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Knowledge Sharing Adoption Model Based on Artificial Neural Networks

Author

Listed:
  • Olusegun O. Folorunso

    (University of Agriculture Abeokuta, Nigeria)

  • Rebecca Opeoluwa Vincent

    (University of Agriculture Abeokuta, Nigeria)

  • Adewale Akintayo Ogunde

    (Redeemer’s University (RUN), Nigeria)

  • Benjamin Agboola

    (University of Agriculture Abeokuta, Nigeria)

Abstract

Knowledge Sharing Adoption Model called (KSAM) was developed in this paper using Artificial Neural Networks (ANN). It investigated students’ Perceived Usefulness and Benefits (PUB) of Knowledge Sharing among students of higher learning in Nigeria. The study was based on the definition as well as on the constucts related to technology acceptance model (TAM). A survey was conducted using structured questionnaire administered among students and analysed with SPSS statistical tool; the results were evaluated using ANN. The KSAM includes six constucts that include Perceived Ease Of Sharing (PEOS), Perceived Usefulness and Benefits (PUB), Perceived Barriers for Sharing (PBS), External Cues to Share (ECS), Attitude Towards Sharing (ATT), and Behavioral Intention to Share (BIS). The result showed that Students’ PUB must be raised in order to effectively increase the adoption of Knowledge Sharing in this domain. The paper also identified a myriad of limitations in knowledge sharing and discovered that the utilization of KSAM using ANN is feasible. Findings from this study may form the bedrock on which further studies can be built.

Suggested Citation

  • Olusegun O. Folorunso & Rebecca Opeoluwa Vincent & Adewale Akintayo Ogunde & Benjamin Agboola, 2010. "Knowledge Sharing Adoption Model Based on Artificial Neural Networks," International Journal of E-Adoption (IJEA), IGI Global, vol. 2(4), pages 1-14, October.
  • Handle: RePEc:igg:jea000:v:2:y:2010:i:4:p:1-14
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