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dc.contributor.editorLi, Qun
dc.contributor.editorWood, Aihua
dc.date.accessioned2024-07-04T09:42:32Z
dc.date.available2024-07-04T09:42:32Z
dc.date.issued2024
dc.identifierONIX_20240704_9783725812813_123
dc.identifier.urihttps://directory.doabooks.org/handle/20.500.12854/139327
dc.description.abstractThe simultaneous availability of large datasets and high-performance computing capability in recent years has enabled the rapid development of powerful machine learning algorithms. On the one hand, state-of-the-art machine learning techniques have transformed many areas of science and engineering; on the other hand, theoretical discoveries in mathematical algorithms, differential equations, and statistical inferences, to name a few, have provided the foundation for the exploration of new multidisciplinary models for solving practical problems. This Special Issue endeavors to continue the journey that started in our previous Special Issue (Applied Mathematics and Computational Physics) by providing a platform for researchers from both academia and industry, as well as government, to present their new computational methods that have engineering and physics applications. We publish papers from all areas of mathematics and engineering, and especially those that showcase novel machine learning techniques that leverage subject matter expertise. We aim to foster the communication of the latest research results in the areas of applied and computational mathematics.
dc.languageEnglish
dc.subject.classificationthema EDItEUR::P Mathematics and Science
dc.subject.classificationthema EDItEUR::P Mathematics and Science::PB Mathematics
dc.subject.classificationthema EDItEUR::P Mathematics and Science::PB Mathematics::PBW Applied mathematics
dc.subject.otherself-compacting concrete
dc.subject.othercompressive strength
dc.subject.otherdeep neural network
dc.subject.othergradient boosting machine
dc.subject.othermachine learning
dc.subject.otherDbar-dressing method
dc.subject.otherCauchy matrix
dc.subject.otherLax pair
dc.subject.othersoliton solutions
dc.subject.otherentropy
dc.subject.otherfuzzy
dc.subject.otherTOPSIS
dc.subject.othermulti-criteria decision making
dc.subject.otherfinancial ratio
dc.subject.otherranking
dc.subject.otherdata envelopment analysis
dc.subject.otherefficiency
dc.subject.otheroperational risk
dc.subject.otherpotential improvement
dc.subject.otherKorteweg–de Vries equation
dc.subject.othercoarse grid
dc.subject.otherdigital twin
dc.subject.otherIndustry 4.0
dc.subject.othersupply chain
dc.subject.otherbibliometric analysis
dc.subject.othersubject area
dc.subject.otherfalse information detection
dc.subject.otherresidual structure
dc.subject.othergraph neural network
dc.subject.otherelectron microscope
dc.subject.otherconvolutional neural networks (CNNs)
dc.subject.otheranomaly detection
dc.subject.otherprincipal component analysis (PCA)
dc.subject.otherdeep learning
dc.subject.otherneural networks
dc.subject.otherGallium Arsenide (GaAs)
dc.subject.otherSAR-X
dc.subject.otherCasetti’s model
dc.subject.otherclimate variables
dc.subject.otherprediction
dc.subject.otherRShiny
dc.subject.otherdynamical systems
dc.subject.otherautoencoders
dc.subject.otherlatent representation
dc.subject.othermanifold learning
dc.titleApplied Mathematics and Machine Learning
dc.typebook
oapen.identifier.doi10.3390/books978-3-7258-1282-0
oapen.relation.isPublishedBy46cabcaa-dd94-4bfe-87b4-55023c1b36d0
oapen.relation.isbn9783725812813
oapen.relation.isbn9783725812820
oapen.pages170


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