With the recent progress of information technology, the use of networked information systems has rapidly expanded. Electronic commerce and electronic payments between banks and companies, and online shopping and social networking services used by the general public are examples of such systems. Therefore, in order to maintain and improve the dependability of these systems, we are constructing a failure database from past failure cases. When importing new failure cases to the database, it is necessary to classify these cases according to failure type. The problems are the accuracy and efficiency of the classification. Especially when working with multiple individuals, unification of classification is required. Therefore, we are attempting to automate classification using machine learning. As evaluation models, we selected the multilayer perceptron (MLP), the convolutional neural network (CNN), and the recurrent neural network (RNN), which are models that use neural networks. As a result, the optimal model in terms of accuracy is first the MLP followed by the CNN, and the processing time of the classification is practical.
翻译:随着信息技术的最近进展,网络信息系统的使用迅速扩大;银行和公司之间的电子商务和电子支付以及一般公众使用的在线购物和社会网络服务就是这类系统的例子,因此,为了维持和提高这些系统的可靠性,我们正在从过去的失败案例中建立一个故障数据库;在向数据库输入新的失败案例时,有必要按故障类型对这些案例进行分类;问题在于分类的准确性和效率;特别是在与多个个人合作时,需要统一分类;因此,我们试图利用机器学习实现分类自动化;作为评估模型,我们选择多层倍感器(MLP)、革命神经网络(CNN)和经常神经网络(RNNN)作为使用神经网络的模型;因此,在准确性方面的最佳模式首先是CNN的MLP, 并且分类的处理时间是实际的。