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dc.contributor.editorSchulz, Daniel
dc.contributor.editorBauckhage, Christian
dc.date.accessioned2025-04-14T12:56:48Z
dc.date.available2025-04-14T12:56:48Z
dc.date.issued2025
dc.identifierONIX_20250414_9783031830976_16
dc.identifier.urihttps://library.oapen.org/handle/20.500.12657/100755
dc.description.abstractThis open access book presents the concept of Informed Machine Learning and demonstrates its practical use with a compelling collection of applications of this paradigm in industrial and business use cases. These range from health care over manufacturing and material science to more advanced combinations with deep learning, say, in the form of physical informed neural networks. The book is intended for those interested in modern informed machine learning for a wide range of practical applications where the aspect of small data sets is a challenge. Machine Learning with small amounts of data? After the recent success of Artificial Intelligence based on training with massive amounts of data, this idea may sound exotic. However, it addresses crucial needs of practitioners in industry. While many industrial applications stand to benefit from the use of AI, the amounts of data needed by current learning paradigms are often hard to come by in industrial settings. As an alternative, learning methods and models are called for which integrate other sources of knowledge in order to compensate for the lack of data. This is where the principle of “Informed Machine Learning” comes into play. Informed Machine Learning combines purely data driven learning and knowledge-based techniques to learn from both data and knowledge. This has several advantages. It reduces the need for data, it often results in smaller, less complex and more robust models, and even makes machine learning applicable in settings where data is scarce. The kind of knowledge to be incorporated into learning processes can take many different forms, for example, differential equations, analytical models, simulation results, logical rules, knowledge graphs, or human feedback which makes the approach overall very powerful and widely applicable.
dc.languageEnglish
dc.relation.ispartofseriesCognitive Technologies
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence::UYQM Machine learning
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence::UYQL Natural language and machine translation
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UN Databases
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence::UYQE Expert systems / knowledge-based systems
dc.subject.otherInformed Machine Learning
dc.subject.otherAnomaly Detection
dc.subject.otherInterpretable Model
dc.subject.otherDeep Learning
dc.subject.otherKnowledge Graphs
dc.subject.otherGraph Neural Networks
dc.subject.otherAITwin
dc.subject.otherBayesian Inference
dc.subject.otherMulti-Agent Neural Rewriter
dc.subject.otherSupport Vector Machines
dc.subject.otherMultivariate Time Series
dc.subject.otherDifferential Equations
dc.titleInformed Machine Learning
dc.typebook
oapen.identifier.doi10.1007/978-3-031-83097-6
oapen.relation.isPublishedBy6c6992af-b843-4f46-859c-f6e9998e40d5
oapen.relation.isFundedBy15487bd0-7fc0-4a38-ba36-e15c641fcf45
oapen.relation.isbn9783031830969
oapen.imprintSpringer Nature Switzerland
oapen.pages339
oapen.place.publicationCham
oapen.grant.number[...]


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