Business School, Yangzhou University, Yangzhou, China.
School of Economics, Dongbei University of Finance and Economics, Dalian, China.
PLoS One. 2024 Mar 29;19(3):e0299147. doi: 10.1371/journal.pone.0299147. eCollection 2024.
The enhancement of digital transformation is of paramount importance for business development. This study employs machine learning to establish a predictive model for digital transformation, investigates crucial factors that influence digital transformation, and proposes corresponding improvement strategies. Initially, four commonly used machine learning algorithms are compared, revealing that the Extreme tree classification (ETC) algorithm exhibits the most accurate prediction. Subsequently, through correlation analysis and recursive elimination, key features that impact digital transformation are selected resulting in the corresponding feature subset. Shapley Additive Explanation (SHAP) values are then employed to perform an interpretable analysis on the predictive model, elucidating the effects of each key feature on digital transformation and obtaining critical feature values. Lastly, informed by practical considerations, we propose a quantitative adjustment strategy to enhance the degree of digital transformation in enterprises, which provides guidance for digital development.
数字化转型的增强对于企业发展至关重要。本研究采用机器学习为数字化转型建立预测模型,研究影响数字化转型的关键因素,并提出相应的改进策略。首先,比较了四种常用的机器学习算法,结果表明极端树分类(ETC)算法具有最准确的预测。然后,通过相关性分析和递归消除,选择了影响数字化转型的关键特征,得到相应的特征子集。然后,使用 Shapley Additive Explanation(SHAP)值对预测模型进行可解释性分析,阐明每个关键特征对数字化转型的影响,并获得关键特征值。最后,根据实际考虑,我们提出了一种定量调整策略,以提高企业的数字化转型程度,为数字化发展提供指导。