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Innovating with Artificial Intelligence: Capturing the Constructive Functional Capabilities of Deep Generative Learning

Peter Hofmann, Timon Rückel, Nils Urbach

2021Proceedings of the ... Annual Hawaii International Conference on System Sciences/Proceedings of the Annual Hawaii International Conference on System Sciences15 citationsDOIOpen Access PDF

Abstract

As an emerging species of artificial intelligence, deep generative learning models can generate an unprecedented variety of new outputs. Examples include the creation of music, text-to-image translation, or the imputation of missing data. Similar to other AI models that already evoke significant changes in society and economy, there is a need for structuring the constructive functional capabilities of DGL. To derive and discuss them, we conducted an extensive and structured literature review. Our results reveal a substantial scope of six constructive functional capabilities demonstrating that DGL is not exclusively used to generate unseen outputs. Our paper further guides companies in capturing and evaluating DGL’s potential for innovation. Besides, our paper fosters an understanding of DGL and provides a conceptual basis for further research.

Topics & Concepts

Generative grammarConstructiveStructuringArtificial intelligenceScope (computer science)Computer scienceDeep learningGenerative modelBridging (networking)Variety (cybernetics)Machine learningPolitical scienceProcess (computing)Operating systemLawComputer networkProgramming languageArtificial Intelligence in Healthcare and EducationCOVID-19 diagnosis using AIAI in Service Interactions
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