New directions for applied knowledge-based AI and machine learning: Selected results of the 2022 Dagstuhl Workshop on Applied Machine Intelligence

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Abstract

In this article, selected new directions in knowledge-based artificial intelligence (AI) and machine learning (ML) are presented: ontology development methodologies and tools, automated engineering of WordNets, innovations in semantic search, and automated machine learning (AutoML). Knowledge-based AI and ML complement each other ideally, as their strengths compensate for the weaknesses of the other discipline. This is demonstrated via selected corporate use cases: anomaly detection, efficient modeling of supply networks, circular economy, and semantic enrichment of technical information.

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Humm, B. G., Archer, P., Bense, H., Bernier, C., Goetz, C., Hoppe, T., … Zender, A. (2023). New directions for applied knowledge-based AI and machine learning: Selected results of the 2022 Dagstuhl Workshop on Applied Machine Intelligence. Informatik-Spektrum, 46(2), 65–78. https://doi.org/10.1007/s00287-022-01513-9

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