Big Data Analytics and Machine Learning in Supply Chain 4.0: A Literature Review
Abstract
:1. Introduction
- LRQ 1 What are the advantages of using big data analytics and machine learning in SC 4.0?
- LRQ 2 What are the challenges with using big data analytics and machine learning in SC 4.0?
- LRQ 3 In which areas of SC 4.0 is there the greatest need to apply big data analysis and machine learning techniques?
- LRQ 4 What machine learning or big data analysis techniques are used within SC 4.0? Are there any references to nonparametric methods?
2. Materials and Methods
- Title: title of the publication.
- First author: first author of the publication.
- List of authors: all authors who contributed to the publication.
- Year of publication: the year in which the paper was published.
- Type of contribution: whether theoretical or practical, whether focused on a theoretical or practical issue.
- Research methodology: the methodology used to achieve the research aim, such as literature review, case study, or survey.
- Positive impact of big data analytics and machine learning: we considered the positive aspects mentioned by the authors related to the application of big data analytics and machine learning in SC 4.0.
- Challenges of big data analytics and machine learning: we considered the challenges and barriers mentioned by the authors related to the application of big data analytics and machine learning in SC 4.0.
- Area of application: we collected information about the fields of SC 4.0 in which big data analytics and machine learning have been successfully applied.
- Data sources: type of data sources, i.e., internal, external, or both.
- Data type: types of data commonly dealt with in SC 4.0, e.g., structured, semistructured, or unstructured.
- Data distribution: we collected information about the distribution of data typically found in SC 4.0 (normal, non-normal, unknown, etc.).
- Big data analysis techniques: we noted which big data analysis techniques are most commonly found in SC 4.0.
- Machine learning techniques: we noted which machine learning techniques are most commonly found in SC 4.0.
- Non-parametric methods: we noted which nonparametric methods, if any, are applied in SC 4.0.
3. Results
3.1. Descriptive Statistics
3.2. Analysis of the Papers
4. Discussion
4.1. Knowledge Gaps
4.2. Nonparametric Statistics
4.3. Sentiment Analysis and Clustering
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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Barzizza, E.; Biasetton, N.; Ceccato, R.; Salmaso, L. Big Data Analytics and Machine Learning in Supply Chain 4.0: A Literature Review. Stats 2023, 6, 596-616. https://doi.org/10.3390/stats6020038
Barzizza E, Biasetton N, Ceccato R, Salmaso L. Big Data Analytics and Machine Learning in Supply Chain 4.0: A Literature Review. Stats. 2023; 6(2):596-616. https://doi.org/10.3390/stats6020038
Chicago/Turabian StyleBarzizza, Elena, Nicolò Biasetton, Riccardo Ceccato, and Luigi Salmaso. 2023. "Big Data Analytics and Machine Learning in Supply Chain 4.0: A Literature Review" Stats 6, no. 2: 596-616. https://doi.org/10.3390/stats6020038
APA StyleBarzizza, E., Biasetton, N., Ceccato, R., & Salmaso, L. (2023). Big Data Analytics and Machine Learning in Supply Chain 4.0: A Literature Review. Stats, 6(2), 596-616. https://doi.org/10.3390/stats6020038