Home > Research > Publications & Outputs > Digital Innovation, Data Analytics, and Supply ...

Links

Text available via DOI:

View graph of relations

Digital Innovation, Data Analytics, and Supply Chain Resiliency: A Bibliometric-based Systematic Literature Review

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

Digital Innovation, Data Analytics, and Supply Chain Resiliency: A Bibliometric-based Systematic Literature Review. / Iftikhar, Anas; Ali, Imran; Arslan, Ahmed et al.
In: Annals of Operations Research, Vol. 333, No. 2-3, 29.02.2024, p. 825-848.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Vancouver

Iftikhar A, Ali I, Arslan A, Tarba S. Digital Innovation, Data Analytics, and Supply Chain Resiliency: A Bibliometric-based Systematic Literature Review. Annals of Operations Research. 2024 Feb 29;333(2-3):825-848. Epub 2022 May 19. doi: 10.1007/s10479-022-04765-6

Author

Iftikhar, Anas ; Ali, Imran ; Arslan, Ahmed et al. / Digital Innovation, Data Analytics, and Supply Chain Resiliency : A Bibliometric-based Systematic Literature Review. In: Annals of Operations Research. 2024 ; Vol. 333, No. 2-3. pp. 825-848.

Bibtex

@article{c098f6a373d44614b9105f9f99d9e8db,
title = "Digital Innovation, Data Analytics, and Supply Chain Resiliency: A Bibliometric-based Systematic Literature Review",
abstract = "In recent times, the literature has seen considerable growth in research at the intersection of digital innovation, data analytics, and supply chain resilience. While the number of studies on the topic has been burgeoning, due to the absence of a comprehensive literature review, it remains unclear what aspects of the subject have already been investigated and what are the avenues for impactful future research. Integrating bibliometric analysis with a systematic review approach, this paper offers the review of 262 articles at the nexus of innovative technologies, data analytics, and supply chain resiliency. The analysis uncovers the critical research clusters, the evolution of research over time, knowledge trajectories and methodological development in the area. Our thorough analysis enriches contemporary knowledge on the subject by consolidating the dispersed literature on the significance of innovative technologies, data analytics and supply chain resilience thereby recognizing major research clusters or domains and fruitful paths for future research. The review also helps improve practitioners{\textquoteright} awareness of the recent research on the topic by recapping key findings of a large amount of literature in one place.",
keywords = "Bibliometrics, Data analytics, Digital innovation, Digital technology, Supply chain resilience",
author = "Anas Iftikhar and Imran Ali and Ahmed Arslan and Shlomo Tarba",
year = "2024",
month = feb,
day = "29",
doi = "10.1007/s10479-022-04765-6",
language = "English",
volume = "333",
pages = "825--848",
journal = "Annals of Operations Research",
issn = "0254-5330",
publisher = "Springer",
number = "2-3",

}

RIS

TY - JOUR

T1 - Digital Innovation, Data Analytics, and Supply Chain Resiliency

T2 - A Bibliometric-based Systematic Literature Review

AU - Iftikhar, Anas

AU - Ali, Imran

AU - Arslan, Ahmed

AU - Tarba, Shlomo

PY - 2024/2/29

Y1 - 2024/2/29

N2 - In recent times, the literature has seen considerable growth in research at the intersection of digital innovation, data analytics, and supply chain resilience. While the number of studies on the topic has been burgeoning, due to the absence of a comprehensive literature review, it remains unclear what aspects of the subject have already been investigated and what are the avenues for impactful future research. Integrating bibliometric analysis with a systematic review approach, this paper offers the review of 262 articles at the nexus of innovative technologies, data analytics, and supply chain resiliency. The analysis uncovers the critical research clusters, the evolution of research over time, knowledge trajectories and methodological development in the area. Our thorough analysis enriches contemporary knowledge on the subject by consolidating the dispersed literature on the significance of innovative technologies, data analytics and supply chain resilience thereby recognizing major research clusters or domains and fruitful paths for future research. The review also helps improve practitioners’ awareness of the recent research on the topic by recapping key findings of a large amount of literature in one place.

AB - In recent times, the literature has seen considerable growth in research at the intersection of digital innovation, data analytics, and supply chain resilience. While the number of studies on the topic has been burgeoning, due to the absence of a comprehensive literature review, it remains unclear what aspects of the subject have already been investigated and what are the avenues for impactful future research. Integrating bibliometric analysis with a systematic review approach, this paper offers the review of 262 articles at the nexus of innovative technologies, data analytics, and supply chain resiliency. The analysis uncovers the critical research clusters, the evolution of research over time, knowledge trajectories and methodological development in the area. Our thorough analysis enriches contemporary knowledge on the subject by consolidating the dispersed literature on the significance of innovative technologies, data analytics and supply chain resilience thereby recognizing major research clusters or domains and fruitful paths for future research. The review also helps improve practitioners’ awareness of the recent research on the topic by recapping key findings of a large amount of literature in one place.

KW - Bibliometrics

KW - Data analytics

KW - Digital innovation

KW - Digital technology

KW - Supply chain resilience

U2 - 10.1007/s10479-022-04765-6

DO - 10.1007/s10479-022-04765-6

M3 - Journal article

VL - 333

SP - 825

EP - 848

JO - Annals of Operations Research

JF - Annals of Operations Research

SN - 0254-5330

IS - 2-3

ER -