Social Network Analysis: Applications and New Metrics for Supply Chain Management—A Literature Review
Abstract
:1. Introduction
2. Social Network Analysis in Supply Chain Management
3. Research Methodology
3.1. Question Formulation
3.2. Locating Studies
3.3. Study Selection and Evaluation
3.4. Analysis and Synthesis
4. Results
4.1. Descriptive Analysis
4.2. Qualitative Analysis
4.2.1. Areas of Application
4.2.2. Metrics
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. Main Contributions of Analyzed Articles
Authors | Title | Year | Journal | Main Contributions |
Adami, Verschoore, and Sellitto [29] | Structure and complexity in the six supply chains of the Brazilian wind turbine industry | 2021 | International Journal of Logistics Management | Provides a set of metrics to characterize the structural configuration and complexity of supply chains. |
Ashwood, Pilny, Canfield, Jamila, and Thomson [18] | From Big Ag to Big Finance: a market network approach to power in agriculture | 2022 | Agriculture and Human Values | Network approach to market power as a means to identify corporate financial relationships through network structure, dependency across sectors, and key players (like finance). |
Brinkley, Manser, and Pesci [36] | Growing pains in local food systems: a longitudinal social network analysis of local food marketing in Baltimore County, Maryland, and Chester County, Pennsylvania | 2021 | Agriculture and Human Values | Longitudinal SNA approach to compare the evolution of two local food systems, from growth to decay, providing a new understanding of the social networks behind local food markets. |
Cai, Huang, Tan, Jiang, Zhou, and Lu [15] | Decoding the complexity of large-scale pork supply chain networks in China | 2020 | Industrial Management and Data Systems | Describes and characterizes the nationwide pork supply chain networks in China with large-scale, reliable empirical data. The use of MSC and effective distance can guide the implementation of risk-based control programs for diseases and contamination of PSCNs. |
Copping, Kuchai, Hattam, Paszkiewicz, Albadra, Shepherd, Burat, and Coley [30] | Understanding material and supplier networks in the construction of disaster-relief shelters: the feasibility of using social network analysis as a decision-making tool | 2022 | Journal of Humanitarian Logistics and Supply Chain Management | Represents the first attempt to theorize and empirically investigate supply networks using SNA in a post-disaster reconstruction context. |
Du and Zhang [37] | Supply network position, digital transformation, and innovation performance: Evidence from listed Chinese manufacturing firms | 2022 | PLoS ONE | Analyzes the impact of supply chain relationships and metrics on innovation performance. |
Foti and Timpanaro [23] | Relationships, sustainability, and agri-food purchasing behavior in farmer markets in Italy | 2021 | British Food Journal | Demonstrates how alternative food systems can become a useful model for large enterprises that are committed to rebuilding their business strategy to overcome the current crisis. |
Jankovic-Zugic, Medic, Pavlovic, Todorovic, and Rakic [17] | Servitization 4.0 as a Trigger for Sustainable Business: Evidence from the Automotive Digital Supply Chain | 2023 | Sustainability (Switzerland) | Investigates the relationships between deliveries of digital services in the supply chains of the automotive industry. |
Kang and Oh [10] | The configuration and evolution of the Korean automotive supply network: an empirical study based on k-core network analysis | 2023 | Operations Management Research | Presents the k-core, a new method to analyze a network’s structure, confirming the structure and evolution of the actual supply network from a macroscopic perspective, and identifying key suppliers that can directly or indirectly affect the company’s performance. |
Kazemian, Torabi, Zobel, Li, and Baghersad [19] | A multi-attribute supply chain network resilience assessment framework based on SNA-inspired indicators | 2022 | Operational Research | Proposes a framework to assess the resilience of a supply chain at the network level based on quantifying the supply chain networks’ structural factors and their relationships to different resilience strategies. Adopts network factors from SNA literature. |
Laari, Wetzel, Töyli, and Solakivi [20] | Leveraging supply chain networks for sustainability beyond corporate boundaries: Explorative structural network analysis | 2022 | Journal of Cleaner Production | Investigates the structural characteristics of node- (company) and network-level networks and their implications for sustainability. |
Lau, Kajikawa, and Sharif [38] | The roles of supply network centralities in firm performance and the moderating effects of reputation and export-orientation | 2020 | Production Planning and Control | Explores how supply network degree, closeness, and betweenness centralities affect companies’ performances, and the moderating effects of organizational reputation. |
Le, Oláh, and Pakurár [21] | Network Interactions of Global Supply Chain Members | 2021 | Journal of Business Economics and Management | Quantifies the cooperation of each member of the supply chain, and evaluates and visualizes their effects within information-sharing systems to support policymakers in making their decisions regarding supply chain management. |
Marcinkowski [35] | Humanitarian Actors’ Cooperation Network in the Social Sustainability Context-Evidence from Poland | 2022 | Sustainability | The research conducted among Polish humanitarian organizations suggests the possibility of integrating and synchronizing activities during humanitarian crises. |
Marques and Manzanares [39] | Towards social network metrics for supply network circularity | 2023 | International Journal of Operations and Production Management | Uses social network analysis (SNA) to depict how the shift from linear to circular not only leads to higher rates of resource economy, repair, and recycling but also reshapes governance dynamics and supply networks. |
Parviziomran and Elliot [40] | The effects of bargaining power on trade credit in a supply network | 2023 | Journal of Purchasing and Supply Management | Develops a multi-tier supply network model, rooted in social network theory, to evaluate the effect of bargaining power on trade credit and to track the effect of buyers’ trade credit on suppliers’ trade credit. Applies social network analysis to measure companies’ bargaining power in the supply network of Hennes & Mauritz AB (H&M, the Swedish clothing retailer). |
Pedroza-Gutiérrez and Hernández [41] | Social Networks and Supply Chain Management in Fish Trade | 2020 | SAGE Open | Builds a theoretical framework to analyze the elements of network structure and the relationships within a seafood supply chain. Provides new arguments for the relationship between the pattern of interrelationships and the efficiency of a supply chain. Emphasizes the need to combine quantitative and qualitative analyses to understand and explain real-life supply networks. |
Schlund, Schulte, and Sprenger [32] | The who is who of a hydrogen market ramp-up: A stakeholder analysis for Germany | 2022 | Renewable and Sustainable Energy Reviews | Conducts a stakeholder analysis for Germany with a focus on the market ramp-up period. Interviews with hydrogen experts, literature, and stakeholders from real-world hydrogen research and demonstration projects are analyzed with qualitative content analysis and social network analysis. Stakeholder groups are identified and defined accordingly. The results indicate that established stakeholders’ roles will significantly change in a future hydrogen market. |
Seiler, Papanagnou, and Scarf [22] | The relationship between financial performance and the position of businesses in supply chain networks | 2020 | International Journal of Production Economics | Investigates how the network position of organizations in an extended supply chain network impacts on their financial performance. |
Shaharudin, Fernando [44] | Cold supply chain of leafy green vegetables: a social network analysis approach | 2023 | Journal of Science and Technology Policy Management | Establishes the conceptual indicators based on best practices and outcomes for the cold supply chain. Argues that cold supply chain management and performance should be monitored independently. The theory of technological adoption can be expanded to include the nature of the product as a driver. Establishes cold chain best practices based on a perishable supply chain perspective. |
Shao, Li, Yu, Han, and Meng [34] | Collaborative Evolution Mechanism and Simulation of Construction Waste Recycling Stakeholders Based on Social Network | 2022 | Buildings | Analyzes the factors that influence the use of construction waste, determines the key influence factors and the stakeholders in the process of using this waste resource, and applies social network analysis method to identify core stakeholders. |
Shen, Chang, Kim, and Julian [33] | Challenges to maintaining disaster relief supply chains in island communities: disaster preparedness and response in Honolulu, Hawai’i | 2022 | Natural Hazards | Applies a mixed-methods approach to investigate the challenges of maintaining disaster relief supply chains in Honolulu in the face of emerging risks. |
Simpson, Tacheva, Kao [25] | Semi-directedness: New network concepts for supply chain research | 2023 | International Journal of Production Economics | Characterizes complex supply network relationships, by proposing that the ontology of network analysis be expanded to recognize the new concept of a semi-directed network. It demonstrates the validity and the value of this construct through a range of applications using 21 years of industrial data. |
Tang, Wang, Miao, and Zhang [16] | Managing Cost-Based Risks in Construction Supply Chains: A Stakeholder-Based Dynamic Social Network Perspective | 2020 | Complexity | Employs social network analysis (SNA) to explore the key indicators of cost-related risks within the supply chain and identify the key risks and stakeholders across four project stages: the planning start-up stage, the design preparation stage, the construction period, and the operations and maintenance period. |
Van Der Ham, Van Merode, Ruwaard, and Van Raak [31] | Identifying integration and differentiation in a Hospital’s logistical system: a social network analysis of a case study | 2020 | BMC Health Services Research | Reveals the network structure of a hospital. The cross-functional collaboration, the integration found, and the position of managers, coordinators, nurses, and doctors. It suggest a possible gap between organizational perspectives in hospitals and reality. Sets a basis for further research that should focus on the relation between network structure and performance, on how integration is achieved, and in what way the concepts and social network analysis of organization theory could be used in conjunction with each other. |
Wallmann and Gerschberger [42] | The association between network centrality measures and supply chain performance: The case of distribution networks | 2021 | Procedia Computer Science | Confirms that network theory applies to distribution networks, i.e., that network structure influences the performance of network nodes. |
Wang, Gong, and Liu [28] | Risk Network Evaluation of Prefabricated Building Projects in Underdeveloped Areas: A Case Study in Qinghai | 2022 | Sustainability | Develops a risk network of PBPs, and nine core risk factors and five key risk relationships are identified. Risk effect detection reveals the effectiveness of risk response strategies. |
Yan, Wang, Zhao, and Zhang [12] | Spatial structure and influencing factors of regional city supply networks in manufacturing: A case study of Shandong, China | 2023 | Frontiers in Environmental Science | Explores the spatial characteristics of city supply networks within Shandong using the indexes of degree centrality, closeness centrality, betweenness centrality, eigenvector centrality, and a community detection algorithm using the social network analysis (SNA) method and ArcGIS software. Investigates the factors influencing city supply networks through the correlation and regression of the quadratic assignment procedure (QAP). |
Yuan, Li Z, Li X, and Luo [43] | Managing stakeholder-associated risks and their interactions in the life cycle of prefabricated building projects: A social network analysis approach | 2021 | Journal of Cleaner Production | Employs social network analysis (SNA) to establish a risk network throughout the PBP life cycle to prioritize stakeholder-associated risks and risk interactions. Stakeholder-associated risks in the life cycle of PBPs were investigated based on a systematic literature review and interviews with critical stakeholders. |
Zhou, Yip, Ren, and To [24] | An Interaction Investigation of the Contributing Factors to the Bullwhip Effect Using a Bi-Level Social Network Analysis Approach | 2020 | IEEE Access | Identifies the factors influencing the bullwhip effect in a supply chain and the interactive relationships among them. Establishes a bi-level bullwhip effect analysis model to evaluate the causes of the bullwhip effect at different levels by using a social network analysis approach. |
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Item | Description |
---|---|
Authors | Authors of the article |
Title | Title of the article |
Year | Year of publication |
Source Title | Journal in which the article was published |
Country | Country of the 1st author’s affiliation |
Main focus | Main purpose of the study carried out in the article |
Sector | Economic activity sector |
Data source | Source of data used (primary, secondary) |
Time horizon | Cross-sectional/Longitudinal |
SNA metrics | SNA metrics applied in the article |
Software | Software used to apply SNA methodology in the context of SCM |
Network | Node | Time Horizon | |||||
---|---|---|---|---|---|---|---|
Authors | Network Density | Network Centralization | Degree Centrality | Closeness Centrality | Betweenness Centrality | CS a | L b |
Adami, Verschoore, and Sellitto [29] | X | X | X | ||||
Ashwood, Pilny, Canfield, Jamila, and Thomson [18] | X | X | X | X | |||
Brinkley, Manser, and Pesci [36] | X | X | |||||
Cai, Huang, Tan, Jiang, Zhou, and Lu [15] | X | X | X | X | X | ||
Copping, Kuchai, Hattam, Paszkiewicz, Albadra, Shepherd, Burat, and Coley [30] | X | X | X | X | |||
Du and Zhang [37] | X | X | |||||
Foti and Timpanaro [23] | X | X | X | X | X | ||
Van Der Ham, Van Merode, Ruwaard, and Van Raak [31] | X | X | X | ||||
Jankovic-Zugic, Medic, Pavlovic, Todorovic, and Rakic [17] | X | X | X | X | |||
Kang and Oh [10] | X | X | |||||
Kazemian, Torabi, Zobel, Li, and Baghersad [19] | X | X | X | ||||
Laari, Wetzel, Töyli, and Solakivi [20] | X | X | X | X | X | ||
Lau, Kajikawa, and Sharif [38] | X | X | X | X | |||
Le, Oláh, and Pakurár [21] | X | X | X | ||||
Marcinkowski [35] | X | X | X | X | X | ||
Marques and Manzanares [39] | X | X | X | ||||
Parviziomran and Elliot [40] | X | X | |||||
Pedroza-Gutiérrez and Hernández [41] | X | X | |||||
Schlund, Schulte, and Sprenger [32] | X | X | X | ||||
Seiler, Papanagnou, and Scarf [22] | X | X | X | X | |||
Shao, Li, Yu, Han, and Meng [34] | X | X | X | X | |||
Shen, Chang, Kim, and Julian [33] | X | X | X | ||||
Tang, Wang, Miao, and Zhang [16] | X | X | X | X | |||
Wallmann and Gerschberger [42] | X | X | X | ||||
Wang, Gong, and Liu [28] | X | X | X | ||||
Yan, Wang, Zhao, and Zhang [12] | X | X | X | X | |||
Yuan, Li Z, Li X, and Luo [43] | X | X | X | X | |||
Zhou, Yip, Ren, and To [24] | X | X | X | X | |||
Total | 11 | 2 | 21 | 13 | 22 | 20 | 8 |
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Bento, A.I.; Cruz, C.; Fernandes, G.; Ferreira, L.M.D.F. Social Network Analysis: Applications and New Metrics for Supply Chain Management—A Literature Review. Logistics 2024, 8, 15. https://doi.org/10.3390/logistics8010015
Bento AI, Cruz C, Fernandes G, Ferreira LMDF. Social Network Analysis: Applications and New Metrics for Supply Chain Management—A Literature Review. Logistics. 2024; 8(1):15. https://doi.org/10.3390/logistics8010015
Chicago/Turabian StyleBento, Ana Isabel, Carla Cruz, Gabriela Fernandes, and Luís Miguel D. F. Ferreira. 2024. "Social Network Analysis: Applications and New Metrics for Supply Chain Management—A Literature Review" Logistics 8, no. 1: 15. https://doi.org/10.3390/logistics8010015
APA StyleBento, A. I., Cruz, C., Fernandes, G., & Ferreira, L. M. D. F. (2024). Social Network Analysis: Applications and New Metrics for Supply Chain Management—A Literature Review. Logistics, 8(1), 15. https://doi.org/10.3390/logistics8010015