Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data

In the context of today ’s pattern of globalization and a huge amount of information, a smart supply management chain is required. Naturally, statistics and operations research are used for optimizing supply and demand objectives. However, the new context brings out new opportunities at descriptive,...

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Main Authors: El-Khchine Radouane, Amar Amine, Guennoun Zine Elabidine, Bensouda Charaf, Laaroussi Youness
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201820000015
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spelling doaj-3d52cf2676434a4d9cac13c780abea432021-04-02T10:43:15ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-012000001510.1051/matecconf/201820000015matecconf_iwtsce2018_00015Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ dataEl-Khchine Radouane0Amar Amine1Guennoun Zine Elabidine2Bensouda Charaf3Laaroussi Youness4Ibn Tofail University, Department of MathematicsMohamed V University, Department of MathematicsMohamed V University, Department of MathematicsIbn Tofail University, Department of MathematicsMohamed V University, Department of MathematicsIn the context of today ’s pattern of globalization and a huge amount of information, a smart supply management chain is required. Naturally, statistics and operations research are used for optimizing supply and demand objectives. However, the new context brings out new opportunities at descriptive, predictive and prescriptive levels for supply chain network design, logistics and distribution and strategic sourcing. The key question is still how to capture and to use information. One striking example can be taken from social media, where their use allow to gain insight into the perception of consumers and to capture a real time overview of consumer reactions, regarding one or more specific events. In this regard, different modern approaches, such as IoT or Quantum neural network, are developed. In the same line of thought, we propose an analytic approach, based on KNN, Logistic Regression and SVM with the use of Twitter data in chicken supply chain management. Results identify the main concerns related to chicken products and allow to the development of a consumer-centric supply chain. The proposed approach can be extended to other topics such as anomaly detection and codification of customer intelligence.https://doi.org/10.1051/matecconf/201820000015
collection DOAJ
language English
format Article
sources DOAJ
author El-Khchine Radouane
Amar Amine
Guennoun Zine Elabidine
Bensouda Charaf
Laaroussi Youness
spellingShingle El-Khchine Radouane
Amar Amine
Guennoun Zine Elabidine
Bensouda Charaf
Laaroussi Youness
Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
MATEC Web of Conferences
author_facet El-Khchine Radouane
Amar Amine
Guennoun Zine Elabidine
Bensouda Charaf
Laaroussi Youness
author_sort El-Khchine Radouane
title Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
title_short Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
title_full Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
title_fullStr Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
title_full_unstemmed Machine Learning for Supply Chain’s Big Data: State of the art and application to Social Networks’ data
title_sort machine learning for supply chain’s big data: state of the art and application to social networks’ data
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description In the context of today ’s pattern of globalization and a huge amount of information, a smart supply management chain is required. Naturally, statistics and operations research are used for optimizing supply and demand objectives. However, the new context brings out new opportunities at descriptive, predictive and prescriptive levels for supply chain network design, logistics and distribution and strategic sourcing. The key question is still how to capture and to use information. One striking example can be taken from social media, where their use allow to gain insight into the perception of consumers and to capture a real time overview of consumer reactions, regarding one or more specific events. In this regard, different modern approaches, such as IoT or Quantum neural network, are developed. In the same line of thought, we propose an analytic approach, based on KNN, Logistic Regression and SVM with the use of Twitter data in chicken supply chain management. Results identify the main concerns related to chicken products and allow to the development of a consumer-centric supply chain. The proposed approach can be extended to other topics such as anomaly detection and codification of customer intelligence.
url https://doi.org/10.1051/matecconf/201820000015
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