Adoption of Big Data Analytics and Its Impact on Organizational Performance in Higher Education Mediated by Knowledge Management
Abstract
:1. Introduction
1.1. Conceptual Framework and Hypothesis Development
1.1.1. Adoption of BDA
1.1.2. Relationship between BDA and Organizational Performance in HEIs
1.1.3. Relationship between KM Processes and BDA and Its Mediating Role with Organizational Performance
2. Materials and Methods
2.1. Data Collection and Sample
2.2. Measurements
2.3. Method
3. Results
3.1. Confirmatory Factor Analysis
3.2. Structural Equation Model
4. Discussion: Big Data, and Open Innovation
5. Conclusions
5.1. Theoretical Contributions
5.2. Practical Contributions
5.3. Limitations and Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Constructs | Items |
---|---|
BDA Adoption | BDA 1—Big Data Analytics improves the quality of work |
BDA 2—Big Data Analytics makes work more efficient | |
BDA 3—Big Data Analytics reduces costs | |
BDA 4—Big Data Analytics improves customer service | |
BDA 5—Big Data Analytics attracts new sales to new customers or new markets | |
BDA 6—The adoption of Big Data Analytics identifies new product/service opportunities | |
Complexity | CPX 7—It is difficult to normalize huge amount of unstructured data from multiple sources to make it compatible with structured data |
CPX 8—After analyzing big data, interpretation of results to extract actionable knowledge has been difficult | |
CPX 9—It is difficult to integrate data across multiple incompatible databases among various stakeholders | |
CPX 10—It is difficult to integrate data across silos | |
Compatibility | CMT 11—BDA provides flexible architecture, which is compatible to various analytical tasks |
CMT 12—BDA architecture is compatible with schemas used for storing data | |
CMT 13—BDA is compatible with existing technological architecture | |
CMT 14—It is easy to synchronize external data with organization’s internal data | |
Top management support | TMS 15—Top management has generally been likely to take risks involved in the adoption of the BDA |
TMS 16—Top management is likely to consider the adoption of BDA, which is strategically important | |
TMS 17—Top management have policies that encourage usage of BDA initiatives to streamline, monitor, and maintain enterprise’s data flow | |
TMS 18—Top management have strong positive views on how BDA could transform business | |
Organizational data environment | ODE 19—Big data is fragmented and dispersed among various stakeholders |
ODE 20—Lack of metadata across different silos exists presently | |
ODE 21—Usage of BDA could increase the vulnerability of sensitive data to be exposed | |
ODE 22—A clear agreement on a common set of big data definitions and business rules is required in my organizations | |
Organizational readiness | ORR 23—Lacking capital/financial resources has prevented my company from fully exploit Big Data Analytics |
ORR 24—Lacking needed IT infrastructure has prevented my company from exploiting Big Data Analytics | |
ORR 25—Lacking analytics capability prevented the business form fully exploiting Big Data Analytics | |
ORR 26—Lacking skilled resources prevented the business from fully exploiting Big Data Analytics | |
Competitive pressure | COP 27—Our choice to adopt Big Data Analytics would be strongly influenced by what competitors in the industry are doing |
COP 28—Our firm is under pressure from competitors to adopt Big Data Analytics | |
COP 29—Our firm would adopt Big Data Analytics in response to what competitors are doing | |
External support | EXS 30—Community agencies/vendors can provide required training for Big Data Analytics adoption |
EXS 31—Community agencies/vendors can provide effective technical support for Big Data Analytics adoption | |
EXS 32—Vendors actively market Big Data Analytics adoption | |
Knowledge Acquisition | KWA 33—We hire new employees as a source for acquiring new knowledge |
KWA 34—We provide an open environment to our employees acquire new knowledge | |
KWA 35—We actively observe and adopt the best practice in our sector | |
KWA 36—We continually gather information that is relevant to our operations and activities | |
KWA 37—We list and define the knowledge we possess as well as any unavailable knowledge | |
KWA 38—We obtain knowledge from different sources: customers, partners, and employees | |
Knowledge Dissemination | KWD 39—We share information and knowledge necessary to complete tasks |
KWD 40—We exchange knowledge between employees to achieve our goals with little time and effort | |
KWD 41—We developed information systems, such as intranet and electronic bulletin boards, to share information and knowledge | |
KWD 42—We promote sharing of information and knowledge between team members and the various units | |
KWD 43—Knowledge is shared between supervisors and subordinates | |
Knowledge Utilization | KWU 44—My institution has methods to analyze and critically evaluate knowledge to generate new patterns and knowledge for future use |
KWU 45—My institution applies knowledge to critical competitive needs | |
KWU 46—My institution has mechanism to protect knowledge from inappropriate or illegal use inside and outside of the institution | |
KWU 47—My institution has different methods to further develop knowledge and apply it to new situations | |
KWU 48—My institution has mechanism for filtering, cross-listing, and integrating different sources and types of knowledge | |
Organizational Performance | OPR 49—Customer satisfaction of our organization is better than our key competitors’ |
OPR 50—Quality development of our organization is better than our key competitors’ | |
OPR 51—Responsiveness of our organization is better than our key competitors’ | |
OPR 52—Research productivity of our organization is better than our key competitors’ | |
OPR 53—Research ranking of our organization is better than our key competitors’ |
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Frequency | Percentage | |
---|---|---|
Country/Region of University | ||
Argentina | 32 | 12.1 |
Bolivia | 10 | 3.8 |
Chile | 34 | 12.8 |
Colombia | 42 | 15.8 |
Ecuador | 15 | 5.7 |
Mexico | 33 | 12.5 |
Paraguay | 7 | 2.6 |
Peru | 28 | 10.6 |
Uruguay | 13 | 4.9 |
Venezuela | 9 | 3.4 |
Central America | 24 | 8.9 |
Caribbean | 18 | 6.9 |
Position | ||
Analyst or Data Scientist | 41 | 15.5 |
Assistant | 9 | 3.4 |
Coordinator | 16 | 6 |
Director | 33 | 12.5 |
Researcher | 42 | 15.8 |
Professor | 124 | 46.8 |
Adoption Level | ||
Adopter | 176 | 66.4 |
Non-Adopter | 89 | 33.6 |
Construct | α | Mean |
---|---|---|
BDA Adoption (BDA) | 0.875 | 5.686 |
Complexity (CPX) | 0.917 | 4.433 |
Compatibility (CMT) | 0.865 | 5.242 |
Top Management Support (TMS) | 0.91 | 4.843 |
Organizational Data Environment (ODE) | 0.877 | 5.202 |
Organizational Readiness (ORR) | 0.915 | 4.492 |
Competitive Pressure (COP) | 0.89 | 4.839 |
External Support (EXS) | 0.839 | 5.075 |
Knowledge Acquisition (KWA) | 0.835 | 5.266 |
Knowledge Dissemination (KWD) | 0.866 | 5.504 |
Knowledge Utilization (KWU) | 0.833 | 5.144 |
Organizational Performance (ORP) | 0.902 | 5.254 |
Construct | Item | Loading Factor | CR | AVE |
---|---|---|---|---|
BDA Adoption | BDA1 | 0.860 | 0.919 | 0.695 |
BDA2 | 0.752 | |||
BDA4 | 0.890 | |||
BDA5 | 0.856 | |||
BDA6 | 0.802 | |||
Complexity | CPX7 | 0.863 | 0.919 | 0.738 |
CPX8 | 0.854 | |||
CPX9 | 0.853 | |||
CPX10 | 0.867 | |||
Compatibility | CMT12 | 0.844 | 0.854 | 0.661 |
WCL13 | 0.756 | |||
WCL14 | 0.836 | |||
Top Management Support | TMS15 | 0.806 | 0.913 | 0.725 |
TMS16 | 0.779 | |||
TMS17 | 0.916 | |||
TMS18 | 0.896 | |||
Organizational Data Environment | ODE19 | 0.865 | 0.881 | 0.650 |
ODE20 | 0.796 | |||
ODE21 | 0.800 | |||
ODE22 | 0.761 | |||
Organizational Readiness | ORR23 | 0.854 | 0.915 | 0.729 |
ORR24 | 0.831 | |||
ORR25 | 0.853 | |||
ORR26 | 0.876 | |||
Competitive Pressure | COP27 | 0.846 | 0.891 | 0.731 |
COP28 | 0.882 | |||
COP29 | 0.836 | |||
External Support | EXS30 | 0.849 | 0.840 | 0.638 |
EXS31 | 0.746 | |||
EXS32 | 0.797 | |||
Knowledge Acquisition | KWA34 | 0.782 | 0.880 | 0.595 |
KWA35 | 0.786 | |||
KWA36 | 0.739 | |||
KWA37 | 0.750 | |||
KWA38 | 0.797 | |||
Knowledge Dissemination | KWD39 | 0.781 | 0.858 | 0.601 |
KWD40 | 0.763 | |||
KWD42 | 0.748 | |||
KWD43 | 0.808 | |||
Knowledge Utilization | KWU44 | 0.774 | 0.887 | 0.663 |
KWU45 | 0.846 | |||
KWU47 | 0.818 | |||
KWU48 | 0.817 | |||
Organizational Performance | ORP49 | 0.786 | 0.897 | 0.637 |
ORP50 | 0.825 | |||
ORP51 | 0.883 | |||
ORP52 | 0.768 | |||
ORP53 | 0.719 |
ORR | BDA | CPX | CMT | TMS | ODE | COP | EXS | KWA | KWD | KWU | ORP | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
ORR | 0.854 | |||||||||||
BDA | 0.050 | 0.833 | ||||||||||
CPX | 0.241 | −0.040 | 0.859 | |||||||||
CMT | −0.145 | 0.339 | −0.160 | 0.813 | ||||||||
TMS | −0.221 | 0.116 | 0.004 | 0.402 | 0.851 | |||||||
ODE | 0.389 | 0.183 | 0.305 | −0.091 | 0.040 | 0.806 | ||||||
COP | 0.166 | 0.131 | 0.103 | 0.270 | 0.234 | 0.350 | 0.855 | |||||
EXS | 0.096 | 0.321 | 0.114 | 0.270 | 0.235 | 0.257 | 0.361 | 0.798 | ||||
KWA | −0.116 | 0.239 | −0.143 | 0.353 | 0.278 | 0.083 | 0.247 | 0.232 | 0.771 | |||
KWD | −0.167 | 0.262 | −0.090 | 0.334 | 0.425 | 0.080 | 0.204 | 0.169 | 0.713 | 0.775 | ||
KWU | −0.158 | 0.129 | −0.104 | 0.315 | 0.389 | −0.047 | 0.184 | 0.132 | 0.643 | 0.698 | 0.814 | |
ORP | −0.207 | 0.038 | −0.015 | 0.236 | 0.401 | −0.065 | 0.167 | 0.193 | 0.455 | 0.542 | 0.545 | 0.798 |
Hypothesis | Relationship | Path Coeff | Std. Error | p-Value | Hypothesis |
---|---|---|---|---|---|
H1 | CPX -> BDA | −0.056 | 0.05 | 0.266 | Rejected |
H2 | CMT -> BDA | 0.361 | 0.082 | *** | Accepted |
H3 | TMS -> BDA | −0.019 | 0.051 | 0.713 | Rejected |
H4 | ODE -> BDA | 0.182 | 0.07 | 0.009 * | Accepted |
H5 | ORR -> BDA | 0.017 | 0.047 | 0.717 | Rejected |
H6 | COP -> BDA | −0.051 | 0.057 | 0.371 | Rejected |
H7 | EXS -> BDA | 0.212 | 0.064 | *** | Accepted |
H8 | BDA -> ORP | −0.128 | 0.059 | 0.031 * | Accepted |
H9 | BDA -> KMP | 0.206 | 0.056 | *** | Accepted |
H10 | KMP -> ORP | 0.831 | 0.11 | *** | Accepted |
H11 | BDA -> KMP -> ORP | 3.307 | 0.052 | 0.001 | Accepted |
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Marchena Sekli, G.F.; De La Vega, I. Adoption of Big Data Analytics and Its Impact on Organizational Performance in Higher Education Mediated by Knowledge Management. J. Open Innov. Technol. Mark. Complex. 2021, 7, 221. https://doi.org/10.3390/joitmc7040221
Marchena Sekli GF, De La Vega I. Adoption of Big Data Analytics and Its Impact on Organizational Performance in Higher Education Mediated by Knowledge Management. Journal of Open Innovation: Technology, Market, and Complexity. 2021; 7(4):221. https://doi.org/10.3390/joitmc7040221
Chicago/Turabian StyleMarchena Sekli, Giulio Franz, and Iván De La Vega. 2021. "Adoption of Big Data Analytics and Its Impact on Organizational Performance in Higher Education Mediated by Knowledge Management" Journal of Open Innovation: Technology, Market, and Complexity 7, no. 4: 221. https://doi.org/10.3390/joitmc7040221
APA StyleMarchena Sekli, G. F., & De La Vega, I. (2021). Adoption of Big Data Analytics and Its Impact on Organizational Performance in Higher Education Mediated by Knowledge Management. Journal of Open Innovation: Technology, Market, and Complexity, 7(4), 221. https://doi.org/10.3390/joitmc7040221