Measuring the Innovation Potential of Organizations in Andean Countries and the Applicability of the Capabilities, Results, and Impacts of Innovation Model: A Comparative Approach
Abstract
:1. Introduction
2. Theoretical Background
2.1. Measuring Innovation in the Andean Context
2.2. The CRI Model for Measuring Innovation Potential in Organizations
3. Methodology
3.1. Literature Review
3.2. Selection of Relevant Innovation Measurement Frameworks
3.3. Comparative Analysis for CRI Model Applicability Assessment
4. Results and Discussion
4.1. Bibliometric Analysis
4.2. Evolution of the GII in the CAN
4.3. CRI Applicability Assessment
- The “Measurement Framework” lists the titles of the specific innovation measurement frameworks analyzed, along with the authors and years of publication.
- The “Measurement Components” outlines the key constructs, variables, or dimensions that each framework utilizes to assess innovation. These components represent the aspects that the framework seeks to assess inside an organization’s innovation activities.
- The “Application Sector” indicates the specific industry or organization type for which the respective innovation measurement framework were designed or applied.
- “Similarities with the CRI Model” emphasizes the ways in which the components or focal points of the analyzed frameworks correspond with the constructs of the CRI model (capabilities, results, and impacts). The inclusion of variables pertaining to the factors of information sources (C1), financing sources (C2), innovation activities (C3), innovation objectives (C4), innovation results (R1), and innovation impacts (I1), as delineated in the CRI model, is indicated. This element may also mention broader conceptual similarities.
- “Differences with the CRI Model” details the aspects in which the selected frameworks diverge from the CRI model. Common differences include a lack of evaluation of the CRI model’s factors or a different conceptualization or treatment of culture.
4.3.1. Colombia
4.3.2. Peru
4.3.3. Bolivia
4.3.4. Summary of Key Findings of the CRI’s Applicability Assessment in CAN Countries
4.4. Comparative Analysis of Methodologies Applied in the Selected Measurement Frameworks
5. Final Reflections
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Description of Selection Criteria | Application in Comparison with CRI Model |
---|---|
Contextual relevance: The measurement frameworks are influenced by cultural, socioeconomic, or broader contextual factors. | Allows for the determination of whether alternative models incorporate the socio-cultural context pertinent to the Andean region, which is essential for evaluating the applicability of the CRI model in the CAN. |
Construct alignment: The theoretical significance of the measurement components within the measurement frameworks aligns with the factors of the CRI model (capabilities, results, impacts). | Facilitates the identification of whether alternative framewoks assess comparable underlying dimensions of innovation potential as the CRI model. |
Analogous operationalization: The measurement frameworks integrate comparable macro measurement models or exhibit similarities with the components of the CRI model. | Facilitates the evaluation of whether various measurement frameworks employ observable measures comparable with the constructs or concepts included within the CRI model. |
Methodological rigor and empirical validation: The measurement frameworks clearly delineate the methodologies employed in their development and the processes used for empirical validation. | Indicates the quality and reliability of the measurement attributes of the frameworks being compared to the CRI model. |
Measurement Framework | Measurement Components | Application Sector | Similarities with the CRI Model | Differences with the CRI Model |
---|---|---|---|---|
Innovation capabilities (Velazquez-Cazares et al., 2021) | Innovation sources (strategy, knowledge management, management of innovative projects, innovation objectives); innovation enablers (internal and external enablers) | Agriculture | Model particularities Considers innovation capabilities to be essential for business innovation. CRI model factor inclusion Includes specific variables related to information sources (C1), innovation activities (C3), financing sources (C2), and innovation results (R1). | Model particularities Includes culture as a separate factor and not transversally like the CRI model. Defines “innovation objectives” differently, focusing on the types of innovation outputs (results). Differentiates resources into financial and other kinds. CRI model factor inclusion Does not evaluate innovation objectives (C4) or innovation impacts (I1). |
Technological innovation capabilities (Serrano García et al., 2017) | R&D, production, strategic planning, organizational relationship, organizational learning, resources management, and marketing | ICT services in academic institutions | Model particularities Organizational innovation capabilities are seen as inputs for innovation. CRI model factor inclusion Include some variables related to information sources (C1), innovation activities (C3), and innovation objectives (C4). | Model particularities Includes culture as a specific variable and not transversally like the CRI model. CRI model factor inclusion Does not evaluate the results (R1) and impacts (I1) of innovation as outputs of innovation. |
Innovation firm performance (Acosta-Prado et al., 2021) | Innovation capabilities and knowledge management | New Technology-based Firms (NTBFs) | Model particularities Framework design includes micro-environment (internal environment) and macro-environment (competitive environment). CRI model factor inclusion Includes variables related to information sources (C1), innovation objectives (C4), and innovation activities (C3). | Model particularities Focuses on factors that gives competitive advantages. CRI model factor inclusion Does not evaluate financing sources (C2), innovation results (R1), and innovation impacts (I1). |
Innovation capabilities (Arango et al., 2015) | Innovation strategy, implementation strategy, innovation culture, innovation value chain, and innovation results | Manufacturing | Model particularities Considers innovation capabilities to be determinants of innovation performance measured through their innovation results (tangible consequences of innovation processes). CRI model factor inclusion Includes some variables related to innovation activities (C3), innovation objectives (C4), and innovation results (R1) | Model particularities Includes culture as a specific variable and not transversally like the CRI model. CRI model factor inclusion Does not evaluate information sources (C1), financing sources (C2), and innovation impacts (I1). |
Measurement Framework | Measurement Components | Application Sector | Similarities with the CRI Model | Differences with the CRI Model |
---|---|---|---|---|
“Absorptive capacity impact” (Ortigueira-Sánchez et al., 2020) | Innovations (products, services, etc.), acquisition of external knowledge, internal R&D, employee training, innovation subsidy, firm age and firm size | Manufacturing and services | Model particularities Also evaluates innovation perception, specifically emphasizing management viewpoints on the capacity to assimilate innovation. CRI model factor inclusion Include several variables related to information sources (C1), financing sources (C2), innovation activities (C3), and innovation results (R1). | Model particularities Focuses on technological dimensions of innovation absorption rather than overall innovation potential. CRI model factor inclusion Lacks analysis of innovation objectives (C4) and innovation impacts (I1). |
“Innovation and organization performance” (Seclen-Luna et al., 2023) | Technological innovations (products, services and process), non-technological innovations (organizational and market), and firm performance | Manufacturing and KIBSs (Knowledge-Intensive Business Services) | Model particularities Analyzes innovation results as innovation outputs. CRI model factor inclusion Includes, particularly, variables related to innovation results (R1) and some variables related to innovation activities (C3) and innovation objectives (C4), and only the economic dimension of innovation impacts (I1). | Model particularities Concentrates only on innovation results and lacks an analysis of innovation capabilities. CRI model factor inclusion Does not evaluate information sources (C1) and financing sources (C2). |
“Innovation capabilities and competitive advantage” (Gómez-Prado et al., 2022) | Product innovation, marketing intelligence, and pricing (innovation capabilities), and competitive advantage and international performance (innovation outcomes) | Active startups in manufacturing (food, beauty products, beverages) | Model particularities The macro measurement model is comparable to the CRI model. CRI model factor inclusion Includes variables related to all factors of innovation capabilities (C1, C2, C3, and C4) and includes some variables similar to innovation results (R1) and impacts (I1). | Model particularities The macro measurement model is comparable with the CRI, in that is examines three innovation capabilities (product innovation, marketing intelligence, and pricing capability) as determinants of innovation outcomes (competitive advantage and international performance). CRI model factor inclusion Focuses on innovation capabilities and outcomes related to competitive innovation and organizational performance. |
Measurement Framework | Measurement Components | Application Sector | Similarities with the CRI Model | Differences with the CRI Model |
---|---|---|---|---|
Organizational learning capability (Verduguez Vargas et al., 2022) | Entrepreneurship orientation and innovation performance | Multi-sectoral mix | Model particularities Recognized the influences of certain organizational learning capabilities (innovation inputs) on innovation performance (innovation outcomes). CRI model factor inclusion Certain variables resemble those incorporated in the CRI model, such as innovation capabilities (C1, C2, C3, C4), innovation results (R1), and innovation impact (I1). | Model particularities Treats innovation performance as a secondary outcome, not the central focus of measurement. The innovation environment (context) is included as a variable, while in the CRI model, it is addressed transversally. CRI model factors inclusion The focus of the variables is on innovation performance and entrepreneurial orientation. |
Impact and Results of Innovation Activities (Foronda, 2019) | Innovation inputs, innovation outputs, and productivity | Manufacturing and services | Model particularities Focusing on innovation activities and innovation objectives as inputs to evaluate labor productivity in innovation processes. CRI model factor inclusion Incorporates certain variables in innovation inputs related to innovation activities (C3), innovation objectives (C4), information sources (C1), and innovation results (R1). | Model particularities Lacks a comprehensive framework for assessing innovation impacts. Does not considerate the incorporation of contextual analysis. CRI model factor inclusion Does not explicitly consider information sources (C1) or innovation impacts (I1). Does not delineate variables for financing sources (C2), although it incorporates certain features of innovation financing in a transversal manner. |
Country | Key Findings of Innovation Measurement Frameworks Compared to CRI Model |
---|---|
Colombia | Acknowledge innovation capabilities (C1, C2, C3, and C4) and results (R1) as key drivers of innovation. Lack comprehensive evaluation of innovation results (R1) and innovation impacts (I1). Treat culture differently than the CRI model’s transversal approach (usually as a separate variable). |
Perú | Emphasize importance of innovation capabilities (C1, C2, C3, and C4) for achieving innovation results (R1). Align with CRI model factors (C1, C2, C3, and C4). Focus on innovation capabilities (particularly in innovation activities (C3) and innovation results (R1)). Limited analysis of innovation impacts (I1). Present a comprehensive macro-conceptual model similar to the CRI model. |
Bolivia | Limited focus on innovation capabilities (C1, C2, C3, and C4) as determinants of innovation results (R1). Lack thorough assessment of innovation impacts (I1) and consideration of all CRI model factors. |
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Morales, V.; Robalino-López, A. Measuring the Innovation Potential of Organizations in Andean Countries and the Applicability of the Capabilities, Results, and Impacts of Innovation Model: A Comparative Approach. Economies 2025, 13, 133. https://doi.org/10.3390/economies13050133
Morales V, Robalino-López A. Measuring the Innovation Potential of Organizations in Andean Countries and the Applicability of the Capabilities, Results, and Impacts of Innovation Model: A Comparative Approach. Economies. 2025; 13(5):133. https://doi.org/10.3390/economies13050133
Chicago/Turabian StyleMorales, Verónica, and Andrés Robalino-López. 2025. "Measuring the Innovation Potential of Organizations in Andean Countries and the Applicability of the Capabilities, Results, and Impacts of Innovation Model: A Comparative Approach" Economies 13, no. 5: 133. https://doi.org/10.3390/economies13050133
APA StyleMorales, V., & Robalino-López, A. (2025). Measuring the Innovation Potential of Organizations in Andean Countries and the Applicability of the Capabilities, Results, and Impacts of Innovation Model: A Comparative Approach. Economies, 13(5), 133. https://doi.org/10.3390/economies13050133