual answers and thus it is able to deal with more complex questions. We
have conducted extensive experiments on a multi-source QA dataset. The results
demonstrate the effectiveness of our approach.
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