Data models for service failure prediction in supply-chain networks

20 Oct 2018Monika SharmaTristan GlatardEric GelinasMariam TagmoutiBrigitte Jaumard

We aim to predict and explain service failures in supply-chain networks, more precisely among last-mile pickup and delivery services to customers. We analyze a dataset of 500,000 services using (1) supervised classification with Random Forests, and (2) Association Rules... (read more)

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