基于风险评估矩阵的空间工程风险分析

Ning Wang, S. An, Q. Mai
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引用次数: 1

摘要

风险评估矩阵(RAM)是用于空间工程风险分析的传统方法。RAM的关键是识别风险事件并对风险等级进行分类。通常情况下,这项工作完全依赖于专家的判断。但在过去的50年里,RAM结构中存在着大量的风险文本,其中包含着宝贵的风险分析知识。而随着大数据时代的到来,风险分析也必将步入智能化时代。本文提出了一种用于风险事件识别和风险等级智能分类的文本挖掘系统。我们的系统有两个过程。第一个是基于BIO格式识别风险事件的特征。第二种方法利用机器学习技术,使用基于复合核的方法来映射特征之间的关系,该方法由浅语言核和扩展依赖树核函数组成。支持向量机用于数据训练和测试。通过与KNN、朴素贝叶斯等方法的比较,得到了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Space engineering risk analysis from risk assessment matrix using text mining
Risk Assessment Matrix(RAM) is a traditional method used for risk analysis of space engineering. The essential aspect in RAM is to identity the risk event and classify the risk level. Normally, this work is absolutely dependent on judgement of experts. But in the past 50 years, there are huge risk text in RAM structure which contain valuable knowledge about risk analysis. And with the arising era of big data, the risk analysis certainly will step into an intelligentized age. In this paper, we proposed a text mining system for risk event recognition and risk level classification intelligently. Our system has two process. The first one identifies the features of risk event based on a BIO format. The second one relies on machine learning techniques to map the relationship between features using a composite kernel-based method which consists of a shallow linguistic kernel and an extended dependency tree kernel function. A Supported Vector Machines is used in data train and test. The obtained results are encouraging after comparing the system with other methods, such as KNN, Naive Bayes.
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