基于粒子群优化的非负矩阵分解源代码抄袭检测方法

M. Bhavani, K. T. Reddy, P. Varma
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引用次数: 0

摘要

源代码抄袭很容易完成任务,但如果没有适当的工具支持,很难检测。各种源代码相似度检测系统已经开发出来,以帮助检测源代码抄袭。文献中已经做了大量的努力来引入一种有效的源代码检测方法,该方法具有较低的时间复杂度和对抄袭代码的准确分类。然而,在较低的复杂性和较高的准确性之间存在权衡。同样,本文也试图构建一个从源代码语料库中检测抄袭代码的框架。该方法在检测阶段采用智能群优化算法(PSO)和鲁棒矩阵分解算法(基于可选最小二乘(ALS)算法的非负矩阵分解)从稀疏矩阵中约简特征。根据实现的不同,ALS非常快,而且比SVD实现的工作量少得多。实验结果表明,该方法在查准率和查全率等方面具有较好的性能。
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Particle swarm optimisation-based source code plagiarism detection approach using non-negative matrix factorisation algorithm
Source code plagiarism is easy to do the task, but very difficult to detect without proper tool support. Various source code similarity detection systems have been developed to help detect source code plagiarism. Numerous efforts have been made in the literature to introduce an efficient source code detection approach with less time complexity and accurate classification of plagiarised codes. However, there exists a tradeoff amongst the less complexity and high accuracy. In a similar way, this paper likewise attempted to build a framework to detect the plagiarised codes from the source code corpus. This approach employed an intelligent swarm optimisation algorithm known as PSO in the detection phase and robust matrix factorisation algorithm known as non-negative matrix factorisation based on alternative least square (ALS) algorithm for reduction of features from the sparse matrix. Depending on the implementation, ALS is very fast and significantly less work than an SVD implementation. The experimental results showed that it has good performance compared to the other existing approaches such as precision and recall.
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来源期刊
International Journal of Applied Management Science
International Journal of Applied Management Science Business, Management and Accounting-Strategy and Management
CiteScore
1.20
自引率
0.00%
发文量
21
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