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Preferred Answer Selection in Stack Overflow: Better Text Representations ... and Metadata, Metadata, Metadata

机译:堆栈溢出中的首选答案选择:更好的文本表示...和元数据,元数据,元数据

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Community question answering (cQA) forums provide a rich source of data for facilitating non-factoid question answering over many technical domains. Given this, there is considerable interest in answer retrieval from these kinds of forums. However this is a difficult task as the structure of these forums is very rich, and both metadata and text features are important for successful retrieval. While there has recently been a lot of work on solving this problem using deep learning models applied to question/answer text, this work has not looked at how to make use of the rich metadata available in cQA forums. We propose an attention-based model which achieves state-of-the-art results for text-based answer selection alone, and by making use of complementary metadata, achieves a substantially higher result over two reference datasets novel to this work.
机译:社区问题应答(CQA)论坛提供丰富的数据来源,以促进在许多技术领域接受的非因子问题。鉴于这一点,对这些类型的论坛的答案检索有相当大的兴趣。然而,这是一项艰巨的任务,因为这些论坛的结构非常丰富,并且元数据和文本功能都很重要,可以成功检索。虽然最近在使用应用于质疑/答复文本的深度学习模型解决这个问题的许多工作时,但这项工作没有看如何利用CQA论坛中提供的丰富元数据。我们提出了一种基于注意的模型,该模型实现了基于文本的答案选择的最先进的结果,并且利用互补元数据,实现了两种参考数据集新颖的对此工作的基本上更高的结果。

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