智能决策支持系统在企业管理中的应用
Application of Intelligent Decision Support Systems in Enterprise Management
摘要: 随着信息技术的迅速发展,智能决策支持系统(IDSS)在企业管理中的应用日益受到关注。本文旨在探讨IDSS在企业管理中的应用,分析其当前存在的问题并给出解决措施。首先介绍了IDSS的背景和意义,阐述了其在生产运营、市场营销、供应链管理等领域的具体应用场景,并强调了其对企业决策的重要性。然后分析了IDSS面临的挑战,包括数据质量、模型不确定性等问题,并提出了利用大数据、人工智能等新技术来解决这些问题的解决方案。通过本文,可以更深入地理解IDSS在企业管理中的作用,为企业决策者提供理论指导和实践建议。
Abstract: With the rapid development of information technology, the application of Intelligent Decision Support Systems (IDSS) in enterprise management is attracting increasing attention. This paper aims to explore the role and impact of IDSS in enterprise management, analyze the current problems it faces, and provide solutions. The background and significance of Intelligent Decision Support Systems (IDSS) are first introduced, elucidating its specific application scenarios in areas such as production operations, marketing, and supply chain management, emphasizing its crucial role in business decision-making. Subsequently, the challenges faced by IDSS are analyzed, including issues like data quality and model uncertainty, with proposed solutions leveraging new technologies, such as big data and artificial intelligence. This aims to provide a deeper understanding of IDSS’s role in enterprise management, offering theoretical guidance and practical recommendations to facilitate continuous business development and innovation. Through this paper, a deeper understanding of the role of IDSS in enterprise management can be gained, providing theoretical guidance and practical advice for business decision-makers.
文章引用:郑智阳. 智能决策支持系统在企业管理中的应用[J]. 电子商务评论, 2024, 13(3): 6393-6397. https://doi.org/10.12677/ecl.2024.133788

参考文献

[1] 杨善林, 倪志伟. 机器学习与智能决策支持系统[J]. 潍坊学院学报, 2003, 3(2): 57-59.
[2] Tariq, A. and Rafi, K. (2012) Intelligent Decision Support Systems—A Framework. Information and Knowledge Management, 2, 12-19.
[3] Sànchez-Marrè, M. (2022) Intelligent Decision Support Systems. Springer. [Google Scholar] [CrossRef
[4] Kaklauskas, A. (2015) Biometric and Intelligent Decision Making Support. Springer. [Google Scholar] [CrossRef
[5] Gottinger, H.W. and Weimann, P. (1992) Intelligent Decision Support Systems. Decision Support Systems, 8, 317-332. [Google Scholar] [CrossRef
[6] Dasgupta, D. and Gonzalez, F.A. (2001) An Intelligent Decision Support System for Intrusion Detection and Response. Information Assurance in Computer Networks: Methods, Models and Architectures for Network Security, Petersburg, 21-23 May 2001, 1-4. [Google Scholar] [CrossRef
[7] 刘建军. 智能决策支持系统与现代企业管理[J]. 山东纺织经济, 2005(5): 71-73.
[8] Sagiroglu, S. and Sinanc, D. (2013) Big Data: A Review. 2013 International Conference on Collaboration Technologies and Systems (CTS), San Diego, 20-24 May 2013, 42-47. [Google Scholar] [CrossRef
[9] 申广荣, 黄丹枫. 基于HACCP的出口蔬菜安全生产智能决策支持系统研究[J]. 农业网络信息, 2005(11): 18-20.
[10] Zong, K., Yuan, Y., Montenegro-Marin, C.E. and Kadry, S.N. (2021) Or-Based Intelligent Decision Support System for E-Commerce. Journal of Theoretical and Applied Electronic Commerce Research, 16, 1150-1164. [Google Scholar] [CrossRef
[11] Phillips, J.J. (1996) ROI: The Search for Best Practices. Training & Development, 50, 42-48.
[12] 王林, 曾宇容. 基于数据挖掘的市场营销智能决策支持系统设计[J]. 计算机工程与科学, 2006, 28(10): 117-120.
[13] 张云波. 基于智能代理的供应链柔性决策支持系统[J]. 科技管理研究, 2005, 25(2): 141-143.
[14] Chen, M.-S., Han, J. and Yu, P.S. (1996) Data Mining: An Overview from a Database Perspective. IEEE Transactions on Knowledge and Data Engineering, 8, 866-883. [Google Scholar] [CrossRef
[15] Koutroumbas, K. (2008) Sergios Theodoridis. Pattern Recognition. Academic Press.
[16] Dong, X., Yu, Z., Cao, W., Shi, Y. and Ma, Q. (2019) A Survey on Ensemble Learning. Frontiers of Computer Science, 14, 241-258. [Google Scholar] [CrossRef
[17] Bensi, M., Kiureghian, A.D. and Straub, D. (2013) Efficient Bayesian Network Modeling of Systems. Reliability Engineering & System Safety, 112, 200-213. [Google Scholar] [CrossRef
[18] LeCun, Y., Bengio, Y. and Hinton, G. (2015) Deep learning. Nature, 521, 436-444. [Google Scholar] [CrossRef] [PubMed]
[19] Zhang, J., Deng, Z., Choi, K. and Wang, S. (2018) Data-Driven Elastic Fuzzy Logic System Modeling: Constructing a Concise System with Human-Like Inference Mechanism. IEEE Transactions on Fuzzy Systems, 26, 2160-2173. [Google Scholar] [CrossRef
[20] Rubinstein, R.Y. and Kroese, D.P. (2016) Simulation and the Monte Carlo Method. Wiley. [Google Scholar] [CrossRef
[21] Andoni, M., Robu, V., Flynn, D., Abram, S., Geach, D., Jenkins, D., et al. (2019) Blockchain Technology in the Energy Sector: A Systematic Review of Challenges and Opportunities. Renewable and Sustainable Energy Reviews, 100, 143-174. [Google Scholar] [CrossRef
[22] Zarrin, J., Wen Phang, H., Babu Saheer, L. and Zarrin, B. (2021) Blockchain for Decentralization of Internet: Prospects, Trends, and Challenges. Cluster Computing, 24, 2841-2866. [Google Scholar] [CrossRef] [PubMed]
[23] Mohanta, B.K., Panda, S.S. and Jena, D. (2018) An Overview of Smart Contract and Use Cases in Blockchain Technology. 2018 9th International Conference on Computing, Communication and Networking Technologies (ICCCNT), Bengaluru, 10-12 July 2018, 1-4. [Google Scholar] [CrossRef