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A Method For Answer Selection Using DistilBERT And Important Words

机译:使用extilbert和重要词语回答选择的方法

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Question Answering is a hot topic in artificial intelligence and has many real-world applications. This field aims at generating an answer to the user's question by analyzing a massive volume of text documents. Answer Selection is a significant part of a question answering system and attempts to extract the most relevant answers to the user's question from the candidate answers pool. Recently, researchers have attempted to resolve the answer selection task by using deep neural networks. They first employed the recurrent neural networks and then gradually migrated to convolutional neural networks. Nevertheless, the use of language models, which is implemented by deep neural networks, has recently been considered. In this research, the DistilBERT language model was employed as the language model. The outputs of the Question Analysis part and Expected Answer Extraction component are also applied with [CLS] token output as the final feature vector. This operation leads to improving the method performance. Several experiments are performed to evaluate the effectiveness of the proposed method, and the results are reported based on the MAP and MRR metrics. The results show that the MAP values of the proposed method improved by 0.6%, and the MRR metric is improved by 0.2%. The results of our research show that using a heavy language model does not guarantee a more reliable method for answer selection problem. It also shows that the use of particular words, such as Question Word and Expected Answer word, can improve the performance of the method.
机译:问题回答是人工智能的热门话题,拥有许多现实世界的应用。该领域旨在通过分析大量文本文档来为用户问题产生答案。答案选择是问题应答系统的重要组成部分,并尝试从候选答案池中提取用户问题最相关的答案。最近,研究人员试图通过使用深神经网络来解决答案选择任务。他们首先雇用了经常性的神经网络,然后逐渐迁移到卷积神经网络。然而,最近考虑了使用深神经网络实施的语言模型。在这项研究中,展开语言模型被用作语言模型。问题分析部分和预期答案提取组件的输出也应用于作为最终特征向量的[CLS]令牌输出。该操作导致提高方法性能。进行几个实验以评估所提出的方法的有效性,并根据地图和MRR指标报告结果。结果表明,所提出的方法的地图值提高了0.6%,MRR度量提高了0.2%。我们的研究结果表明,使用沉重的语言模型并不能保证更可靠的回答选择问题方法。它还表明,使用特定单词,如问题字和预期的答案字,可以提高方法的性能。

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