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Adaptive Bi-Directional Attention: Exploring Multi-Granularity Representations for Machine Reading Comprehension

机译:自适应双向关注:探索机器阅读理解的多粒度表示

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Recently, the attention-enhanced multi-layer encoder, such as Transformer, has been extensively studied in Machine Reading Comprehension (MRC). To predict the answer, it is common practice to employ a predictor to draw information only from the final encoder layer which generates the coarse-grained representations of the source sequences, i.e., passage and question. Previous studies have shown that the representation of source sequence becomes more coarse-grained from fine-grained as the encoding layer increases. It is generally believed that with the growing number of layers in deep neural networks, the encoding process will gather relevant information for each location increasingly, resulting in more coarse-grained representations, which adds the likelihood of similarity to other locations (referring to homogeneity). Such a phenomenon will mislead the model to make wrong judgments so as to degrade the performance. To this end, we propose a novel approach called Adaptive Bidirectional Attention, which adaptively exploits the source representations of different levels to the predictor. Experimental results on the benchmark dataset, SQuAD 2.0 demonstrate the effectiveness of our approach, and the results are better than the previous state-of-the-art model by 2.5% EM and 2.3% F1 scores.
机译:最近,在机器阅读理解(MRC)中已经广泛研究了引起增强的多层编码器,例如变压器。为了预测答案,常见的做法是使用预测器仅从最终编码器层绘制信息,该信息仅产生源序列的粗粒化表示,即通过和问题。以前的研究表明,由于编码层增加,源序列的表示变得更粗糙地粒度。通常相信,利用深神经网络中越来越多的层,编码过程将越来越多地收集每个位置的相关信息,导致更粗糙的表示,这增加了与其他位置的相似性的可能性(参考同质性) 。这种现象将误导模型做出错误的判断,以降低性能。为此,我们提出了一种称为自适应双向关注的新方法,其自适应地利用不同级别的源代理到预测器。基准数据集的实验结果,小队2.0证明了我们的方法的有效性,结果优于前一个最先进的模型2.5%EM和2.3%F1分数。

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