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Hierarchical Memory Networks for Answer Selection on Unknown Words

机译:分层记忆网络,用于未知单词的答案选择

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Recently, end-to-end memory networks have shown promising results on Question Answering task, which encode the past facts into an explicit memory and perform reasoning ability by making multiple computational steps on the memory. However, memory networks conduct the reasoning on sentence-level memory to output coarse semantic vectors and do not further take any attention mechanism to focus on words, which may lead to the model lose some detail information, especially when the answers are rare or unknown words. In this paper, we propose a novel Hierarchical Memory Networks, dubbed HMN. First, we encode the past facts into sentence-level memory and word-level memory respectively. Then, k-max pooling is exploited following reasoning module on the sentence-level memory to sample the k most relevant sentences to a question and feed these sentences into attention mechanism on the word-level memory to focus the words in the selected sentences. Finally, the prediction is jointly learned over the outputs of the sentence-level reasoning module and the word-level attention mechanism. The experimental results demonstrate that our approach successfully conducts answer selection on unknown words and achieves a better performance than memory networks.
机译:最近,端到端存储网络在“问答”任务上显示出令人鼓舞的结果,该任务将过去的事实编码为显式存储器,并通过对存储器执行多个计算步骤来执行推理能力。但是,记忆网络在句子级记忆上进行推理以输出粗略的语义向量,并且没有进一步采取任何关注机制来集中注意力于单词,这可能会导致模型丢失一些详细信息,尤其是在答案是稀有或未知单词的情况下。在本文中,我们提出了一种新颖的称为HMN的分层存储网络。首先,我们将过去的事实分别编码为句子级记忆和单词级记忆。然后,在句子级存储器上的推理模块之后,利用k-max池对样本中的k个最相关的句子进行采样,并将这些句子送入单词级存储器的注意力机制中,以将单词集中在所选句子中。最后,通过句子级推理模块和单词级注意机制的输出共同学习预测。实验结果表明,我们的方法成功地对未知单词进行了答案选择,并且比记忆网络具有更好的性能。

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