基于海量数据智能语义分析的可信行为决策树缺陷检测技术研究

Yidan Ren, Zhengzhou Zhu, Xiangzhou Chen, Huixia Ding, Geng Zhang
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引用次数: 0

摘要

随着信息技术的飞速发展,软件系统的规模和复杂程度呈现出不断扩大的趋势。用户对软件安全性、软件安全可靠性和软件稳定性的要求越来越高。目前,业界已将机器学习方法应用于缺陷检测领域,通过海量数据智能语义分析或代码扫描来修复和改进软件缺陷。机器学习中的模型在传统的软件缺陷检测领域面临着模型构建、理解困难和可视化效果差的问题。针对上述问题,提出了基于海量数据的智能语义分析技术,并利用可信行为决策树模型分层检测技术对软行为进行分析的观点。同时配备了相关的测试环境,对被测软件进行比较。结果表明,基于海量数据智能语义分析的缺陷检测技术在构建时间和报错率方面优于其他技术。
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Research on Defect Detection Technology of Trusted Behavior Decision Tree Based on Intelligent Data Semantic Analysis of Massive Data
With the rapid development of information technology, software systems' scales and complexity are showing a trend of expansion. The users' needs for the software security, software security reliability and software stability are growing increasingly. At present, the industry has applied machine learning methods to the fields of defect detection to repair and improve software defects through the massive data intelligent semantic analysis or code scanning. The model in machine learning is faced with big difficulty of model building, understanding, and the poor visualization in the field of traditional software defect detection. In view of the above problems, we present a point of view that intelligent semantic analysis technology based on massive data, and using the trusted behavior decision tree model to analyze the soft behavior by layered detection technology. At the same time, it is equipped related test environment to compare the tested software. The result shows that the defect detection technology based on intelligent semantic analysis of massive data is superior to other techniques at the cost of building time and error reported ratio.
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