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If You Can't Beat Them Join Them: Handcrafted Features Complement Neural Nets for Non-Factoid Answer Reranking

机译:如果您无法击败他们,请加入他们:手工制作的功能补充了神经网络,可用于非拟真答案排名

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We show that a neural approach to the task of non-factoid answer reranking can benefit from the inclusion of tried-and-tested handcrafted features. We present a novel neural network architecture based on a combination of recurrent neural networks that are used to encode questions and answers, and a multilayer perceptron. We show how this approach can be combined with additional features, in particular, the discourse features presented by Jansen et al. (2014). Our neural approach achieves state-of-the-art performance on a public dataset from Yahoo! Answers and its performance is further improved by incorporating the discourse features. Additionally, we present a new dataset of Ask Ubuntu questions where the hybrid approach also achieves good results.
机译:我们表明,对非事实类答案重新排名的任务采用神经方法可以受益于久经考验的手工功能。我们提出了一种基于递归神经网络(用于编码问题和答案)和多层感知器的组合的新型神经网络体系结构。我们展示了如何将该方法与其他功能(尤其是Jansen等人提出的话语功能)结合使用。 (2014)。我们的神经方法在Yahoo!的公共数据集上实现了最先进的性能。通过结合话语功能,答案及其性能得到进一步提高。此外,我们提供了一个新的Ask Ubuntu问题数据库,其中混合方法也取得了很好的效果。

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