What is it about?

Enterprise supply chain risk assessment based on improved neural network algorithm and machine learning is of practical significance to study the decisionmaking subject in the supply chain under the influence of risk aversion to make a decision and make the supply chain compete in an orderly market environment. In order to improve the effect of enterprise sup-ply chain risk assessment, this paper improves the traditional neural network algorithm, combines machine learning methods and supply chain risk assessment time requirements to set system function modules, and builds the overall system structure. Consid-ering the multiple relationship attributes of supply chain risk knowledge, this paper uses a multi-element semantic network to represent the network structure of supply chain risk knowledge, and proposes a multilevel inventory control model.This is based on the inventory of the coordination center and other retailers' procurement/relocation strategy models.After building the model, this paper designs a simulation test to verify and analyze the model performance. The research results show that the model proposed in this paper has a certain effect.

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Why is it important?

Considering the multiple relationship attributes of supply chain risk knowledge, this paper uses a multi-element semantic network to represent the network structure of supply chain risk knowledge, and proposes a multilevel inventory control model.

Perspectives

Inventory control models need to consider multiple risk factors. Information technology algorithms can be used for model construction. This article uses neural networks and machine learning. You can also try to use GA or other algorithms.

shaoqin Lu
Changzhou College of Information Technology

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This page is a summary of: Enterprise supply chain risk assessment based on improved neural network algorithm and machine learning, Journal of Intelligent & Fuzzy Systems, April 2021, IOS Press,
DOI: 10.3233/jifs-189532.
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