区块链技术对汽车行业循环经济实施的影响:从GMM模型到新机器学习算法

The influence of blockchain technology on circular economy implementation in the automotive sector: From a GMM model to a new machine learning algorithm

BUSINESS STRATEGY AND THE ENVIRONMENT · 2024
被引 18
人大 A-ABS 3

中文导读

研究了2011至2019年间区块链技术对汽车行业循环经济实践的影响,发现其有积极作用,且支持向量机和神经网络比随机森林预测更准。

Abstract

Abstract This investigation explores the integration of blockchain technology (BCT) with circular economy (CE) principles within the automotive sector, leveraging a dataset from the years 2011 to 2019. Employing advanced analytical techniques, including machine learning models and the system generalized method of moments (GMM), the study meticulously assesses BCT's impact on CE practices over the specified period. The dataset, curated from esteemed sources such as CSRHub, Thomson Reuters, and Bloomberg, enhances the reliability and validity of our analysis. Results indicate a positive influence of BCT on the adoption and effectiveness of CE practices in the automotive industry, suggesting that CE practices can bolster firm performance. Notably, the analysis reveals that support vector machines (SVM) and neural networks (NNs) exhibit superior efficacy over the random forest (RF) model in capturing the nuances of the BCT‐CE interplay. This is evidenced by their lower root‐mean‐square error (RMSE) and mean absolute error (MAE), signifying greater predictive accuracy. The findings illuminate BCT's potential to revolutionize CE practices, optimize resource use, and foster sustainability in the automotive field.

汽车行业区块链循环经济机器学习人工智能