资源配置
计算机科学
跨文化
环境资源管理
知识管理
经济
社会学
人类学
计算机网络
标识
DOI:10.1177/01672533251350855
摘要
Background The main challenges in cross-cultural management are cultural adaptation, communication barriers and teamwork problems. Objective This study explores how to optimize cross-cultural management and global human resource allocation through deep learning technology, so as to improve the operational efficiency and competitiveness of enterprises in the context of globalization. Methods By constructing an analytical model based on deep learning and combining with the empirical data of global multi-industry enterprises, this study proposes a specific path to optimize cross-cultural management strategies. Deep learning technology is used to optimize the global human resource allocation, and the factors of employee allocation in different industries and regions are identified through big data analysis, so as to provide enterprises with scientific and accurate global talent allocation solutions. Results The findings suggest that cultural differences play an important role in shaping the effectiveness of deep learning models, with key differences in data preprocessing, model training, and application deployment across regions. Conclusions The study highlights the importance of cultural awareness in optimizing model performance and user acceptance. A balanced approach that integrates technological advances and cultural factors is essential for the successful implementation of deep learning solutions in global enterprises.
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