Shi Yin, Li Xiaoni
Department of Business and Management, Economics and Management Faculty, University Rovira i Virgili, Spain.
Heliyon. 2019 Dec 18;5(12):e02997. doi: 10.1016/j.heliyon.2019.e02997. eCollection 2019 Dec.
Bibliometric analysis is an effective method to carry out quantitative study of academic output to address the research trends on a given area of investigation through analysing existing documents. This paper aims to explore the application of intelligent techniques in bankruptcy predictions so as to assess its progress and describe the research trend through bibliometric analysis over the last five decades. The results indicate that, although there is a significant increase in publication number since the 2008 financial crisis, the collaboration among authors is weak, especially at the international dimension. Also, the findings provide a comprehensive view of interdisciplinary research on bankruptcy modelling in finance, business management and computer science fields. The authors sought to contribute to the theoretical development of bankruptcy prediction modeling by bringing new knowledge and key insights. Artificial intelligent techniques are now serving as important alternatives to statistical methods and demonstrate very promising results. This paper has both theoretical and practical implications. First, it provides insights for scholars into the theoretical evolution and intellectual structure for conducting future research in this field. Second, it sheds light on identifying under-explored machine learning techniques applied in bankruptcy prediction which can be crucial in management and decision-making for corporate firm managers and policy makers.
文献计量分析是一种开展学术产出定量研究的有效方法,通过分析现有文献来探究特定研究领域的研究趋势。本文旨在探讨智能技术在破产预测中的应用,以便评估其进展,并通过对过去五十年的文献计量分析来描述研究趋势。结果表明,尽管自2008年金融危机以来出版物数量显著增加,但作者之间的合作较为薄弱,尤其是在国际层面。此外,研究结果全面呈现了金融、商业管理和计算机科学领域中关于破产建模的跨学科研究情况。作者试图通过引入新知识和关键见解,为破产预测模型的理论发展做出贡献。人工智能技术如今已成为统计方法的重要替代方法,并展现出非常有前景的结果。本文具有理论和实践意义。首先,它为学者们提供了该领域理论演变和知识结构的见解,以便他们开展未来研究。其次,它有助于识别在破产预测中应用但未充分探索的机器学习技术,这对于公司企业经理和政策制定者的管理和决策可能至关重要。