Decision Trees for Supervised Multi-criteria Inventory Classification
Contributo in Atti di convegno
Data di Pubblicazione:
2017
Citazione:
Decision Trees for Supervised Multi-criteria Inventory Classification / Lolli, Francesco; Ishizaka, Alessio; Gamberini, Rita; Balugani, Elia; Rimini, Bianca. - In: PROCEDIA MANUFACTURING. - ISSN 2351-9789. - 11:(2017), pp. 1871-1881. ( 27th International Conference on Flexible Automation and Intelligent Manufacturing (FAIM) Modena (Italy) 27-30 June 2017) [10.1016/j.promfg.2017.07.326].
Abstract:
A multi-criteria inventory classification (MCIC) approach based on supervised classifiers (i.e. decision trees and random forests) is proposed, whose training is performed on a sample of items that has been previously classified by exhaustively simulating a predefined inventory control system. The goal is to classify automatically the whole set of items, in line with the fourth industrial revolution challenges of increased integration of ICT into production management. A case study referring to intermittent demand patterns has been used for validating our proposal, and a comparison with a recent unsupervised MCIC approach has shown promising results.
Tipologia CRIS:
Relazione in Atti di Convegno
Keywords:
decision trees, intermittent demand, inventory control, machine Learning, multi-criteria inventory classification
Elenco autori:
Lolli, Francesco; Ishizaka, Alessio; Gamberini, Rita; Balugani, Elia; Rimini, Bianca
Link alla scheda completa:
Link al Full Text:
Titolo del libro:
27th International Conference on Flexible Automation and Intelligent Manufacturing, FAIM2017, 27-30 June 2017, Modena, Italy
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