Classifying Smart Personal Assistants: An Empirical Cluster Analysis

Date
2019-01-08
Authors
Knote, Robin
Janson, Andreas
Söllner, Matthias
Leimeister, Jan Marco
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The digital age has yielded systems that increasingly reduce the complexity of our everyday lives. As such, smart personal assistants such as Amazon’s Alexa or Apple’s Siri combine the comfort of intuitive natural language interaction with the utility of personalized and situation-dependent information and service provision. However, research on SPAs is becoming increasingly complex and opaque. To reduce complexity, this paper introduces a classification system for SPAs. Based on a systematic literature review, a cluster analysis reveals five SPA archetypes: Adaptive Voice (Vision) Assistants, Chatbot Assistants, Embodied Virtual Assistants, Passive Pervasive Assistants, and Natural Conversation Assistants.
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Smart Service Systems: Analytics, Artificial Intelligence and Cognitive Applications, Decision Analytics, Mobile Services, and Service Science, Smart Personal Assistants, Intelligent Agents, Classification, Cluster Analysis, Literature Review
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10 pages
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Proceedings of the 52nd Hawaii International Conference on System Sciences
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Attribution-NonCommercial-NoDerivatives 4.0 International
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