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Detecting counterfeit products by means of frequent pattern mining
by
Baudry, David
, Benatia, Mohamed Amin
, Louis, Anne
in
Algorithms
/ Artificial Intelligence
/ Comparative studies
/ Computational Intelligence
/ Computer Science
/ Cosmetics
/ Counterfeit
/ Counterfeiting
/ Customer services
/ Data mining
/ Data warehouses
/ Decision making
/ Engineering
/ False alarms
/ Machine Learning
/ Multiagent systems
/ Original Research
/ Pattern analysis
/ Product quality
/ Product recalls
/ Robotics and Automation
/ Simulation
/ Software
/ Statistics
/ Suppliers
/ Supply chain management
/ Supply chains
/ Trademarks
/ User Interfaces and Human Computer Interaction
2022
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Detecting counterfeit products by means of frequent pattern mining
by
Baudry, David
, Benatia, Mohamed Amin
, Louis, Anne
in
Algorithms
/ Artificial Intelligence
/ Comparative studies
/ Computational Intelligence
/ Computer Science
/ Cosmetics
/ Counterfeit
/ Counterfeiting
/ Customer services
/ Data mining
/ Data warehouses
/ Decision making
/ Engineering
/ False alarms
/ Machine Learning
/ Multiagent systems
/ Original Research
/ Pattern analysis
/ Product quality
/ Product recalls
/ Robotics and Automation
/ Simulation
/ Software
/ Statistics
/ Suppliers
/ Supply chain management
/ Supply chains
/ Trademarks
/ User Interfaces and Human Computer Interaction
2022
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Do you wish to request the book?
Detecting counterfeit products by means of frequent pattern mining
by
Baudry, David
, Benatia, Mohamed Amin
, Louis, Anne
in
Algorithms
/ Artificial Intelligence
/ Comparative studies
/ Computational Intelligence
/ Computer Science
/ Cosmetics
/ Counterfeit
/ Counterfeiting
/ Customer services
/ Data mining
/ Data warehouses
/ Decision making
/ Engineering
/ False alarms
/ Machine Learning
/ Multiagent systems
/ Original Research
/ Pattern analysis
/ Product quality
/ Product recalls
/ Robotics and Automation
/ Simulation
/ Software
/ Statistics
/ Suppliers
/ Supply chain management
/ Supply chains
/ Trademarks
/ User Interfaces and Human Computer Interaction
2022
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Detecting counterfeit products by means of frequent pattern mining
Journal Article
Detecting counterfeit products by means of frequent pattern mining
2022
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Overview
Product traceability is one of the major issues in supply chains management (e.g., Food, cosmetics, pharmaceutical, etc.). Several studies has shown that traceability allows targeted product recalls representing a health risk (e.g.: counterfeit products), thus enhancing the communication and risks management. It can be defined as the ability to track and trace individual items throughout their whole lifecycle from manufacturing to recycling. This includes real-time data analytics about actual product behavior (ability to track) and product historical data (ability to trace). This paper presents a comparative study between several works on product traceability and proposes a standardized traceability system architecture. In order to implement a counterfeit/nonconforming product detection algorithm, we implement a cosmetic supply chain as a multi-agent system implemented in Anylogic©. Data generated by this simulator are then used in order to identify genuine trajectories across the whole SC. The genuine product trajectories (behavior) are inferred using a frequent pattern mining algorithm (i.e., Apriori). This identified trajectories are used as a reference in order to identify counterfeit products and detect false alarms of product behavior
Publisher
Springer Berlin Heidelberg,Springer Nature B.V,Springer
Subject
/ Software
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