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Model elements identification using neural networks: a comprehensive study

机译:模型元素使用神经网络识别:综合研究

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Modeling of natural language requirements, especially for a large system, can take a significant amount of effort and time. Many automated model-driven approaches partially address this problem. However, the application of state-of-the-art neural network architectures to automated model element identification tasks has not been studied. In this paper, we perform an empirical study on automatic model elements identification for component state transition models from use case documents. We analyzed four different neural network architectures: feed forward neural network, convolutional neural network, recurrent neural network (RNN) with long short-term memory, and RNN with gated recurrent unit (GRU), and the trade-offs among them using six use case documents. We analyzed the effect of factors such as types of splitting, types of predictions, types of designs, and types of annotations on performance of neural networks. The results of neural networks on the test and unseen data showed that RNN with GRU is the most effective neural network architecture. However, the factors that result in effective predictions of neural networks are dependent on the type of the model element.
机译:自然语言要求建模,特别是对于大型系统,可以采取大量的努力和时间。许多自动模型驱动方法部分地解决了这个问题。然而,尚未研究应用最先进的神经网络架构到自动模型元素识别任务。在本文中,我们对自动模型元件识别进行了对机械案件文档的实证研究。我们分析了四种不同的神经网络架构:馈送前向神经网络,卷积神经网络,经常性神经网络(RNN),短期内存,具有门控复发单元(GU)的RNN,以及使用六种使用的权衡案例文件。我们分析了因素,如分裂类型,预测类型,设计类型以及神经网络性能的类型的效果。测试和看不见的数据的神经网络结果表明,RNN与GRU是最有效的神经网络架构。然而,导致神经网络有效预测的因素取决于模型元素的类型。

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