Software development effort estimation using boosting algorithms and automatic tuning of hyperparameters with Optuna

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Software-Evolution and Process Pub Date : 2024-04-14 DOI:10.1002/smr.2665
Maryam Hassanali, Mohammadreza Soltanaghaei, Taghi Javdani Gandomani, Farsad Zamani Boroujeni
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Abstract

Considering the increasing need for software projects, estimating software development efforts is essential and can lead to improved project delivery quality. Machine learning methods are widely used to improve the accuracy of estimation. The boosting method is an ensemble machine learning technique less used in this field. In this research, five boosting algorithms including Adaboost, Gradient boosting, XGBoost, LightGBM, and CatBoost were implemented with the hyperparameter tuning framework Optuna on the ISBSG database. The Optuna is a next-generation optimization method for automatically tuning hyperparameters of algorithms. Six evaluation criteria MMRE, MdMRE, MAE, MSE, Pred(0.25), and SA were used to evaluate the findings. The results show that the hyperparameter automatic tuning by Optuna increases the accuracy of prediction provided by all five models. When the Catboost algorithm uses Optuna to tune its hyperparameters has made the best prediction among the five algorithms studied in this research. Using Optuna, compared to the case where the algorithm uses its default settings, the highest percentage of prediction improvement was observed in the XGBoost algorithm (except for the SA criterion). Based on the criteria of MMRE, Pred(0.25), and SA, this study has a better prediction than some relatively similar articles.

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使用提升算法和 Optuna 自动调整超参数估算软件开发工作量
考虑到对软件项目的需求日益增长,对软件开发工作进行估算至关重要,并能提高项目交付质量。机器学习方法被广泛用于提高估算的准确性。提升法是该领域较少使用的一种集合机器学习技术。在这项研究中,利用超参数调整框架 Optuna 在 ISBSG 数据库上实现了五种提升算法,包括 Adaboost、Gradient boosting、XGBoost、LightGBM 和 CatBoost。Optuna 是自动调整算法超参数的新一代优化方法。六项评价标准 MMRE、MdMRE、MAE、MSE、Pred(0.25) 和 SA 被用来评估研究结果。结果表明,Optuna 的超参数自动调整提高了所有五个模型的预测准确性。当 Catboost 算法使用 Optuna 调整其超参数时,其预测结果是本研究中五种算法中最好的。与使用默认设置的情况相比,使用 Optuna 的 XGBoost 算法的预测改进比例最高(SA 标准除外)。根据 MMRE、Pred(0.25) 和 SA 标准,本研究的预测结果优于一些相对类似的文章。
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来源期刊
Journal of Software-Evolution and Process
Journal of Software-Evolution and Process COMPUTER SCIENCE, SOFTWARE ENGINEERING-
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发文量
109
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