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A machine learning method to predict the technology adoption of blockchain in Palestinian firms

Ihab K. A. Hamdan, Eli Sumarliah, Fauziyah Fauziyah

2021International Journal of Emerging Markets21 citationsDOI

Abstract

Purpose The study aims to deliver a decision support system for business leaders to estimate the potential for effective technological adoption of the blockchain (TAB) with a machine learning approach. Design/methodology/approach This study uses a Bayesian network examination to develop an extrapolative system of decision support, highlighting the influential determinants that managers can employ to predict the TAB possibilities in their companies. Data were gathered from 167 SMEs in the largest industrial sectors in Palestine. Findings The results reveal perceived benefit and ease of use as the most influential determinants of the TAB. Originality/value This research is an initial effort to examine factors influencing TAB in the perspective of SMEs in Palestine using machine learning algorithms.

Topics & Concepts

PalestineOriginalityBlockchainValue (mathematics)Perspective (graphical)BusinessKnowledge managementComputer scienceArtificial intelligenceMarketingMachine learningComputer securitySociologyAncient historySocial scienceHistoryQualitative researchBlockchain Technology Applications and SecurityOrganizational and Employee PerformanceTechnology Adoption and User Behaviour
A machine learning method to predict the technology adoption of blockchain in Palestinian firms | Litcius