A study on decision-making of food supply chain based on big data

被引:0
作者
Guojun Ji
Limei Hu
Kim Hua Tan
机构
[1] Xiamen University,Collaborative Innovation Center for Peaceful Development of Corss
[2] Xiamen University,Strait Relations
[3] Nottingham University Business School,School of Management
来源
Journal of Systems Science and Systems Engineering | 2017年 / 26卷
关键词
Big data; Bayesian network; deduction graph model; food supply chain;
D O I
暂无
中图分类号
学科分类号
摘要
As more and more companies have captured and analyzed huge volumes of data to improve the performance of supply chain, this paper develops a big data harvest model that uses big data as inputs to make more informed production decisions in the food supply chain. By introducing a method of Bayesian network, this paper integrates sample data and finds a cause-and-effect between data to predict market demand. Then the deduction graph model that translates products demand into processes and divides processes into tasks and assets is presented, and an example of how big data in the food supply chain can be combined with Bayesian network and deduction graph model to guide production decision. Our conclusions indicate that the analytical framework has vast potential for supporting support decision making by extracting value from big data.
引用
收藏
页码:183 / 198
页数:15
相关论文
共 40 条
  • [1] Albert I.(2008)Quantitative risk assessment from farm to fork and beyond: aglobal Bayesian approach concerning food-borne diseases Risk Analysis 28 557-571
  • [2] Grenier E.(2004)A Bayesian network estimation of the service-profit chain for transport service satisfaction Decision Sciences 35 665-689
  • [3] Denis J. B.(2012)Food traceability systems and information sharing in food supply chain Management & Marketing 7 750-759
  • [4] Rousseau J.(2005)Construction and methods of learning of Bayesian networks Cybernetics and Systems Analysis 41 587-598
  • [5] Anderson R. D.(2015)Analysing organic food buyers’ perceptions with Bayesian networks: a case study in Turkey Journal of Applied Statistics 42 1572-1590
  • [6] Mackoy R. D.(1992)A Bayesian method for the induction of probabilistic networks from data Machine Learning 9 309-347
  • [7] Thompson V. B.(1995)Real-world applications of Bayesian networks Communications of the ACM 38 24-26
  • [8] Harrell G.(2002)Solving fixed-charge network flow problems with a hybrid optimization and constraint programming approach Annals of Operations Research 115 95-124
  • [9] Anica-popa I.(1999)Incorporating competence sets of decision makers by deduction graphs Operations Research 47 209-220
  • [10] Bidyuk P. I.(1994)Optimal competence set expansion using deduction graphs Journal of Optimization Theory and Applications 80 75-91