使用自动生成的机器学习模型检测互联网文本中的源代码

Q3 Economics, Econometrics and Finance
M. Badurowicz
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引用次数: 1

摘要

在这篇论文中,作者展示了一种允许对源代码进行自动分类的网络抓取软件的成果。该软件系统是为软件开发人员准备的讨论论坛,用于查找发布的源代码片段,而不将其标记为代码片段。分析软件使用机器学习二元分类模型来区分编程语言源代码和关于软件的高技术性文本。该模型采用AutoML子系统编制,无需人工干预和微调,对所描述问题的准确率超过95%。基于自动生成模型的分析仪已投入使用,经过第一年的连续运行,其误报率小于3%。在软件开发过程中的文档管理中可能会引入类似的过程,其中自动标记和搜索代码或伪代码可能对存档目的很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DETECTION OF SOURCE CODE IN INTERNET TEXTS USING AUTOMATICALLY GENERATED MACHINE LEARNING MODELS
In the paper, the authors are presenting the outcome of web scraping software allowing for the automated classification of source code. The software system was prepared for a discussion forum for software developers to find fragments of source code that were published without marking them as code snippets. The analyzer software is using a Machine Learning binary classification model for differentiating between a programming language source code and highly technical text about software. The analyzer model was prepared using the AutoML subsystem without human intervention and fine-tuning and its accuracy in a described problem exceeds 95%. The analyzer based on the automatically generated model has been deployed and after the first year of continuous operation, its False Positive Rate is less than 3%. The similar process may be introduced in document management in software development process, where automatic tagging and search for code or pseudo-code may be useful for archiving purposes.
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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