基于内注意的双lstm索引非虚构问答

Akshay Sharma, Chetan Harithas
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引用次数: 1

摘要

在本文中,我们使用具有内部注意机制和索引的双向LSTM来研究非因素问答问题,以提高准确性。非事实性质量保证是一项重要的任务,在构建有用的知识库和提取有价值的信息方面具有重要的应用价值。使用深度学习框架解决这类问题的优势在于,它不需要任何特征工程和其他语言工具。提出的方法是将王炳宁等人提出的LSTM(长短期记忆)模型从两个方向(一个是卷积层,另一个是内部注意机制)扩展到LSTM上,根据问题生成答案表示。在这个深度学习模型之上,我们使用了一个基于索引的信息检索模型来生成答案并提高准确性。所提出的方法表明,与所提到的模型和各自的基线以及所使用的答案长度相比,准确性有所提高。模型用两个非因子QA数据集进行了测试:TREC-QA和InsuranceQA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inner Attention Based bi-LSTMs with Indexing for non-Factoid Question Answering
In this paper, we focussed on non-factoid question answering problem using a bidirectional LSTM with an inner attention mechanism and indexing for better accuracy. Non factoid QA is an important task and can be significantly applied in constructing useful knowledge bases and extracting valuable information. The advantage of using Deep Learning frameworks in solving these kind of problems is that it does not require any feature engineering and other linguistic tools. The proposed approach is to extend a LSTM (Long Short Term Memory) model in two directions, one with a Convolutional layer and other with an inner attention mechanism, proposed by Bingning Wang, et al., to the LSTMs, to generate answer representations in accordance with the question. On top of this Deep Learning model we used an information retrieval model based on indexing to generate answers and improve the accuracy. The proposed methodology showed an improvement in accuracy over the referred model and respective baselines and also with respect to the answer lengths used. The models are tested with two non factoid QA data sets: TREC-QA and InsuranceQA.
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