Analytics Capability and Firm Performance in Supply Chain Organizations: The Role of Employees’ Analytics Skills
Abstract
:1. Introduction
2. Theoretical Background and Literature Review
2.1. Organizational Information Processing Theory (OIPT)
2.2. Supply Chain Integration
2.3. Analytics Capability
3. Research Model and Hypotheses
3.1. Supply Chain Process Integration and Analytics Capability
3.2. Analytics Capability and Firm Performance
3.3. The Role of Employees’ Analytics Skills
4. Methodology
5. Data Analysis and Results
5.1. Measurement Model
5.2. Structural Model
5.3. Post-Hoc Analysis
5.3.1. Control Variable Effects
5.3.2. Interaction Effect
6. Discussion
6.1. Implications for Research and Practice
6.2. Limitations and Future Research
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type of Article | Study | Context/Key Question | Key Findings |
---|---|---|---|
Empirical-Survey | [34] | Big Data Analytics (BDA) capability/impact of BDA capability on organizational outcome | BDA capabilities positively influence organizational outcomes |
[20] | Supply chain management/examining association between operational visibility and analytics capability | Supply chain visibility increases analytics capability. Analytics capability improves operational performances, especially for firms that are more flexible | |
[38] | Understanding factors influencing firms’ intention to use business analytics | Security concerns and risk perceptions are deterrents of analytics use; organizational innovation capabilities are important in leading to analytics use. | |
[39] | Exploring the relationships between analytics capabilities and analytics investment decision | Firms that invest in analytics have higher levels of analytics capabilities, are larger, and are in less-competitive industries. | |
[40] | Studying the influence of big data decision-making capabilities on decision-making quality among Chinese firms. | Leadership, talent management, technology, and organizational culture significantly influence big data decision-making capability. | |
[45] | Civil and military organizations engaged in disaster relief operations/understanding effect of big data analytics capability on trust and collaborative performance. | Big data analytics capability positively impacts swift trust and collaborative performance. | |
[46] | Empirically testing the capability framework identified by Cosic et al. [47] | Strong positive correlation exists between enhanced business analytics | |
Conceptual-Literature Review | [36] | Supply chain management/examining misalignment between the scholarship and practical managers’ needs | Organizations need to have a strategic plan to utilize business analytics; this plan involves cultural change. |
[43] | Supply chain management/impact of big data on sustainability | It is expected that big data analytics positively influence the environmental practices of the firms. | |
[44] | Supply chain management/understanding big data analytics in big data-driven supply chains and the role of performance measures and metrics | The findings show two possible categories for performance measures and metrics that are applicable to big data-driven supply chains; they propose a framework for big data-driven supply chains performance measurement systems. | |
[24] | Supply chain management/studying data-driven sustainable agriculture supply chain | Proposes a framework that can be used in agri-food supply chains; supply chain visibility is found to be among the main driving forces for developing analytics capability. | |
Conceptual-Case Study | [37] | Proposing a comprehensive theoretical framework for business analytics and its impacts on performance | The findings provide a solution (framework) for firms that are overwhelmed by data and/or are struggling to benefit from data. |
Construct | Items | Loadings | Developed from |
---|---|---|---|
Supply chain process Integration | Product flow integration (Mean: 5.380, SD:1.107): | [29] | |
1. Inventory holdings are minimized across the supply chain. | 0.717 + | ||
2. Supply chain wide inventory is jointly managed with suppliers and logistic partners. | 0.857 + | ||
3. Suppliers and logistics partners deliver products and materials just in time. | 0.851 + | ||
Financial flow integration (Mean: 5.405, SD: 1.159): | |||
1. Account Receivable processes are automatically triggered when we ship to our customers. | 0.812 + | ||
2. Account Receivable processes are automatically triggered when we receive supplies from our suppliers. | 0.894 + | ||
Information flow integration (Mean: 5.401, SD:1.076): | |||
1. Production and delivery schedules are shared across the supply chain | 0.848 + | ||
2. Performance metrics are shared across the supply chain | 0.757 + | ||
3. Supply chain members collaborate in arriving at demand forecasts | 0.773 + | ||
4. Our downstream partners share their actual sales data with us * | 0.555 +* | ||
5. Inventory data are visible at all steps across the supply chain | 0.752 + | ||
Analytics capability Mean:5.433 SD:1.044 | 1. We can use advanced analytical techniques (e.g., simulation, optimization, regression) to improve decision making | 0.777 | [20] |
2. We can easily combine and integrate information from many data sources for use in our decision making | 0.800 | ||
3. We can use data visualization techniques (e.g., dashboards) to assist users or decision-makers in understanding complex information | 0.799 | ||
4. Our dashboards can give us the ability to decompose information to help root cause analysis and continuous improvement | 0.771 | ||
5. We can deploy dashboard applications/information to our managers’ communication devices (e.g., smart phones, computers) | 0.772 | ||
Analytics skills Mean:5.801 SD:1.078 | 1. Our data analytics users possess a high degree of data analytics expertise | 0.885 | [56] |
2. Our data analytics users are knowledgeable when it comes to utilizing such tools | 0.921 | ||
3. Our data analytics users are skilled at using data analytics tools | 0.894 | ||
Firm performance Mean:5.336 SD:1.106 | 1. Average return on investment | 0.888 | [49,57] |
2. Average profit | 0.847 | ||
3. Average return on sales | 0.822 | ||
4. Average market share growth | 0.838 | ||
5. Average sales volume growth | 0.823 | ||
6. Average sales (in dollars) growth | 0.840 |
Number | Percentage | |
---|---|---|
Annual sales revenue | ||
Under USD 10 million | 48 | 20% |
USD 10-USD 50 million | 78 | 32.5% |
USD 50-USD 100 million | 80 | 33.3% |
Over USD 100 million | 34 | 14.2% |
Number of employees | ||
0–100 | 32 | 13.3% |
100–1000 | 104 | 43.3% |
1000–5000 | 78 | 32.5% |
5000+ | 26 | 10.8% |
Industry | ||
High tech | 192 | 80% |
Low tech | 48 | 20% |
α | CR | AVE | 1. | 2. | 3. | 4. | 5. | 6. | 7. | |
---|---|---|---|---|---|---|---|---|---|---|
1. Firm performance | 0.919 | 0.923 | 0.711 | 0.843 | ||||||
2. Analytics capability | 0.843 | 0.844 | 0.614 | 0.300 | 0.784 | |||||
3. Employees’ analytics skills | 0.883 | 0.893 | 0.810 | 0.444 | 0.526 | 0.900 | ||||
4. Supply chain process integration | - | - | - | 0.229 | 0.700 | 0.445 | - | |||
5. Product flow integration | - | - | - | 0.665 | 0.690 | 0.344 | - | - | ||
6. Financial flow integration | - | - | - | 0.202 | 0.637 | 0.397 | - | 0.665 | - | |
7. Information flow | - | - | - | 0.234 | 0.701 | 0.440 | - | 0.700 | 0.660 | - |
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Farivar, S.; Golmohammadi, A.; Ramirez, A. Analytics Capability and Firm Performance in Supply Chain Organizations: The Role of Employees’ Analytics Skills. Analytics 2022, 1, 1-14. https://doi.org/10.3390/analytics1010001
Farivar S, Golmohammadi A, Ramirez A. Analytics Capability and Firm Performance in Supply Chain Organizations: The Role of Employees’ Analytics Skills. Analytics. 2022; 1(1):1-14. https://doi.org/10.3390/analytics1010001
Chicago/Turabian StyleFarivar, Samira, Amirmohsen Golmohammadi, and Alejandro Ramirez. 2022. "Analytics Capability and Firm Performance in Supply Chain Organizations: The Role of Employees’ Analytics Skills" Analytics 1, no. 1: 1-14. https://doi.org/10.3390/analytics1010001
APA StyleFarivar, S., Golmohammadi, A., & Ramirez, A. (2022). Analytics Capability and Firm Performance in Supply Chain Organizations: The Role of Employees’ Analytics Skills. Analytics, 1(1), 1-14. https://doi.org/10.3390/analytics1010001