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Novel XGBoost Tuned Machine Learning Model for Software Bug Prediction

机译:用于软件错误预测的新型XGBoost调整型机器学习模型

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As internet users grow, the quantity of data available on the web increases with it. Virtually everything that needs human effort or human presence can be replaced by the Software. While developing an application it follows the Software Development Lifecycle (SDLC). Within the early stages of development, it's a compulsory task to take care of system or bugs to avoid wasting time and effort during initial development phase to forestall any runtime crisis. In this paper, we used the machine learning models – Logistic regression, Decision Tree, Random Forest, Adaboost and XGBoost as state-of-art models for four datasets of NASA-KC2, PC3, JM1, CM1. Later on, new model was proposed based on tuning the existing XGBoost model by changing its parameter namely N_estimator, learning rate, max depth, and subsample. The results achieved were compared with state-of-art models and our model outperformed them for all datasets. The authors believe that this research will contribute in correctly detecting the bugs with machine learning approach.
机译:随着互联网用户的增长,网络上可用的数据量随之增加。几乎所有需要人工或人员参与的事物都可以由该软件代替。在开发应用程序时,它遵循软件开发生命周期(SDLC)。在开发的早期阶段,保护系统或错误以避免在初始开发阶段浪费时间和精力以防止任何运行时危机是一项强制性任务。在本文中,我们使用了机器学习模型-Logistic回归,决策树,随机森林,Adaboost和XGBoost作为NASA-KC2,PC3,JM1,CM1四个数据集的最新模型。后来,在更改现有XGBoost模型的基础上,通过更改其参数(即N_estimator,学习率,最大深度和子样本),提出了新模型。将获得的结果与最新模型进行了比较,我们的模型在所有数据集上的表现均优于他们。作者认为,这项研究将有助于通过机器学习方法正确检测错误。

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