基于深度学习的软件检测模型相似性分类

P. H. Babu, P. Yalla
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引用次数: 0

摘要

在工业4.0时代,深度学习技术已成为医疗、汽车、视频分析、音频分析、软件系统等诸多领域的重要研究工具。近年来,利用现代技术对软件分析进行了许多研究。使用CrosLSim、SimMax和atrpos模型对不同软件系统的软件相似度检测技术进行了综述。现有的相似度检测模型在大型软件项目中应用效率不高。本文提出了一种提高概率、可维护性、可测试性和可重用性的Techvar-DNN系统。与随机森林和支持向量机等方法相比,该方法具有召回率高、函数大小小、计算效率高等优点。此外,所提出的模型结果具有更好的f测度、精度和召回率,从而提高了软件相似度检测的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Techvar: Classification of Similarity in Software Detection Model using Deep Learning
In Industry 4.0, Deep Learning techniques have become an important research tool in many area namely healthcare, automobiles, video analysis, audio analytics, software systems etc. In recent years, many research are performed in software analysis using modern technologies. CrosLSim, SimMax, and atrpos models are used to review the software similarity detection techniques for different software systems. The existing models for similarity detection are not efficient to be used in major software projects. In this paper, the Techvar-DNN system which performs enhanced Probability, maintainability, testability, and reusability has been proposed. When compared with other methods namely Random Forest and Support vector machines, the proposed system provides increased recall, a smaller function size, and more efficient computing. Moreover, the proposed model results show better F-measure, precision and recall to improve the software similarity detection in a more efficient manner.
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