Higher generative AI error rates reduce user reliance, but task difficulty does not significantly moderate this effect.
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Consumer Acceptance and Use of Information Technology: Extending the Unified Theory of Acceptance and Use of Technology1
4 Pith papers cite this work, alongside 11,190 external citations. Polarity classification is still indexing.
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2026 4verdicts
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A framework is introduced that links activist needs (minimal overhead, community building, safety, sustainability) to DSN affordances and is applied to compare Mastodon and Bluesky plus example communities.
Industrial XR adoption faces a 'Pilot Trap' where organizational readiness and stakeholder incentive misalignments now outweigh technology barriers, based on 17 expert interviews.
UTAUT is suitable for studying individual barriers to GenAI use in software engineering when combined with Bayesian analysis, with three priorities for future research on construct refinement, operationalization, and statistical methods.
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Effects of Generative AI Errors on User Reliance Across Task Difficulty
Higher generative AI error rates reduce user reliance, but task difficulty does not significantly moderate this effect.
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The Activist's Guide to the Decentralized Social Universe: A Framework for Exploring How Decentralized Social Networks Can Support Collective Action
A framework is introduced that links activist needs (minimal overhead, community building, safety, sustainability) to DSN affordances and is applied to compare Mastodon and Bluesky plus example communities.
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Exploring Organizational Readiness and Ecosystem Coordination for Industrial XR
Industrial XR adoption faces a 'Pilot Trap' where organizational readiness and stakeholder incentive misalignments now outweigh technology barriers, based on 17 expert interviews.
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GenAI in Software Engineering: The Role of Technology Acceptance Models
UTAUT is suitable for studying individual barriers to GenAI use in software engineering when combined with Bayesian analysis, with three priorities for future research on construct refinement, operationalization, and statistical methods.