School of International Studies, Hunan Institute of Technology, Hengyang 421002, China.
Comput Intell Neurosci. 2021 Sep 15;2021:5100809. doi: 10.1155/2021/5100809. eCollection 2021.
In order to solve the problems of low accuracy and low efficiency of answer prediction in machine reading comprehension, a multitext English reading comprehension model based on the deep belief neural network is proposed. Firstly, the paragraph selector in the multitext reading comprehension model is constructed. Secondly, the text reader is designed, and the deep belief neural network is introduced to predict the question answering probability. Finally, the popular English dataset of SQuAD is used for test analysis. The final results show that, after the comparative analysis of different learning methods, it is found that the English multitext reading comprehension model has a strong reading comprehension ability. In addition, two evaluation methods are used to score the overall performance of the model, which shows that the overall score of the English multitext reading comprehension model based on the deep confidence neural network is more than 90, and the efficiency will not be reduced because of the change of the number of documents in the dataset. The above results show that the use of the deep belief neural network to improve the probability generation performance of the model can well solve the task of English multitext reading comprehension, effectively reduce the difficulty of machine reading comprehension in multitask reading, and has a good guiding significance for promoting human convenient Internet knowledge acquisition.
为了解决机器阅读理解中答案预测准确性和效率低的问题,提出了一种基于深度置信神经网络的多文本英语阅读理解模型。首先构建多文本阅读理解模型中的段落选择器,然后设计文本阅读器,引入深度置信神经网络预测问答概率,最后使用 SQuAD 的流行英语数据集进行测试分析。最终结果表明,通过对不同学习方法的对比分析,发现多文本英语阅读理解模型具有较强的阅读理解能力。此外,使用两种评价方法对模型的整体性能进行评分,结果表明基于深度置信神经网络的多文本英语阅读理解模型的整体得分超过 90,并且不会因为数据集中文档数量的变化而降低效率。上述结果表明,使用深度置信神经网络提高模型的概率生成性能可以很好地解决英语多文本阅读理解任务,有效降低多任务阅读中机器阅读理解的难度,对促进人类便捷的互联网知识获取具有良好的指导意义。